onednnl_sys/bindings/
bindings.rs

1/* automatically generated by rust-bindgen 0.71.1 */
2
3pub const DNNL_RUNTIME_NONE: u32 = 0;
4pub const DNNL_RUNTIME_SEQ: u32 = 1;
5pub const DNNL_RUNTIME_OMP: u32 = 2;
6pub const DNNL_RUNTIME_TBB: u32 = 4;
7pub const DNNL_RUNTIME_THREADPOOL: u32 = 8;
8pub const DNNL_RUNTIME_OCL: u32 = 256;
9pub const DNNL_RUNTIME_SYCL: u32 = 512;
10pub const DNNL_RUNTIME_DPCPP: u32 = 512;
11pub const DNNL_VENDOR_NONE: u32 = 0;
12pub const DNNL_VENDOR_INTEL: u32 = 1;
13pub const DNNL_VENDOR_NVIDIA: u32 = 2;
14pub const DNNL_VENDOR_AMD: u32 = 4;
15pub const DNNL_VENDOR_GENERIC: u32 = 8;
16pub const DNNL_CPU_THREADING_RUNTIME: u32 = 4;
17pub const DNNL_CPU_RUNTIME: u32 = 512;
18pub const DNNL_GPU_RUNTIME: u32 = 512;
19pub const DNNL_GPU_VENDOR: u32 = 1;
20pub const BUILD_TRAINING: u32 = 1;
21pub const BUILD_INFERENCE: u32 = 0;
22pub const BUILD_PRIMITIVE_ALL: u32 = 1;
23pub const BUILD_BATCH_NORMALIZATION: u32 = 0;
24pub const BUILD_BINARY: u32 = 0;
25pub const BUILD_CONCAT: u32 = 0;
26pub const BUILD_CONVOLUTION: u32 = 0;
27pub const BUILD_DECONVOLUTION: u32 = 0;
28pub const BUILD_ELTWISE: u32 = 0;
29pub const BUILD_GROUP_NORMALIZATION: u32 = 0;
30pub const BUILD_INNER_PRODUCT: u32 = 0;
31pub const BUILD_LAYER_NORMALIZATION: u32 = 0;
32pub const BUILD_LRN: u32 = 0;
33pub const BUILD_MATMUL: u32 = 0;
34pub const BUILD_POOLING: u32 = 0;
35pub const BUILD_PRELU: u32 = 0;
36pub const BUILD_REDUCTION: u32 = 0;
37pub const BUILD_REORDER: u32 = 0;
38pub const BUILD_RESAMPLING: u32 = 0;
39pub const BUILD_RNN: u32 = 0;
40pub const BUILD_SDPA: u32 = 0;
41pub const BUILD_SHUFFLE: u32 = 0;
42pub const BUILD_SOFTMAX: u32 = 0;
43pub const BUILD_SUM: u32 = 0;
44pub const BUILD_PRIMITIVE_CPU_ISA_ALL: u32 = 1;
45pub const BUILD_SSE41: u32 = 0;
46pub const BUILD_AVX2: u32 = 0;
47pub const BUILD_AVX512: u32 = 0;
48pub const BUILD_AMX: u32 = 0;
49pub const BUILD_PRIMITIVE_GPU_ISA_ALL: u32 = 1;
50pub const BUILD_GEN9: u32 = 0;
51pub const BUILD_GEN11: u32 = 0;
52pub const BUILD_XELP: u32 = 0;
53pub const BUILD_XEHP: u32 = 0;
54pub const BUILD_XEHPG: u32 = 0;
55pub const BUILD_XEHPC: u32 = 0;
56pub const BUILD_XE2: u32 = 0;
57pub const BUILD_XE3: u32 = 0;
58pub const BUILD_GEMM_KERNELS_ALL: u32 = 1;
59pub const BUILD_GEMM_KERNELS_NONE: u32 = 0;
60pub const BUILD_GEMM_SSE41: u32 = 0;
61pub const BUILD_GEMM_AVX2: u32 = 0;
62pub const BUILD_GEMM_AVX512: u32 = 0;
63pub const DNNL_MAX_NDIMS: u32 = 12;
64pub const DNNL_VERSION_MAJOR: u32 = 3;
65pub const DNNL_VERSION_MINOR: u32 = 8;
66pub const DNNL_VERSION_PATCH: u32 = 1;
67pub const DNNL_ARG_UNDEF: u32 = 0;
68pub const DNNL_ARG_SRC_0: u32 = 1;
69pub const DNNL_ARG_SRC: u32 = 1;
70pub const DNNL_ARG_SRC_LAYER: u32 = 1;
71pub const DNNL_ARG_FROM: u32 = 1;
72pub const DNNL_ARG_SRC_1: u32 = 2;
73pub const DNNL_ARG_SRC_ITER: u32 = 2;
74pub const DNNL_ARG_SRC_2: u32 = 3;
75pub const DNNL_ARG_SRC_ITER_C: u32 = 3;
76pub const DNNL_ARG_SRC_3: u32 = 4;
77pub const DNNL_ARG_AUGRU_ATTENTION: u32 = 4;
78pub const DNNL_ARG_DST_0: u32 = 17;
79pub const DNNL_ARG_DST: u32 = 17;
80pub const DNNL_ARG_TO: u32 = 17;
81pub const DNNL_ARG_DST_LAYER: u32 = 17;
82pub const DNNL_ARG_DST_1: u32 = 18;
83pub const DNNL_ARG_DST_ITER: u32 = 18;
84pub const DNNL_ARG_DST_2: u32 = 19;
85pub const DNNL_ARG_DST_ITER_C: u32 = 19;
86pub const DNNL_ARG_WEIGHTS_0: u32 = 33;
87pub const DNNL_ARG_WEIGHTS: u32 = 33;
88pub const DNNL_ARG_WEIGHTS_LAYER: u32 = 33;
89pub const DNNL_ARG_WEIGHTS_1: u32 = 34;
90pub const DNNL_ARG_WEIGHTS_ITER: u32 = 34;
91pub const DNNL_ARG_WEIGHTS_2: u32 = 35;
92pub const DNNL_ARG_WEIGHTS_PEEPHOLE: u32 = 35;
93pub const DNNL_ARG_WEIGHTS_3: u32 = 36;
94pub const DNNL_ARG_WEIGHTS_PROJECTION: u32 = 36;
95pub const DNNL_ARG_BIAS: u32 = 41;
96pub const DNNL_ARG_REDUCE: u32 = 42;
97pub const DNNL_ARG_MEAN: u32 = 49;
98pub const DNNL_ARG_VARIANCE: u32 = 50;
99pub const DNNL_ARG_SCALE: u32 = 51;
100pub const DNNL_ARG_SHIFT: u32 = 52;
101pub const DNNL_ARG_WORKSPACE: u32 = 64;
102pub const DNNL_ARG_SCRATCHPAD: u32 = 80;
103pub const DNNL_ARG_DIFF_SRC_0: u32 = 129;
104pub const DNNL_ARG_DIFF_SRC: u32 = 129;
105pub const DNNL_ARG_DIFF_SRC_LAYER: u32 = 129;
106pub const DNNL_ARG_DIFF_SRC_1: u32 = 130;
107pub const DNNL_ARG_DIFF_SRC_ITER: u32 = 130;
108pub const DNNL_ARG_DIFF_SRC_2: u32 = 131;
109pub const DNNL_ARG_DIFF_SRC_ITER_C: u32 = 131;
110pub const DNNL_ARG_DIFF_SRC_3: u32 = 132;
111pub const DNNL_ARG_DIFF_AUGRU_ATTENTION: u32 = 132;
112pub const DNNL_ARG_DIFF_DST_0: u32 = 145;
113pub const DNNL_ARG_DIFF_DST: u32 = 145;
114pub const DNNL_ARG_DIFF_DST_LAYER: u32 = 145;
115pub const DNNL_ARG_DIFF_DST_1: u32 = 146;
116pub const DNNL_ARG_DIFF_DST_ITER: u32 = 146;
117pub const DNNL_ARG_DIFF_DST_2: u32 = 147;
118pub const DNNL_ARG_DIFF_DST_ITER_C: u32 = 147;
119pub const DNNL_ARG_DIFF_WEIGHTS_0: u32 = 161;
120pub const DNNL_ARG_DIFF_WEIGHTS: u32 = 161;
121pub const DNNL_ARG_DIFF_WEIGHTS_LAYER: u32 = 161;
122pub const DNNL_ARG_DIFF_WEIGHTS_1: u32 = 162;
123pub const DNNL_ARG_DIFF_WEIGHTS_ITER: u32 = 162;
124pub const DNNL_ARG_DIFF_WEIGHTS_2: u32 = 163;
125pub const DNNL_ARG_DIFF_WEIGHTS_PEEPHOLE: u32 = 163;
126pub const DNNL_ARG_DIFF_WEIGHTS_3: u32 = 164;
127pub const DNNL_ARG_DIFF_WEIGHTS_PROJECTION: u32 = 164;
128pub const DNNL_ARG_DIFF_BIAS: u32 = 169;
129pub const DNNL_ARG_DIFF_SCALE: u32 = 255;
130pub const DNNL_ARG_DIFF_SHIFT: u32 = 256;
131pub const DNNL_ARG_ATTR_ROUNDING_SEED: u32 = 508;
132pub const DNNL_ARG_ATTR_DROPOUT_MASK: u32 = 509;
133pub const DNNL_ARG_ATTR_DROPOUT_PROBABILITY: u32 = 510;
134pub const DNNL_ARG_ATTR_DROPOUT_SEED: u32 = 511;
135pub const DNNL_ARG_ATTR_OUTPUT_SCALES: u32 = 513;
136pub const DNNL_ARG_MULTIPLE_SRC: u32 = 1024;
137pub const DNNL_ARG_MULTIPLE_DST: u32 = 2048;
138pub const DNNL_ARG_ATTR_SCALES: u32 = 4096;
139pub const DNNL_ARG_ATTR_ZERO_POINTS: u32 = 8192;
140pub const DNNL_ARG_ATTR_POST_OP_DW: u32 = 16384;
141pub const DNNL_ARG_ATTR_MULTIPLE_POST_OP_BASE: u32 = 32768;
142pub const DNNL_JIT_PROFILE_NONE: u32 = 0;
143pub const DNNL_JIT_PROFILE_VTUNE: u32 = 1;
144pub const DNNL_JIT_PROFILE_LINUX_PERFMAP: u32 = 2;
145pub const DNNL_JIT_PROFILE_LINUX_JITDUMP: u32 = 4;
146pub const DNNL_JIT_PROFILE_LINUX_JITDUMP_USE_TSC: u32 = 8;
147pub const DNNL_JIT_PROFILE_LINUX_PERF: u32 = 6;
148pub const DNNL_GRAPH_UNKNOWN_NDIMS: i32 = -1;
149pub mod dnnl_status_t {
150    #[doc = " Status values returned by the library functions."]
151    pub type Type = ::std::os::raw::c_uint;
152    #[doc = " The operation was successful"]
153    pub const dnnl_success: Type = 0;
154    #[doc = " The operation failed due to an out-of-memory condition"]
155    pub const dnnl_out_of_memory: Type = 1;
156    #[doc = " The operation failed because of incorrect function arguments"]
157    pub const dnnl_invalid_arguments: Type = 2;
158    #[doc = " The operation failed because requested functionality is not implemented"]
159    pub const dnnl_unimplemented: Type = 3;
160    #[doc = " The last available implementation is reached"]
161    pub const dnnl_last_impl_reached: Type = 4;
162    #[doc = " Primitive or engine failed on execution"]
163    pub const dnnl_runtime_error: Type = 5;
164    #[doc = " Queried element is not required for given primitive"]
165    pub const dnnl_not_required: Type = 6;
166    #[doc = " The graph is not legitimate"]
167    pub const dnnl_invalid_graph: Type = 7;
168    #[doc = " The operation is not legitimate according to op schema"]
169    pub const dnnl_invalid_graph_op: Type = 8;
170    #[doc = " The shape cannot be inferred or compiled"]
171    pub const dnnl_invalid_shape: Type = 9;
172    #[doc = " The data type cannot be inferred or compiled"]
173    pub const dnnl_invalid_data_type: Type = 10;
174}
175pub mod dnnl_data_type_t {
176    #[doc = " Data type specification"]
177    pub type Type = ::std::os::raw::c_uint;
178    #[doc = " Undefined data type, used for empty memory descriptors."]
179    pub const dnnl_data_type_undef: Type = 0;
180    #[doc = " 16-bit/half-precision floating point."]
181    pub const dnnl_f16: Type = 1;
182    #[doc = " non-standard 16-bit (bfloat16 w/ 7 bit mantissa) floating point."]
183    pub const dnnl_bf16: Type = 2;
184    #[doc = " 32-bit/single-precision floating point."]
185    pub const dnnl_f32: Type = 3;
186    #[doc = " 32-bit signed integer."]
187    pub const dnnl_s32: Type = 4;
188    #[doc = " 8-bit signed integer."]
189    pub const dnnl_s8: Type = 5;
190    #[doc = " 8-bit unsigned integer."]
191    pub const dnnl_u8: Type = 6;
192    #[doc = " 64-bit/double-precision floating point."]
193    pub const dnnl_f64: Type = 7;
194    #[doc = " Boolean data type. Size is C++ implementation defined."]
195    pub const dnnl_boolean: Type = 8;
196    #[doc = " [OFP8 standard 8-bit floating-point](https://www.opencompute.org/documents/ocp-8-bit-floating-point-specification-ofp8-revision-1-0-2023-06-20-pdf)\n with a 5-bit exponent and a 2-bit mantissa."]
197    pub const dnnl_f8_e5m2: Type = 9;
198    #[doc = " [OFP8 standard 8-bit floating-point](https://www.opencompute.org/documents/ocp-8-bit-floating-point-specification-ofp8-revision-1-0-2023-06-20-pdf)\n with a 4-bit exponent and a 3-bit mantissa."]
199    pub const dnnl_f8_e4m3: Type = 10;
200    #[doc = " 4-bit signed integer."]
201    pub const dnnl_s4: Type = 11;
202    #[doc = " 4-bit unsigned integer."]
203    pub const dnnl_u4: Type = 12;
204    #[doc = " [MX-compliant 8-bit compliant scale data type](https://www.opencompute.org/documents/ocp-microscaling-formats-mx-v1-0-spec-final-pdf) with 8-bit exponent."]
205    pub const dnnl_e8m0: Type = 13;
206    #[doc = " [MX-compliant 4-bit float data type](https://www.opencompute.org/documents/ocp-microscaling-formats-mx-v1-0-spec-final-pdf) with 2-bit exponent and 1 bit mantissa."]
207    pub const dnnl_f4_e2m1: Type = 14;
208    #[doc = " 4-bit float data type with 3-bit exponent and 0 bit mantissa."]
209    pub const dnnl_f4_e3m0: Type = 15;
210    #[doc = " Parameter to allow internal only data_types without undefined behavior.\n This parameter is chosen to be valid for so long as sizeof(int) >= 2."]
211    pub const dnnl_data_type_max: Type = 32767;
212}
213#[doc = " A type to describe tensor dimension."]
214pub type dnnl_dim_t = i64;
215#[doc = " A type to describe tensor dimensions."]
216pub type dnnl_dims_t = [dnnl_dim_t; 12usize];
217pub mod dnnl_fpmath_mode_t {
218    #[doc = " Floating-point math mode"]
219    pub type Type = ::std::os::raw::c_uint;
220    #[doc = " Default behavior, no downconversions allowed"]
221    pub const dnnl_fpmath_mode_strict: Type = 0;
222    #[doc = " Implicit f32->bf16 conversions allowed"]
223    pub const dnnl_fpmath_mode_bf16: Type = 1;
224    #[doc = " Implicit f32->f16 conversions allowed"]
225    pub const dnnl_fpmath_mode_f16: Type = 2;
226    #[doc = " Implicit f32->f16, f32->tf32 or f32->bf16 conversions allowed"]
227    pub const dnnl_fpmath_mode_any: Type = 3;
228    #[doc = " Implicit f32->tf32 conversions allowed"]
229    pub const dnnl_fpmath_mode_tf32: Type = 4;
230}
231pub mod dnnl_accumulation_mode_t {
232    #[doc = " Accumulation mode"]
233    pub type Type = ::std::os::raw::c_uint;
234    #[doc = " Default behavior, f32/f64 for floating point computation, s32\n for integer"]
235    pub const dnnl_accumulation_mode_strict: Type = 0;
236    #[doc = " Same as strict but allows some partial accumulators to be\n rounded to src/dst datatype in memory."]
237    pub const dnnl_accumulation_mode_relaxed: Type = 1;
238    #[doc = " uses fastest implementation, could use src/dst datatype or\n wider datatype for accumulators"]
239    pub const dnnl_accumulation_mode_any: Type = 2;
240    #[doc = " use s32 accumulators during computation"]
241    pub const dnnl_accumulation_mode_s32: Type = 3;
242    #[doc = " use f32 accumulators during computation"]
243    pub const dnnl_accumulation_mode_f32: Type = 4;
244    #[doc = " use f16 accumulators during computation"]
245    pub const dnnl_accumulation_mode_f16: Type = 5;
246}
247pub mod dnnl_engine_kind_t {
248    #[doc = " @brief Kinds of engines."]
249    pub type Type = ::std::os::raw::c_uint;
250    #[doc = " An unspecified engine."]
251    pub const dnnl_any_engine: Type = 0;
252    #[doc = " CPU engine."]
253    pub const dnnl_cpu: Type = 1;
254    #[doc = " GPU engine."]
255    pub const dnnl_gpu: Type = 2;
256}
257#[doc = " @struct dnnl_engine\n @brief An opaque structure to describe an engine."]
258#[repr(C)]
259#[derive(Debug, Copy, Clone)]
260pub struct dnnl_engine {
261    _unused: [u8; 0],
262}
263#[doc = " @brief An engine handle."]
264pub type dnnl_engine_t = *mut dnnl_engine;
265pub mod dnnl_stream_flags_t {
266    #[doc = " @brief Stream flags."]
267    pub type Type = ::std::os::raw::c_uint;
268    pub const dnnl_stream_in_order: Type = 1;
269    #[doc = " Out-of-order execution."]
270    pub const dnnl_stream_out_of_order: Type = 2;
271    #[doc = " Default stream configuration."]
272    pub const dnnl_stream_default_flags: Type = 1;
273}
274#[doc = " @struct dnnl_stream\n An opaque structure to describe an execution stream."]
275#[repr(C)]
276#[derive(Debug, Copy, Clone)]
277pub struct dnnl_stream {
278    _unused: [u8; 0],
279}
280#[doc = " An execution stream handle."]
281pub type dnnl_stream_t = *mut dnnl_stream;
282#[doc = " A constant execution stream handle."]
283pub type const_dnnl_stream_t = *const dnnl_stream;
284#[doc = " Structure containing version information as per [Semantic\n Versioning](https://semver.org)"]
285#[repr(C)]
286#[derive(Debug, Copy, Clone)]
287pub struct dnnl_version_t {
288    #[doc = "< Major version"]
289    pub major: ::std::os::raw::c_int,
290    #[doc = "< Minor version"]
291    pub minor: ::std::os::raw::c_int,
292    #[doc = "< Patch version"]
293    pub patch: ::std::os::raw::c_int,
294    #[doc = "< Git hash of the sources (may be absent)"]
295    pub hash: *const ::std::os::raw::c_char,
296    #[doc = "< CPU runtime"]
297    pub cpu_runtime: ::std::os::raw::c_uint,
298    #[doc = "< GPU runtime"]
299    pub gpu_runtime: ::std::os::raw::c_uint,
300}
301#[allow(clippy::unnecessary_operation, clippy::identity_op)]
302const _: () = {
303    ["Size of dnnl_version_t"][::std::mem::size_of::<dnnl_version_t>() - 32usize];
304    ["Alignment of dnnl_version_t"][::std::mem::align_of::<dnnl_version_t>() - 8usize];
305    ["Offset of field: dnnl_version_t::major"]
306        [::std::mem::offset_of!(dnnl_version_t, major) - 0usize];
307    ["Offset of field: dnnl_version_t::minor"]
308        [::std::mem::offset_of!(dnnl_version_t, minor) - 4usize];
309    ["Offset of field: dnnl_version_t::patch"]
310        [::std::mem::offset_of!(dnnl_version_t, patch) - 8usize];
311    ["Offset of field: dnnl_version_t::hash"]
312        [::std::mem::offset_of!(dnnl_version_t, hash) - 16usize];
313    ["Offset of field: dnnl_version_t::cpu_runtime"]
314        [::std::mem::offset_of!(dnnl_version_t, cpu_runtime) - 24usize];
315    ["Offset of field: dnnl_version_t::gpu_runtime"]
316        [::std::mem::offset_of!(dnnl_version_t, gpu_runtime) - 28usize];
317};
318unsafe extern "C" {
319    #[doc = " Returns the number of engines of a particular kind.\n\n @param kind Kind of engines to count.\n @returns Count of the engines."]
320    pub fn dnnl_engine_get_count(kind: dnnl_engine_kind_t::Type) -> usize;
321}
322unsafe extern "C" {
323    #[doc = " Creates an engine.\n\n @param engine Output engine.\n @param kind Engine kind.\n @param index Engine index that should be between 0 and the count of\n     engines of the requested kind.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
324    pub fn dnnl_engine_create(
325        engine: *mut dnnl_engine_t,
326        kind: dnnl_engine_kind_t::Type,
327        index: usize,
328    ) -> dnnl_status_t::Type;
329}
330unsafe extern "C" {
331    #[doc = " Returns the kind of an engine.\n\n @param engine Engine to query.\n @param kind Output engine kind.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
332    pub fn dnnl_engine_get_kind(
333        engine: dnnl_engine_t,
334        kind: *mut dnnl_engine_kind_t::Type,
335    ) -> dnnl_status_t::Type;
336}
337unsafe extern "C" {
338    #[doc = " Destroys an engine.\n\n @param engine Engine to destroy.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
339    pub fn dnnl_engine_destroy(engine: dnnl_engine_t) -> dnnl_status_t::Type;
340}
341unsafe extern "C" {
342    #[doc = " Creates an execution stream.\n\n @param stream Output execution stream.\n @param engine Engine to create the execution stream on.\n @param flags Stream behavior flags (@sa dnnl_stream_flags_t).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
343    pub fn dnnl_stream_create(
344        stream: *mut dnnl_stream_t,
345        engine: dnnl_engine_t,
346        flags: ::std::os::raw::c_uint,
347    ) -> dnnl_status_t::Type;
348}
349unsafe extern "C" {
350    #[doc = " Returns the engine of a stream object.\n\n @param stream Stream object.\n @param engine Output engine on which the stream is created.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
351    pub fn dnnl_stream_get_engine(
352        stream: const_dnnl_stream_t,
353        engine: *mut dnnl_engine_t,
354    ) -> dnnl_status_t::Type;
355}
356unsafe extern "C" {
357    #[doc = " Waits for all primitives in the execution stream to finish computations.\n\n @param stream Execution stream.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
358    pub fn dnnl_stream_wait(stream: dnnl_stream_t) -> dnnl_status_t::Type;
359}
360unsafe extern "C" {
361    #[doc = " Destroys an execution stream.\n\n @param stream Execution stream to destroy.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
362    pub fn dnnl_stream_destroy(stream: dnnl_stream_t) -> dnnl_status_t::Type;
363}
364unsafe extern "C" {
365    #[doc = " Returns the floating-point math mode that will be used by default\n for all subsequently created primitives.\n\n @param mode Output FP math mode.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
366    pub fn dnnl_get_default_fpmath_mode(mode: *mut dnnl_fpmath_mode_t::Type)
367        -> dnnl_status_t::Type;
368}
369unsafe extern "C" {
370    #[doc = " Sets the floating-point math mode that will be used by default\n for all subsequently created primitives.\n\n @param mode FP math mode. The possible values are:\n     #dnnl_fpmath_mode_strict,\n     #dnnl_fpmath_mode_bf16,\n     #dnnl_fpmath_mode_f16,\n     #dnnl_fpmath_mode_tf32,\n     #dnnl_fpmath_mode_any.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
371    pub fn dnnl_set_default_fpmath_mode(mode: dnnl_fpmath_mode_t::Type) -> dnnl_status_t::Type;
372}
373unsafe extern "C" {
374    #[doc = " Configures verbose output to stdout.\n\n @note\n     Enabling verbose output affects performance.\n     This setting overrides the ONEDNN_VERBOSE environment variable.\n\n @param level Verbosity level:\n  - 0: no verbose output (default),\n  - 1: primitive and graph information at execution,\n  - 2: primitive and graph information at creation/compilation and execution.\n @returns #dnnl_invalid_arguments/#dnnl::status::invalid_arguments if the\n     @p level value is invalid, and #dnnl_success/#dnnl::status::success on\n     success."]
375    pub fn dnnl_set_verbose(level: ::std::os::raw::c_int) -> dnnl_status_t::Type;
376}
377unsafe extern "C" {
378    #[doc = " Returns library version information.\n @returns Pointer to a constant structure containing\n  - major: major version number,\n  - minor: minor version number,\n  - patch: patch release number,\n  - hash: git commit hash."]
379    pub fn dnnl_version() -> *const dnnl_version_t;
380}
381pub mod dnnl_format_kind_t {
382    #[doc = " Memory format kind"]
383    pub type Type = ::std::os::raw::c_uint;
384    #[doc = " Undefined memory format kind, used for empty memory descriptors."]
385    pub const dnnl_format_kind_undef: Type = 0;
386    #[doc = " A special format kind that indicates that the actual format will be\n selected by a primitive automatically."]
387    pub const dnnl_format_kind_any: Type = 1;
388    #[doc = " A tensor in a generic format described by the stride and blocking\n values in each dimension."]
389    pub const dnnl_blocked: Type = 2;
390    #[doc = " A special format kind that indicates that tensor format is opaque."]
391    pub const dnnl_format_kind_opaque: Type = 3;
392    #[doc = " Parameter to allow internal only format kinds without undefined\n behavior. This parameter is chosen to be valid for so long as\n sizeof(int) >= 2."]
393    pub const dnnl_format_kind_max: Type = 32767;
394}
395pub mod dnnl_format_tag_t {
396    #[doc = " Memory format tag specification.\n\n oneDNN formats describe physical data layout. The physical layout\n is described as a sequence of the dimensions as they are laid out in the\n memory (from the outer-most to the inner-most). Note that this order\n doesn't affect the logical order of the dimensions that is kept in the\n `dims` field of the dnnl_memory_desc_t structure. The logical order of the\n dimensions is specified by the primitive that uses the tensor.\n\n For example, CNN 5D tensor always has its logical dimensions in the order\n `(batch, channels, depth, height, width)`, while the physical layout might be\n `NCDHW` (corresponds to #dnnl_ncdhw format tag) or\n `NDHWC` (corresponds to #dnnl_ndhwc format tag).\n\n ~~~cpp\n int batch = 2, channels = 16, depth = 13, height = 13, width = 13;\n\n int ndims = 5; // 5D tensor\n dnnl_dims_t dims = {batch, channels, depth, height, width};\n dnnl_memory_desc_t data_in_ncdhw;\n dnnl_memory_desc_create_with_tag(\n      &data_in_ncdhw, 5, dims, dnnl_f32, dnnl_ncdhw);\n\n // note that in both cases dims passed are the same\n dnnl_memory_desc_t data_in_ndhwc;\n dnnl_memory_desc_create_with_tag(\n      &data_in_ndhwc, 5, dims, dnnl_f32, dnnl_ndhwc);\n\n dnnl_memory_desc_destroy(data_in_ncdhw);\n dnnl_memory_desc_destroy(data_in_ndhwc);\n ~~~\n\n Memory format tags can be further divided into two categories:\n  - Domain-agnostic names, i.e. names the do not depend on the tensor usage\n    in the specific primitive. These names use letters from `a` to `l` to\n    denote logical dimension from 1 to 12, and form the order in which the\n    dimensions are laid in memory. For instance, #dnnl_ab is used to denote\n    2D tensor where the second logical dimension (aka `b`) is the innermost,\n    i.e. has stride = 1, and the first logical dimension (`a`) laid out in\n    memory with stride equal to the size of second dimension. On the other\n    hand, #dnnl_ba is just transposed version of the same tensor: the\n    first dimension (`a`) becomes the innermost one.\n  - Domain-specific names, i.e. names that make sense only in the context of\n    a certain domain, such as CNN. This names are just aliases to the\n    corresponding domain-agnostic tags and used mostly for the convenience.\n    For example, #dnnl_nc is used to denote 2D CNN activations tensor\n    memory format, where channels are the innermost dimension and batch is an\n    outermost one. Moreover, #dnnl_nc is just an alias to #dnnl_ab,\n    since for oneDNN CNN primitives the logical dimensions of\n    activations tensors come in order: batch, channels, spatial.\n    In other words, batch corresponds to the first logical dimension (`a`),\n    channels correspond to the second one (`b`).\n\n The following domain-specific notation applies to memory format tags:\n  - @c 'n' denotes the mini-batch dimension\n  - @c 'c' denotes a channels dimension\n  - When there are multiple channel dimensions (for example, in convolution\n    weights tensor), @c 'i' and @c 'o' denote dimensions of input and output\n    channels\n  - @c 'd', @c 'h', and @c 'w' denote spatial depth, height, and width\n    respectively\n\n Upper-case letters indicate that the data is laid out in blocks for a\n particular dimension. In such cases, the format name contains both upper-\n and lower-case letters for that dimension with a lower-case letter preceded\n by the block size. For example: #dnnl_nChw8c describes a format where the\n outermost dimension is mini-batch, followed by the channel block number,\n followed by the spatial height and width, and finally followed by 8-element\n channel blocks.\n\n @sa @ref dev_guide_understanding_memory_formats"]
397    pub type Type = ::std::os::raw::c_uint;
398    #[doc = " Undefined memory format tag"]
399    pub const dnnl_format_tag_undef: Type = 0;
400    #[doc = " Undefined memory format tag.\n The primitive selects a format automatically."]
401    pub const dnnl_format_tag_any: Type = 1;
402    #[doc = "< plain 1D tensor"]
403    pub const dnnl_a: Type = 2;
404    #[doc = "< plain 2D tensor"]
405    pub const dnnl_ab: Type = 3;
406    #[doc = "< plain 3D tensor"]
407    pub const dnnl_abc: Type = 4;
408    #[doc = "< plain 4D tensor"]
409    pub const dnnl_abcd: Type = 5;
410    #[doc = "< plain 5D tensor"]
411    pub const dnnl_abcde: Type = 6;
412    #[doc = "< plain 6D tensor"]
413    pub const dnnl_abcdef: Type = 7;
414    #[doc = "< plain 7D tensor"]
415    pub const dnnl_abcdefg: Type = 8;
416    #[doc = "< plain 8D tensor"]
417    pub const dnnl_abcdefgh: Type = 9;
418    #[doc = "< plain 9D tensor"]
419    pub const dnnl_abcdefghi: Type = 10;
420    #[doc = "< plain 10D tensor"]
421    pub const dnnl_abcdefghij: Type = 11;
422    #[doc = "< plain 11D tensor"]
423    pub const dnnl_abcdefghijk: Type = 12;
424    #[doc = "< plain 12D tensor"]
425    pub const dnnl_abcdefghijkl: Type = 13;
426    #[doc = "< permuted 2D tensor"]
427    pub const dnnl_ba: Type = 14;
428    #[doc = "< permuted 3D tensor"]
429    pub const dnnl_acb: Type = 15;
430    #[doc = "< permuted 3D tensor"]
431    pub const dnnl_bac: Type = 16;
432    #[doc = "< permuted 3D tensor"]
433    pub const dnnl_bca: Type = 17;
434    #[doc = "< permuted 3D tensor"]
435    pub const dnnl_cab: Type = 18;
436    #[doc = "< permuted 3D tensor"]
437    pub const dnnl_cba: Type = 19;
438    #[doc = "< permuted 4D tensor"]
439    pub const dnnl_abdc: Type = 20;
440    #[doc = "< permuted 4D tensor"]
441    pub const dnnl_acbd: Type = 21;
442    #[doc = "< permuted 4D tensor"]
443    pub const dnnl_acdb: Type = 22;
444    #[doc = "< permuted 4D tensor"]
445    pub const dnnl_adbc: Type = 23;
446    #[doc = "< permuted 4D tensor"]
447    pub const dnnl_adcb: Type = 24;
448    #[doc = "< permuted 4D tensor"]
449    pub const dnnl_bacd: Type = 25;
450    #[doc = "< permuted 4D tensor"]
451    pub const dnnl_bcda: Type = 26;
452    #[doc = "< permuted 4D tensor"]
453    pub const dnnl_cdab: Type = 27;
454    #[doc = "< permuted 4D tensor"]
455    pub const dnnl_cdba: Type = 28;
456    #[doc = "< permuted 4D tensor"]
457    pub const dnnl_dcab: Type = 29;
458    #[doc = "< permuted 5D tensor"]
459    pub const dnnl_abced: Type = 30;
460    #[doc = "< permuted 5D tensor"]
461    pub const dnnl_abdec: Type = 31;
462    #[doc = "< permuted 5D tensor"]
463    pub const dnnl_acbde: Type = 32;
464    #[doc = "< permuted 5D tensor"]
465    pub const dnnl_acdeb: Type = 33;
466    #[doc = "< permuted 5D tensor"]
467    pub const dnnl_adecb: Type = 34;
468    #[doc = "< permuted 5D tensor"]
469    pub const dnnl_bacde: Type = 35;
470    #[doc = "< permuted 5D tensor"]
471    pub const dnnl_bcdea: Type = 36;
472    #[doc = "< permuted 5D tensor"]
473    pub const dnnl_cdeab: Type = 37;
474    #[doc = "< permuted 5D tensor"]
475    pub const dnnl_cdeba: Type = 38;
476    #[doc = "< permuted 5D tensor"]
477    pub const dnnl_decab: Type = 39;
478    #[doc = "< permuted 6D tensor"]
479    pub const dnnl_abcdfe: Type = 40;
480    #[doc = "< permuted 6D tensor"]
481    pub const dnnl_abdefc: Type = 41;
482    #[doc = "< permuted 6D tensor"]
483    pub const dnnl_abdfce: Type = 42;
484    #[doc = "< permuted 6D tensor"]
485    pub const dnnl_acbdef: Type = 43;
486    #[doc = "< permuted 6D tensor"]
487    pub const dnnl_adefcb: Type = 44;
488    #[doc = "< permuted 6D tensor"]
489    pub const dnnl_defcab: Type = 45;
490    #[doc = "< permuted 7D tensor"]
491    pub const dnnl_abcdegf: Type = 46;
492    #[doc = "< permuted 8D tensor"]
493    pub const dnnl_abcdefhg: Type = 47;
494    #[doc = "< permuted 9D tensor"]
495    pub const dnnl_abcdefgih: Type = 48;
496    #[doc = "< permuted 10D tensor"]
497    pub const dnnl_abcdefghji: Type = 49;
498    #[doc = "< permuted 11D tensor"]
499    pub const dnnl_abcdefghikj: Type = 50;
500    #[doc = "< permuted 12D tensor"]
501    pub const dnnl_abcdefghijlk: Type = 51;
502    pub const dnnl_Abc16a: Type = 52;
503    pub const dnnl_ABc16a16b: Type = 53;
504    pub const dnnl_ABc32a32b: Type = 54;
505    pub const dnnl_ABc4a4b: Type = 55;
506    #[doc = " 3D tensor blocked by 2nd dimension with block size 16"]
507    pub const dnnl_aBc16b: Type = 56;
508    #[doc = " 3D tensor blocked by 2nd dimension with block size 16"]
509    pub const dnnl_ABc16b16a: Type = 57;
510    #[doc = " 3D tensor blocked by 2nd dimension with block size 16"]
511    pub const dnnl_Abc4a: Type = 58;
512    #[doc = " 3D tensor blocked by 2nd dimension with block size 32"]
513    pub const dnnl_aBc32b: Type = 59;
514    #[doc = " 3D tensor blocked by 2nd dimension with block size 4"]
515    pub const dnnl_aBc4b: Type = 60;
516    #[doc = " 3D tensor blocked by 2nd dimension with block size 4"]
517    pub const dnnl_ABc4b16a4b: Type = 61;
518    #[doc = " 3D tensor blocked by 2nd dimension with block size 4"]
519    pub const dnnl_ABc2b8a4b: Type = 62;
520    #[doc = " 3D tensor blocked by 2nd dimension with block size 4"]
521    pub const dnnl_ABc16b16a4b: Type = 63;
522    #[doc = " 3D tensor blocked by 2nd dimension with block size 4"]
523    pub const dnnl_ABc16b16a2b: Type = 64;
524    #[doc = " 3D tensor blocked by 2nd dimension with block size 4"]
525    pub const dnnl_ABc4b4a: Type = 65;
526    #[doc = " 3D tensor blocked by 2nd dimension with block size 4"]
527    pub const dnnl_ABc8a16b2a: Type = 66;
528    #[doc = " 3D tensor blocked by 2nd dimension with block size 4"]
529    pub const dnnl_ABc8a8b: Type = 67;
530    #[doc = " 3D tensor blocked by 2nd dimension with block size 4"]
531    pub const dnnl_ABc8a4b: Type = 68;
532    #[doc = " 3D tensor blocked by 2nd dimension with block size 8"]
533    pub const dnnl_aBc8b: Type = 69;
534    #[doc = " 3D tensor blocked by 2nd dimension with block size 8"]
535    pub const dnnl_ABc8b16a2b: Type = 70;
536    #[doc = " 3D tensor blocked by 2nd dimension with block size 8"]
537    pub const dnnl_BAc8a16b2a: Type = 71;
538    #[doc = " 3D tensor blocked by 2nd dimension with block size 8"]
539    pub const dnnl_ABc8b8a: Type = 72;
540    #[doc = " 3D tensor blocked by 2nd dimension with block size 8"]
541    pub const dnnl_Abcd16a: Type = 73;
542    #[doc = " 3D tensor blocked by 2nd dimension with block size 8"]
543    pub const dnnl_Abcd8a: Type = 74;
544    #[doc = " 3D tensor blocked by 2nd dimension with block size 8"]
545    pub const dnnl_ABcd16a16b: Type = 75;
546    #[doc = " 3D tensor blocked by 2nd dimension with block size 8"]
547    pub const dnnl_Abcd32a: Type = 76;
548    #[doc = " 3D tensor blocked by 2nd dimension with block size 8"]
549    pub const dnnl_ABcd32a32b: Type = 77;
550    #[doc = " 4D tensor blocked by 2nd dimension with block size 16"]
551    pub const dnnl_aBcd16b: Type = 78;
552    #[doc = " 4D tensor blocked by 2nd dimension with block size 16"]
553    pub const dnnl_ABcd16b16a: Type = 79;
554    #[doc = " 4D tensor blocked by 2nd dimension with block size 16"]
555    pub const dnnl_aBCd16b16c: Type = 80;
556    #[doc = " 4D tensor blocked by 2nd dimension with block size 16"]
557    pub const dnnl_aBCd16c16b: Type = 81;
558    #[doc = " 4D tensor blocked by 2nd dimension with block size 16"]
559    pub const dnnl_Abcd4a: Type = 82;
560    #[doc = " 4D tensor blocked by 2nd dimension with block size 32"]
561    pub const dnnl_aBcd32b: Type = 83;
562    #[doc = " 4D tensor blocked by 2nd dimension with block size 4"]
563    pub const dnnl_aBcd4b: Type = 84;
564    #[doc = " 4D tensor blocked by 2nd dimension with block size 4"]
565    pub const dnnl_ABcd4b16a4b: Type = 85;
566    #[doc = " 4D tensor blocked by 2nd dimension with block size 4"]
567    pub const dnnl_ABcd16b16a4b: Type = 86;
568    #[doc = " 4D tensor blocked by 2nd dimension with block size 4"]
569    pub const dnnl_ABcd16b16a2b: Type = 87;
570    #[doc = " 4D tensor blocked by 2nd dimension with block size 4"]
571    pub const dnnl_ABcd4b4a: Type = 88;
572    #[doc = " 4D tensor blocked by 2nd dimension with block size 4"]
573    pub const dnnl_ABcd4a4b: Type = 89;
574    #[doc = " 4D tensor blocked by 2nd dimension with block size 4"]
575    pub const dnnl_aBCd2c4b2c: Type = 90;
576    #[doc = " 4D tensor blocked by 2nd dimension with block size 4"]
577    pub const dnnl_aBCd4b8c2b: Type = 91;
578    #[doc = " 4D tensor blocked by 2nd dimension with block size 4"]
579    pub const dnnl_aBCd4c16b4c: Type = 92;
580    #[doc = " 4D tensor blocked by 2nd dimension with block size 4"]
581    pub const dnnl_aBCd2c8b4c: Type = 93;
582    #[doc = " 4D tensor blocked by 2nd dimension with block size 4"]
583    pub const dnnl_aBCd16c16b4c: Type = 94;
584    #[doc = " 4D tensor blocked by 2nd dimension with block size 4"]
585    pub const dnnl_aBCd16c16b2c: Type = 95;
586    #[doc = " 4D tensor blocked by 2nd dimension with block size 4"]
587    pub const dnnl_aBCd4c4b: Type = 96;
588    #[doc = " 4D tensor blocked by 2nd dimension with block size 4"]
589    pub const dnnl_aBCd4b4c: Type = 97;
590    #[doc = " 4D tensor blocked by 2nd dimension with block size 4"]
591    pub const dnnl_ABcd8a16b2a: Type = 98;
592    #[doc = " 4D tensor blocked by 2nd dimension with block size 4"]
593    pub const dnnl_ABcd2b8a4b: Type = 99;
594    #[doc = " 4D tensor blocked by 2nd dimension with block size 4"]
595    pub const dnnl_ABcd8a8b: Type = 100;
596    #[doc = " 4D tensor blocked by 2nd dimension with block size 4"]
597    pub const dnnl_ABcd8a4b: Type = 101;
598    #[doc = " 4D tensor blocked by 2nd dimension with block size 8"]
599    pub const dnnl_aBcd8b: Type = 102;
600    #[doc = " 4D tensor blocked by 2nd dimension with block size 8"]
601    pub const dnnl_aBCd4c8b2c: Type = 103;
602    #[doc = " 4D tensor blocked by 2nd dimension with block size 8"]
603    pub const dnnl_ABcd8b16a2b: Type = 104;
604    #[doc = " 4D tensor blocked by 2nd dimension with block size 8"]
605    pub const dnnl_aBCd8b16c2b: Type = 105;
606    #[doc = " 4D tensor blocked by 2nd dimension with block size 8"]
607    pub const dnnl_BAcd8a16b2a: Type = 106;
608    #[doc = " 4D tensor blocked by 1st and 2nd dimension with block size 8"]
609    pub const dnnl_ABcd8b8a: Type = 107;
610    #[doc = " 4D tensor blocked by 1st and 2nd dimension with block size 8"]
611    pub const dnnl_aBCd8b8c: Type = 108;
612    #[doc = " 4D tensor blocked by 1st and 2nd dimension with block size 8"]
613    pub const dnnl_aBCd8b4c: Type = 109;
614    #[doc = " 4D tensor blocked by 1st and 2nd dimension with block size 8"]
615    pub const dnnl_aBCd8c16b2c: Type = 110;
616    #[doc = " 4D tensor blocked by 1st and 2nd dimension with block size 8"]
617    pub const dnnl_ABcde8a16b2a: Type = 111;
618    #[doc = " 4D tensor blocked by 1st and 2nd dimension with block size 8"]
619    pub const dnnl_aCBd8b16c2b: Type = 112;
620    #[doc = " 4D tensor blocked by 1st and 2nd dimension with block size 8"]
621    pub const dnnl_aBCd8c8b: Type = 113;
622    #[doc = " 4D tensor blocked by 1st and 2nd dimension with block size 8"]
623    pub const dnnl_Abcde16a: Type = 114;
624    #[doc = " 4D tensor blocked by 1st and 2nd dimension with block size 8"]
625    pub const dnnl_Abcde32a: Type = 115;
626    #[doc = " 4D tensor blocked by 1st and 2nd dimension with block size 8"]
627    pub const dnnl_ABcde16a16b: Type = 116;
628    #[doc = " 4D tensor blocked by 1st and 2nd dimension with block size 8"]
629    pub const dnnl_BAcde8a16b2a: Type = 117;
630    #[doc = " 4D tensor blocked by 3rd dimension with block size 4"]
631    pub const dnnl_aBCd2b4c2b: Type = 118;
632    #[doc = " 5D tensor blocked by 1st dimension with block size 16"]
633    pub const dnnl_ABcde4b16a4b: Type = 119;
634    #[doc = " 5D tensor blocked by 1st dimension with block size 8"]
635    pub const dnnl_ABcde2b8a4b: Type = 120;
636    #[doc = " 5D tensor blocked by 2nd dimension with block size 16"]
637    pub const dnnl_aBcde16b: Type = 121;
638    #[doc = " 5D tensor blocked by 2nd dimension with block size 16"]
639    pub const dnnl_ABcde16b16a: Type = 122;
640    #[doc = " 5D tensor blocked by 2nd dimension with block size 16"]
641    pub const dnnl_aBCde16b16c: Type = 123;
642    #[doc = " 5D tensor blocked by 2nd dimension with block size 16"]
643    pub const dnnl_aBCde16c16b: Type = 124;
644    #[doc = " 5D tensor blocked by 2nd dimension with block size 16"]
645    pub const dnnl_aBCde2c8b4c: Type = 125;
646    #[doc = " 5D tensor blocked by 2nd dimension with block size 16"]
647    pub const dnnl_Abcde4a: Type = 126;
648    #[doc = " 5D tensor blocked by 2nd dimension with block size 32"]
649    pub const dnnl_aBcde32b: Type = 127;
650    #[doc = " 5D tensor blocked by 2nd dimension with block size 4"]
651    pub const dnnl_aBcde4b: Type = 128;
652    #[doc = " 5D tensor blocked by 2nd dimension with block size 4"]
653    pub const dnnl_ABcde4b4a: Type = 129;
654    #[doc = " 5D tensor blocked by 2nd dimension with block size 4"]
655    pub const dnnl_ABcde4a4b: Type = 130;
656    #[doc = " 5D tensor blocked by 2nd dimension with block size 4"]
657    pub const dnnl_aBCde4b4c: Type = 131;
658    #[doc = " 5D tensor blocked by 2nd dimension with block size 4"]
659    pub const dnnl_aBCde2c4b2c: Type = 132;
660    #[doc = " 5D tensor blocked by 2nd dimension with block size 4"]
661    pub const dnnl_aBCde4b8c2b: Type = 133;
662    #[doc = " 5D tensor blocked by 2nd dimension with block size 4"]
663    pub const dnnl_aBCde4c16b4c: Type = 134;
664    #[doc = " 5D tensor blocked by 2nd dimension with block size 4"]
665    pub const dnnl_aBCde16c16b4c: Type = 135;
666    #[doc = " 5D tensor blocked by 2nd dimension with block size 4"]
667    pub const dnnl_aBCde16c16b2c: Type = 136;
668    #[doc = " 5D tensor blocked by 2nd dimension with block size 4"]
669    pub const dnnl_aBCde4c4b: Type = 137;
670    #[doc = " 5D tensor blocked by 2nd dimension with block size 4"]
671    pub const dnnl_Abcde8a: Type = 138;
672    #[doc = " 5D tensor blocked by 2nd dimension with block size 4"]
673    pub const dnnl_ABcde8a8b: Type = 139;
674    #[doc = " 5D tensor blocked by 2nd dimension with block size 4"]
675    pub const dnnl_ABcde8a4b: Type = 140;
676    #[doc = " 5D tensor blocked by 2nd dimension with block size 4"]
677    pub const dnnl_BAcde16b16a: Type = 141;
678    #[doc = " 5D tensor blocked by 2nd dimension with block size 8"]
679    pub const dnnl_aBcde8b: Type = 142;
680    #[doc = " 5D tensor blocked by 2nd dimension with block size 8"]
681    pub const dnnl_ABcde8b16a2b: Type = 143;
682    #[doc = " 5D tensor blocked by 2nd dimension with block size 8"]
683    pub const dnnl_aBCde8b16c2b: Type = 144;
684    #[doc = " 5D tensor blocked by 2nd dimension with block size 8"]
685    pub const dnnl_aBCde4c8b2c: Type = 145;
686    #[doc = " 5D tensor blocked by 2nd dimension with block size 8"]
687    pub const dnnl_aCBde8b16c2b: Type = 146;
688    #[doc = " 5D tensor blocked by 2nd dimension with block size 8"]
689    pub const dnnl_ABcde8b8a: Type = 147;
690    #[doc = " 5D tensor blocked by 2nd dimension with block size 8"]
691    pub const dnnl_ABcde32a32b: Type = 148;
692    #[doc = " 5D tensor blocked by 2nd dimension with block size 8"]
693    pub const dnnl_aBCde8b8c: Type = 149;
694    #[doc = " 5D tensor blocked by 2nd dimension with block size 8"]
695    pub const dnnl_aBCde8b4c: Type = 150;
696    #[doc = " 5D tensor blocked by 2nd dimension with block size 8"]
697    pub const dnnl_ABc4a8b8a4b: Type = 151;
698    #[doc = " 5D tensor blocked by 2nd dimension with block size 8"]
699    pub const dnnl_ABcd4a8b8a4b: Type = 152;
700    #[doc = " 5D tensor blocked by 2nd dimension with block size 8"]
701    pub const dnnl_ABcde4a8b8a4b: Type = 153;
702    #[doc = " 5D tensor blocked by 2nd dimension with block size 8"]
703    pub const dnnl_BAc4b8a8b4a: Type = 154;
704    #[doc = " 5D tensor blocked by 2nd dimension with block size 8"]
705    pub const dnnl_BAcd4b8a8b4a: Type = 155;
706    #[doc = " 5D tensor blocked by 2nd dimension with block size 8"]
707    pub const dnnl_BAcde4b8a8b4a: Type = 156;
708    #[doc = " 5D tensor blocked by 2nd dimension with block size 8"]
709    pub const dnnl_ABcd2a8b8a2b: Type = 157;
710    #[doc = " 5D tensor blocked by 2nd dimension with block size 8"]
711    pub const dnnl_aBCd4b8c8b4c: Type = 158;
712    #[doc = " 5D tensor blocked by 2nd dimension with block size 8"]
713    pub const dnnl_aBCde4b8c8b4c: Type = 159;
714    #[doc = " 5D tensor blocked by 2nd dimension with block size 8"]
715    pub const dnnl_aBCde2b8c8b2c: Type = 160;
716    #[doc = " 5D tensor blocked by 2nd dimension with block size 8"]
717    pub const dnnl_aBCde8c16b2c: Type = 161;
718    #[doc = " 5D tensor blocked by 2nd dimension with block size 8"]
719    pub const dnnl_aBCde8c8b: Type = 162;
720    #[doc = " 5D tensor blocked by 3rd dimension with block size 4"]
721    pub const dnnl_aBCde2b4c2b: Type = 163;
722    #[doc = " 6D tensor blocked by 2nd dimension with block size 16"]
723    pub const dnnl_aBcdef16b: Type = 164;
724    #[doc = " 6D tensor blocked by 2nd dimension with block size 16"]
725    pub const dnnl_aBCdef16b16c: Type = 165;
726    #[doc = " 6D tensor blocked by 2nd dimension with block size 16"]
727    pub const dnnl_aBCdef16c16b: Type = 166;
728    #[doc = " 6D tensor blocked by 2nd dimension with block size 16"]
729    pub const dnnl_aBCdef4c16b4c: Type = 167;
730    #[doc = " 6D tensor blocked by 2nd dimension with block size 8"]
731    pub const dnnl_aBCdef2c8b4c: Type = 168;
732    #[doc = " 6D tensor blocked by 2nd dimension with block size 8"]
733    pub const dnnl_aBCdef4c8b2c: Type = 169;
734    #[doc = " 6D tensor blocked by 3rd dimension with block size 4"]
735    pub const dnnl_aBCdef2b4c2b: Type = 170;
736    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
737    pub const dnnl_aBcdef4b: Type = 171;
738    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
739    pub const dnnl_aBCdef4c4b: Type = 172;
740    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
741    pub const dnnl_aBCdef4b4c: Type = 173;
742    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
743    pub const dnnl_aBCdef2c4b2c: Type = 174;
744    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
745    pub const dnnl_aBCdef4b8c2b: Type = 175;
746    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
747    pub const dnnl_aBCdef8b8c: Type = 176;
748    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
749    pub const dnnl_aBCdef8b4c: Type = 177;
750    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
751    pub const dnnl_aBCdef8c16b2c: Type = 178;
752    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
753    pub const dnnl_aBCdef4b8c8b4c: Type = 179;
754    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
755    pub const dnnl_aBCdef8b16c2b: Type = 180;
756    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
757    pub const dnnl_aCBdef8b16c2b: Type = 181;
758    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
759    pub const dnnl_aBCdef8c8b: Type = 182;
760    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
761    pub const dnnl_aBdc16b: Type = 183;
762    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
763    pub const dnnl_aBdC16b2c: Type = 184;
764    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
765    pub const dnnl_aBdC16b4c: Type = 185;
766    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
767    pub const dnnl_aBdc4b: Type = 186;
768    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
769    pub const dnnl_aBdc8b: Type = 187;
770    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
771    pub const dnnl_aBdec16b: Type = 188;
772    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
773    pub const dnnl_aBdeC16b2c: Type = 189;
774    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
775    pub const dnnl_aBdeC16b4c: Type = 190;
776    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
777    pub const dnnl_aBdec32b: Type = 191;
778    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
779    pub const dnnl_aBdec4b: Type = 192;
780    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
781    pub const dnnl_aBdec8b: Type = 193;
782    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
783    pub const dnnl_aBdefc16b: Type = 194;
784    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
785    pub const dnnl_aBdefC16b2c: Type = 195;
786    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
787    pub const dnnl_aCBdef16c16b: Type = 196;
788    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
789    pub const dnnl_aBdefc4b: Type = 197;
790    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
791    pub const dnnl_aBdefc8b: Type = 198;
792    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
793    pub const dnnl_Abcdef16a: Type = 199;
794    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
795    pub const dnnl_Abcdef32a: Type = 200;
796    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
797    pub const dnnl_aBedc16b: Type = 201;
798    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
799    pub const dnnl_Acb16a: Type = 202;
800    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
801    pub const dnnl_AcB16a2b: Type = 203;
802    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
803    pub const dnnl_AcB16a4b: Type = 204;
804    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
805    pub const dnnl_Acb4a: Type = 205;
806    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
807    pub const dnnl_Acb8a: Type = 206;
808    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
809    pub const dnnl_aCBd16b16c: Type = 207;
810    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
811    pub const dnnl_aCBd16c16b: Type = 208;
812    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
813    pub const dnnl_aCBde16b16c: Type = 209;
814    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
815    pub const dnnl_aCBde16c16b: Type = 210;
816    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
817    pub const dnnl_Acdb16a: Type = 211;
818    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
819    pub const dnnl_AcdB16a2b: Type = 212;
820    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
821    pub const dnnl_AcdB16a4b: Type = 213;
822    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
823    pub const dnnl_Acdb32a: Type = 214;
824    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
825    pub const dnnl_Acdb4a: Type = 215;
826    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
827    pub const dnnl_Acdb8a: Type = 216;
828    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
829    pub const dnnl_Acdeb16a: Type = 217;
830    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
831    pub const dnnl_AcdeB16a2b: Type = 218;
832    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
833    pub const dnnl_Acdeb4a: Type = 219;
834    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
835    pub const dnnl_Acdeb8a: Type = 220;
836    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
837    pub const dnnl_Adcb16a: Type = 221;
838    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
839    pub const dnnl_BAc16a16b: Type = 222;
840    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
841    pub const dnnl_BAc16b16a: Type = 223;
842    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
843    pub const dnnl_BAcd16a16b: Type = 224;
844    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
845    pub const dnnl_BAcd16b16a: Type = 225;
846    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
847    pub const dnnl_aCBd4c8b8c4b: Type = 226;
848    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
849    pub const dnnl_aCBde4c8b8c4b: Type = 227;
850    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
851    pub const dnnl_aCBdef4c8b8c4b: Type = 228;
852    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
853    pub const dnnl_BAcde16a16b: Type = 229;
854    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
855    pub const dnnl_aCBdef16b16c: Type = 230;
856    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
857    pub const dnnl_ABc16b32a: Type = 231;
858    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
859    pub const dnnl_ABc16b64a: Type = 232;
860    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
861    pub const dnnl_ABc4b32a4b: Type = 233;
862    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
863    pub const dnnl_ABc4b64a4b: Type = 234;
864    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
865    pub const dnnl_ABc8b32a2b: Type = 235;
866    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
867    pub const dnnl_ABc8b64a2b: Type = 236;
868    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
869    pub const dnnl_AB16b16a: Type = 237;
870    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
871    pub const dnnl_AB16b32a: Type = 238;
872    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
873    pub const dnnl_AB16b64a: Type = 239;
874    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
875    pub const dnnl_AB8b16a2b: Type = 240;
876    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
877    pub const dnnl_AB8b32a2b: Type = 241;
878    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
879    pub const dnnl_AB8b64a2b: Type = 242;
880    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
881    pub const dnnl_AB4b16a4b: Type = 243;
882    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
883    pub const dnnl_AB4b32a4b: Type = 244;
884    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
885    pub const dnnl_AB4b64a4b: Type = 245;
886    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
887    pub const dnnl_AB16b16a4b: Type = 246;
888    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
889    pub const dnnl_ABcd16b32a: Type = 247;
890    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
891    pub const dnnl_ABcd16b64a: Type = 248;
892    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
893    pub const dnnl_ABcd4b32a4b: Type = 249;
894    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
895    pub const dnnl_ABcd4b64a4b: Type = 250;
896    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
897    pub const dnnl_ABcd8b32a2b: Type = 251;
898    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
899    pub const dnnl_ABcd8b64a2b: Type = 252;
900    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
901    pub const dnnl_ABcde4b32a4b: Type = 253;
902    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
903    pub const dnnl_ABcde4b64a4b: Type = 254;
904    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
905    pub const dnnl_ABcde16b16a4b: Type = 255;
906    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
907    pub const dnnl_ABcde16b16a2b: Type = 256;
908    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
909    pub const dnnl_ABcde16b32a: Type = 257;
910    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
911    pub const dnnl_ABcde16b64a: Type = 258;
912    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
913    pub const dnnl_ABcde8b32a2b: Type = 259;
914    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
915    pub const dnnl_ABcde8b64a2b: Type = 260;
916    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
917    pub const dnnl_aBCdef16c16b4c: Type = 261;
918    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
919    pub const dnnl_aBCdef16c16b2c: Type = 262;
920    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
921    pub const dnnl_AB32a32b8a4b: Type = 263;
922    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
923    pub const dnnl_AB8a4b: Type = 264;
924    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
925    pub const dnnl_AB32a32b8a2b: Type = 265;
926    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
927    pub const dnnl_AB8a2b: Type = 266;
928    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
929    pub const dnnl_abDc32d: Type = 267;
930    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
931    pub const dnnl_abDC32d4c: Type = 268;
932    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
933    pub const dnnl_abdEc32e: Type = 269;
934    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
935    pub const dnnl_abdEC32e2c: Type = 270;
936    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
937    pub const dnnl_abdEC32e4c: Type = 271;
938    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
939    pub const dnnl_aBdefC16b4c: Type = 272;
940    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
941    pub const dnnl_AcdeB16a4b: Type = 273;
942    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
943    pub const dnnl_ABcd16a16b2a: Type = 274;
944    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
945    pub const dnnl_ABc16a16b2a: Type = 275;
946    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
947    pub const dnnl_aBCd16b16c2b: Type = 276;
948    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
949    pub const dnnl_aBCde16b16c2b: Type = 277;
950    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
951    pub const dnnl_Acb32a: Type = 278;
952    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
953    pub const dnnl_AcB32a2b: Type = 279;
954    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
955    pub const dnnl_AcB32a4b: Type = 280;
956    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
957    pub const dnnl_Acb48a: Type = 281;
958    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
959    pub const dnnl_AcB48a2b: Type = 282;
960    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
961    pub const dnnl_AcB48a4b: Type = 283;
962    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
963    pub const dnnl_Acb64a: Type = 284;
964    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
965    pub const dnnl_AcB64a2b: Type = 285;
966    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
967    pub const dnnl_AcB64a4b: Type = 286;
968    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
969    pub const dnnl_cBa2b: Type = 287;
970    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
971    pub const dnnl_cBa4b: Type = 288;
972    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
973    pub const dnnl_aBdc32b: Type = 289;
974    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
975    pub const dnnl_aBdC32b2c: Type = 290;
976    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
977    pub const dnnl_aBdC32b4c: Type = 291;
978    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
979    pub const dnnl_aBdc48b: Type = 292;
980    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
981    pub const dnnl_aBdC48b2c: Type = 293;
982    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
983    pub const dnnl_aBdC48b4c: Type = 294;
984    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
985    pub const dnnl_aBdc64b: Type = 295;
986    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
987    pub const dnnl_aBdC64b2c: Type = 296;
988    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
989    pub const dnnl_aBdC64b4c: Type = 297;
990    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
991    pub const dnnl_adCb2c: Type = 298;
992    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
993    pub const dnnl_adCb4c: Type = 299;
994    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
995    pub const dnnl_AcdB32a2b: Type = 300;
996    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
997    pub const dnnl_AcdB32a4b: Type = 301;
998    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
999    pub const dnnl_Acdb48a: Type = 302;
1000    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1001    pub const dnnl_AcdB48a2b: Type = 303;
1002    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1003    pub const dnnl_AcdB48a4b: Type = 304;
1004    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1005    pub const dnnl_Acdb64a: Type = 305;
1006    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1007    pub const dnnl_AcdB64a2b: Type = 306;
1008    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1009    pub const dnnl_AcdB64a4b: Type = 307;
1010    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1011    pub const dnnl_cdBa2b: Type = 308;
1012    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1013    pub const dnnl_cdBa4b: Type = 309;
1014    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1015    pub const dnnl_aBdeC32b2c: Type = 310;
1016    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1017    pub const dnnl_aBdeC32b4c: Type = 311;
1018    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1019    pub const dnnl_aBdec48b: Type = 312;
1020    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1021    pub const dnnl_aBdeC48b2c: Type = 313;
1022    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1023    pub const dnnl_aBdeC48b4c: Type = 314;
1024    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1025    pub const dnnl_aBdec64b: Type = 315;
1026    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1027    pub const dnnl_aBdeC64b2c: Type = 316;
1028    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1029    pub const dnnl_aBdeC64b4c: Type = 317;
1030    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1031    pub const dnnl_adeCb2c: Type = 318;
1032    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1033    pub const dnnl_adeCb4c: Type = 319;
1034    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1035    pub const dnnl_Acdeb32a: Type = 320;
1036    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1037    pub const dnnl_AcdeB32a2b: Type = 321;
1038    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1039    pub const dnnl_AcdeB32a4b: Type = 322;
1040    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1041    pub const dnnl_Acdeb48a: Type = 323;
1042    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1043    pub const dnnl_AcdeB48a2b: Type = 324;
1044    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1045    pub const dnnl_AcdeB48a4b: Type = 325;
1046    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1047    pub const dnnl_Acdeb64a: Type = 326;
1048    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1049    pub const dnnl_AcdeB64a2b: Type = 327;
1050    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1051    pub const dnnl_AcdeB64a4b: Type = 328;
1052    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1053    pub const dnnl_cdeBa2b: Type = 329;
1054    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1055    pub const dnnl_cdeBa4b: Type = 330;
1056    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1057    pub const dnnl_aBdefc32b: Type = 331;
1058    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1059    pub const dnnl_aBdefC32b2c: Type = 332;
1060    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1061    pub const dnnl_aBdefC32b4c: Type = 333;
1062    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1063    pub const dnnl_aBdefc48b: Type = 334;
1064    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1065    pub const dnnl_aBdefC48b2c: Type = 335;
1066    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1067    pub const dnnl_aBdefC48b4c: Type = 336;
1068    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1069    pub const dnnl_aBdefc64b: Type = 337;
1070    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1071    pub const dnnl_aBdefC64b2c: Type = 338;
1072    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1073    pub const dnnl_aBdefC64b4c: Type = 339;
1074    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1075    pub const dnnl_adefCb2c: Type = 340;
1076    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1077    pub const dnnl_adefCb4c: Type = 341;
1078    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1079    pub const dnnl_AB16b32a4b: Type = 342;
1080    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1081    pub const dnnl_AB16b48a4b: Type = 343;
1082    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1083    pub const dnnl_AB16b64a4b: Type = 344;
1084    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1085    pub const dnnl_AB16b16a2b: Type = 345;
1086    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1087    pub const dnnl_AB16b32a2b: Type = 346;
1088    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1089    pub const dnnl_AB16b48a2b: Type = 347;
1090    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1091    pub const dnnl_AB16b64a2b: Type = 348;
1092    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1093    pub const dnnl_ABc16b32a4b: Type = 349;
1094    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1095    pub const dnnl_ABc16b48a4b: Type = 350;
1096    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1097    pub const dnnl_ABc16b64a4b: Type = 351;
1098    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1099    pub const dnnl_ABc16b32a2b: Type = 352;
1100    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1101    pub const dnnl_ABc16b48a2b: Type = 353;
1102    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1103    pub const dnnl_ABc16b64a2b: Type = 354;
1104    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1105    pub const dnnl_ABcd16b32a4b: Type = 355;
1106    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1107    pub const dnnl_ABcd16b48a4b: Type = 356;
1108    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1109    pub const dnnl_ABcd16b64a4b: Type = 357;
1110    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1111    pub const dnnl_ABcd16b32a2b: Type = 358;
1112    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1113    pub const dnnl_ABcd16b48a2b: Type = 359;
1114    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1115    pub const dnnl_ABcd16b64a2b: Type = 360;
1116    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1117    pub const dnnl_ABcde16b32a4b: Type = 361;
1118    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1119    pub const dnnl_ABcde16b48a4b: Type = 362;
1120    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1121    pub const dnnl_ABcde16b64a4b: Type = 363;
1122    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1123    pub const dnnl_ABcde16b32a2b: Type = 364;
1124    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1125    pub const dnnl_ABcde16b48a2b: Type = 365;
1126    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1127    pub const dnnl_ABcde16b64a2b: Type = 366;
1128    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1129    pub const dnnl_ABc32a16b: Type = 367;
1130    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1131    pub const dnnl_ABcd32a16b: Type = 368;
1132    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1133    pub const dnnl_ABcde32a16b: Type = 369;
1134    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1135    pub const dnnl_AB48a16b: Type = 370;
1136    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1137    pub const dnnl_AB48a32b: Type = 371;
1138    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1139    pub const dnnl_ABc40a16b: Type = 372;
1140    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1141    pub const dnnl_ABc40a32b: Type = 373;
1142    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1143    pub const dnnl_aBC48b16c: Type = 374;
1144    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1145    pub const dnnl_aBC48b32c: Type = 375;
1146    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1147    pub const dnnl_ABcd40a16b: Type = 376;
1148    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1149    pub const dnnl_ABcd40a32b: Type = 377;
1150    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1151    pub const dnnl_abCd32c: Type = 378;
1152    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1153    pub const dnnl_abdCe32c: Type = 379;
1154    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1155    pub const dnnl_abdCE32c2e: Type = 380;
1156    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1157    pub const dnnl_BA16a16b2a: Type = 381;
1158    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1159    pub const dnnl_BA16a32b2a: Type = 382;
1160    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1161    pub const dnnl_BA16a48b2a: Type = 383;
1162    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1163    pub const dnnl_BA16a64b2a: Type = 384;
1164    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1165    pub const dnnl_BA16a16b4a: Type = 385;
1166    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1167    pub const dnnl_BA16a32b4a: Type = 386;
1168    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1169    pub const dnnl_BA16a48b4a: Type = 387;
1170    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1171    pub const dnnl_BA16a64b4a: Type = 388;
1172    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1173    pub const dnnl_ABcd8a2b: Type = 389;
1174    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1175    pub const dnnl_aBdeC16c16b2c: Type = 390;
1176    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1177    pub const dnnl_aBdeC16c16b4c: Type = 391;
1178    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1179    pub const dnnl_aBdefC16c16b2c: Type = 392;
1180    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1181    pub const dnnl_AcB16b16a2b: Type = 393;
1182    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1183    pub const dnnl_AcB16b16a4b: Type = 394;
1184    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1185    pub const dnnl_AcdB16b16a2b: Type = 395;
1186    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1187    pub const dnnl_AcdB16b16a4b: Type = 396;
1188    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1189    pub const dnnl_AcdeB16b16a2b: Type = 397;
1190    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1191    pub const dnnl_aBdefC16c16b4c: Type = 398;
1192    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1193    pub const dnnl_AcdeB16b16a4b: Type = 399;
1194    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1195    pub const dnnl_AcB16b32a2b: Type = 400;
1196    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1197    pub const dnnl_AcB16b32a4b: Type = 401;
1198    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1199    pub const dnnl_AcB16b48a2b: Type = 402;
1200    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1201    pub const dnnl_AcB16b48a4b: Type = 403;
1202    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1203    pub const dnnl_AcB16b64a2b: Type = 404;
1204    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1205    pub const dnnl_AcB16b64a4b: Type = 405;
1206    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1207    pub const dnnl_aBdC16c16b2c: Type = 406;
1208    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1209    pub const dnnl_aBdC16c16b4c: Type = 407;
1210    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1211    pub const dnnl_aBdC16c32b2c: Type = 408;
1212    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1213    pub const dnnl_aBdC16c32b4c: Type = 409;
1214    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1215    pub const dnnl_aBdC16c48b2c: Type = 410;
1216    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1217    pub const dnnl_aBdC16c48b4c: Type = 411;
1218    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1219    pub const dnnl_aBdC16c64b2c: Type = 412;
1220    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1221    pub const dnnl_aBdC16c64b4c: Type = 413;
1222    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1223    pub const dnnl_AcdB16b32a2b: Type = 414;
1224    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1225    pub const dnnl_AcdB16b32a4b: Type = 415;
1226    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1227    pub const dnnl_AcdB16b48a2b: Type = 416;
1228    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1229    pub const dnnl_AcdB16b48a4b: Type = 417;
1230    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1231    pub const dnnl_AcdB16b64a2b: Type = 418;
1232    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1233    pub const dnnl_AcdB16b64a4b: Type = 419;
1234    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1235    pub const dnnl_aBdeC16c32b2c: Type = 420;
1236    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1237    pub const dnnl_aBdeC16c32b4c: Type = 421;
1238    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1239    pub const dnnl_aBdeC16c48b2c: Type = 422;
1240    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1241    pub const dnnl_aBdeC16c48b4c: Type = 423;
1242    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1243    pub const dnnl_aBdeC16c64b2c: Type = 424;
1244    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1245    pub const dnnl_aBdeC16c64b4c: Type = 425;
1246    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1247    pub const dnnl_AcdeB16b32a2b: Type = 426;
1248    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1249    pub const dnnl_AcdeB16b32a4b: Type = 427;
1250    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1251    pub const dnnl_AcdeB16b48a2b: Type = 428;
1252    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1253    pub const dnnl_AcdeB16b48a4b: Type = 429;
1254    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1255    pub const dnnl_AcdeB16b64a2b: Type = 430;
1256    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1257    pub const dnnl_AcdeB16b64a4b: Type = 431;
1258    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1259    pub const dnnl_aBdefC16c32b2c: Type = 432;
1260    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1261    pub const dnnl_aBdefC16c32b4c: Type = 433;
1262    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1263    pub const dnnl_aBdefC16c48b2c: Type = 434;
1264    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1265    pub const dnnl_aBdefC16c48b4c: Type = 435;
1266    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1267    pub const dnnl_aBdefC16c64b2c: Type = 436;
1268    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1269    pub const dnnl_aBdefC16c64b4c: Type = 437;
1270    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1271    pub const dnnl_decbA16a: Type = 438;
1272    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1273    pub const dnnl_ABc4a2b: Type = 439;
1274    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1275    pub const dnnl_ABc8a2b: Type = 440;
1276    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1277    pub const dnnl_aBCd8b2c: Type = 441;
1278    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1279    pub const dnnl_ABcde4a2b: Type = 442;
1280    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1281    pub const dnnl_ABcde8a2b: Type = 443;
1282    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1283    pub const dnnl_ABcde40a16b: Type = 444;
1284    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1285    pub const dnnl_ABcde40a32b: Type = 445;
1286    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1287    pub const dnnl_aBCde8b2c: Type = 446;
1288    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1289    pub const dnnl_ABcde4a8b8a2b: Type = 447;
1290    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1291    pub const dnnl_ABcd4a8b8a2b: Type = 448;
1292    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1293    pub const dnnl_ABc4a8b8a2b: Type = 449;
1294    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1295    pub const dnnl_aBCdef4b8c8b2c: Type = 450;
1296    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1297    pub const dnnl_aBCde4b8c8b2c: Type = 451;
1298    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1299    pub const dnnl_aBCd4b8c8b2c: Type = 452;
1300    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1301    pub const dnnl_BAcde4b8a8b2a: Type = 453;
1302    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1303    pub const dnnl_BAcd4b8a8b2a: Type = 454;
1304    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1305    pub const dnnl_BAc4b8a8b2a: Type = 455;
1306    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1307    pub const dnnl_aCBdef4c8b8c2b: Type = 456;
1308    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1309    pub const dnnl_aCBde4c8b8c2b: Type = 457;
1310    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1311    pub const dnnl_aCBd4c8b8c2b: Type = 458;
1312    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1313    pub const dnnl_aBCdef8b2c: Type = 459;
1314    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1315    pub const dnnl_AB32a16b: Type = 460;
1316    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1317    pub const dnnl_AB32a32b: Type = 461;
1318    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1319    pub const dnnl_BA4b8a8b2a: Type = 462;
1320    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1321    pub const dnnl_BA4b8a8b4a: Type = 463;
1322    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1323    pub const dnnl_aBC32b16c: Type = 464;
1324    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1325    pub const dnnl_aBC32b32c: Type = 465;
1326    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1327    pub const dnnl_aCB4c8b8c2b: Type = 466;
1328    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1329    pub const dnnl_aCB4c8b8c4b: Type = 467;
1330    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1331    pub const dnnl_ABcd4a2b: Type = 468;
1332    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1333    pub const dnnl_ABc2b8a16b4a: Type = 469;
1334    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1335    pub const dnnl_ABcd2b8a16b4a: Type = 470;
1336    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1337    pub const dnnl_ABcde2b8a16b4a: Type = 471;
1338    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1339    pub const dnnl_ABc2a8b16a4b: Type = 472;
1340    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1341    pub const dnnl_ABc2a8b16a2b: Type = 473;
1342    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1343    pub const dnnl_ABc2b32a8b: Type = 474;
1344    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1345    pub const dnnl_ABcd2a8b16a4b: Type = 475;
1346    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1347    pub const dnnl_ABcd2a8b16a2b: Type = 476;
1348    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1349    pub const dnnl_aCBd2c8b16c2b: Type = 477;
1350    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1351    pub const dnnl_ABcd2b32a8b: Type = 478;
1352    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1353    pub const dnnl_aBCd2c8b16c2b: Type = 479;
1354    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1355    pub const dnnl_ABcde2a8b16a4b: Type = 480;
1356    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1357    pub const dnnl_ABcde2a8b16a2b: Type = 481;
1358    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1359    pub const dnnl_aCBde2c8b16c2b: Type = 482;
1360    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1361    pub const dnnl_ABcde2b32a8b: Type = 483;
1362    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1363    pub const dnnl_aBC2b8c16b2c: Type = 484;
1364    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1365    pub const dnnl_aBCd2b8c16b2c: Type = 485;
1366    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1367    pub const dnnl_aBCde2b8c16b2c: Type = 486;
1368    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1369    pub const dnnl_aBCdef2b8c16b2c: Type = 487;
1370    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1371    pub const dnnl_BAcde2b8a16b4a: Type = 488;
1372    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1373    pub const dnnl_BAcd2b8a16b4a: Type = 489;
1374    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1375    pub const dnnl_BAc2b8a16b4a: Type = 490;
1376    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1377    pub const dnnl_BAcde2b8a16b2a: Type = 491;
1378    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1379    pub const dnnl_BAcd2b8a16b2a: Type = 492;
1380    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1381    pub const dnnl_BAc2b8a16b2a: Type = 493;
1382    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1383    pub const dnnl_aBCde2c8b16c2b: Type = 494;
1384    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1385    pub const dnnl_aBCdef2c8b16c2b: Type = 495;
1386    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1387    pub const dnnl_aCBdef2c8b16c2b: Type = 496;
1388    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1389    pub const dnnl_aBCd2b8c16b4c: Type = 497;
1390    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1391    pub const dnnl_aBCde2b8c16b4c: Type = 498;
1392    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1393    pub const dnnl_BA4b8a16b2a: Type = 499;
1394    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1395    pub const dnnl_BA4b8a16b4a: Type = 500;
1396    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1397    pub const dnnl_aCB4c8b16c2b: Type = 501;
1398    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1399    pub const dnnl_aCB4c8b16c4b: Type = 502;
1400    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1401    pub const dnnl_BA16a16b: Type = 503;
1402    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1403    pub const dnnl_BA16a32b: Type = 504;
1404    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1405    pub const dnnl_BA16a48b: Type = 505;
1406    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1407    pub const dnnl_BA16a64b: Type = 506;
1408    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1409    pub const dnnl_aCB16c2b: Type = 507;
1410    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1411    pub const dnnl_aCB16c4b: Type = 508;
1412    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1413    pub const dnnl_BA16b2a: Type = 509;
1414    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1415    pub const dnnl_BA16b4a: Type = 510;
1416    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1417    pub const dnnl_aBC16b16c: Type = 511;
1418    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1419    pub const dnnl_aBC16b32c: Type = 512;
1420    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1421    pub const dnnl_AB16a16b: Type = 513;
1422    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1423    pub const dnnl_AB16a32b: Type = 514;
1424    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1425    pub const dnnl_ABcde16a16b2a: Type = 515;
1426    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1427    pub const dnnl_aBCdef16b16c2b: Type = 516;
1428    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1429    pub const dnnl_Acedb16a: Type = 517;
1430    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1431    pub const dnnl_aBdfec16b: Type = 518;
1432    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1433    pub const dnnl_abdEC64e2c: Type = 519;
1434    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1435    pub const dnnl_abdEC64e4c: Type = 520;
1436    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1437    pub const dnnl_aCB16b16c: Type = 521;
1438    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1439    pub const dnnl_aCB16b32c: Type = 522;
1440    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1441    pub const dnnl_aCB16b48c: Type = 523;
1442    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1443    pub const dnnl_aCB16b64c: Type = 524;
1444    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1445    pub const dnnl_aCB16b16c2b: Type = 525;
1446    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1447    pub const dnnl_aCB16b32c2b: Type = 526;
1448    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1449    pub const dnnl_aCB16b48c2b: Type = 527;
1450    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1451    pub const dnnl_aCB16b64c2b: Type = 528;
1452    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1453    pub const dnnl_aCB16b16c4b: Type = 529;
1454    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1455    pub const dnnl_aCB16b32c4b: Type = 530;
1456    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1457    pub const dnnl_aCB16b48c4b: Type = 531;
1458    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1459    pub const dnnl_aCB16b64c4b: Type = 532;
1460    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1461    pub const dnnl_abCd4c: Type = 533;
1462    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1463    pub const dnnl_abCde4c: Type = 534;
1464    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1465    pub const dnnl_abCdef4c: Type = 535;
1466    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1467    pub const dnnl_abCde32c: Type = 536;
1468    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1469    pub const dnnl_abCdef32c: Type = 537;
1470    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1471    pub const dnnl_ABcd16a32b: Type = 538;
1472    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1473    pub const dnnl_decbA8a: Type = 539;
1474    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1475    pub const dnnl_aCdefB16b32c2b: Type = 540;
1476    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1477    pub const dnnl_aCdefB16b32c4b: Type = 541;
1478    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1479    pub const dnnl_aCdefB16b48c2b: Type = 542;
1480    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1481    pub const dnnl_aCdefB16b48c4b: Type = 543;
1482    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1483    pub const dnnl_aCdefB16b64c2b: Type = 544;
1484    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1485    pub const dnnl_aCdefB16b64c4b: Type = 545;
1486    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1487    pub const dnnl_BcdeA16a32b2a: Type = 546;
1488    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1489    pub const dnnl_BcdeA16a32b4a: Type = 547;
1490    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1491    pub const dnnl_BcdeA16a48b2a: Type = 548;
1492    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1493    pub const dnnl_BcdeA16a48b4a: Type = 549;
1494    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1495    pub const dnnl_BcdeA16a64b2a: Type = 550;
1496    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1497    pub const dnnl_BcdeA16a64b4a: Type = 551;
1498    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1499    pub const dnnl_aCdefb32c: Type = 552;
1500    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1501    pub const dnnl_aCdefB32c2b: Type = 553;
1502    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1503    pub const dnnl_aCdefB32c4b: Type = 554;
1504    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1505    pub const dnnl_aCdefb48c: Type = 555;
1506    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1507    pub const dnnl_aCdefB48c2b: Type = 556;
1508    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1509    pub const dnnl_aCdefB48c4b: Type = 557;
1510    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1511    pub const dnnl_aCdefb64c: Type = 558;
1512    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1513    pub const dnnl_aCdefB64c2b: Type = 559;
1514    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1515    pub const dnnl_aCdefB64c4b: Type = 560;
1516    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1517    pub const dnnl_Bcdea32b: Type = 561;
1518    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1519    pub const dnnl_BcdeA32b2a: Type = 562;
1520    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1521    pub const dnnl_BcdeA32b4a: Type = 563;
1522    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1523    pub const dnnl_Bcdea48b: Type = 564;
1524    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1525    pub const dnnl_BcdeA48b2a: Type = 565;
1526    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1527    pub const dnnl_BcdeA48b4a: Type = 566;
1528    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1529    pub const dnnl_Bcdea64b: Type = 567;
1530    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1531    pub const dnnl_BcdeA64b2a: Type = 568;
1532    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1533    pub const dnnl_BcdeA64b4a: Type = 569;
1534    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1535    pub const dnnl_Bca32b: Type = 570;
1536    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1537    pub const dnnl_BcA32b2a: Type = 571;
1538    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1539    pub const dnnl_BcA32b4a: Type = 572;
1540    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1541    pub const dnnl_Bca48b: Type = 573;
1542    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1543    pub const dnnl_BcA48b2a: Type = 574;
1544    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1545    pub const dnnl_BcA48b4a: Type = 575;
1546    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1547    pub const dnnl_Bca64b: Type = 576;
1548    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1549    pub const dnnl_BcA64b2a: Type = 577;
1550    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1551    pub const dnnl_BcA64b4a: Type = 578;
1552    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1553    pub const dnnl_aCdb32c: Type = 579;
1554    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1555    pub const dnnl_aCdB32c2b: Type = 580;
1556    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1557    pub const dnnl_aCdB32c4b: Type = 581;
1558    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1559    pub const dnnl_aCdb48c: Type = 582;
1560    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1561    pub const dnnl_aCdB48c2b: Type = 583;
1562    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1563    pub const dnnl_aCdB48c4b: Type = 584;
1564    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1565    pub const dnnl_aCdb64c: Type = 585;
1566    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1567    pub const dnnl_aCdB64c2b: Type = 586;
1568    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1569    pub const dnnl_aCdB64c4b: Type = 587;
1570    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1571    pub const dnnl_BcA16a16b2a: Type = 588;
1572    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1573    pub const dnnl_BcA16a16b4a: Type = 589;
1574    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1575    pub const dnnl_BcdA16a16b2a: Type = 590;
1576    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1577    pub const dnnl_BcdA16a16b4a: Type = 591;
1578    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1579    pub const dnnl_BcdeA16a16b2a: Type = 592;
1580    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1581    pub const dnnl_BcdeA16a16b4a: Type = 593;
1582    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1583    pub const dnnl_aCdB16b16c2b: Type = 594;
1584    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1585    pub const dnnl_aCdB16b16c4b: Type = 595;
1586    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1587    pub const dnnl_aCdeB16b16c2b: Type = 596;
1588    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1589    pub const dnnl_aCdeB16b16c4b: Type = 597;
1590    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1591    pub const dnnl_aCdefB16b16c2b: Type = 598;
1592    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1593    pub const dnnl_aCdefB16b16c4b: Type = 599;
1594    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1595    pub const dnnl_BcA16a32b2a: Type = 600;
1596    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1597    pub const dnnl_BcA16a32b4a: Type = 601;
1598    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1599    pub const dnnl_BcA16a48b2a: Type = 602;
1600    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1601    pub const dnnl_BcA16a48b4a: Type = 603;
1602    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1603    pub const dnnl_BcA16a64b2a: Type = 604;
1604    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1605    pub const dnnl_BcA16a64b4a: Type = 605;
1606    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1607    pub const dnnl_aCdB16b32c2b: Type = 606;
1608    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1609    pub const dnnl_aCdB16b32c4b: Type = 607;
1610    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1611    pub const dnnl_aCdB16b48c2b: Type = 608;
1612    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1613    pub const dnnl_aCdB16b48c4b: Type = 609;
1614    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1615    pub const dnnl_aCdB16b64c2b: Type = 610;
1616    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1617    pub const dnnl_aCdB16b64c4b: Type = 611;
1618    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1619    pub const dnnl_BcdA16a32b2a: Type = 612;
1620    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1621    pub const dnnl_BcdA16a32b4a: Type = 613;
1622    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1623    pub const dnnl_BcdA16a48b2a: Type = 614;
1624    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1625    pub const dnnl_BcdA16a48b4a: Type = 615;
1626    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1627    pub const dnnl_BcdA16a64b2a: Type = 616;
1628    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1629    pub const dnnl_BcdA16a64b4a: Type = 617;
1630    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1631    pub const dnnl_aCdeB16b32c2b: Type = 618;
1632    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1633    pub const dnnl_aCdeB16b32c4b: Type = 619;
1634    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1635    pub const dnnl_aCdeB16b48c2b: Type = 620;
1636    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1637    pub const dnnl_aCdeB16b48c4b: Type = 621;
1638    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1639    pub const dnnl_aCdeB16b64c2b: Type = 622;
1640    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1641    pub const dnnl_aCdeB16b64c4b: Type = 623;
1642    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1643    pub const dnnl_Bca16b: Type = 624;
1644    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1645    pub const dnnl_BcA16b2a: Type = 625;
1646    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1647    pub const dnnl_BcA16b4a: Type = 626;
1648    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1649    pub const dnnl_Bcda16b: Type = 627;
1650    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1651    pub const dnnl_BcdA16b2a: Type = 628;
1652    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1653    pub const dnnl_BcdA16b4a: Type = 629;
1654    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1655    pub const dnnl_Bcdea16b: Type = 630;
1656    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1657    pub const dnnl_BcdeA16b2a: Type = 631;
1658    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1659    pub const dnnl_BcdeA16b4a: Type = 632;
1660    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1661    pub const dnnl_aCdb16c: Type = 633;
1662    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1663    pub const dnnl_aCdB16c2b: Type = 634;
1664    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1665    pub const dnnl_aCdB16c4b: Type = 635;
1666    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1667    pub const dnnl_aCdeb16c: Type = 636;
1668    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1669    pub const dnnl_aCdeB16c2b: Type = 637;
1670    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1671    pub const dnnl_aCdeB16c4b: Type = 638;
1672    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1673    pub const dnnl_aCdefb16c: Type = 639;
1674    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1675    pub const dnnl_aCdefB16c2b: Type = 640;
1676    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1677    pub const dnnl_aCdefB16c4b: Type = 641;
1678    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1679    pub const dnnl_Bcda32b: Type = 642;
1680    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1681    pub const dnnl_BcdA32b2a: Type = 643;
1682    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1683    pub const dnnl_BcdA32b4a: Type = 644;
1684    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1685    pub const dnnl_Bcda48b: Type = 645;
1686    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1687    pub const dnnl_BcdA48b2a: Type = 646;
1688    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1689    pub const dnnl_BcdA48b4a: Type = 647;
1690    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1691    pub const dnnl_Bcda64b: Type = 648;
1692    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1693    pub const dnnl_BcdA64b2a: Type = 649;
1694    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1695    pub const dnnl_BcdA64b4a: Type = 650;
1696    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1697    pub const dnnl_aCdeb32c: Type = 651;
1698    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1699    pub const dnnl_aCdeB32c2b: Type = 652;
1700    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1701    pub const dnnl_aCdeB32c4b: Type = 653;
1702    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1703    pub const dnnl_aCdeb48c: Type = 654;
1704    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1705    pub const dnnl_aCdeB48c2b: Type = 655;
1706    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1707    pub const dnnl_aCdeB48c4b: Type = 656;
1708    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1709    pub const dnnl_aCdeb64c: Type = 657;
1710    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1711    pub const dnnl_aCdeB64c2b: Type = 658;
1712    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1713    pub const dnnl_aCdeB64c4b: Type = 659;
1714    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1715    pub const dnnl_Acb24a: Type = 660;
1716    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1717    pub const dnnl_Acdb24a: Type = 661;
1718    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1719    pub const dnnl_Acdeb24a: Type = 662;
1720    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1721    pub const dnnl_aBdc24b: Type = 663;
1722    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1723    pub const dnnl_aBdec24b: Type = 664;
1724    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1725    pub const dnnl_aBdefc24b: Type = 665;
1726    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1727    pub const dnnl_abDc16d: Type = 666;
1728    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1729    pub const dnnl_abdEc16e: Type = 667;
1730    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1731    pub const dnnl_abdCe16c: Type = 668;
1732    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1733    pub const dnnl_AcB24a2b: Type = 669;
1734    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1735    pub const dnnl_AcdB24a2b: Type = 670;
1736    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1737    pub const dnnl_AcdeB24a2b: Type = 671;
1738    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1739    pub const dnnl_aBdC24b2c: Type = 672;
1740    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1741    pub const dnnl_aBdeC24b2c: Type = 673;
1742    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1743    pub const dnnl_aBdefC24b2c: Type = 674;
1744    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1745    pub const dnnl_AcB8a2b: Type = 675;
1746    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1747    pub const dnnl_AcdB8a2b: Type = 676;
1748    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1749    pub const dnnl_AcdeB8a2b: Type = 677;
1750    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1751    pub const dnnl_aBdC8b2c: Type = 678;
1752    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1753    pub const dnnl_aBdeC8b2c: Type = 679;
1754    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1755    pub const dnnl_aBdefC8b2c: Type = 680;
1756    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1757    pub const dnnl_AB8b32a: Type = 681;
1758    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1759    pub const dnnl_ABc8b32a: Type = 682;
1760    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1761    pub const dnnl_ABcd8b32a: Type = 683;
1762    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1763    pub const dnnl_ABcde8b32a: Type = 684;
1764    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1765    pub const dnnl_AB8b24a: Type = 685;
1766    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1767    pub const dnnl_ABc8b24a: Type = 686;
1768    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1769    pub const dnnl_ABcd8b24a: Type = 687;
1770    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1771    pub const dnnl_ABcde8b24a: Type = 688;
1772    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1773    pub const dnnl_AB8b16a: Type = 689;
1774    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1775    pub const dnnl_ABc8b16a: Type = 690;
1776    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1777    pub const dnnl_ABcd8b16a: Type = 691;
1778    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1779    pub const dnnl_ABcde8b16a: Type = 692;
1780    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1781    pub const dnnl_AB8b8a: Type = 693;
1782    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1783    pub const dnnl_AB4b8a4b: Type = 694;
1784    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1785    pub const dnnl_AB4b24a4b: Type = 695;
1786    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1787    pub const dnnl_ABc4b8a4b: Type = 696;
1788    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1789    pub const dnnl_ABc4b24a4b: Type = 697;
1790    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1791    pub const dnnl_ABcd4b8a4b: Type = 698;
1792    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1793    pub const dnnl_ABcd4b24a4b: Type = 699;
1794    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1795    pub const dnnl_ABcde4b8a4b: Type = 700;
1796    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1797    pub const dnnl_ABcde4b24a4b: Type = 701;
1798    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1799    pub const dnnl_AB8b24a2b: Type = 702;
1800    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1801    pub const dnnl_ABc8b24a2b: Type = 703;
1802    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1803    pub const dnnl_ABcd8b24a2b: Type = 704;
1804    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1805    pub const dnnl_ABcde8b24a2b: Type = 705;
1806    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1807    pub const dnnl_AB8b8a2b: Type = 706;
1808    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1809    pub const dnnl_ABc8b8a2b: Type = 707;
1810    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1811    pub const dnnl_ABcd8b8a2b: Type = 708;
1812    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1813    pub const dnnl_ABcde8b8a2b: Type = 709;
1814    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1815    pub const dnnl_AcB24a4b: Type = 710;
1816    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1817    pub const dnnl_AcdB24a4b: Type = 711;
1818    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1819    pub const dnnl_AcdeB24a4b: Type = 712;
1820    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1821    pub const dnnl_aBdC24b4c: Type = 713;
1822    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1823    pub const dnnl_aBdeC24b4c: Type = 714;
1824    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1825    pub const dnnl_aBdefC24b4c: Type = 715;
1826    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1827    pub const dnnl_AcB8a4b: Type = 716;
1828    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1829    pub const dnnl_AcdB8a4b: Type = 717;
1830    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1831    pub const dnnl_AcdeB8a4b: Type = 718;
1832    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1833    pub const dnnl_aBdC8b4c: Type = 719;
1834    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1835    pub const dnnl_aBdeC8b4c: Type = 720;
1836    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1837    pub const dnnl_aBdefC8b4c: Type = 721;
1838    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1839    pub const dnnl_Bca8b: Type = 722;
1840    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1841    pub const dnnl_BcA8b2a: Type = 723;
1842    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1843    pub const dnnl_Bcda8b: Type = 724;
1844    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1845    pub const dnnl_BcdA8b2a: Type = 725;
1846    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1847    pub const dnnl_Bcdea8b: Type = 726;
1848    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1849    pub const dnnl_BcdeA8b2a: Type = 727;
1850    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1851    pub const dnnl_aCdb8c: Type = 728;
1852    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1853    pub const dnnl_aCdB8c2b: Type = 729;
1854    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1855    pub const dnnl_aCdeb8c: Type = 730;
1856    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1857    pub const dnnl_aCdeB8c2b: Type = 731;
1858    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1859    pub const dnnl_aCdefb8c: Type = 732;
1860    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1861    pub const dnnl_aCdefB8c2b: Type = 733;
1862    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1863    pub const dnnl_Bca24b: Type = 734;
1864    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1865    pub const dnnl_BcA24b2a: Type = 735;
1866    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1867    pub const dnnl_Bcda24b: Type = 736;
1868    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1869    pub const dnnl_BcdA24b2a: Type = 737;
1870    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1871    pub const dnnl_Bcdea24b: Type = 738;
1872    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1873    pub const dnnl_BcdeA24b2a: Type = 739;
1874    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1875    pub const dnnl_aCdb24c: Type = 740;
1876    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1877    pub const dnnl_aCdB24c2b: Type = 741;
1878    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1879    pub const dnnl_aCdeb24c: Type = 742;
1880    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1881    pub const dnnl_aCdeB24c2b: Type = 743;
1882    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1883    pub const dnnl_aCdefb24c: Type = 744;
1884    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1885    pub const dnnl_aCdefB24c2b: Type = 745;
1886    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1887    pub const dnnl_BcA8b4a: Type = 746;
1888    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1889    pub const dnnl_BcdA8b4a: Type = 747;
1890    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1891    pub const dnnl_BcdeA8b4a: Type = 748;
1892    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1893    pub const dnnl_aCdB8c4b: Type = 749;
1894    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1895    pub const dnnl_aCdeB8c4b: Type = 750;
1896    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1897    pub const dnnl_aCdefB8c4b: Type = 751;
1898    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1899    pub const dnnl_BcA24b4a: Type = 752;
1900    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1901    pub const dnnl_BcdA24b4a: Type = 753;
1902    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1903    pub const dnnl_BcdeA24b4a: Type = 754;
1904    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1905    pub const dnnl_aCdB24c4b: Type = 755;
1906    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1907    pub const dnnl_aCdeB24c4b: Type = 756;
1908    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1909    pub const dnnl_aCdefB24c4b: Type = 757;
1910    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1911    pub const dnnl_AB16b48a: Type = 758;
1912    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1913    pub const dnnl_ABc16b48a: Type = 759;
1914    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1915    pub const dnnl_ABcd16b48a: Type = 760;
1916    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1917    pub const dnnl_ABcde16b48a: Type = 761;
1918    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1919    pub const dnnl_ABc16a4b: Type = 762;
1920    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1921    pub const dnnl_ABcd16a4b: Type = 763;
1922    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1923    pub const dnnl_ABcde16a4b: Type = 764;
1924    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1925    pub const dnnl_defcbA16a: Type = 765;
1926    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1927    pub const dnnl_defcbA8a: Type = 766;
1928    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1929    pub const dnnl_AcB16b64a: Type = 767;
1930    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1931    pub const dnnl_AcdB16b64a: Type = 768;
1932    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1933    pub const dnnl_AcdeB16b64a: Type = 769;
1934    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1935    pub const dnnl_AcB16b48a: Type = 770;
1936    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1937    pub const dnnl_AcdB16b48a: Type = 771;
1938    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1939    pub const dnnl_AcdeB16b48a: Type = 772;
1940    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1941    pub const dnnl_AcB16b32a: Type = 773;
1942    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1943    pub const dnnl_AcdB16b32a: Type = 774;
1944    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1945    pub const dnnl_AcdeB16b32a: Type = 775;
1946    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1947    pub const dnnl_AcB16b16a: Type = 776;
1948    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1949    pub const dnnl_AcdB16b16a: Type = 777;
1950    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1951    pub const dnnl_AcdeB16b16a: Type = 778;
1952    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1953    pub const dnnl_AcB8b32a: Type = 779;
1954    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1955    pub const dnnl_AcdB8b32a: Type = 780;
1956    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1957    pub const dnnl_AcdeB8b32a: Type = 781;
1958    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1959    pub const dnnl_AcB8b24a: Type = 782;
1960    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1961    pub const dnnl_AcdB8b24a: Type = 783;
1962    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1963    pub const dnnl_AcdeB8b24a: Type = 784;
1964    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1965    pub const dnnl_AcB8b16a: Type = 785;
1966    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1967    pub const dnnl_AcdB8b16a: Type = 786;
1968    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1969    pub const dnnl_AcdeB8b16a: Type = 787;
1970    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1971    pub const dnnl_AcB8b8a: Type = 788;
1972    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1973    pub const dnnl_AcdB8b8a: Type = 789;
1974    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1975    pub const dnnl_AcdeB8b8a: Type = 790;
1976    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1977    pub const dnnl_AcB8b64a2b: Type = 791;
1978    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1979    pub const dnnl_AcdB8b64a2b: Type = 792;
1980    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1981    pub const dnnl_AcdeB8b64a2b: Type = 793;
1982    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1983    pub const dnnl_AcB8b32a2b: Type = 794;
1984    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1985    pub const dnnl_AcdB8b32a2b: Type = 795;
1986    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1987    pub const dnnl_AcdeB8b32a2b: Type = 796;
1988    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1989    pub const dnnl_AcB8b24a2b: Type = 797;
1990    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1991    pub const dnnl_AcdB8b24a2b: Type = 798;
1992    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1993    pub const dnnl_AcdeB8b24a2b: Type = 799;
1994    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1995    pub const dnnl_AcB8b16a2b: Type = 800;
1996    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1997    pub const dnnl_AcdB8b16a2b: Type = 801;
1998    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
1999    pub const dnnl_AcdeB8b16a2b: Type = 802;
2000    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2001    pub const dnnl_AcB8b8a2b: Type = 803;
2002    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2003    pub const dnnl_AcdB8b8a2b: Type = 804;
2004    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2005    pub const dnnl_AcdeB8b8a2b: Type = 805;
2006    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2007    pub const dnnl_AcB4b64a4b: Type = 806;
2008    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2009    pub const dnnl_AcdB4b64a4b: Type = 807;
2010    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2011    pub const dnnl_AcdeB4b64a4b: Type = 808;
2012    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2013    pub const dnnl_AcB4b32a4b: Type = 809;
2014    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2015    pub const dnnl_AcdB4b32a4b: Type = 810;
2016    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2017    pub const dnnl_AcdeB4b32a4b: Type = 811;
2018    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2019    pub const dnnl_AcB4b24a4b: Type = 812;
2020    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2021    pub const dnnl_AcdB4b24a4b: Type = 813;
2022    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2023    pub const dnnl_AcdeB4b24a4b: Type = 814;
2024    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2025    pub const dnnl_AcB4b16a4b: Type = 815;
2026    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2027    pub const dnnl_AcdB4b16a4b: Type = 816;
2028    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2029    pub const dnnl_AcdeB4b16a4b: Type = 817;
2030    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2031    pub const dnnl_AcB4b8a4b: Type = 818;
2032    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2033    pub const dnnl_AcdB4b8a4b: Type = 819;
2034    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2035    pub const dnnl_AcdeB4b8a4b: Type = 820;
2036    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2037    pub const dnnl_Ab4a: Type = 821;
2038    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2039    pub const dnnl_Ab8a: Type = 822;
2040    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2041    pub const dnnl_BA4b4a: Type = 823;
2042    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2043    pub const dnnl_BA8b4a: Type = 824;
2044    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2045    pub const dnnl_BA2a24b: Type = 825;
2046    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2047    pub const dnnl_aCB2b24c: Type = 826;
2048    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2049    pub const dnnl_BA2a8b: Type = 827;
2050    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2051    pub const dnnl_aCB2b8c: Type = 828;
2052    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2053    pub const dnnl_BA8a24b: Type = 829;
2054    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2055    pub const dnnl_aCB8b24c: Type = 830;
2056    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2057    pub const dnnl_BA8a16b: Type = 831;
2058    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2059    pub const dnnl_aCB8b16c: Type = 832;
2060    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2061    pub const dnnl_BA8a8b: Type = 833;
2062    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2063    pub const dnnl_aCB8b8c: Type = 834;
2064    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2065    pub const dnnl_bcad: Type = 835;
2066    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2067    pub const dnnl_cabd: Type = 836;
2068    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2069    pub const dnnl_dabc: Type = 837;
2070    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2071    pub const dnnl_Ab32a: Type = 838;
2072    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2073    pub const dnnl_aCBd8b8c: Type = 839;
2074    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2075    pub const dnnl_aCBde8b8c: Type = 840;
2076    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2077    pub const dnnl_BAc8a8b: Type = 841;
2078    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2079    pub const dnnl_BAcd8a8b: Type = 842;
2080    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2081    pub const dnnl_BAcde8a8b: Type = 843;
2082    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2083    pub const dnnl_aCBdef8b8c: Type = 844;
2084    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2085    pub const dnnl_abdEC16e4c: Type = 845;
2086    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2087    pub const dnnl_abDC16d4c: Type = 846;
2088    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2089    pub const dnnl_BA24b8a: Type = 847;
2090    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2091    pub const dnnl_aCB24c8b: Type = 848;
2092    #[doc = " 6D tensor blocked by 2nd dimension with block size 4"]
2093    pub const dnnl_abDC24d8c: Type = 849;
2094    #[doc = " Just a sentinel, not real memory format tag. Must be changed after new\n format tag is added."]
2095    pub const dnnl_format_tag_last: Type = 850;
2096    #[doc = " 1D tensor, an alias to #dnnl_a"]
2097    pub const dnnl_x: Type = 2;
2098    #[doc = " 2D CNN activations tensor, an alias to #dnnl_ab"]
2099    pub const dnnl_nc: Type = 3;
2100    #[doc = " 2D CNN activations tensor, an alias to #dnnl_ba"]
2101    pub const dnnl_cn: Type = 14;
2102    #[doc = " 2D RNN statistics tensor, an alias to #dnnl_ab"]
2103    pub const dnnl_tn: Type = 3;
2104    #[doc = " 2D RNN statistics tensor, an alias to #dnnl_ba"]
2105    pub const dnnl_nt: Type = 14;
2106    #[doc = " 3D CNN activations tensor, an alias to #dnnl_abc"]
2107    pub const dnnl_ncw: Type = 4;
2108    #[doc = " 3D CNN activations tensor, an alias to #dnnl_acb"]
2109    pub const dnnl_nwc: Type = 15;
2110    #[doc = " 4D CNN activations tensor, an alias to #dnnl_abcd"]
2111    pub const dnnl_nchw: Type = 5;
2112    #[doc = " 4D CNN activations tensor, an alias to #dnnl_acdb"]
2113    pub const dnnl_nhwc: Type = 22;
2114    #[doc = " 4D CNN activations tensor, an alias to #dnnl_bcda"]
2115    pub const dnnl_chwn: Type = 26;
2116    #[doc = " 5D CNN activations tensor, an alias to #dnnl_abcde"]
2117    pub const dnnl_ncdhw: Type = 6;
2118    #[doc = " 5D CNN activations tensor, an alias to #dnnl_acdeb"]
2119    pub const dnnl_ndhwc: Type = 33;
2120    #[doc = " 2D CNN weights tensor, an alias to #dnnl_ab"]
2121    pub const dnnl_oi: Type = 3;
2122    #[doc = " 2D CNN weights tensor, an alias to #dnnl_ba"]
2123    pub const dnnl_io: Type = 14;
2124    #[doc = " 3D CNN weights tensor, an alias to #dnnl_abc"]
2125    pub const dnnl_oiw: Type = 4;
2126    #[doc = " 3D CNN weights tensor, an alias to #dnnl_acb"]
2127    pub const dnnl_owi: Type = 15;
2128    #[doc = " 3D CNN weights tensor, an alias to #dnnl_cba"]
2129    pub const dnnl_wio: Type = 19;
2130    #[doc = " 3D CNN weights tensor, an alias to #dnnl_cab"]
2131    pub const dnnl_woi: Type = 18;
2132    #[doc = " 3D CNN weights tensor, an alias to #dnnl_bca"]
2133    pub const dnnl_iwo: Type = 17;
2134    #[doc = " 4D CNN weights tensor, an alias to #dnnl_abcd"]
2135    pub const dnnl_oihw: Type = 5;
2136    #[doc = " 4D CNN weights tensor, an alias to #dnnl_cdba"]
2137    pub const dnnl_hwio: Type = 28;
2138    #[doc = " 4D CNN weights tensor, an alias to #dnnl_cdab"]
2139    pub const dnnl_hwoi: Type = 27;
2140    #[doc = " 4D CNN weights tensor, an alias to #dnnl_acdb"]
2141    pub const dnnl_ohwi: Type = 22;
2142    #[doc = " 4D CNN weights tensor, an alias to #dnnl_bcda"]
2143    pub const dnnl_ihwo: Type = 26;
2144    #[doc = " 4D CNN weights tensor, an alias to #dnnl_bacd"]
2145    pub const dnnl_iohw: Type = 25;
2146    #[doc = " 5D CNN weights tensor, an alias to #dnnl_abcde"]
2147    pub const dnnl_oidhw: Type = 6;
2148    #[doc = " 5D CNN weights tensor, an alias to #dnnl_bacde"]
2149    pub const dnnl_iodhw: Type = 35;
2150    #[doc = " 5D CNN weights tensor, an alias to #dnnl_cdeba"]
2151    pub const dnnl_dhwio: Type = 38;
2152    #[doc = " 5D CNN weights tensor, an alias to #dnnl_cdeab"]
2153    pub const dnnl_dhwoi: Type = 37;
2154    #[doc = " 5D CNN weights tensor, an alias to #dnnl_acdeb"]
2155    pub const dnnl_odhwi: Type = 33;
2156    #[doc = " 5D CNN weights tensor, an alias to #dnnl_bcdea"]
2157    pub const dnnl_idhwo: Type = 36;
2158    #[doc = " 4D CNN weights tensor (incl. groups), an alias to #dnnl_abcd"]
2159    pub const dnnl_goiw: Type = 5;
2160    #[doc = " 4D CNN weights tensor (incl. groups), an alias to #dnnl_abdc"]
2161    pub const dnnl_gowi: Type = 20;
2162    #[doc = " 4D CNN weights tensor (incl. groups), an alias to #dnnl_dcab"]
2163    pub const dnnl_wigo: Type = 29;
2164    #[doc = " 5D CNN weights tensor (incl. groups), an alias to #dnnl_abcde"]
2165    pub const dnnl_goihw: Type = 6;
2166    #[doc = " 5D CNN weights tensor (incl. groups), an alias to #dnnl_abdec"]
2167    pub const dnnl_gohwi: Type = 31;
2168    #[doc = " 5D CNN weights tensor (incl. groups), an alias to #dnnl_decab"]
2169    pub const dnnl_hwigo: Type = 39;
2170    #[doc = " 5D CNN weights tensor (incl. groups), an alias to #dnnl_acbde"]
2171    pub const dnnl_giohw: Type = 32;
2172    #[doc = " 6D CNN weights tensor (incl. groups), an alias to #dnnl_abcdef"]
2173    pub const dnnl_goidhw: Type = 7;
2174    #[doc = " 6D CNN weights tensor (incl. groups), an alias to #dnnl_abdefc"]
2175    pub const dnnl_godhwi: Type = 41;
2176    #[doc = " 6D CNN weights tensor (incl. groups), an alias to #dnnl_acbdef"]
2177    pub const dnnl_giodhw: Type = 43;
2178    #[doc = " 6D CNN weights tensor (incl. groups), an alias to #dnnl_defcab"]
2179    pub const dnnl_dhwigo: Type = 45;
2180    #[doc = " 3D RNN data tensor in the format (seq_length, batch, input channels),\n an alias to #dnnl_abc."]
2181    pub const dnnl_tnc: Type = 4;
2182    #[doc = " 3D RNN data tensor in the format (batch, seq_length, input channels),\n an alias to #dnnl_bac."]
2183    pub const dnnl_ntc: Type = 16;
2184    #[doc = " 4D RNN states tensor in the format (num_layers, num_directions,\n batch, state channels), an alias to #dnnl_abcd."]
2185    pub const dnnl_ldnc: Type = 5;
2186    #[doc = " 5D RNN weights tensor in the format (num_layers, num_directions,\n input_channels, num_gates, output_channels), an alias to #dnnl_abcde.\n\n  - For LSTM cells, the gates order is input, forget, candidate\n    and output gate.\n  - For GRU cells, the gates order is update, reset and output gate."]
2187    pub const dnnl_ldigo: Type = 6;
2188    #[doc = " 5D RNN weights tensor in the format (num_layers, num_directions,\n num_gates, output_channels, input_channels), an alias to #dnnl_abdec.\n\n  - For LSTM cells, the gates order is input, forget, candidate\n    and output gate.\n  - For GRU cells, the gates order is update, reset and output gate."]
2189    pub const dnnl_ldgoi: Type = 31;
2190    #[doc = " 4D LSTM projection tensor in the format (num_layers, num_directions,\n num_channels_in_hidden_state, num_channels_in_recurrent_projection),\n an alias to #dnnl_abcd."]
2191    pub const dnnl_ldio: Type = 5;
2192    #[doc = " 4D LSTM projection tensor in the format (num_layers, num_directions,\n num_channels_in_recurrent_projection, num_channels_in_hidden_state),\n an alias to #dnnl_abdc."]
2193    pub const dnnl_ldoi: Type = 20;
2194    #[doc = " 4D RNN bias tensor in the format (num_layers, num_directions,\n num_gates, output_channels), an alias to #dnnl_abcd.\n\n  - For LSTM cells, the gates order is input, forget, candidate\n    and output gate.\n  - For GRU cells, the gates order is update, reset and output gate."]
2195    pub const dnnl_ldgo: Type = 5;
2196    #[doc = " 5D LSTM projection tensor"]
2197    pub const dnnl_ldOi16o: Type = 666;
2198    #[doc = " 5D LSTM projection tensor"]
2199    pub const dnnl_ldOi32o: Type = 267;
2200    #[doc = " 5D LSTM projection tensor"]
2201    pub const dnnl_ldOI16o4i: Type = 846;
2202    #[doc = " 5D LSTM projection tensor"]
2203    pub const dnnl_ldOI32o4i: Type = 268;
2204    #[doc = " 5D LSTM projection tensor"]
2205    pub const dnnl_ldIo32i: Type = 378;
2206    #[doc = " 6D RNN weights tensor"]
2207    pub const dnnl_ldgOi16o: Type = 667;
2208    #[doc = " 6D RNN weights tensor"]
2209    pub const dnnl_ldgOI16o4i: Type = 845;
2210    #[doc = " 6D RNN weights tensor"]
2211    pub const dnnl_ldgOi32o: Type = 269;
2212    #[doc = " 6D RNN weights tensor"]
2213    pub const dnnl_ldgOI32o2i: Type = 270;
2214    #[doc = " 6D RNN weights tensor"]
2215    pub const dnnl_ldgOI32o4i: Type = 271;
2216    #[doc = " 6D RNN weights tensor"]
2217    pub const dnnl_ldgOI64o2i: Type = 519;
2218    #[doc = " 6D RNN weights tensor"]
2219    pub const dnnl_ldgOI64o4i: Type = 520;
2220    #[doc = " 6D RNN weights tensor"]
2221    pub const dnnl_ldgIo16i: Type = 668;
2222    #[doc = " 6D RNN weights tensor"]
2223    pub const dnnl_ldgIo32i: Type = 379;
2224    #[doc = " 6D RNN weights tensor"]
2225    pub const dnnl_ldgIO32i2o: Type = 380;
2226    #[doc = " 5D CNN activations tensor blocked by channels with block size 32,\n an alias to #dnnl_aBcde32b"]
2227    pub const dnnl_nCdhw32c: Type = 127;
2228    #[doc = " 5D CNN activations tensor blocked by channels with block size 16,\n an alias to #dnnl_aBcde16b"]
2229    pub const dnnl_nCdhw16c: Type = 121;
2230    #[doc = " 5D CNN activations tensor blocked by channels with block size 4,\n an alias to #dnnl_aBcde4b"]
2231    pub const dnnl_nCdhw4c: Type = 128;
2232    #[doc = " 5D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBcde8b"]
2233    pub const dnnl_nCdhw8c: Type = 142;
2234    #[doc = " 4D CNN activations tensor blocked by channels with block size 32,\n an alias to #dnnl_aBcd32b"]
2235    pub const dnnl_nChw32c: Type = 83;
2236    #[doc = " 4D CNN activations tensor blocked by channels with block size 16,\n an alias to #dnnl_aBcd16b"]
2237    pub const dnnl_nChw16c: Type = 78;
2238    #[doc = " 4D CNN activations tensor blocked by channels with block size 4,\n an alias to #dnnl_aBcd4b"]
2239    pub const dnnl_nChw4c: Type = 84;
2240    #[doc = " 4D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBcd8b"]
2241    pub const dnnl_nChw8c: Type = 102;
2242    #[doc = " 3D CNN activations tensor blocked by channels with block size 32,\n an alias to #dnnl_aBc32b"]
2243    pub const dnnl_nCw32c: Type = 59;
2244    #[doc = " 3D CNN activations tensor blocked by channels with block size 16,\n an alias to #dnnl_aBc16b"]
2245    pub const dnnl_nCw16c: Type = 56;
2246    #[doc = " 3D CNN activations tensor blocked by channels with block size 4,\n an alias to #dnnl_aBc4b"]
2247    pub const dnnl_nCw4c: Type = 60;
2248    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2249    pub const dnnl_nCw8c: Type = 69;
2250    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2251    pub const dnnl_NCw16n16c: Type = 53;
2252    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2253    pub const dnnl_NCdhw16n16c: Type = 116;
2254    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2255    pub const dnnl_NChw16n16c: Type = 75;
2256    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2257    pub const dnnl_NCw32n16c: Type = 367;
2258    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2259    pub const dnnl_NChw32n16c: Type = 368;
2260    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2261    pub const dnnl_NChw16n32c: Type = 538;
2262    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2263    pub const dnnl_NCdhw32n16c: Type = 369;
2264    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2265    pub const dnnl_NCw32n32c: Type = 54;
2266    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2267    pub const dnnl_NChw32n32c: Type = 77;
2268    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2269    pub const dnnl_NCdhw32n32c: Type = 148;
2270    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2271    pub const dnnl_OI16i16o: Type = 237;
2272    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2273    pub const dnnl_OI16i32o: Type = 238;
2274    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2275    pub const dnnl_OI16i48o: Type = 758;
2276    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2277    pub const dnnl_OI16i64o: Type = 239;
2278    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2279    pub const dnnl_OI8i8o2i: Type = 706;
2280    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2281    pub const dnnl_OI8i16o2i: Type = 240;
2282    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2283    pub const dnnl_OI8i24o2i: Type = 702;
2284    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2285    pub const dnnl_OI8i32o2i: Type = 241;
2286    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2287    pub const dnnl_OI8i64o2i: Type = 242;
2288    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2289    pub const dnnl_OI4i8o4i: Type = 694;
2290    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2291    pub const dnnl_OI4i16o4i: Type = 243;
2292    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2293    pub const dnnl_OI4i24o4i: Type = 695;
2294    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2295    pub const dnnl_OI4i32o4i: Type = 244;
2296    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2297    pub const dnnl_OI4i64o4i: Type = 245;
2298    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2299    pub const dnnl_OI16i16o4i: Type = 246;
2300    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2301    pub const dnnl_OI8i32o: Type = 681;
2302    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2303    pub const dnnl_OI8i24o: Type = 685;
2304    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2305    pub const dnnl_OI8i16o: Type = 689;
2306    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2307    pub const dnnl_OI8i8o: Type = 693;
2308    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2309    pub const dnnl_IOw8o8i: Type = 841;
2310    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2311    pub const dnnl_IOw16o16i: Type = 222;
2312    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2313    pub const dnnl_IOw16i16o: Type = 223;
2314    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2315    pub const dnnl_OIw16i16o: Type = 57;
2316    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2317    pub const dnnl_OwI16i16o: Type = 776;
2318    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2319    pub const dnnl_OIw16i32o: Type = 231;
2320    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2321    pub const dnnl_OwI16i32o: Type = 773;
2322    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2323    pub const dnnl_OIw16i48o: Type = 759;
2324    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2325    pub const dnnl_OwI16i48o: Type = 770;
2326    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2327    pub const dnnl_OIw16i64o: Type = 232;
2328    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2329    pub const dnnl_OwI16i64o: Type = 767;
2330    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2331    pub const dnnl_OIw16o16i: Type = 53;
2332    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2333    pub const dnnl_Oiw16o: Type = 52;
2334    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2335    pub const dnnl_OIw4i8o4i: Type = 696;
2336    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2337    pub const dnnl_OwI4i8o4i: Type = 818;
2338    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2339    pub const dnnl_OIw4i16o4i: Type = 61;
2340    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2341    pub const dnnl_OwI4i16o4i: Type = 815;
2342    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2343    pub const dnnl_OIw4i24o4i: Type = 697;
2344    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2345    pub const dnnl_OwI4i24o4i: Type = 812;
2346    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2347    pub const dnnl_OIw4i32o4i: Type = 233;
2348    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2349    pub const dnnl_OwI4i32o4i: Type = 809;
2350    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2351    pub const dnnl_OIw4i64o4i: Type = 234;
2352    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2353    pub const dnnl_OwI4i64o4i: Type = 806;
2354    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2355    pub const dnnl_OIw2i8o4i: Type = 62;
2356    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2357    pub const dnnl_OIw16i16o4i: Type = 63;
2358    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2359    pub const dnnl_OIw16i16o2i: Type = 64;
2360    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2361    pub const dnnl_OIw16o16i2o: Type = 275;
2362    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2363    pub const dnnl_OIw4i4o: Type = 65;
2364    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2365    pub const dnnl_OIw4o4i: Type = 55;
2366    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2367    pub const dnnl_Oiw4o: Type = 58;
2368    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2369    pub const dnnl_OIw8i8o2i: Type = 707;
2370    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2371    pub const dnnl_OwI8i8o2i: Type = 803;
2372    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2373    pub const dnnl_OIw8i16o2i: Type = 70;
2374    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2375    pub const dnnl_OwI8i16o2i: Type = 800;
2376    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2377    pub const dnnl_OIw8i24o2i: Type = 703;
2378    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2379    pub const dnnl_OwI8i24o2i: Type = 797;
2380    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2381    pub const dnnl_OIw8i32o2i: Type = 235;
2382    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2383    pub const dnnl_OwI8i32o2i: Type = 794;
2384    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2385    pub const dnnl_OIw8i64o2i: Type = 236;
2386    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2387    pub const dnnl_OwI8i64o2i: Type = 791;
2388    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2389    pub const dnnl_OIw8i8o: Type = 72;
2390    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2391    pub const dnnl_OwI8i8o: Type = 788;
2392    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2393    pub const dnnl_OIw8o16i2o: Type = 66;
2394    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2395    pub const dnnl_IOw8o16i2o: Type = 71;
2396    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2397    pub const dnnl_OIw8o8i: Type = 67;
2398    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2399    pub const dnnl_OIw8o4i: Type = 68;
2400    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2401    pub const dnnl_Owi16o: Type = 202;
2402    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2403    pub const dnnl_OwI16o2i: Type = 203;
2404    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2405    pub const dnnl_OwI16o4i: Type = 204;
2406    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2407    pub const dnnl_Iwo8i: Type = 722;
2408    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2409    pub const dnnl_IwO8i2o: Type = 723;
2410    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2411    pub const dnnl_IwO8i4o: Type = 746;
2412    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2413    pub const dnnl_Iwo16i: Type = 624;
2414    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2415    pub const dnnl_IwO16i2o: Type = 625;
2416    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2417    pub const dnnl_IwO16i4o: Type = 626;
2418    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2419    pub const dnnl_Iwo24i: Type = 734;
2420    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2421    pub const dnnl_IwO24i2o: Type = 735;
2422    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2423    pub const dnnl_IwO24i4o: Type = 752;
2424    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2425    pub const dnnl_Owi4o: Type = 205;
2426    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2427    pub const dnnl_Owi8o: Type = 206;
2428    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2429    pub const dnnl_OwI8o2i: Type = 675;
2430    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2431    pub const dnnl_OIw8i32o: Type = 682;
2432    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2433    pub const dnnl_OwI8i32o: Type = 779;
2434    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2435    pub const dnnl_OIw8i24o: Type = 686;
2436    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2437    pub const dnnl_OwI8i24o: Type = 782;
2438    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2439    pub const dnnl_OIw8i16o: Type = 690;
2440    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2441    pub const dnnl_OwI8i16o: Type = 785;
2442    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2443    pub const dnnl_OwI8o4i: Type = 716;
2444    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2445    pub const dnnl_IOhw16i16o: Type = 225;
2446    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2447    pub const dnnl_IOhw8o8i: Type = 842;
2448    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2449    pub const dnnl_IOhw16o16i: Type = 224;
2450    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2451    pub const dnnl_Ohwi16o: Type = 211;
2452    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2453    pub const dnnl_OhwI16o2i: Type = 212;
2454    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2455    pub const dnnl_OhwI16o4i: Type = 213;
2456    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2457    pub const dnnl_Ihwo8i: Type = 724;
2458    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2459    pub const dnnl_IhwO8i2o: Type = 725;
2460    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2461    pub const dnnl_IhwO8i4o: Type = 747;
2462    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2463    pub const dnnl_Ihwo16i: Type = 627;
2464    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2465    pub const dnnl_IhwO16i2o: Type = 628;
2466    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2467    pub const dnnl_IhwO16i4o: Type = 629;
2468    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2469    pub const dnnl_Ihwo24i: Type = 736;
2470    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2471    pub const dnnl_IhwO24i2o: Type = 737;
2472    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2473    pub const dnnl_IhwO24i4o: Type = 753;
2474    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2475    pub const dnnl_Ohwi24o: Type = 661;
2476    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2477    pub const dnnl_Ohwi32o: Type = 214;
2478    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2479    pub const dnnl_Ohwi4o: Type = 215;
2480    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2481    pub const dnnl_Ohwi8o: Type = 216;
2482    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2483    pub const dnnl_OhwI8o2i: Type = 676;
2484    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2485    pub const dnnl_OhwI8o4i: Type = 717;
2486    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2487    pub const dnnl_OIhw16i16o: Type = 79;
2488    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2489    pub const dnnl_OhwI16i16o: Type = 777;
2490    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2491    pub const dnnl_OIhw16i32o: Type = 247;
2492    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2493    pub const dnnl_OhwI16i32o: Type = 774;
2494    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2495    pub const dnnl_OIhw16i48o: Type = 760;
2496    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2497    pub const dnnl_OhwI16i48o: Type = 771;
2498    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2499    pub const dnnl_OIhw16i64o: Type = 248;
2500    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2501    pub const dnnl_OhwI16i64o: Type = 768;
2502    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2503    pub const dnnl_OIhw16o16i: Type = 75;
2504    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2505    pub const dnnl_Oihw16o: Type = 73;
2506    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2507    pub const dnnl_OIhw4i8o4i: Type = 698;
2508    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2509    pub const dnnl_OhwI4i8o4i: Type = 819;
2510    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2511    pub const dnnl_OIhw4i16o4i: Type = 85;
2512    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2513    pub const dnnl_OhwI4i16o4i: Type = 816;
2514    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2515    pub const dnnl_OIhw4i24o4i: Type = 699;
2516    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2517    pub const dnnl_OhwI4i24o4i: Type = 813;
2518    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2519    pub const dnnl_OIhw4i32o4i: Type = 249;
2520    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2521    pub const dnnl_OhwI4i32o4i: Type = 810;
2522    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2523    pub const dnnl_OIhw4i64o4i: Type = 250;
2524    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2525    pub const dnnl_OhwI4i64o4i: Type = 807;
2526    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2527    pub const dnnl_OIhw16i16o4i: Type = 86;
2528    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2529    pub const dnnl_OIhw16i16o2i: Type = 87;
2530    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2531    pub const dnnl_OIhw16o16i2o: Type = 274;
2532    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2533    pub const dnnl_OIhw4i4o: Type = 88;
2534    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2535    pub const dnnl_OIhw4o4i: Type = 89;
2536    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2537    pub const dnnl_Oihw4o: Type = 82;
2538    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2539    pub const dnnl_OIhw8i8o2i: Type = 708;
2540    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2541    pub const dnnl_OhwI8i8o2i: Type = 804;
2542    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2543    pub const dnnl_OIhw8i16o2i: Type = 104;
2544    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2545    pub const dnnl_OhwI8i16o2i: Type = 801;
2546    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2547    pub const dnnl_OIhw8i32o2i: Type = 251;
2548    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2549    pub const dnnl_OhwI8i32o2i: Type = 795;
2550    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2551    pub const dnnl_OIhw8i24o2i: Type = 704;
2552    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2553    pub const dnnl_OhwI8i24o2i: Type = 798;
2554    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2555    pub const dnnl_OIhw8i64o2i: Type = 252;
2556    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2557    pub const dnnl_OhwI8i64o2i: Type = 792;
2558    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2559    pub const dnnl_OIhw8i8o: Type = 107;
2560    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2561    pub const dnnl_OhwI8i8o: Type = 789;
2562    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2563    pub const dnnl_OIhw8o16i2o: Type = 98;
2564    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2565    pub const dnnl_OIhw2i8o4i: Type = 99;
2566    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2567    pub const dnnl_IOhw8o16i2o: Type = 106;
2568    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2569    pub const dnnl_OIhw8o8i: Type = 100;
2570    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2571    pub const dnnl_OIhw8o4i: Type = 101;
2572    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2573    pub const dnnl_Owhi16o: Type = 221;
2574    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2575    pub const dnnl_OIhw8i32o: Type = 683;
2576    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2577    pub const dnnl_OhwI8i32o: Type = 780;
2578    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2579    pub const dnnl_OIhw8i24o: Type = 687;
2580    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2581    pub const dnnl_OhwI8i24o: Type = 783;
2582    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2583    pub const dnnl_OIhw8i16o: Type = 691;
2584    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2585    pub const dnnl_OhwI8i16o: Type = 786;
2586    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2587    pub const dnnl_Odhwi16o: Type = 217;
2588    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2589    pub const dnnl_OdhwI16o2i: Type = 218;
2590    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2591    pub const dnnl_OdhwI16o4i: Type = 273;
2592    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2593    pub const dnnl_Idhwo8i: Type = 726;
2594    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2595    pub const dnnl_IdhwO8i2o: Type = 727;
2596    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2597    pub const dnnl_IdhwO8i4o: Type = 748;
2598    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2599    pub const dnnl_Idhwo16i: Type = 630;
2600    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2601    pub const dnnl_IdhwO16i2o: Type = 631;
2602    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2603    pub const dnnl_IdhwO16i4o: Type = 632;
2604    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2605    pub const dnnl_Idhwo24i: Type = 738;
2606    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2607    pub const dnnl_IdhwO24i2o: Type = 739;
2608    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2609    pub const dnnl_IdhwO24i4o: Type = 754;
2610    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2611    pub const dnnl_Odhwi4o: Type = 219;
2612    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2613    pub const dnnl_Odhwi8o: Type = 220;
2614    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2615    pub const dnnl_OdhwI8o2i: Type = 677;
2616    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2617    pub const dnnl_OdhwI8o4i: Type = 718;
2618    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2619    pub const dnnl_Odwhi16o: Type = 517;
2620    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2621    pub const dnnl_OIdhw16i16o: Type = 122;
2622    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2623    pub const dnnl_OdhwI16i16o: Type = 778;
2624    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2625    pub const dnnl_OIdhw16i32o: Type = 257;
2626    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2627    pub const dnnl_OdhwI16i32o: Type = 775;
2628    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2629    pub const dnnl_OIdhw16i48o: Type = 761;
2630    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2631    pub const dnnl_OdhwI16i48o: Type = 772;
2632    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2633    pub const dnnl_OIdhw16i64o: Type = 258;
2634    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2635    pub const dnnl_OdhwI16i64o: Type = 769;
2636    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2637    pub const dnnl_OIdhw16o16i: Type = 116;
2638    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2639    pub const dnnl_Oidhw16o: Type = 114;
2640    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2641    pub const dnnl_OIdhw4i4o: Type = 129;
2642    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2643    pub const dnnl_OIdhw4o4i: Type = 130;
2644    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2645    pub const dnnl_Oidhw4o: Type = 126;
2646    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2647    pub const dnnl_OIdhw8i8o2i: Type = 709;
2648    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2649    pub const dnnl_OdhwI8i8o2i: Type = 805;
2650    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2651    pub const dnnl_OIdhw8i16o2i: Type = 143;
2652    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2653    pub const dnnl_OdhwI8i16o2i: Type = 802;
2654    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2655    pub const dnnl_OIdhw8i32o2i: Type = 259;
2656    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2657    pub const dnnl_OdhwI8i32o2i: Type = 796;
2658    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2659    pub const dnnl_OIdhw8i24o2i: Type = 705;
2660    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2661    pub const dnnl_OdhwI8i24o2i: Type = 799;
2662    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2663    pub const dnnl_OIdhw8i64o2i: Type = 260;
2664    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2665    pub const dnnl_OdhwI8i64o2i: Type = 793;
2666    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2667    pub const dnnl_OIdhw8i8o: Type = 147;
2668    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2669    pub const dnnl_OdhwI8i8o: Type = 790;
2670    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2671    pub const dnnl_OIdhw8o16i2o: Type = 111;
2672    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2673    pub const dnnl_IOdhw8o16i2o: Type = 117;
2674    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2675    pub const dnnl_OIdhw4i8o4i: Type = 700;
2676    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2677    pub const dnnl_OdhwI4i8o4i: Type = 820;
2678    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2679    pub const dnnl_OIdhw4i16o4i: Type = 119;
2680    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2681    pub const dnnl_OdhwI4i16o4i: Type = 817;
2682    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2683    pub const dnnl_OIdhw4i24o4i: Type = 701;
2684    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2685    pub const dnnl_OdhwI4i24o4i: Type = 814;
2686    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2687    pub const dnnl_OIdhw4i32o4i: Type = 253;
2688    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2689    pub const dnnl_OdhwI4i32o4i: Type = 811;
2690    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2691    pub const dnnl_OIdhw4i64o4i: Type = 254;
2692    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2693    pub const dnnl_OdhwI4i64o4i: Type = 808;
2694    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2695    pub const dnnl_OIdhw16i16o4i: Type = 255;
2696    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2697    pub const dnnl_OIdhw16i16o2i: Type = 256;
2698    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2699    pub const dnnl_OIdhw2i8o4i: Type = 120;
2700    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2701    pub const dnnl_OIdhw8o8i: Type = 139;
2702    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2703    pub const dnnl_OIdhw8o4i: Type = 140;
2704    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2705    pub const dnnl_IOdhw16i16o: Type = 141;
2706    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2707    pub const dnnl_OIdhw4o8i8o4i: Type = 153;
2708    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2709    pub const dnnl_IOdhw8o8i: Type = 843;
2710    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2711    pub const dnnl_IOdhw16o16i: Type = 229;
2712    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2713    pub const dnnl_OIdhw16o16i2o: Type = 515;
2714    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2715    pub const dnnl_OIdhw8i32o: Type = 684;
2716    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2717    pub const dnnl_OdhwI8i32o: Type = 781;
2718    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2719    pub const dnnl_OIdhw8i24o: Type = 688;
2720    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2721    pub const dnnl_OdhwI8i24o: Type = 784;
2722    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2723    pub const dnnl_OIdhw8i16o: Type = 692;
2724    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2725    pub const dnnl_OdhwI8i16o: Type = 787;
2726    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2727    pub const dnnl_Goiw16g: Type = 73;
2728    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2729    pub const dnnl_Goiw8g: Type = 74;
2730    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2731    pub const dnnl_Goiw4g: Type = 82;
2732    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2733    pub const dnnl_gIOw8o8i: Type = 839;
2734    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2735    pub const dnnl_gIOw16o16i: Type = 207;
2736    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2737    pub const dnnl_gIOw16i16o: Type = 208;
2738    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2739    pub const dnnl_gOIw16i16o: Type = 81;
2740    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2741    pub const dnnl_gOIw16o16i: Type = 80;
2742    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2743    pub const dnnl_gOiw16o: Type = 78;
2744    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2745    pub const dnnl_gOIw4i16o4i: Type = 92;
2746    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2747    pub const dnnl_gOIw2i8o4i: Type = 93;
2748    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2749    pub const dnnl_gOIw16i16o4i: Type = 94;
2750    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2751    pub const dnnl_gOIw16i16o2i: Type = 95;
2752    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2753    pub const dnnl_gOIw16o16i2o: Type = 276;
2754    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2755    pub const dnnl_gOIw4i4o: Type = 96;
2756    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2757    pub const dnnl_gOIw4o4i: Type = 97;
2758    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2759    pub const dnnl_gOiw4o: Type = 84;
2760    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2761    pub const dnnl_gOIw8i16o2i: Type = 110;
2762    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2763    pub const dnnl_gOIw8i8o: Type = 113;
2764    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2765    pub const dnnl_gOIw8o16i2o: Type = 105;
2766    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2767    pub const dnnl_gIOw8o16i2o: Type = 112;
2768    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2769    pub const dnnl_gOIw8o8i: Type = 108;
2770    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2771    pub const dnnl_gOIw8o4i: Type = 109;
2772    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2773    pub const dnnl_gOwi16o: Type = 183;
2774    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2775    pub const dnnl_gOwI16o2i: Type = 184;
2776    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2777    pub const dnnl_gOwI16o4i: Type = 185;
2778    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2779    pub const dnnl_gIwo8i: Type = 728;
2780    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2781    pub const dnnl_gIwO8i2o: Type = 729;
2782    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2783    pub const dnnl_gIwO8i4o: Type = 749;
2784    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2785    pub const dnnl_gIwo16i: Type = 633;
2786    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2787    pub const dnnl_gIwO16i2o: Type = 634;
2788    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2789    pub const dnnl_gIwO16i4o: Type = 635;
2790    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2791    pub const dnnl_gIwo24i: Type = 740;
2792    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2793    pub const dnnl_gIwO24i2o: Type = 741;
2794    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2795    pub const dnnl_gIwO24i4o: Type = 755;
2796    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2797    pub const dnnl_gOwi4o: Type = 186;
2798    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2799    pub const dnnl_gOwi8o: Type = 187;
2800    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2801    pub const dnnl_gOwI8o2i: Type = 678;
2802    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2803    pub const dnnl_gOwI8o4i: Type = 719;
2804    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2805    pub const dnnl_Goiw32g: Type = 76;
2806    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2807    pub const dnnl_gOIw2i4o2i: Type = 90;
2808    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2809    pub const dnnl_gOIw2o4i2o: Type = 118;
2810    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2811    pub const dnnl_gOIw4i8o2i: Type = 103;
2812    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2813    pub const dnnl_gOIw4o8i2o: Type = 91;
2814    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2815    pub const dnnl_goIw4i: Type = 533;
2816    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2817    pub const dnnl_goIw32i: Type = 378;
2818    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2819    pub const dnnl_gIOhw16i16o: Type = 210;
2820    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2821    pub const dnnl_gIOhw8o8i: Type = 840;
2822    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2823    pub const dnnl_gIOhw16o16i: Type = 209;
2824    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2825    pub const dnnl_gOhwi16o: Type = 188;
2826    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2827    pub const dnnl_gOhwI16o2i: Type = 189;
2828    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2829    pub const dnnl_gOhwI16o4i: Type = 190;
2830    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2831    pub const dnnl_gIhwo8i: Type = 730;
2832    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2833    pub const dnnl_gIhwO8i2o: Type = 731;
2834    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2835    pub const dnnl_gIhwO8i4o: Type = 750;
2836    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2837    pub const dnnl_gIhwo16i: Type = 636;
2838    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2839    pub const dnnl_gIhwO16i2o: Type = 637;
2840    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2841    pub const dnnl_gIhwO16i4o: Type = 638;
2842    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2843    pub const dnnl_gIhwo24i: Type = 742;
2844    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2845    pub const dnnl_gIhwO24i2o: Type = 743;
2846    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2847    pub const dnnl_gIhwO24i4o: Type = 756;
2848    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2849    pub const dnnl_gOhwi32o: Type = 191;
2850    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2851    pub const dnnl_gOhwi24o: Type = 664;
2852    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2853    pub const dnnl_gOhwI24o2i: Type = 673;
2854    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2855    pub const dnnl_gOhwI24o4i: Type = 714;
2856    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2857    pub const dnnl_gOhwi4o: Type = 192;
2858    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2859    pub const dnnl_gOhwi8o: Type = 193;
2860    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2861    pub const dnnl_gOhwI8o2i: Type = 679;
2862    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2863    pub const dnnl_gOhwI8o4i: Type = 720;
2864    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2865    pub const dnnl_Goihw16g: Type = 114;
2866    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2867    pub const dnnl_gOIhw16i16o: Type = 124;
2868    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2869    pub const dnnl_gOIhw16o16i: Type = 123;
2870    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2871    pub const dnnl_gOihw16o: Type = 121;
2872    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2873    pub const dnnl_gOIhw2i8o4i: Type = 125;
2874    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2875    pub const dnnl_gOIhw4i16o4i: Type = 134;
2876    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2877    pub const dnnl_gOIhw16i16o4i: Type = 135;
2878    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2879    pub const dnnl_gOIhw16i16o2i: Type = 136;
2880    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2881    pub const dnnl_gOIhw16o16i2o: Type = 277;
2882    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2883    pub const dnnl_gOIhw4i4o: Type = 137;
2884    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2885    pub const dnnl_gOIhw4o4i: Type = 131;
2886    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2887    pub const dnnl_gOihw4o: Type = 128;
2888    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2889    pub const dnnl_Goihw8g: Type = 138;
2890    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2891    pub const dnnl_Goihw4g: Type = 126;
2892    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2893    pub const dnnl_gOIhw8i16o2i: Type = 161;
2894    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2895    pub const dnnl_gOIhw8i8o: Type = 162;
2896    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2897    pub const dnnl_gOIhw8o16i2o: Type = 144;
2898    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2899    pub const dnnl_gIOhw8o16i2o: Type = 146;
2900    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2901    pub const dnnl_gOIhw8o8i: Type = 149;
2902    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2903    pub const dnnl_gOIhw8o4i: Type = 150;
2904    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2905    pub const dnnl_Goihw32g: Type = 115;
2906    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2907    pub const dnnl_gOwhi16o: Type = 201;
2908    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2909    pub const dnnl_goIhw4i: Type = 534;
2910    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2911    pub const dnnl_goIhw32i: Type = 536;
2912    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2913    pub const dnnl_OIw4o8i8o4i: Type = 151;
2914    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2915    pub const dnnl_OIhw4o8i8o4i: Type = 152;
2916    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2917    pub const dnnl_IOw4i8o8i4o: Type = 154;
2918    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2919    pub const dnnl_IOhw4i8o8i4o: Type = 155;
2920    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2921    pub const dnnl_IOdhw4i8o8i4o: Type = 156;
2922    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2923    pub const dnnl_OIhw2o8i8o2i: Type = 157;
2924    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2925    pub const dnnl_gOIw4o8i8o4i: Type = 158;
2926    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2927    pub const dnnl_gOIhw4o8i8o4i: Type = 159;
2928    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2929    pub const dnnl_gOIdhw4o8i8o4i: Type = 179;
2930    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2931    pub const dnnl_gIOw4i8o8i4o: Type = 226;
2932    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2933    pub const dnnl_gIOhw4i8o8i4o: Type = 227;
2934    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2935    pub const dnnl_gIOdhw4i8o8i4o: Type = 228;
2936    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2937    pub const dnnl_gOIhw2o8i8o2i: Type = 160;
2938    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2939    pub const dnnl_gOIhw2i4o2i: Type = 132;
2940    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2941    pub const dnnl_gOIhw2o4i2o: Type = 163;
2942    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2943    pub const dnnl_gOIhw4i8o2i: Type = 145;
2944    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2945    pub const dnnl_gOIhw4o8i2o: Type = 133;
2946    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2947    pub const dnnl_gIOdhw16i16o: Type = 196;
2948    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2949    pub const dnnl_gIOdhw8o8i: Type = 844;
2950    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2951    pub const dnnl_gIOdhw16o16i: Type = 230;
2952    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2953    pub const dnnl_gOdhwi16o: Type = 194;
2954    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2955    pub const dnnl_gOdhwI16o2i: Type = 195;
2956    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2957    pub const dnnl_gOdhwI16o4i: Type = 272;
2958    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2959    pub const dnnl_gIdhwo8i: Type = 732;
2960    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2961    pub const dnnl_gIdhwO8i2o: Type = 733;
2962    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2963    pub const dnnl_gIdhwO8i4o: Type = 751;
2964    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2965    pub const dnnl_gIdhwo16i: Type = 639;
2966    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2967    pub const dnnl_gIdhwO16i2o: Type = 640;
2968    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2969    pub const dnnl_gIdhwO16i4o: Type = 641;
2970    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2971    pub const dnnl_gIdhwo24i: Type = 744;
2972    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2973    pub const dnnl_gIdhwO24i2o: Type = 745;
2974    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2975    pub const dnnl_gIdhwO24i4o: Type = 757;
2976    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2977    pub const dnnl_gOdhwi4o: Type = 197;
2978    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2979    pub const dnnl_gOdhwi8o: Type = 198;
2980    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2981    pub const dnnl_gOdhwI8o2i: Type = 680;
2982    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2983    pub const dnnl_gOdhwI8o4i: Type = 721;
2984    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2985    pub const dnnl_gOdwhi16o: Type = 518;
2986    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2987    pub const dnnl_gOIdhw16i16o: Type = 166;
2988    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2989    pub const dnnl_gOIdhw4i16o4i: Type = 167;
2990    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2991    pub const dnnl_gOIdhw16i16o4i: Type = 261;
2992    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2993    pub const dnnl_gOIdhw2i8o4i: Type = 168;
2994    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2995    pub const dnnl_gOIdhw16i16o2i: Type = 262;
2996    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2997    pub const dnnl_gOIdhw16o16i: Type = 165;
2998    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
2999    pub const dnnl_gOIdhw16o16i2o: Type = 516;
3000    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3001    pub const dnnl_gOidhw16o: Type = 164;
3002    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3003    pub const dnnl_gOIdhw4i4o: Type = 172;
3004    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3005    pub const dnnl_gOIdhw4o4i: Type = 173;
3006    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3007    pub const dnnl_gOidhw4o: Type = 171;
3008    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3009    pub const dnnl_gOIdhw8i16o2i: Type = 178;
3010    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3011    pub const dnnl_gOIdhw8i8o: Type = 182;
3012    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3013    pub const dnnl_gOIdhw8o16i2o: Type = 180;
3014    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3015    pub const dnnl_gIOdhw8o16i2o: Type = 181;
3016    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3017    pub const dnnl_gOIdhw8o8i: Type = 176;
3018    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3019    pub const dnnl_gOIdhw8o4i: Type = 177;
3020    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3021    pub const dnnl_Goidhw16g: Type = 199;
3022    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3023    pub const dnnl_Goidhw32g: Type = 200;
3024    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3025    pub const dnnl_gOIdhw2i4o2i: Type = 174;
3026    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3027    pub const dnnl_gOIdhw4i8o2i: Type = 169;
3028    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3029    pub const dnnl_gOIdhw2o4i2o: Type = 170;
3030    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3031    pub const dnnl_gOIdhw4o8i2o: Type = 175;
3032    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3033    pub const dnnl_goIdhw4i: Type = 535;
3034    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3035    pub const dnnl_goIdhw32i: Type = 537;
3036    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3037    pub const dnnl_Owi24o: Type = 660;
3038    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3039    pub const dnnl_OwI24o2i: Type = 669;
3040    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3041    pub const dnnl_OwI24o4i: Type = 710;
3042    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3043    pub const dnnl_Owi32o: Type = 278;
3044    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3045    pub const dnnl_OwI32o2i: Type = 279;
3046    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3047    pub const dnnl_OwI32o4i: Type = 280;
3048    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3049    pub const dnnl_Owi48o: Type = 281;
3050    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3051    pub const dnnl_OwI48o2i: Type = 282;
3052    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3053    pub const dnnl_OwI48o4i: Type = 283;
3054    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3055    pub const dnnl_Owi64o: Type = 284;
3056    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3057    pub const dnnl_OwI64o2i: Type = 285;
3058    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3059    pub const dnnl_OwI64o4i: Type = 286;
3060    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3061    pub const dnnl_Iwo32i: Type = 570;
3062    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3063    pub const dnnl_IwO32i2o: Type = 571;
3064    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3065    pub const dnnl_IwO32i4o: Type = 572;
3066    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3067    pub const dnnl_Iwo48i: Type = 573;
3068    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3069    pub const dnnl_IwO48i2o: Type = 574;
3070    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3071    pub const dnnl_IwO48i4o: Type = 575;
3072    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3073    pub const dnnl_Iwo64i: Type = 576;
3074    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3075    pub const dnnl_IwO64i2o: Type = 577;
3076    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3077    pub const dnnl_IwO64i4o: Type = 578;
3078    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3079    pub const dnnl_wIo2i: Type = 287;
3080    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3081    pub const dnnl_wIo4i: Type = 288;
3082    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3083    pub const dnnl_gOwi24o: Type = 663;
3084    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3085    pub const dnnl_gOwI24o2i: Type = 672;
3086    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3087    pub const dnnl_gOwI24o4i: Type = 713;
3088    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3089    pub const dnnl_gOwi32o: Type = 289;
3090    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3091    pub const dnnl_gOwI32o2i: Type = 290;
3092    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3093    pub const dnnl_gOwI32o4i: Type = 291;
3094    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3095    pub const dnnl_gOwi48o: Type = 292;
3096    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3097    pub const dnnl_gOwI48o2i: Type = 293;
3098    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3099    pub const dnnl_gOwI48o4i: Type = 294;
3100    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3101    pub const dnnl_gOwi64o: Type = 295;
3102    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3103    pub const dnnl_gOwI64o2i: Type = 296;
3104    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3105    pub const dnnl_gOwI64o4i: Type = 297;
3106    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3107    pub const dnnl_gIwo32i: Type = 579;
3108    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3109    pub const dnnl_gIwO32i2o: Type = 580;
3110    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3111    pub const dnnl_gIwO32i4o: Type = 581;
3112    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3113    pub const dnnl_gIwo48i: Type = 582;
3114    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3115    pub const dnnl_gIwO48i2o: Type = 583;
3116    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3117    pub const dnnl_gIwO48i4o: Type = 584;
3118    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3119    pub const dnnl_gIwo64i: Type = 585;
3120    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3121    pub const dnnl_gIwO64i2o: Type = 586;
3122    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3123    pub const dnnl_gIwO64i4o: Type = 587;
3124    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3125    pub const dnnl_gwio: Type = 24;
3126    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3127    pub const dnnl_gwIo2i: Type = 298;
3128    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3129    pub const dnnl_gwIo4i: Type = 299;
3130    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3131    pub const dnnl_OhwI24o: Type = 661;
3132    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3133    pub const dnnl_OhwI24o2i: Type = 670;
3134    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3135    pub const dnnl_OhwI24o4i: Type = 711;
3136    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3137    pub const dnnl_OhwI32o: Type = 214;
3138    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3139    pub const dnnl_OhwI32o2i: Type = 300;
3140    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3141    pub const dnnl_OhwI32o4i: Type = 301;
3142    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3143    pub const dnnl_Ohwi48o: Type = 302;
3144    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3145    pub const dnnl_OhwI48o2i: Type = 303;
3146    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3147    pub const dnnl_OhwI48o4i: Type = 304;
3148    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3149    pub const dnnl_Ohwi64o: Type = 305;
3150    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3151    pub const dnnl_OhwI64o2i: Type = 306;
3152    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3153    pub const dnnl_OhwI64o4i: Type = 307;
3154    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3155    pub const dnnl_Ihwo32i: Type = 642;
3156    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3157    pub const dnnl_IhwO32i2o: Type = 643;
3158    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3159    pub const dnnl_IhwO32i4o: Type = 644;
3160    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3161    pub const dnnl_Ihwo48i: Type = 645;
3162    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3163    pub const dnnl_IhwO48i2o: Type = 646;
3164    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3165    pub const dnnl_IhwO48i4o: Type = 647;
3166    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3167    pub const dnnl_Ihwo64i: Type = 648;
3168    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3169    pub const dnnl_IhwO64i2o: Type = 649;
3170    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3171    pub const dnnl_IhwO64i4o: Type = 650;
3172    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3173    pub const dnnl_hwIo2i: Type = 308;
3174    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3175    pub const dnnl_hwIo4i: Type = 309;
3176    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3177    pub const dnnl_gOhwI24o: Type = 664;
3178    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3179    pub const dnnl_gOhwI32o: Type = 191;
3180    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3181    pub const dnnl_gOhwI32o2i: Type = 310;
3182    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3183    pub const dnnl_gOhwI32o4i: Type = 311;
3184    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3185    pub const dnnl_gOhwi48o: Type = 312;
3186    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3187    pub const dnnl_gOhwI48o2i: Type = 313;
3188    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3189    pub const dnnl_gOhwI48o4i: Type = 314;
3190    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3191    pub const dnnl_gOhwi64o: Type = 315;
3192    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3193    pub const dnnl_gOhwI64o2i: Type = 316;
3194    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3195    pub const dnnl_gOhwI64o4i: Type = 317;
3196    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3197    pub const dnnl_gIhwo32i: Type = 651;
3198    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3199    pub const dnnl_gIhwO32i2o: Type = 652;
3200    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3201    pub const dnnl_gIhwO32i4o: Type = 653;
3202    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3203    pub const dnnl_gIhwo48i: Type = 654;
3204    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3205    pub const dnnl_gIhwO48i2o: Type = 655;
3206    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3207    pub const dnnl_gIhwO48i4o: Type = 656;
3208    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3209    pub const dnnl_gIhwo64i: Type = 657;
3210    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3211    pub const dnnl_gIhwO64i2o: Type = 658;
3212    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3213    pub const dnnl_gIhwO64i4o: Type = 659;
3214    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3215    pub const dnnl_ghwio: Type = 34;
3216    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3217    pub const dnnl_ghwIo2i: Type = 318;
3218    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3219    pub const dnnl_ghwIo4i: Type = 319;
3220    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3221    pub const dnnl_Odhwi24o: Type = 662;
3222    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3223    pub const dnnl_OdhwI24o2i: Type = 671;
3224    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3225    pub const dnnl_OdhwI24o4i: Type = 712;
3226    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3227    pub const dnnl_Odhwi32o: Type = 320;
3228    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3229    pub const dnnl_OdhwI32o2i: Type = 321;
3230    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3231    pub const dnnl_OdhwI32o4i: Type = 322;
3232    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3233    pub const dnnl_Odhwi48o: Type = 323;
3234    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3235    pub const dnnl_OdhwI48o2i: Type = 324;
3236    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3237    pub const dnnl_OdhwI48o4i: Type = 325;
3238    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3239    pub const dnnl_Odhwi64o: Type = 326;
3240    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3241    pub const dnnl_OdhwI64o2i: Type = 327;
3242    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3243    pub const dnnl_OdhwI64o4i: Type = 328;
3244    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3245    pub const dnnl_Idhwo32i: Type = 561;
3246    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3247    pub const dnnl_IdhwO32i2o: Type = 562;
3248    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3249    pub const dnnl_IdhwO32i4o: Type = 563;
3250    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3251    pub const dnnl_Idhwo48i: Type = 564;
3252    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3253    pub const dnnl_IdhwO48i2o: Type = 565;
3254    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3255    pub const dnnl_IdhwO48i4o: Type = 566;
3256    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3257    pub const dnnl_Idhwo64i: Type = 567;
3258    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3259    pub const dnnl_IdhwO64i2o: Type = 568;
3260    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3261    pub const dnnl_IdhwO64i4o: Type = 569;
3262    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3263    pub const dnnl_dhwIo2i: Type = 329;
3264    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3265    pub const dnnl_dhwIo4i: Type = 330;
3266    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3267    pub const dnnl_gOdhwi24o: Type = 665;
3268    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3269    pub const dnnl_gOdhwI24o2i: Type = 674;
3270    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3271    pub const dnnl_gOdhwI24o4i: Type = 715;
3272    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3273    pub const dnnl_gOdhwi32o: Type = 331;
3274    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3275    pub const dnnl_gOdhwI32o2i: Type = 332;
3276    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3277    pub const dnnl_gOdhwI32o4i: Type = 333;
3278    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3279    pub const dnnl_gOdhwi48o: Type = 334;
3280    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3281    pub const dnnl_gOdhwI48o2i: Type = 335;
3282    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3283    pub const dnnl_gOdhwI48o4i: Type = 336;
3284    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3285    pub const dnnl_gOdhwi64o: Type = 337;
3286    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3287    pub const dnnl_gOdhwI64o2i: Type = 338;
3288    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3289    pub const dnnl_gOdhwI64o4i: Type = 339;
3290    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3291    pub const dnnl_gIdhwo32i: Type = 552;
3292    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3293    pub const dnnl_gIdhwO32i2o: Type = 553;
3294    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3295    pub const dnnl_gIdhwO32i4o: Type = 554;
3296    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3297    pub const dnnl_gIdhwo48i: Type = 555;
3298    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3299    pub const dnnl_gIdhwO48i2o: Type = 556;
3300    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3301    pub const dnnl_gIdhwO48i4o: Type = 557;
3302    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3303    pub const dnnl_gIdhwo64i: Type = 558;
3304    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3305    pub const dnnl_gIdhwO64i2o: Type = 559;
3306    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3307    pub const dnnl_gIdhwO64i4o: Type = 560;
3308    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3309    pub const dnnl_gdhwio: Type = 44;
3310    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3311    pub const dnnl_gdhwIo2i: Type = 340;
3312    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3313    pub const dnnl_gdhwIo4i: Type = 341;
3314    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3315    pub const dnnl_OI16i32o4i: Type = 342;
3316    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3317    pub const dnnl_OI16i48o4i: Type = 343;
3318    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3319    pub const dnnl_OI16i64o4i: Type = 344;
3320    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3321    pub const dnnl_OI16i16o2i: Type = 345;
3322    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3323    pub const dnnl_OI16i32o2i: Type = 346;
3324    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3325    pub const dnnl_OI16i48o2i: Type = 347;
3326    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3327    pub const dnnl_OI16i64o2i: Type = 348;
3328    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3329    pub const dnnl_OIw16i32o4i: Type = 349;
3330    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3331    pub const dnnl_OIw16i48o4i: Type = 350;
3332    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3333    pub const dnnl_OIw16i64o4i: Type = 351;
3334    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3335    pub const dnnl_OIw16i32o2i: Type = 352;
3336    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3337    pub const dnnl_OIw16i48o2i: Type = 353;
3338    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3339    pub const dnnl_OIw16i64o2i: Type = 354;
3340    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3341    pub const dnnl_OIhw16i32o4i: Type = 355;
3342    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3343    pub const dnnl_OIhw16i48o4i: Type = 356;
3344    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3345    pub const dnnl_OIhw16i64o4i: Type = 357;
3346    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3347    pub const dnnl_OIhw16i32o2i: Type = 358;
3348    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3349    pub const dnnl_OIhw16i48o2i: Type = 359;
3350    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3351    pub const dnnl_OIhw16i64o2i: Type = 360;
3352    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3353    pub const dnnl_OIdhw16i32o4i: Type = 361;
3354    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3355    pub const dnnl_OIdhw16i48o4i: Type = 362;
3356    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3357    pub const dnnl_OIdhw16i64o4i: Type = 363;
3358    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3359    pub const dnnl_OIdhw16i32o2i: Type = 364;
3360    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3361    pub const dnnl_OIdhw16i48o2i: Type = 365;
3362    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3363    pub const dnnl_OIdhw16i64o2i: Type = 366;
3364    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3365    pub const dnnl_OwI16i16o2i: Type = 393;
3366    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3367    pub const dnnl_OwI16i16o4i: Type = 394;
3368    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3369    pub const dnnl_OhwI16i16o2i: Type = 395;
3370    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3371    pub const dnnl_OhwI16i16o4i: Type = 396;
3372    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3373    pub const dnnl_OdhwI16i16o2i: Type = 397;
3374    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3375    pub const dnnl_OdhwI16i16o4i: Type = 399;
3376    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3377    pub const dnnl_IwO16o16i2o: Type = 588;
3378    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3379    pub const dnnl_IwO16o16i4o: Type = 589;
3380    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3381    pub const dnnl_IhwO16o16i2o: Type = 590;
3382    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3383    pub const dnnl_IhwO16o16i4o: Type = 591;
3384    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3385    pub const dnnl_IdhwO16o16i2o: Type = 592;
3386    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3387    pub const dnnl_IdhwO16o16i4o: Type = 593;
3388    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3389    pub const dnnl_gOwI16i16o2i: Type = 406;
3390    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3391    pub const dnnl_gOwI16i16o4i: Type = 407;
3392    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3393    pub const dnnl_gOhwI16i16o2i: Type = 390;
3394    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3395    pub const dnnl_gOhwI16i16o4i: Type = 391;
3396    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3397    pub const dnnl_gOdhwI16i16o2i: Type = 392;
3398    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3399    pub const dnnl_gOdhwI16i16o4i: Type = 398;
3400    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3401    pub const dnnl_gIwO16o16i2o: Type = 594;
3402    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3403    pub const dnnl_gIwO16o16i4o: Type = 595;
3404    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3405    pub const dnnl_gIhwO16o16i2o: Type = 596;
3406    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3407    pub const dnnl_gIhwO16o16i4o: Type = 597;
3408    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3409    pub const dnnl_gIdhwO16o16i2o: Type = 598;
3410    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3411    pub const dnnl_gIdhwO16o16i4o: Type = 599;
3412    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3413    pub const dnnl_OwI16i32o2i: Type = 400;
3414    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3415    pub const dnnl_OwI16i32o4i: Type = 401;
3416    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3417    pub const dnnl_OwI16i48o2i: Type = 402;
3418    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3419    pub const dnnl_OwI16i48o4i: Type = 403;
3420    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3421    pub const dnnl_OwI16i64o2i: Type = 404;
3422    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3423    pub const dnnl_OwI16i64o4i: Type = 405;
3424    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3425    pub const dnnl_IwO16o32i2o: Type = 600;
3426    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3427    pub const dnnl_IwO16o32i4o: Type = 601;
3428    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3429    pub const dnnl_IwO16o48i2o: Type = 602;
3430    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3431    pub const dnnl_IwO16o48i4o: Type = 603;
3432    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3433    pub const dnnl_IwO16o64i2o: Type = 604;
3434    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3435    pub const dnnl_IwO16o64i4o: Type = 605;
3436    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3437    pub const dnnl_gOwI16i32o2i: Type = 408;
3438    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3439    pub const dnnl_gOwI16i32o4i: Type = 409;
3440    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3441    pub const dnnl_gOwI16i48o2i: Type = 410;
3442    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3443    pub const dnnl_gOwI16i48o4i: Type = 411;
3444    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3445    pub const dnnl_gOwI16i64o2i: Type = 412;
3446    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3447    pub const dnnl_gOwI16i64o4i: Type = 413;
3448    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3449    pub const dnnl_gIwO16o32i2o: Type = 606;
3450    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3451    pub const dnnl_gIwO16o32i4o: Type = 607;
3452    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3453    pub const dnnl_gIwO16o48i2o: Type = 608;
3454    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3455    pub const dnnl_gIwO16o48i4o: Type = 609;
3456    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3457    pub const dnnl_gIwO16o64i2o: Type = 610;
3458    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3459    pub const dnnl_gIwO16o64i4o: Type = 611;
3460    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3461    pub const dnnl_OhwI16i32o2i: Type = 414;
3462    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3463    pub const dnnl_OhwI16i32o4i: Type = 415;
3464    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3465    pub const dnnl_OhwI16i48o2i: Type = 416;
3466    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3467    pub const dnnl_OhwI16i48o4i: Type = 417;
3468    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3469    pub const dnnl_OhwI16i64o2i: Type = 418;
3470    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3471    pub const dnnl_OhwI16i64o4i: Type = 419;
3472    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3473    pub const dnnl_IhwO16o32i2o: Type = 612;
3474    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3475    pub const dnnl_IhwO16o32i4o: Type = 613;
3476    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3477    pub const dnnl_IhwO16o48i2o: Type = 614;
3478    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3479    pub const dnnl_IhwO16o48i4o: Type = 615;
3480    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3481    pub const dnnl_IhwO16o64i2o: Type = 616;
3482    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3483    pub const dnnl_IhwO16o64i4o: Type = 617;
3484    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3485    pub const dnnl_gOhwI16i32o2i: Type = 420;
3486    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3487    pub const dnnl_gOhwI16i32o4i: Type = 421;
3488    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3489    pub const dnnl_gOhwI16i48o2i: Type = 422;
3490    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3491    pub const dnnl_gOhwI16i48o4i: Type = 423;
3492    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3493    pub const dnnl_gOhwI16i64o2i: Type = 424;
3494    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3495    pub const dnnl_gOhwI16i64o4i: Type = 425;
3496    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3497    pub const dnnl_gIhwO16o32i2o: Type = 618;
3498    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3499    pub const dnnl_gIhwO16o32i4o: Type = 619;
3500    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3501    pub const dnnl_gIhwO16o48i2o: Type = 620;
3502    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3503    pub const dnnl_gIhwO16o48i4o: Type = 621;
3504    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3505    pub const dnnl_gIhwO16o64i2o: Type = 622;
3506    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3507    pub const dnnl_gIhwO16o64i4o: Type = 623;
3508    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3509    pub const dnnl_OdhwI16i32o2i: Type = 426;
3510    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3511    pub const dnnl_OdhwI16i32o4i: Type = 427;
3512    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3513    pub const dnnl_OdhwI16i48o2i: Type = 428;
3514    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3515    pub const dnnl_OdhwI16i48o4i: Type = 429;
3516    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3517    pub const dnnl_OdhwI16i64o2i: Type = 430;
3518    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3519    pub const dnnl_OdhwI16i64o4i: Type = 431;
3520    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3521    pub const dnnl_IdhwO16o32i2o: Type = 546;
3522    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3523    pub const dnnl_IdhwO16o32i4o: Type = 547;
3524    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3525    pub const dnnl_IdhwO16o48i2o: Type = 548;
3526    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3527    pub const dnnl_IdhwO16o48i4o: Type = 549;
3528    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3529    pub const dnnl_IdhwO16o64i2o: Type = 550;
3530    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3531    pub const dnnl_IdhwO16o64i4o: Type = 551;
3532    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3533    pub const dnnl_gOdhwI16i32o2i: Type = 432;
3534    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3535    pub const dnnl_gOdhwI16i32o4i: Type = 433;
3536    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3537    pub const dnnl_gOdhwI16i48o2i: Type = 434;
3538    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3539    pub const dnnl_gOdhwI16i48o4i: Type = 435;
3540    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3541    pub const dnnl_gOdhwI16i64o2i: Type = 436;
3542    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3543    pub const dnnl_gOdhwI16i64o4i: Type = 437;
3544    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3545    pub const dnnl_gIdhwO16o32i2o: Type = 540;
3546    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3547    pub const dnnl_gIdhwO16o32i4o: Type = 541;
3548    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3549    pub const dnnl_gIdhwO16o48i2o: Type = 542;
3550    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3551    pub const dnnl_gIdhwO16o48i4o: Type = 543;
3552    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3553    pub const dnnl_gIdhwO16o64i2o: Type = 544;
3554    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3555    pub const dnnl_gIdhwO16o64i4o: Type = 545;
3556    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3557    pub const dnnl_hwioG16g: Type = 438;
3558    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3559    pub const dnnl_hwioG8g: Type = 539;
3560    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3561    pub const dnnl_dhwioG16g: Type = 765;
3562    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3563    pub const dnnl_dhwioG8g: Type = 766;
3564    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3565    pub const dnnl_NCdhw40n16c: Type = 444;
3566    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3567    pub const dnnl_NCw40n16c: Type = 372;
3568    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3569    pub const dnnl_NChw40n16c: Type = 376;
3570    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3571    pub const dnnl_NCw40n32c: Type = 373;
3572    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3573    pub const dnnl_NChw40n32c: Type = 377;
3574    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3575    pub const dnnl_NCdhw40n32c: Type = 445;
3576    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3577    pub const dnnl_OIdhw4o8i8o2i: Type = 447;
3578    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3579    pub const dnnl_OIhw4o8i8o2i: Type = 448;
3580    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3581    pub const dnnl_OIw4o8i8o2i: Type = 449;
3582    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3583    pub const dnnl_gOIdhw4o8i8o2i: Type = 450;
3584    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3585    pub const dnnl_gOIhw4o8i8o2i: Type = 451;
3586    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3587    pub const dnnl_gOIw4o8i8o2i: Type = 452;
3588    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3589    pub const dnnl_IOdhw4i8o8i2o: Type = 453;
3590    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3591    pub const dnnl_IOhw4i8o8i2o: Type = 454;
3592    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3593    pub const dnnl_IOw4i8o8i2o: Type = 455;
3594    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3595    pub const dnnl_gIOdhw4i8o8i2o: Type = 456;
3596    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3597    pub const dnnl_gIOhw4i8o8i2o: Type = 457;
3598    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3599    pub const dnnl_gIOw4i8o8i2o: Type = 458;
3600    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3601    pub const dnnl_NCw2c32n8c: Type = 474;
3602    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3603    pub const dnnl_NChw2c32n8c: Type = 478;
3604    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3605    pub const dnnl_NCdhw2c32n8c: Type = 483;
3606    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3607    pub const dnnl_OIw2i8o16i4o: Type = 469;
3608    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3609    pub const dnnl_OIhw2i8o16i4o: Type = 470;
3610    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3611    pub const dnnl_OIdhw2i8o16i4o: Type = 471;
3612    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3613    pub const dnnl_OIw2o8i16o4i: Type = 472;
3614    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3615    pub const dnnl_OIw2o8i16o2i: Type = 473;
3616    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3617    pub const dnnl_IOw2i8o16i4o: Type = 490;
3618    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3619    pub const dnnl_IOw2i8o16i2o: Type = 493;
3620    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3621    pub const dnnl_OIhw2o8i16o4i: Type = 475;
3622    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3623    pub const dnnl_OIhw2o8i16o2i: Type = 476;
3624    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3625    pub const dnnl_IOhw2i8o16i4o: Type = 489;
3626    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3627    pub const dnnl_IOhw2i8o16i2o: Type = 492;
3628    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3629    pub const dnnl_OIdhw2o8i16o4i: Type = 480;
3630    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3631    pub const dnnl_OIdhw2o8i16o2i: Type = 481;
3632    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3633    pub const dnnl_IOdhw2i8o16i4o: Type = 488;
3634    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3635    pub const dnnl_IOdhw2i8o16i2o: Type = 491;
3636    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3637    pub const dnnl_gOIw2o8i16o2i: Type = 485;
3638    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3639    pub const dnnl_gIOw2i8o16i2o: Type = 477;
3640    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3641    pub const dnnl_gIOhw2i8o16i2o: Type = 494;
3642    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3643    pub const dnnl_gIOdhw2i8o16i2o: Type = 495;
3644    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3645    pub const dnnl_gOIhw2o8i16o2i: Type = 486;
3646    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3647    pub const dnnl_gOIdhw2o8i16o2i: Type = 487;
3648    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3649    pub const dnnl_gOIw2o8i16o4i: Type = 497;
3650    #[doc = " 3D CNN activations tensor blocked by channels with block size 8,\n an alias to #dnnl_aBc8b"]
3651    pub const dnnl_gOIhw2o8i16o4i: Type = 498;
3652}
3653pub mod dnnl_prop_kind_t {
3654    #[doc = " Kinds of propagation."]
3655    pub type Type = ::std::os::raw::c_uint;
3656    #[doc = " Undefined propagation type."]
3657    pub const dnnl_prop_kind_undef: Type = 0;
3658    #[doc = " Forward data propagation (training mode). In this mode primitives\n perform computations necessary for subsequent backward propagation."]
3659    pub const dnnl_forward_training: Type = 64;
3660    #[doc = " Forward data propagation (inference mode). In this mode primitives\n perform only computations that are necessary for inference and omit\n computations that are necessary only for backward propagation."]
3661    pub const dnnl_forward_inference: Type = 96;
3662    #[doc = " Forward data propagation (alias for @c dnnl_forward_training)."]
3663    pub const dnnl_forward: Type = 64;
3664    #[doc = " Backward propagation (with respect to all parameters)."]
3665    pub const dnnl_backward: Type = 128;
3666    #[doc = " Backward data propagation."]
3667    pub const dnnl_backward_data: Type = 160;
3668    #[doc = " Backward weights propagation."]
3669    pub const dnnl_backward_weights: Type = 192;
3670    #[doc = " Backward bias propagation."]
3671    pub const dnnl_backward_bias: Type = 193;
3672}
3673pub mod dnnl_primitive_kind_t {
3674    #[doc = " Kinds of primitives. Used to implement a way to extend the library with new\n primitives without changing the ABI."]
3675    pub type Type = ::std::os::raw::c_uint;
3676    #[doc = " Undefined primitive"]
3677    pub const dnnl_undefined_primitive: Type = 0;
3678    #[doc = " A reorder primitive."]
3679    pub const dnnl_reorder: Type = 1;
3680    #[doc = " A shuffle primitive."]
3681    pub const dnnl_shuffle: Type = 2;
3682    #[doc = " A (out-of-place) concat primitive."]
3683    pub const dnnl_concat: Type = 3;
3684    #[doc = " A sum primitive."]
3685    pub const dnnl_sum: Type = 4;
3686    #[doc = " A convolution primitive."]
3687    pub const dnnl_convolution: Type = 5;
3688    #[doc = " A deconvolution primitive."]
3689    pub const dnnl_deconvolution: Type = 6;
3690    #[doc = " An element-wise primitive."]
3691    pub const dnnl_eltwise: Type = 7;
3692    #[doc = " An LRN primitive."]
3693    pub const dnnl_lrn: Type = 8;
3694    #[doc = " A batch normalization primitive."]
3695    pub const dnnl_batch_normalization: Type = 9;
3696    #[doc = " An inner product primitive."]
3697    pub const dnnl_inner_product: Type = 10;
3698    #[doc = " A rnn primitive."]
3699    pub const dnnl_rnn: Type = 11;
3700    #[doc = " A matrix multiplication primitive (internal)."]
3701    pub const dnnl_gemm: Type = 12;
3702    #[doc = " A binary primitive."]
3703    pub const dnnl_binary: Type = 13;
3704    #[doc = " A matrix multiplication primitive."]
3705    pub const dnnl_matmul: Type = 14;
3706    #[doc = " A resampling primitive."]
3707    pub const dnnl_resampling: Type = 15;
3708    #[doc = " A pooling primitive."]
3709    pub const dnnl_pooling: Type = 16;
3710    #[doc = " A reduction primitive."]
3711    pub const dnnl_reduction: Type = 17;
3712    #[doc = " A PReLU primitive."]
3713    pub const dnnl_prelu: Type = 18;
3714    #[doc = " A softmax primitive."]
3715    pub const dnnl_softmax: Type = 19;
3716    #[doc = " A layer normalization primitive."]
3717    pub const dnnl_layer_normalization: Type = 20;
3718    #[doc = " A group normalization primitive."]
3719    pub const dnnl_group_normalization: Type = 21;
3720    #[doc = " Parameter to allow internal only primitives without undefined behavior.\n This parameter is chosen to be valid for so long as sizeof(int) >= 2."]
3721    pub const dnnl_primitive_kind_max: Type = 32767;
3722}
3723pub mod dnnl_alg_kind_t {
3724    #[doc = " Kinds of algorithms."]
3725    pub type Type = ::std::os::raw::c_uint;
3726    pub const dnnl_alg_kind_undef: Type = 0;
3727    #[doc = " Direct convolution"]
3728    pub const dnnl_convolution_direct: Type = 1;
3729    #[doc = " Winograd convolution"]
3730    pub const dnnl_convolution_winograd: Type = 2;
3731    #[doc = " Convolution algorithm(either direct or Winograd) is chosen just in time"]
3732    pub const dnnl_convolution_auto: Type = 3;
3733    #[doc = " Direct deconvolution"]
3734    pub const dnnl_deconvolution_direct: Type = 10;
3735    #[doc = " Winograd deconvolution"]
3736    pub const dnnl_deconvolution_winograd: Type = 11;
3737    #[doc = " Eltwise: ReLU"]
3738    pub const dnnl_eltwise_relu: Type = 32;
3739    #[doc = " Eltwise: hyperbolic tangent non-linearity (tanh)"]
3740    pub const dnnl_eltwise_tanh: Type = 33;
3741    #[doc = " Eltwise: exponential linear unit (elu)"]
3742    pub const dnnl_eltwise_elu: Type = 34;
3743    #[doc = " Eltwise: square"]
3744    pub const dnnl_eltwise_square: Type = 35;
3745    #[doc = " Eltwise: abs"]
3746    pub const dnnl_eltwise_abs: Type = 36;
3747    #[doc = " Eltwise: square root"]
3748    pub const dnnl_eltwise_sqrt: Type = 37;
3749    #[doc = " Eltwise: linear"]
3750    pub const dnnl_eltwise_linear: Type = 38;
3751    #[doc = " Eltwise: soft_relu"]
3752    pub const dnnl_eltwise_soft_relu: Type = 39;
3753    #[doc = " Eltwise: hardsigmoid"]
3754    pub const dnnl_eltwise_hardsigmoid: Type = 40;
3755    #[doc = " Eltwise: logistic"]
3756    pub const dnnl_eltwise_logistic: Type = 41;
3757    #[doc = " Eltwise: exponent"]
3758    pub const dnnl_eltwise_exp: Type = 42;
3759    #[doc = " Eltwise: gelu\n\n @note Tanh approximation formula is used to approximate\n the cumulative distribution function of a Gaussian here"]
3760    pub const dnnl_eltwise_gelu_tanh: Type = 43;
3761    #[doc = " Eltwise: swish"]
3762    pub const dnnl_eltwise_swish: Type = 44;
3763    #[doc = " Eltwise: natural logarithm"]
3764    pub const dnnl_eltwise_log: Type = 45;
3765    #[doc = " Eltwise: clip"]
3766    pub const dnnl_eltwise_clip: Type = 46;
3767    #[doc = " Eltwise: clip version 2"]
3768    pub const dnnl_eltwise_clip_v2: Type = 47;
3769    #[doc = " Eltwise: pow"]
3770    pub const dnnl_eltwise_pow: Type = 48;
3771    #[doc = " Eltwise: erf-based gelu"]
3772    pub const dnnl_eltwise_gelu_erf: Type = 49;
3773    #[doc = " Eltwise: round"]
3774    pub const dnnl_eltwise_round: Type = 50;
3775    #[doc = " Eltwise: mish"]
3776    pub const dnnl_eltwise_mish: Type = 51;
3777    #[doc = " Eltwise: hardswish"]
3778    pub const dnnl_eltwise_hardswish: Type = 52;
3779    #[doc = " Eltwise: ReLU (dst for backward)"]
3780    pub const dnnl_eltwise_relu_use_dst_for_bwd: Type = 256;
3781    #[doc = " Eltwise: hyperbolic tangent non-linearity (tanh) (dst for backward)"]
3782    pub const dnnl_eltwise_tanh_use_dst_for_bwd: Type = 257;
3783    #[doc = " Eltwise: exponential linear unit (elu) (dst for backward)"]
3784    pub const dnnl_eltwise_elu_use_dst_for_bwd: Type = 258;
3785    #[doc = " Eltwise: square root (dst for backward)"]
3786    pub const dnnl_eltwise_sqrt_use_dst_for_bwd: Type = 259;
3787    #[doc = " Eltwise: logistic (dst for backward)"]
3788    pub const dnnl_eltwise_logistic_use_dst_for_bwd: Type = 260;
3789    #[doc = " Eltwise: exp (dst for backward)"]
3790    pub const dnnl_eltwise_exp_use_dst_for_bwd: Type = 261;
3791    #[doc = " Eltwise: clip version 2 (dst for backward)"]
3792    pub const dnnl_eltwise_clip_v2_use_dst_for_bwd: Type = 262;
3793    #[doc = " Max pooling"]
3794    pub const dnnl_pooling_max: Type = 511;
3795    #[doc = " Average pooling include padding"]
3796    pub const dnnl_pooling_avg_include_padding: Type = 767;
3797    #[doc = " Average pooling exclude padding"]
3798    pub const dnnl_pooling_avg_exclude_padding: Type = 1023;
3799    #[doc = " Local response normalization (LRN) across multiple channels"]
3800    pub const dnnl_lrn_across_channels: Type = 2815;
3801    #[doc = " LRN within a single channel"]
3802    pub const dnnl_lrn_within_channel: Type = 3071;
3803    #[doc = " RNN cell"]
3804    pub const dnnl_vanilla_rnn: Type = 8191;
3805    #[doc = " LSTM cell"]
3806    pub const dnnl_vanilla_lstm: Type = 12287;
3807    #[doc = " GRU cell"]
3808    pub const dnnl_vanilla_gru: Type = 16383;
3809    #[doc = " GRU cell with linear before reset\n\n Modification of original GRU cell. Differs from #dnnl_vanilla_gru\n in how the new memory gate is calculated:\n \\f[ c_t = tanh(W_c*x_t + b_{c_x} + r_t*(U_c*h_{t-1}+b_{c_h})) \\f]\n Primitive expects 4 biases on input:\n \\f$[b_{u}, b_{r}, b_{c_x}, b_{c_h}]\\f$"]
3810    pub const dnnl_lbr_gru: Type = 20479;
3811    #[doc = " AUGRU cell"]
3812    pub const dnnl_vanilla_augru: Type = 24575;
3813    #[doc = " AUGRU cell with linear before reset"]
3814    pub const dnnl_lbr_augru: Type = 28671;
3815    #[doc = " Binary add"]
3816    pub const dnnl_binary_add: Type = 131056;
3817    #[doc = " Binary mul"]
3818    pub const dnnl_binary_mul: Type = 131057;
3819    #[doc = " Binary max"]
3820    pub const dnnl_binary_max: Type = 131058;
3821    #[doc = " Binary min"]
3822    pub const dnnl_binary_min: Type = 131059;
3823    #[doc = " Binary div"]
3824    pub const dnnl_binary_div: Type = 131060;
3825    #[doc = " Binary sub"]
3826    pub const dnnl_binary_sub: Type = 131061;
3827    #[doc = " Binary greater or equal"]
3828    pub const dnnl_binary_ge: Type = 131062;
3829    #[doc = " Binary greater than"]
3830    pub const dnnl_binary_gt: Type = 131063;
3831    #[doc = " Binary less or equal"]
3832    pub const dnnl_binary_le: Type = 131064;
3833    #[doc = " Binary less than"]
3834    pub const dnnl_binary_lt: Type = 131065;
3835    #[doc = " Binary equal"]
3836    pub const dnnl_binary_eq: Type = 131066;
3837    #[doc = " Binary not equal"]
3838    pub const dnnl_binary_ne: Type = 131067;
3839    #[doc = " Binary select"]
3840    pub const dnnl_binary_select: Type = 131068;
3841    #[doc = " Nearest Neighbor Resampling Method"]
3842    pub const dnnl_resampling_nearest: Type = 196592;
3843    #[doc = " Linear Resampling Method"]
3844    pub const dnnl_resampling_linear: Type = 196593;
3845    #[doc = " Reduction using max"]
3846    pub const dnnl_reduction_max: Type = 196594;
3847    #[doc = " Reduction using min"]
3848    pub const dnnl_reduction_min: Type = 196595;
3849    #[doc = " Reduction using sum"]
3850    pub const dnnl_reduction_sum: Type = 196596;
3851    #[doc = " Reduction using mul"]
3852    pub const dnnl_reduction_mul: Type = 196597;
3853    #[doc = " Reduction using mean"]
3854    pub const dnnl_reduction_mean: Type = 196598;
3855    #[doc = " Reduction using lp norm"]
3856    pub const dnnl_reduction_norm_lp_max: Type = 196599;
3857    #[doc = " Reduction using lp norm"]
3858    pub const dnnl_reduction_norm_lp_sum: Type = 196600;
3859    #[doc = " Reduction using lp norm without final pth-root"]
3860    pub const dnnl_reduction_norm_lp_power_p_max: Type = 196601;
3861    #[doc = " Reduction using lp norm without final pth-root"]
3862    pub const dnnl_reduction_norm_lp_power_p_sum: Type = 196602;
3863    #[doc = " Softmax"]
3864    pub const dnnl_softmax_accurate: Type = 196608;
3865    #[doc = " Logsoftmax"]
3866    pub const dnnl_softmax_log: Type = 196609;
3867}
3868pub mod dnnl_normalization_flags_t {
3869    #[doc = " Flags for normalization primitives."]
3870    pub type Type = ::std::os::raw::c_uint;
3871    #[doc = " Use no normalization flags\n\n If specified\n  - on forward training propagation mean and variance are computed and\n    stored as output\n  - on backward propagation compute full derivative wrt data\n  - on backward propagation prop_kind == #dnnl_backward_data has the same\n    behavior as prop_kind == #dnnl_backward"]
3872    pub const dnnl_normalization_flags_none: Type = 0;
3873    #[doc = " Use global statistics\n\n If specified\n  - on forward propagation use mean and variance provided by user (input)\n  - on backward propagation reduces the amount of computations, since\n    mean and variance are considered as constants\n\n  If not specified:\n   - on forward propagation mean and variance are computed and stored as\n     output\n   - on backward propagation compute full derivative wrt data"]
3874    pub const dnnl_use_global_stats: Type = 1;
3875    #[doc = " Use scale parameter\n\n If specified:\n  - on forward propagation use scale for the normalization results\n  - on backward propagation (for prop_kind == #dnnl_backward) compute\n    diff wrt scale (hence one extra output used)"]
3876    pub const dnnl_use_scale: Type = 2;
3877    #[doc = " Use shift parameter\n\n If specified:\n  - on forward propagation use shift (aka bias) for the normalization\n    results\n  - on backward propagation (for prop_kind == #dnnl_backward) compute\n    diff wrt shift (hence one extra output used)"]
3878    pub const dnnl_use_shift: Type = 4;
3879    #[doc = " Fuse with ReLU\n\n The flag implies negative slope being 0. On training this is the only\n configuration supported. For inference, to use non-zero negative slope\n consider using @ref dev_guide_attributes_post_ops.\n\n If specified:\n  - on inference this option behaves the same as if the primitive were\n    fused with ReLU using post ops API with zero negative slope.\n  - on training primitive requires workspace (required to be able to\n    perform backward pass)"]
3880    pub const dnnl_fuse_norm_relu: Type = 8;
3881    #[doc = " Fuse with Add and then fuse with ReLU\n\n If specified:\n\n  - on forward propagation apply element-wise binary Add operation to\n    to the normalization results with an additional input tensor and then\n    apply ReLU with negative slope being 0.\n  - on training primitive requires workspace (required to be able to\n    perform backward pass).\n  - on backward propagation save the result of backward ReLU operation\n    with input tensor and workspace from forward pass to extra output\n    tensor and then perform backward normalization."]
3882    pub const dnnl_fuse_norm_add_relu: Type = 16;
3883}
3884#[doc = " @cond DO_NOT_DOCUMENT_THIS\n Hex representation for a **special** quiet NAN (!= NAN from math.h)"]
3885#[repr(C)]
3886#[derive(Copy, Clone)]
3887pub union _bindgen_ty_1 {
3888    pub u: ::std::os::raw::c_uint,
3889    pub f: f32,
3890}
3891#[allow(clippy::unnecessary_operation, clippy::identity_op)]
3892const _: () = {
3893    ["Size of _bindgen_ty_1"][::std::mem::size_of::<_bindgen_ty_1>() - 4usize];
3894    ["Alignment of _bindgen_ty_1"][::std::mem::align_of::<_bindgen_ty_1>() - 4usize];
3895    ["Offset of field: _bindgen_ty_1::u"][::std::mem::offset_of!(_bindgen_ty_1, u) - 0usize];
3896    ["Offset of field: _bindgen_ty_1::f"][::std::mem::offset_of!(_bindgen_ty_1, f) - 0usize];
3897};
3898unsafe extern "C" {
3899    pub static DNNL_RUNTIME_F32_VAL_REP: _bindgen_ty_1;
3900}
3901#[doc = " @cond DO_NOT_DOCUMENT_THIS"]
3902pub const DNNL_RUNTIME_S32_VAL_REP: ::std::os::raw::c_int = -2147483648;
3903#[doc = " @struct dnnl_memory_desc\n An opaque structure to describe a memory descriptor."]
3904#[repr(C)]
3905#[derive(Debug, Copy, Clone)]
3906pub struct dnnl_memory_desc {
3907    _unused: [u8; 0],
3908}
3909#[doc = " A memory descriptor handle."]
3910pub type dnnl_memory_desc_t = *mut dnnl_memory_desc;
3911#[doc = " A memory descriptor handle."]
3912pub type const_dnnl_memory_desc_t = *const dnnl_memory_desc;
3913#[doc = " @struct dnnl_memory\n An opaque structure to describe a memory."]
3914#[repr(C)]
3915#[derive(Debug, Copy, Clone)]
3916pub struct dnnl_memory {
3917    _unused: [u8; 0],
3918}
3919#[doc = " A memory handle."]
3920pub type dnnl_memory_t = *mut dnnl_memory;
3921#[doc = " A constant memory handle."]
3922pub type const_dnnl_memory_t = *const dnnl_memory;
3923pub mod dnnl_rnn_flags_t {
3924    #[doc = " Flags for RNN cell."]
3925    pub type Type = ::std::os::raw::c_uint;
3926    #[doc = " Undefined RNN flags"]
3927    pub const dnnl_rnn_flags_undef: Type = 0;
3928    #[doc = " Do not add weights gradient to existing diff_weights memory"]
3929    pub const dnnl_rnn_flags_diff_weights_overwrite: Type = 1;
3930}
3931pub mod dnnl_rnn_direction_t {
3932    #[doc = " A direction of RNN primitive execution."]
3933    pub type Type = ::std::os::raw::c_uint;
3934    #[doc = " Undefined RNN direction."]
3935    pub const dnnl_rnn_direction_undef: Type = 0;
3936    #[doc = " Unidirectional execution of RNN primitive from left to right."]
3937    pub const dnnl_unidirectional_left2right: Type = 1;
3938    #[doc = " Unidirectional execution of RNN primitive from right to left."]
3939    pub const dnnl_unidirectional_right2left: Type = 2;
3940    #[doc = " Bidirectional execution of RNN primitive with concatenation of the\n results."]
3941    pub const dnnl_bidirectional_concat: Type = 3;
3942    #[doc = " Bidirectional execution of RNN primitive with summation of the\n results."]
3943    pub const dnnl_bidirectional_sum: Type = 4;
3944}
3945#[doc = " @struct dnnl_primitive_desc\n @brief An opaque structure to describe a primitive descriptor."]
3946#[repr(C)]
3947#[derive(Debug, Copy, Clone)]
3948pub struct dnnl_primitive_desc {
3949    _unused: [u8; 0],
3950}
3951#[doc = " @brief A primitive descriptor handle."]
3952pub type dnnl_primitive_desc_t = *mut dnnl_primitive_desc;
3953#[doc = " @brief A constant primitive descriptor handle."]
3954pub type const_dnnl_primitive_desc_t = *const dnnl_primitive_desc;
3955pub mod dnnl_scratchpad_mode_t {
3956    #[doc = " Scratchpad mode"]
3957    pub type Type = ::std::os::raw::c_uint;
3958    #[doc = " The library manages the scratchpad allocation according to the policy\n specified by the `DNNL_ENABLE_CONCURRENT_EXEC`\n [build option](@ref dev_guide_build_options) (default).\n\n When `DNNL_ENABLE_CONCURRENT_EXEC=OFF` (default), the library\n scratchpad is common to all primitives to reduce the memory footprint.\n This configuration comes with limited thread-safety properties, namely\n primitives can be created and executed in parallel but cannot migrate\n between threads (in other words, each primitive should be executed in\n the same thread it was created in).\n\n When `DNNL_ENABLE_CONCURRENT_EXEC=ON`, the library scratchpad is\n private to each primitive. The memory footprint is larger than when\n using `DNNL_ENABLE_CONCURRENT_EXEC=OFF` but different primitives can be\n created and run concurrently (the same primitive cannot be run\n concurrently from two different threads though)."]
3959    pub const dnnl_scratchpad_mode_library: Type = 0;
3960    #[doc = " The user manages the scratchpad allocation by querying and providing\n the scratchpad memory to primitives. This mode is thread-safe as long\n as the scratchpad buffers are not used concurrently by two primitive\n executions."]
3961    pub const dnnl_scratchpad_mode_user: Type = 1;
3962}
3963pub mod dnnl_rounding_mode_t {
3964    #[doc = " Rounding mode"]
3965    pub type Type = ::std::os::raw::c_uint;
3966    #[doc = " rounding mode dictated by the floating-point environment"]
3967    pub const dnnl_rounding_mode_environment: Type = 0;
3968    #[doc = " stochastic rounding mode where a random bias is added to the\n trailing mantissa bits before conversion."]
3969    pub const dnnl_rounding_mode_stochastic: Type = 1;
3970}
3971#[doc = " @struct dnnl_primitive_attr\n @brief An opaque structure for primitive descriptor attributes.\n\n Attributes may contain:\n  - output scales (to scale the result prior to storing it to the memory)"]
3972#[repr(C)]
3973#[derive(Debug, Copy, Clone)]
3974pub struct dnnl_primitive_attr {
3975    _unused: [u8; 0],
3976}
3977#[doc = " @brief A primitive descriptor attributes handle that controls primitive\n behavior."]
3978pub type dnnl_primitive_attr_t = *mut dnnl_primitive_attr;
3979#[doc = " @brief A constant primitive descriptor attributes handle."]
3980pub type const_dnnl_primitive_attr_t = *const dnnl_primitive_attr;
3981#[doc = " @struct dnnl_post_ops\n @brief An opaque structure for a chain of post operations.\n\n dnnl_post_ops can be used to perform some (trivial) operations like\n accumulation or eltwise after certain primitives like convolution.\n\n Post operations might be combined together, making a chain of post\n operations. For instance one can configure convolution followed by\n accumulation followed by eltwise. This might be especially beneficial\n for residual learning blocks.\n\n @warning\n      Of course not all combinations are supported, so the user should handle\n      errors accordingly.\n\n Supported post operations:\n  - accumulation (base primitive: convolution)\n  - eltwise (base primitive: convolution)"]
3982#[repr(C)]
3983#[derive(Debug, Copy, Clone)]
3984pub struct dnnl_post_ops {
3985    _unused: [u8; 0],
3986}
3987#[doc = " @brief A post operation chain handle."]
3988pub type dnnl_post_ops_t = *mut dnnl_post_ops;
3989#[doc = " @brief A constant post operation chain handle."]
3990pub type const_dnnl_post_ops_t = *const dnnl_post_ops;
3991#[doc = " @struct dnnl_primitive\n An opaque structure to describe a primitive."]
3992#[repr(C)]
3993#[derive(Debug, Copy, Clone)]
3994pub struct dnnl_primitive {
3995    _unused: [u8; 0],
3996}
3997#[doc = " A primitive handle."]
3998pub type dnnl_primitive_t = *mut dnnl_primitive;
3999#[doc = " A constant primitive handle."]
4000pub type const_dnnl_primitive_t = *const dnnl_primitive;
4001#[doc = " A structure that contains an index and a memory object, and is used to pass\n arguments to dnnl_primitive_execute()."]
4002#[repr(C)]
4003#[derive(Debug, Copy, Clone)]
4004pub struct dnnl_exec_arg_t {
4005    #[doc = "< An argument index, e.g. DNNL_ARG_SRC"]
4006    pub arg: ::std::os::raw::c_int,
4007    #[doc = "< Input/output memory"]
4008    pub memory: dnnl_memory_t,
4009}
4010#[allow(clippy::unnecessary_operation, clippy::identity_op)]
4011const _: () = {
4012    ["Size of dnnl_exec_arg_t"][::std::mem::size_of::<dnnl_exec_arg_t>() - 16usize];
4013    ["Alignment of dnnl_exec_arg_t"][::std::mem::align_of::<dnnl_exec_arg_t>() - 8usize];
4014    ["Offset of field: dnnl_exec_arg_t::arg"]
4015        [::std::mem::offset_of!(dnnl_exec_arg_t, arg) - 0usize];
4016    ["Offset of field: dnnl_exec_arg_t::memory"]
4017        [::std::mem::offset_of!(dnnl_exec_arg_t, memory) - 8usize];
4018};
4019pub mod dnnl_query_t {
4020    #[doc = " Primitive descriptor query specification\n\n For generic function dnnl_primitive_desc_query(), the type of result must\n agree with the queried argument. The correspondence table:\n\n Query kind                      | Type of query result\n --------------------------------|-----------------------------\n dnnl_query_*_engine             | #dnnl_engine_t *\n #dnnl_query_primitive_kind      | #dnnl_primitive_kind_t *\n dnnl_query_*_s32                | int *\n dnnl_query_*_s64                | #dnnl_dim_t * (same as int64_t *)\n dnnl_query_*_f32                | float *\n dnnl_query_*_f64                | double *\n dnnl_query_*_str                | const char **\n dnnl_query_*_md                 | #const_dnnl_memory_desc_t *\n dnnl_query_*_pd                 | #const_dnnl_primitive_desc_t *\n dnnl_query_cache_blob_id        | const uint8_t **\n dnnl_query_strides              | const #dnnl_dims_t **\n dnnl_query_dilations            | const #dnnl_dims_t **\n dnnl_query_padding_l            | const #dnnl_dims_t **\n dnnl_query_padding_r            | const #dnnl_dims_t **\n dnnl_query_flags                | unsigned *\n dnnl_query_alg_kind             | #dnnl_alg_kind_t *\n dnnl_query_factors              | const float **\n dnnl_query_cell_kind            | #dnnl_alg_kind_t *\n dnnl_query_direction            | #dnnl_rnn_direction_t *\n dnnl_query_activation_kind      | #dnnl_alg_kind_t *\n dnnl_query_kernel               | const #dnnl_dims_t **\n dnnl_query_dims                 | const #dnnl_dims_t **\n dnnl_query_data_type            | #dnnl_data_type_t *\n dnnl_query_padded_dims          | const #dnnl_dims_t **\n dnnl_query_padded_offsets       | const #dnnl_dims_t **\n dnnl_query_format_kind          | #dnnl_format_kind_t *\n dnnl_query_inner_blks           | const #dnnl_dims_t **\n dnnl_query_inner_idxs           | const #dnnl_dims_t **\n dnnl_query_sparse_encoding      | #dnnl_sparse_encoding_t *\n\n @note\n     Rule of thumb: all opaque types and structures are returned by\n     reference. All numbers are returned by value.\n\n @warning\n     All returned references point to constant objects and are valid only\n     during the lifetime of the queried primitive descriptor. Returned objects\n     must not be destroyed by the user. If you need to keep the object longer\n     than the lifetime of the queried primitive descriptor, use\n     dnnl_primitive_desc_clone() to make a copy."]
4021    pub type Type = ::std::os::raw::c_uint;
4022    #[doc = "< no query"]
4023    pub const dnnl_query_undef: Type = 0;
4024    #[doc = "< execution engine"]
4025    pub const dnnl_query_engine: Type = 1;
4026    #[doc = "< primitive kind"]
4027    pub const dnnl_query_primitive_kind: Type = 2;
4028    #[doc = "< number of inputs expected"]
4029    pub const dnnl_query_num_of_inputs_s32: Type = 3;
4030    #[doc = "< number of outputs expected"]
4031    pub const dnnl_query_num_of_outputs_s32: Type = 4;
4032    #[doc = "< runtime estimation (seconds)"]
4033    pub const dnnl_query_time_estimate_f64: Type = 5;
4034    #[doc = "< memory consumption -- extra"]
4035    pub const dnnl_query_memory_consumption_s64: Type = 6;
4036    #[doc = "< scratchpad engine -- engine to be used"]
4037    pub const dnnl_query_scratchpad_engine: Type = 7;
4038    #[doc = "< implementation name"]
4039    pub const dnnl_query_impl_info_str: Type = 8;
4040    #[doc = "< source engine"]
4041    pub const dnnl_query_reorder_src_engine: Type = 9;
4042    #[doc = "< destination engine"]
4043    pub const dnnl_query_reorder_dst_engine: Type = 10;
4044    #[doc = "< propagation kind"]
4045    pub const dnnl_query_prop_kind: Type = 11;
4046    #[doc = "< size of cache blob ID in bytes"]
4047    pub const dnnl_query_cache_blob_id_size_s64: Type = 12;
4048    #[doc = "< cache blob  ID (pointer to array)"]
4049    pub const dnnl_query_cache_blob_id: Type = 13;
4050    #[doc = "< strides"]
4051    pub const dnnl_query_strides: Type = 14;
4052    #[doc = "< dilations"]
4053    pub const dnnl_query_dilations: Type = 15;
4054    #[doc = "< left padding"]
4055    pub const dnnl_query_padding_l: Type = 16;
4056    #[doc = "< right padding"]
4057    pub const dnnl_query_padding_r: Type = 17;
4058    #[doc = "< epsilon"]
4059    pub const dnnl_query_epsilon_f32: Type = 18;
4060    #[doc = "< flags"]
4061    pub const dnnl_query_flags: Type = 19;
4062    #[doc = "< algorithm kind"]
4063    pub const dnnl_query_alg_kind: Type = 20;
4064    #[doc = "< alpha"]
4065    pub const dnnl_query_alpha_f32: Type = 21;
4066    #[doc = "< beta"]
4067    pub const dnnl_query_beta_f32: Type = 22;
4068    #[doc = "< axis"]
4069    pub const dnnl_query_axis_s32: Type = 23;
4070    #[doc = "< LRN parameter local size"]
4071    pub const dnnl_query_local_size_s64: Type = 24;
4072    #[doc = "< LRN parameter K"]
4073    pub const dnnl_query_k_f32: Type = 25;
4074    #[doc = "< Reduction parameter P"]
4075    pub const dnnl_query_p_f32: Type = 26;
4076    #[doc = "< Resampling parameter factors"]
4077    pub const dnnl_query_factors: Type = 27;
4078    #[doc = "< RNN parameter cell kind"]
4079    pub const dnnl_query_cell_kind: Type = 28;
4080    #[doc = "< RNN parameter direction"]
4081    pub const dnnl_query_direction: Type = 29;
4082    #[doc = "< RNN parameter activation kind"]
4083    pub const dnnl_query_activation_kind: Type = 30;
4084    #[doc = "< Pooling parameter kernel"]
4085    pub const dnnl_query_kernel: Type = 31;
4086    #[doc = "< Shuffle parameter group size"]
4087    pub const dnnl_query_group_size_s64: Type = 32;
4088    #[doc = "< stub"]
4089    pub const dnnl_query_some_md: Type = 128;
4090    #[doc = "< source memory desc"]
4091    pub const dnnl_query_src_md: Type = 129;
4092    #[doc = "< source gradient memory desc"]
4093    pub const dnnl_query_diff_src_md: Type = 130;
4094    #[doc = "< weights memory descriptor desc"]
4095    pub const dnnl_query_weights_md: Type = 131;
4096    #[doc = "< weights grad. memory desc"]
4097    pub const dnnl_query_diff_weights_md: Type = 132;
4098    #[doc = "< destination memory desc"]
4099    pub const dnnl_query_dst_md: Type = 133;
4100    #[doc = "< destination grad. memory desc"]
4101    pub const dnnl_query_diff_dst_md: Type = 134;
4102    #[doc = "< workspace memory desc"]
4103    pub const dnnl_query_workspace_md: Type = 135;
4104    #[doc = "< scratchpad memory desc"]
4105    pub const dnnl_query_scratchpad_md: Type = 136;
4106    #[doc = "< memory desc of an execute argument"]
4107    pub const dnnl_query_exec_arg_md: Type = 255;
4108    #[doc = "< number of dimensions"]
4109    pub const dnnl_query_ndims_s32: Type = 256;
4110    #[doc = "< vector of dimensions"]
4111    pub const dnnl_query_dims: Type = 257;
4112    #[doc = "< data type"]
4113    pub const dnnl_query_data_type: Type = 258;
4114    #[doc = "< submemory offset"]
4115    pub const dnnl_query_submemory_offset_s64: Type = 259;
4116    #[doc = "< vector of padded dimensions"]
4117    pub const dnnl_query_padded_dims: Type = 260;
4118    #[doc = "< vector of padded offsets"]
4119    pub const dnnl_query_padded_offsets: Type = 261;
4120    #[doc = "< format kind"]
4121    pub const dnnl_query_format_kind: Type = 262;
4122    #[doc = "< number of innermost blocks"]
4123    pub const dnnl_query_inner_nblks_s32: Type = 263;
4124    #[doc = "< vector of sizes of the innermost blocks"]
4125    pub const dnnl_query_inner_blks: Type = 264;
4126    #[doc = "< vector of logical indices of the blocks"]
4127    pub const dnnl_query_inner_idxs: Type = 265;
4128    pub const dnnl_query_max: Type = 32767;
4129}
4130pub mod dnnl_cpu_isa_t {
4131    #[doc = " CPU instruction set flags"]
4132    pub type Type = ::std::os::raw::c_uint;
4133    #[doc = " Library choice of ISA (excepting those listed as initial support)"]
4134    pub const dnnl_cpu_isa_default: Type = 0;
4135    #[doc = " Intel Streaming SIMD Extensions 4.1 (Intel SSE4.1)"]
4136    pub const dnnl_cpu_isa_sse41: Type = 1;
4137    #[doc = " Intel Advanced Vector Extensions (Intel AVX)"]
4138    pub const dnnl_cpu_isa_avx: Type = 3;
4139    #[doc = " Intel Advanced Vector Extensions 2 (Intel AVX2)"]
4140    pub const dnnl_cpu_isa_avx2: Type = 7;
4141    #[doc = " Intel AVX2 and Intel Deep Learning Boost (Intel DL Boost) support"]
4142    pub const dnnl_cpu_isa_avx2_vnni: Type = 15;
4143    #[doc = " Intel AVX2 and Intel Deep Learning Boost (Intel DL Boost)\n with 8-bit integer, float16 and bfloat16 support"]
4144    pub const dnnl_cpu_isa_avx2_vnni_2: Type = 31;
4145    #[doc = " Intel AVX-512 subset for Intel Xeon Scalable processor family\n and Intel Core processor family."]
4146    pub const dnnl_cpu_isa_avx512_core: Type = 39;
4147    #[doc = " Intel AVX-512 and Intel Deep Learning Boost (Intel DL Boost) support\n for Intel Xeon Scalable processor family\n and Intel Core processor family."]
4148    pub const dnnl_cpu_isa_avx512_core_vnni: Type = 103;
4149    #[doc = " Intel AVX-512, Intel DL Boost and bfloat16 support\n for Intel Xeon Scalable processor family\n and Intel Core processor family."]
4150    pub const dnnl_cpu_isa_avx512_core_bf16: Type = 231;
4151    #[doc = " Intel AVX-512 with float16, Intel DL Boost and bfloat16 support\n for Intel Xeon Scalable processor family\n and Intel Core processor family."]
4152    pub const dnnl_cpu_isa_avx10_1_512: Type = 495;
4153    #[doc = " @copydoc dnnl_cpu_isa_avx10_1_512"]
4154    pub const dnnl_cpu_isa_avx512_core_fp16: Type = 495;
4155    #[doc = " Intel AVX-512 with float16, Intel DL Boost and bfloat16 support and\n Intel AMX with 8-bit integer and bfloat16 support"]
4156    pub const dnnl_cpu_isa_avx10_1_512_amx: Type = 4079;
4157    #[doc = " @copydoc dnnl_cpu_isa_avx10_1_512_amx"]
4158    pub const dnnl_cpu_isa_avx512_core_amx: Type = 4079;
4159    #[doc = " Intel AVX-512 with float16, Intel DL Boost and bfloat16 support and\n Intel AMX with 8-bit integer, bfloat16 and float16 support"]
4160    pub const dnnl_cpu_isa_avx10_1_512_amx_fp16: Type = 8175;
4161    #[doc = " @copydoc dnnl_cpu_isa_avx10_1_512_amx_fp16"]
4162    pub const dnnl_cpu_isa_avx512_core_amx_fp16: Type = 8175;
4163}
4164pub mod dnnl_cpu_isa_hints_t {
4165    #[doc = " CPU ISA hints flags"]
4166    pub type Type = ::std::os::raw::c_uint;
4167    #[doc = " No hints (use default features)"]
4168    pub const dnnl_cpu_isa_no_hints: Type = 0;
4169    #[doc = " Prefer to exclusively use Ymm registers for computations"]
4170    pub const dnnl_cpu_isa_prefer_ymm: Type = 1;
4171}
4172unsafe extern "C" {
4173    #[doc = " Changes the primitive descriptor to point to the next available\n implementation.\n\n @param primitive_desc A primitive descriptor to change.\n @returns #dnnl_success on success and a status describing the error\n     otherwise.\n @returns #dnnl_last_impl_reached if no more implementations available,\n in which case the primitive descriptor itself is kept unchanged."]
4174    pub fn dnnl_primitive_desc_next_impl(
4175        primitive_desc: dnnl_primitive_desc_t,
4176    ) -> dnnl_status_t::Type;
4177}
4178unsafe extern "C" {
4179    #[doc = " Clones a primitive descriptor. The resulting primitive descriptor must be\n destroyed separately.\n\n @param primitive_desc Output primitive descriptor.\n @param existing_primitive_desc Primitive descriptor to clone.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4180    pub fn dnnl_primitive_desc_clone(
4181        primitive_desc: *mut dnnl_primitive_desc_t,
4182        existing_primitive_desc: const_dnnl_primitive_desc_t,
4183    ) -> dnnl_status_t::Type;
4184}
4185unsafe extern "C" {
4186    #[doc = " Returns a constant reference to the attributes of a primitive descriptor.\n\n @warning\n     It is an error to destroy the resulting @p attr.\n\n @warning\n     The lifetime of an @p attr is the same as that of a @p\n     primitive_desc, so it is an error to use the @p attr once the @p\n     primitive_desc has been destroyed.\n\n @param primitive_desc Primitive descriptor.\n @param attr Output primitive attributes.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4187    pub fn dnnl_primitive_desc_get_attr(
4188        primitive_desc: const_dnnl_primitive_desc_t,
4189        attr: *mut const_dnnl_primitive_attr_t,
4190    ) -> dnnl_status_t::Type;
4191}
4192unsafe extern "C" {
4193    #[doc = " Destroys a primitive descriptor.\n\n @param primitive_desc Primitive descriptor to destroy.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4194    pub fn dnnl_primitive_desc_destroy(
4195        primitive_desc: dnnl_primitive_desc_t,
4196    ) -> dnnl_status_t::Type;
4197}
4198unsafe extern "C" {
4199    #[doc = " Queries a primitive descriptor for various pieces of information.\n\n The most common use case is to query a primitive descriptor, created with\n source, weights, and destination memory descriptors with format tags set\n to #dnnl_format_tag_any, for the corresponding memory descriptors (in this\n case the @p what is set to #dnnl_query_src_md, #dnnl_query_weights_md, and\n #dnnl_query_dst_md respectively) so that it is possible to create memory\n objects and reorder primitives if necessary.\n\n Another typical use case is to query a primitive descriptor for workspace\n memory descriptor (with @p what set to #dnnl_query_workspace_md). If this\n query returns #dnnl_not_required status, then workspace memory is not\n required.\n\n @note\n     When querying for a memory descriptor for a scratchpad, a workspace,\n     or an optional parameter, the query will return a pointer to a zero\n     memory descriptor if the parameter is not needed.\n\n A few other use cases:\n  - query a primitive descriptor for the implementation information string\n    (#dnnl_query_impl_info_str)\n  - query a primitive descriptor for the number of inputs and outputs\n    (#dnnl_query_num_of_inputs_s32 and #dnnl_query_num_of_outputs_s32\n    respectively)\n\n @sa dnnl_query_t for more options\n\n @param primitive_desc Primitive descriptor.\n @param what Parameter to query.\n @param index Index of the parameter to query for.\n @param result Output result. The type depends on the query. For example,\n     it must be a @c dnnl_memory_desc_t* if querying for a memory\n     descriptor.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4200    pub fn dnnl_primitive_desc_query(
4201        primitive_desc: const_dnnl_primitive_desc_t,
4202        what: dnnl_query_t::Type,
4203        index: ::std::os::raw::c_int,
4204        result: *mut ::std::os::raw::c_void,
4205    ) -> dnnl_status_t::Type;
4206}
4207unsafe extern "C" {
4208    #[doc = " Queries primitive descriptor for a memory descriptor.\n\n @note\n     This function is a convenience version of\n     #dnnl_primitive_desc_query().\n\n @param primitive_desc Primitive descriptor.\n @param what Kind of memory descriptor parameter to query for.\n @param index Index of the parameter to query.\n @returns A pointer to the requested memory descriptor.\n @returns A pointer to a zero memory descriptor if the parameter is not\n          needed.\n @returns NULL in case of any error.\n"]
4209    pub fn dnnl_primitive_desc_query_md(
4210        primitive_desc: const_dnnl_primitive_desc_t,
4211        what: dnnl_query_t::Type,
4212        index: ::std::os::raw::c_int,
4213    ) -> const_dnnl_memory_desc_t;
4214}
4215unsafe extern "C" {
4216    #[doc = " Queries primitive descriptor for a signed 32bit int.\n\n @note\n     This function is a convenience version of\n     #dnnl_primitive_desc_query().\n\n @param primitive_desc Primitive descriptor.\n @param what Kind of the value to query for.\n @param index Index of the parameter to query.\n @returns The requested value.\n @returns 0 in case of any error (in particular if the queried entity is\n     not of type int32_t). Note that 0 may also be the actual returned\n     value."]
4217    pub fn dnnl_primitive_desc_query_s32(
4218        primitive_desc: const_dnnl_primitive_desc_t,
4219        what: dnnl_query_t::Type,
4220        index: ::std::os::raw::c_int,
4221    ) -> ::std::os::raw::c_int;
4222}
4223unsafe extern "C" {
4224    #[doc = " Creates a primitive.\n\n @param primitive Output primitive.\n @param primitive_desc Primitive descriptor used to create the primitive.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4225    pub fn dnnl_primitive_create(
4226        primitive: *mut dnnl_primitive_t,
4227        primitive_desc: const_dnnl_primitive_desc_t,
4228    ) -> dnnl_status_t::Type;
4229}
4230unsafe extern "C" {
4231    #[doc = " Creates a primitive from a cache blob.\n\n @param primitive Output primitive.\n @param primitive_desc Primitive descriptor used to create the primitive.\n @param size Size of the cache blob in bytes.\n @param cache_blob Cache blob of size @p size.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4232    pub fn dnnl_primitive_create_from_cache_blob(
4233        primitive: *mut dnnl_primitive_t,
4234        primitive_desc: const_dnnl_primitive_desc_t,
4235        size: usize,
4236        cache_blob: *const u8,
4237    ) -> dnnl_status_t::Type;
4238}
4239unsafe extern "C" {
4240    #[doc = " @note If any argument in @p args is padded (padded_dims >\n dims), the primitive execution will assume properly zero-padded\n input arguments, and produce zero-padded output arguments."]
4241    pub fn dnnl_primitive_execute(
4242        primitive: const_dnnl_primitive_t,
4243        stream: dnnl_stream_t,
4244        nargs: ::std::os::raw::c_int,
4245        args: *const dnnl_exec_arg_t,
4246    ) -> dnnl_status_t::Type;
4247}
4248unsafe extern "C" {
4249    #[doc = " Retrieves a constant reference to the primitive descriptor of a given\n primitive.\n\n @warning\n     It is an error to destroy the returned object. It is owned by the\n     primitive. The @c const qualifier of the returned object prevents\n     such attempts.\n\n @param primitive Primitive to query for the primitive descriptor.\n @param primitive_desc Output primitive descriptor.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4250    pub fn dnnl_primitive_get_primitive_desc(
4251        primitive: const_dnnl_primitive_t,
4252        primitive_desc: *mut const_dnnl_primitive_desc_t,
4253    ) -> dnnl_status_t::Type;
4254}
4255unsafe extern "C" {
4256    #[doc = " Retrieves a cache blob associated with the given primitive.\n\n @param primitive Primitive to query for the cache blob.\n @param size Size of the cache blob in bytes.\n @param cache_blob Cache blob of size @p size. If the @p cache_blob is\n     nullptr then the size of the cache blob is returned in @p size.\n @returns #dnnl_success on success and a status describing the error\n     otherwise.\n\n @note The cache blob can be empty. It's the user's responsibility to check\n     whether it's empty prior to passing it to\n     #dnnl_primitive_create_from_cache_blob()."]
4257    pub fn dnnl_primitive_get_cache_blob(
4258        primitive: const_dnnl_primitive_t,
4259        size: *mut usize,
4260        cache_blob: *mut u8,
4261    ) -> dnnl_status_t::Type;
4262}
4263unsafe extern "C" {
4264    #[doc = " Destroys a primitive.\n\n @param primitive The primitive to destroy.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4265    pub fn dnnl_primitive_destroy(primitive: dnnl_primitive_t) -> dnnl_status_t::Type;
4266}
4267unsafe extern "C" {
4268    #[doc = " Creates an empty (default) primitive attributes with all the parameters\n set to their default values.\n\n Empty attributes are implied whenever the respective argument is NULL.\n\n @param attr Output primitive attributes.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4269    pub fn dnnl_primitive_attr_create(attr: *mut dnnl_primitive_attr_t) -> dnnl_status_t::Type;
4270}
4271unsafe extern "C" {
4272    #[doc = " Clones primitive attributes.\n\n @param attr Output primitive attributes.\n @param existing_attr Primitive attributes to clone.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4273    pub fn dnnl_primitive_attr_clone(
4274        attr: *mut dnnl_primitive_attr_t,
4275        existing_attr: const_dnnl_primitive_attr_t,
4276    ) -> dnnl_status_t::Type;
4277}
4278unsafe extern "C" {
4279    #[doc = " Destroys primitive attributes.\n\n @param attr Primitive attributes to destroy.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4280    pub fn dnnl_primitive_attr_destroy(attr: dnnl_primitive_attr_t) -> dnnl_status_t::Type;
4281}
4282unsafe extern "C" {
4283    #[doc = " Returns probability for output dropout primitive attribute.\n\n @param attr Primitive attributes.\n @param dropout_desc Output dropout memory descriptor\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4284    pub fn dnnl_primitive_attr_get_dropout(
4285        attr: const_dnnl_primitive_attr_t,
4286        dropout_desc: *mut const_dnnl_memory_desc_t,
4287    ) -> dnnl_status_t::Type;
4288}
4289unsafe extern "C" {
4290    #[doc = " Sets probability for output dropout primitive attribute.\n\n @param attr Primitive attributes.\n @param dropout_desc Output dropout memory descriptor\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4291    pub fn dnnl_primitive_attr_set_dropout(
4292        attr: dnnl_primitive_attr_t,
4293        dropout_desc: const_dnnl_memory_desc_t,
4294    ) -> dnnl_status_t::Type;
4295}
4296unsafe extern "C" {
4297    #[doc = " Returns the floating-point math mode primitive attribute.\n\n @param attr Primitive attributes.\n @param mode Output FP math mode.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4298    pub fn dnnl_primitive_attr_get_fpmath_mode(
4299        attr: const_dnnl_primitive_attr_t,
4300        mode: *mut dnnl_fpmath_mode_t::Type,
4301    ) -> dnnl_status_t::Type;
4302}
4303unsafe extern "C" {
4304    #[doc = " Sets the floating-point math mode primitive attributes.\n\n @param attr Primitive attributes.\n @param mode FP math mode. The possible values are:\n     #dnnl_fpmath_mode_strict (default),\n     #dnnl_fpmath_mode_bf16,\n     #dnnl_fpmath_mode_f16,\n     #dnnl_fpmath_mode_tf32,\n     #dnnl_fpmath_mode_any.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4305    pub fn dnnl_primitive_attr_set_fpmath_mode(
4306        attr: dnnl_primitive_attr_t,
4307        mode: dnnl_fpmath_mode_t::Type,
4308    ) -> dnnl_status_t::Type;
4309}
4310unsafe extern "C" {
4311    #[doc = " Returns the floating-point math mode primitive attribute.\n\n @param attr Primitive attributes.\n @param mode Output FP math mode.\n @param apply_to_int Output use floating-point arithmetic for integer primitives.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4312    pub fn dnnl_primitive_attr_get_fpmath_mode_v2(
4313        attr: const_dnnl_primitive_attr_t,
4314        mode: *mut dnnl_fpmath_mode_t::Type,
4315        apply_to_int: *mut ::std::os::raw::c_int,
4316    ) -> dnnl_status_t::Type;
4317}
4318unsafe extern "C" {
4319    #[doc = " Sets the floating-point math mode primitive attributes.\n\n @param attr Primitive attributes.\n @param mode FP math mode. The possible values are:\n     #dnnl_fpmath_mode_strict (default),\n     #dnnl_fpmath_mode_bf16,\n     #dnnl_fpmath_mode_f16,\n     #dnnl_fpmath_mode_tf32,\n     #dnnl_fpmath_mode_any.\n @param apply_to_int Boolean. Use of floating-point arithmetic for integer primitives.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4320    pub fn dnnl_primitive_attr_set_fpmath_mode_v2(
4321        attr: dnnl_primitive_attr_t,
4322        mode: dnnl_fpmath_mode_t::Type,
4323        apply_to_int: ::std::os::raw::c_int,
4324    ) -> dnnl_status_t::Type;
4325}
4326unsafe extern "C" {
4327    #[doc = " Returns the deterministic primitive attribute value.\n\n @param attr Primitive attributes.\n @param value Output deterministic attribute value\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4328    pub fn dnnl_primitive_attr_get_deterministic(
4329        attr: const_dnnl_primitive_attr_t,
4330        value: *mut ::std::os::raw::c_int,
4331    ) -> dnnl_status_t::Type;
4332}
4333unsafe extern "C" {
4334    #[doc = " Sets the deterministic primitive attribute value.\n\n @param attr Primitive attributes.\n @param value Boolean value to set deterministic attribute.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4335    pub fn dnnl_primitive_attr_set_deterministic(
4336        attr: dnnl_primitive_attr_t,
4337        value: ::std::os::raw::c_int,
4338    ) -> dnnl_status_t::Type;
4339}
4340unsafe extern "C" {
4341    #[doc = " Returns the accumulation mode primitive attribute.\n\n @param attr Primitive attributes.\n @param mode Output accumulation mode.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4342    pub fn dnnl_primitive_attr_get_accumulation_mode(
4343        attr: const_dnnl_primitive_attr_t,
4344        mode: *mut dnnl_accumulation_mode_t::Type,
4345    ) -> dnnl_status_t::Type;
4346}
4347unsafe extern "C" {
4348    #[doc = " Sets the accumulation mode primitive attribute.\n\n @param attr Primitive attributes.\n @param mode Accumulation mode. The possible values are:\n     #dnnl_accumulation_mode_strict (default), which is s32 for quantized primitives, f32/f64 otherwise\n     #dnnl_accumulation_mode_relaxed, which is same as strict but allows intermediate accumulators to be in src/dst datatype\n     #dnnl_accumulation_mode_any, which allows accumulators to be src/dst datatype or any wider type.\n     #dnnl_accumulation_mode_f32,\n     #dnnl_accumulation_mode_s32,\n     #dnnl_accumulation_mode_f16.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4349    pub fn dnnl_primitive_attr_set_accumulation_mode(
4350        attr: dnnl_primitive_attr_t,
4351        mode: dnnl_accumulation_mode_t::Type,
4352    ) -> dnnl_status_t::Type;
4353}
4354unsafe extern "C" {
4355    #[doc = " Returns the primitive attributes scratchpad mode.\n\n @param attr Primitive attributes.\n @param mode Output scratchpad mode.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4356    pub fn dnnl_primitive_attr_get_scratchpad_mode(
4357        attr: const_dnnl_primitive_attr_t,
4358        mode: *mut dnnl_scratchpad_mode_t::Type,
4359    ) -> dnnl_status_t::Type;
4360}
4361unsafe extern "C" {
4362    #[doc = " Sets primitive attributes scratchpad mode.\n\n @param attr Primitive attributes.\n @param mode Scratchpad mode. The possible values are:\n     #dnnl_scratchpad_mode_library (default) and\n     #dnnl_scratchpad_mode_user.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4363    pub fn dnnl_primitive_attr_set_scratchpad_mode(
4364        attr: dnnl_primitive_attr_t,
4365        mode: dnnl_scratchpad_mode_t::Type,
4366    ) -> dnnl_status_t::Type;
4367}
4368unsafe extern "C" {
4369    #[doc = " Sets primitive attributes scaling factors for primitive operations for a\n given memory argument. The scaling factors must be passed at execution time\n as an argument with index #DNNL_ARG_ATTR_SCALES | arg.\n\n @sa dnnl_primitive_attr_set_scales_mask\n\n\n @param attr Primitive attributes.\n @param arg Parameter argument index as passed to the\n     dnnl_primitive_execute() call.\n @param mask Scaling factors correspondence mask that defines the\n     correspondence between the tensor dimensions and the @p scales array.\n     The set i-th bit indicates that a dedicated scaling factor is used for\n     each index along that dimension. Set the mask to 0 to use a common\n     scaling factor for the whole output tensor.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4370    pub fn dnnl_primitive_attr_set_scales_mask(
4371        attr: dnnl_primitive_attr_t,
4372        arg: ::std::os::raw::c_int,
4373        mask: ::std::os::raw::c_int,
4374    ) -> dnnl_status_t::Type;
4375}
4376unsafe extern "C" {
4377    #[doc = " Sets primitive attributes scaling factors for primitive operations for a\n given memory argument. The scaling factors must be passed at execution time\n as an argument with index #DNNL_ARG_ATTR_SCALES | arg.\n\n @sa dnnl_primitive_attr_set_scales\n\n\n @param attr Primitive attributes.\n @param arg Parameter argument index as passed to the\n     dnnl_primitive_execute() call.\n @param mask Scaling factors correspondence mask that defines the\n     correspondence between the tensor dimensions and the @p scales array.\n     The set i-th bit indicates that a dedicated scaling factor is used for\n     each index along that dimension. Set the mask to 0 to use a common\n     scaling factor for the whole output tensor.\n @param ndims Number of group dimensions.\n @param group_dims Scaling factors correspondence groups that define the\n     correspondence between the tensor dimensions and the scales array.\n     The group dimensions should only be provided for each logical dimension\n     that has correspondence mask @p mask set.\n @param data_type Scaling factors data_type.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4378    pub fn dnnl_primitive_attr_set_scales(
4379        attr: dnnl_primitive_attr_t,
4380        arg: ::std::os::raw::c_int,
4381        mask: ::std::os::raw::c_int,
4382        ndims: ::std::os::raw::c_int,
4383        group_dims: *const dnnl_dim_t,
4384        data_type: dnnl_data_type_t::Type,
4385    ) -> dnnl_status_t::Type;
4386}
4387unsafe extern "C" {
4388    #[doc = " Sets primitive attributes zero points for primitive operations for a given\n memory argument. The zero points must be passed at execution time\n as an argument with index #DNNL_ARG_ATTR_ZERO_POINTS | arg.\n\n @sa dnnl_primitive_attr_set_zero_points_mask\n\n\n @param attr Primitive attributes.\n @param arg Parameter argument index as passed to the\n     dnnl_primitive_execute() call.\n @param mask Zero point correspondence mask that defines the\n     correspondence between the tensor dimensions and the @p\n     zero_points array. The set i-th bit indicates that a dedicated\n     zero point is used for each index along that dimension. Set the\n     mask to 0 to use a common zero point for the whole output tensor.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4389    pub fn dnnl_primitive_attr_set_zero_points_mask(
4390        attr: dnnl_primitive_attr_t,
4391        arg: ::std::os::raw::c_int,
4392        mask: ::std::os::raw::c_int,
4393    ) -> dnnl_status_t::Type;
4394}
4395unsafe extern "C" {
4396    #[doc = " Sets primitive attributes zero points for primitive operations for a given\n memory argument. The zero points must be passed at execution time\n as an argument with index #DNNL_ARG_ATTR_ZERO_POINTS | arg.\n\n @sa dnnl_primitive_attr_set_zero_points\n\n\n @param attr Primitive attributes.\n @param arg Parameter argument index as passed to the\n     dnnl_primitive_execute() call.\n @param mask Zero point correspondence mask that defines the\n     correspondence between the tensor dimensions and the @p\n     zero_points array. The set i-th bit indicates that a dedicated\n     zero point is used for each index along that dimension. Set the\n     mask to 0 to use a common zero point for the whole output tensor.\n @param ndims Number of group dimensions.\n @param group_dims Zero point factors correspondence groups that define the\n     correspondence between the tensor dimensions and the zero_points array.\n     The group dimensions should be only provided for each logical dimension\n     that has the bit set correspondence mask @p mask set.\n @param data_type Zero points factors data_type.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4397    pub fn dnnl_primitive_attr_set_zero_points(
4398        attr: dnnl_primitive_attr_t,
4399        arg: ::std::os::raw::c_int,
4400        mask: ::std::os::raw::c_int,
4401        ndims: ::std::os::raw::c_int,
4402        group_dims: *const dnnl_dim_t,
4403        data_type: dnnl_data_type_t::Type,
4404    ) -> dnnl_status_t::Type;
4405}
4406unsafe extern "C" {
4407    #[doc = " Sets the rounding mode attribute value for a given argument\n\n @param attr Primitive attributes.\n @param arg Argument for which rounding mode should be set.\n @param mode Rounding mode to apply to the argument.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4408    pub fn dnnl_primitive_attr_set_rounding(
4409        attr: dnnl_primitive_attr_t,
4410        arg: ::std::os::raw::c_int,
4411        mode: dnnl_rounding_mode_t::Type,
4412    ) -> dnnl_status_t::Type;
4413}
4414unsafe extern "C" {
4415    #[doc = " Returns the rounding mode attribute value for a given argument\n\n @param attr Primitive attributes.\n @param arg Argument for which rounding mode query applies.\n @param mode Output rounding mode.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4416    pub fn dnnl_primitive_attr_get_rounding(
4417        attr: dnnl_primitive_attr_t,
4418        arg: ::std::os::raw::c_int,
4419        mode: *mut dnnl_rounding_mode_t::Type,
4420    ) -> dnnl_status_t::Type;
4421}
4422unsafe extern "C" {
4423    #[doc = " Returns primitive attributes post-ops.\n\n @warning\n     The output @p post_ops points to the internal @p attr field, so it is\n     an error to modify or destroy them. The lifetime of @p post_ops is\n     the same as that of the @p attr it belongs to, so it is an error to\n     use @p post_ops after @p attr has been destroyed.\n\n @param attr Primitive attributes.\n @param post_ops Output post-ops.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4424    pub fn dnnl_primitive_attr_get_post_ops(
4425        attr: const_dnnl_primitive_attr_t,
4426        post_ops: *mut const_dnnl_post_ops_t,
4427    ) -> dnnl_status_t::Type;
4428}
4429unsafe extern "C" {
4430    #[doc = " Sets primitive attributes post-ops.\n\n @note\n     There is no way to check whether the post-ops would be supported by\n     the target primitive. Any error will be reported by the\n     dnnl_<primitive name>_[propagation kind]_primitive_desc_create() function call.\n\n @param attr Primitive attributes.\n @param post_ops Post-ops to set.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4431    pub fn dnnl_primitive_attr_set_post_ops(
4432        attr: dnnl_primitive_attr_t,
4433        post_ops: const_dnnl_post_ops_t,
4434    ) -> dnnl_status_t::Type;
4435}
4436unsafe extern "C" {
4437    #[doc = " Creates empty post-ops sequence.\n\n @param post_ops Output post-ops.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4438    pub fn dnnl_post_ops_create(post_ops: *mut dnnl_post_ops_t) -> dnnl_status_t::Type;
4439}
4440unsafe extern "C" {
4441    #[doc = " Clones post-ops primitive attribute.\n\n @param post_ops Output post-ops primitive attribute.\n @param existing_post_ops Post-ops primitive attribute to clone.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4442    pub fn dnnl_post_ops_clone(
4443        post_ops: *mut dnnl_post_ops_t,
4444        existing_post_ops: const_dnnl_post_ops_t,
4445    ) -> dnnl_status_t::Type;
4446}
4447unsafe extern "C" {
4448    #[doc = " Destroys post-ops.\n\n @param post_ops Post-ops to destroy.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4449    pub fn dnnl_post_ops_destroy(post_ops: dnnl_post_ops_t) -> dnnl_status_t::Type;
4450}
4451unsafe extern "C" {
4452    #[doc = " Returns the length of post-ops.\n\n @param post_ops Post-ops.\n @returns The number of post-ops entries."]
4453    pub fn dnnl_post_ops_len(post_ops: const_dnnl_post_ops_t) -> ::std::os::raw::c_int;
4454}
4455unsafe extern "C" {
4456    #[doc = " Returns the kind of a post-op entry.\n\n @param post_ops Post-ops.\n @param index Post-op entry index.\n @returns The kind of the post-op with the specified index.\n @returns #dnnl_undefined_primitive if there is no post-op at the specified\n     index."]
4457    pub fn dnnl_post_ops_get_kind(
4458        post_ops: const_dnnl_post_ops_t,
4459        index: ::std::os::raw::c_int,
4460    ) -> dnnl_primitive_kind_t::Type;
4461}
4462unsafe extern "C" {
4463    #[doc = " Appends an accumulation v3 (sum) to post-ops. Prior to accumulating the\n result, a zero point is subtracted from the previous value and is\n multiplied by the scale.\n\n The kind of this post-op is #dnnl_sum.\n\n This feature may improve performance for cases like dequantize the\n asymmetrically quantized sum's src1 tensor to f32 domain before performing\n the sum operation by subtracting the @p zero_point before the scaling.\n\n In the simplest case where accumulation is the only post-op, the\n computations will be:\n\n     dst[:] <- scale * (dst[:] - zero_point) + op(...)\n                                             // instead of dst[:] <- op(...)\n\n If @p data_type is specified, original dst tensor will be reinterpreted\n as a tensor with provided data type. Since it is reinterpretation,\n data_type and dst data type should have the same size.\n As a result, computations will be:\n\n     dst[:] <- scale * (as_data_type(dst[:]) - zero_point) + op(...)\n                                        // instead of dst[:] <- op(...)\n @note\n     This post-op executes in-place and does not change the\n     destination layout.\n\n @param post_ops Post-ops.\n @param scale Accumulation scaling factor.\n @param zero_point Single scalar int32_t value of zero point.\n @param data_type Accumulation data_type.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4464    pub fn dnnl_post_ops_append_sum(
4465        post_ops: dnnl_post_ops_t,
4466        scale: f32,
4467        zero_point: i32,
4468        data_type: dnnl_data_type_t::Type,
4469    ) -> dnnl_status_t::Type;
4470}
4471unsafe extern "C" {
4472    #[doc = " Returns the parameters of an accumulation (sum) post-op with\n zero point and data type parameter.\n\n @param post_ops Post-ops.\n @param index Index of the sum post-op.\n @param scale Output accumulation scaling factor.\n @param zero_point Zero point.\n @param data_type Data type for accumulation.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4473    pub fn dnnl_post_ops_get_params_sum(
4474        post_ops: const_dnnl_post_ops_t,
4475        index: ::std::os::raw::c_int,
4476        scale: *mut f32,
4477        zero_point: *mut i32,
4478        data_type: *mut dnnl_data_type_t::Type,
4479    ) -> dnnl_status_t::Type;
4480}
4481unsafe extern "C" {
4482    #[doc = " Appends an elementwise post-op.\n\n The kind of this post operation is #dnnl_eltwise.\n\n In the simplest case when the elementwise is the only post operation, the\n computations would be:\n\n     dst[:] <- eltwise_op (op(...)) // instead of dst[:] <- op(...)\n\n where eltwise_op is configured with the given parameters.\n\n @param post_ops Post-ops.\n @param alg_kind Elementwise algorithm for the post-op.\n @param alpha Alpha parameter for the elementwise algorithm.\n @param beta Beta parameter for the elementwise algorithm.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4483    pub fn dnnl_post_ops_append_eltwise(
4484        post_ops: dnnl_post_ops_t,
4485        alg_kind: dnnl_alg_kind_t::Type,
4486        alpha: f32,
4487        beta: f32,
4488    ) -> dnnl_status_t::Type;
4489}
4490unsafe extern "C" {
4491    #[doc = " Returns the parameters of an elementwise post-op.\n\n @param post_ops Post-ops.\n @param index Index of the elementwise post-op.\n @param alg_kind Output elementwise algorithm kind.\n @param alpha Output alpha parameter for the elementwise algorithm.\n @param beta Output beta parameter for the elementwise algorithm.\n @returns #dnnl_success on success and a status describing the error\n     otherwise.\n @returns #dnnl_invalid_arguments if @p index does not refer to an\n     elementwise post-op."]
4492    pub fn dnnl_post_ops_get_params_eltwise(
4493        post_ops: const_dnnl_post_ops_t,
4494        index: ::std::os::raw::c_int,
4495        alg_kind: *mut dnnl_alg_kind_t::Type,
4496        alpha: *mut f32,
4497        beta: *mut f32,
4498    ) -> dnnl_status_t::Type;
4499}
4500unsafe extern "C" {
4501    #[doc = " Appends a depthwise post-op convolution.\n\n This post-op can only be fused with a 2D 1x1 convolution (convolution with\n weights spatial dimensions equal to 1 i.e., kh=kw=1).\n\n The kind of this post-op is #dnnl_convolution.\n\n The number of outputs for primitive with fusion is one. The output spatial\n size can be derived as below:\n\n output_height = ceil(output_height_1x1_convolution, stride)\n output_width = ceil(output_width_1x1_convolution, stride)\n\n See @ref dev_guide_attributes_post_ops_depthwise and\n @ref dev_guide_attributes_post_ops_depthwise_fusion for more info.\n\n @param post_ops Post-ops.\n @param weights_data_type Weights data type of depthwise post-op\n @param bias_data_type Bias data type of depthwise post-op\n @param dst_data_type Output data type of depthwise post-op\n @param kernel_size Size of kernel of depthwise post-op\n @param stride_size Size of stride of depthwise post-op\n @param padding_l_size Size of left and top paddings of depthwise post-op\n @returns #dnnl_success on success and a status describing the error\n     otherwise"]
4502    pub fn dnnl_post_ops_append_dw(
4503        post_ops: dnnl_post_ops_t,
4504        weights_data_type: dnnl_data_type_t::Type,
4505        bias_data_type: dnnl_data_type_t::Type,
4506        dst_data_type: dnnl_data_type_t::Type,
4507        kernel_size: dnnl_dim_t,
4508        stride_size: dnnl_dim_t,
4509        padding_l_size: dnnl_dim_t,
4510    ) -> dnnl_status_t::Type;
4511}
4512unsafe extern "C" {
4513    #[doc = " Returns the parameters of an depthwise post-op.\n\n @param post_ops Post-ops.\n @param index Index of the elementwise post-op.\n @param weights_data_type Weights data type of depthwise post-op\n @param bias_data_type Bias data type of depthwise post-op\n @param dst_data_type Output data type of depthwise post-op\n @param kernel_size Size of kernel of depthwise post-op\n @param stride_size Size of stride of depthwise post-op\n @param padding_l_size Size of left and top paddings of depthwise post-op\n @returns #dnnl_success on success and a status describing the error\n     otherwise"]
4514    pub fn dnnl_post_ops_get_params_dw(
4515        post_ops: const_dnnl_post_ops_t,
4516        index: ::std::os::raw::c_int,
4517        weights_data_type: *mut dnnl_data_type_t::Type,
4518        bias_data_type: *mut dnnl_data_type_t::Type,
4519        dst_data_type: *mut dnnl_data_type_t::Type,
4520        kernel_size: *mut dnnl_dim_t,
4521        stride_size: *mut dnnl_dim_t,
4522        padding_l_size: *mut dnnl_dim_t,
4523    ) -> dnnl_status_t::Type;
4524}
4525unsafe extern "C" {
4526    #[doc = " Appends a binary post-op.\n\n The kind of this post operation is #dnnl_binary.\n\n In the simplest case when the binary is the only post operation, the\n computations would be:\n\n     dst[:] <- binary_op (dst[:], another_input[:])\n\n where binary_op is configured with the given parameters. binary_op supports\n broadcast semantics for a second operand.\n\n @param post_ops Post-ops.\n @param alg_kind Binary algorithm for the post-op.\n @param src1_desc Memory descriptor of a second operand.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4527    pub fn dnnl_post_ops_append_binary(
4528        post_ops: dnnl_post_ops_t,
4529        alg_kind: dnnl_alg_kind_t::Type,
4530        src1_desc: const_dnnl_memory_desc_t,
4531    ) -> dnnl_status_t::Type;
4532}
4533unsafe extern "C" {
4534    #[doc = " Returns the parameters of a binary post-op.\n\n @param post_ops Post-ops.\n @param index Index of the binary post-op.\n @param alg_kind Output binary algorithm kind.\n @param src1_desc Output memory descriptor of a second operand.\n @returns #dnnl_success on success and a status describing the error\n     otherwise.\n @returns #dnnl_invalid_arguments if @p index does not refer to a binary\n     post-op."]
4535    pub fn dnnl_post_ops_get_params_binary(
4536        post_ops: const_dnnl_post_ops_t,
4537        index: ::std::os::raw::c_int,
4538        alg_kind: *mut dnnl_alg_kind_t::Type,
4539        src1_desc: *mut const_dnnl_memory_desc_t,
4540    ) -> dnnl_status_t::Type;
4541}
4542unsafe extern "C" {
4543    #[doc = " Appends a prelu forward post-op.\n\n The kind of this post-op is #dnnl::primitive::kind::prelu.\n\n The post-op can be defined as:\n\n      dst[:] <- prelu(dst[:], weights[:])\n      prelu:\n      dst[:] <- dst[:] if dst[:] > 0\n      dst[:] <- dst[:] * weights[:] if dst[:] <= 0\n\n\n @note\n     The order of dimensions does not depend on how elements are laid\n     out in memory. For example:\n     - for a 2D CNN activations tensor the order is always (n, c)\n     - for a 4D CNN activations tensor the order is always (n, c, h, w)\n     - for a 5D CNN weights tensor the order is always\n        (g, oc, ic, kh, kw)\n\n    Prelu weights tensor is passed in runtime execution phase. Prelu\n    weights tensor data type is implicitly assumed as f32 using plain\n    layout (a, ab, acb, acdb, acdeb)\n\n @param post_ops Post-ops.\n @param mask Defines the correspondence between the output tensor\n     dimensions and the prelu weights tensor. The set i-th bit indicates\n     that a dedicated weights value is used for each index along that\n     dimension. Set the mask to 0 to use a common weights value\n     for the whole output tensor.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4544    pub fn dnnl_post_ops_append_prelu(
4545        post_ops: dnnl_post_ops_t,
4546        mask: ::std::os::raw::c_int,
4547    ) -> dnnl_status_t::Type;
4548}
4549unsafe extern "C" {
4550    #[doc = " Returns the parameters of a prelu post-op.\n\n @param post_ops Post-ops.\n @param index Index of the prelu post-op.\n @param mask Mask of the prelu post-op.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4551    pub fn dnnl_post_ops_get_params_prelu(
4552        post_ops: const_dnnl_post_ops_t,
4553        index: ::std::os::raw::c_int,
4554        mask: *mut ::std::os::raw::c_int,
4555    ) -> dnnl_status_t::Type;
4556}
4557unsafe extern "C" {
4558    #[doc = " Destroys a memory descriptor.\n\n @param memory_desc Memory descriptor to destroy.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4559    pub fn dnnl_memory_desc_destroy(memory_desc: dnnl_memory_desc_t) -> dnnl_status_t::Type;
4560}
4561unsafe extern "C" {
4562    #[doc = " Clones a memory descriptor. The resulting memory descriptor must be\n destroyed separately.\n\n @param memory_desc Output memory descriptor.\n @param existing_memory_desc Memory descriptor to clone.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4563    pub fn dnnl_memory_desc_clone(
4564        memory_desc: *mut dnnl_memory_desc_t,
4565        existing_memory_desc: const_dnnl_memory_desc_t,
4566    ) -> dnnl_status_t::Type;
4567}
4568unsafe extern "C" {
4569    #[doc = " Retrieves a binary blob associated with the given memory descriptor\n\n @param blob Output pointer to binary blob.\n     If not nullptr, size bytes of the memory descriptor blob are written.\n @param size Output pointer to the size of the binary blob in bytes.\n     Size is written if blob is nullptr.\n @param memory_desc input memory descriptor to serialize\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4570    pub fn dnnl_memory_desc_get_blob(
4571        blob: *mut u8,
4572        size: *mut usize,
4573        memory_desc: const_dnnl_memory_desc_t,
4574    ) -> dnnl_status_t::Type;
4575}
4576unsafe extern "C" {
4577    #[doc = " Creates a memory descriptor from a memory descriptor binary blob.\n\n @param memory_desc Output pointer to a newly allocated memory descriptor.\n @param blob Pointer to a memory descriptor binary blob.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4578    pub fn dnnl_memory_desc_create_with_blob(
4579        memory_desc: *mut dnnl_memory_desc_t,
4580        blob: *const u8,
4581    ) -> dnnl_status_t::Type;
4582}
4583unsafe extern "C" {
4584    #[doc = " Creates a memory descriptor using dimensions and strides.\n\n @note\n     As always, the logical order of dimensions corresponds to the `abc...`\n     format tag, and the physical meaning of the dimensions depends on both\n     the primitive that consumes the memory and the context of that\n     consumption.\n\n @param memory_desc Output memory descriptor.\n @param ndims Number of dimensions\n @param dims Array of dimensions.\n @param data_type Elements data type.\n @param strides Strides in each dimension.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4585    pub fn dnnl_memory_desc_create_with_strides(
4586        memory_desc: *mut dnnl_memory_desc_t,
4587        ndims: ::std::os::raw::c_int,
4588        dims: *const dnnl_dim_t,
4589        data_type: dnnl_data_type_t::Type,
4590        strides: *const dnnl_dim_t,
4591    ) -> dnnl_status_t::Type;
4592}
4593unsafe extern "C" {
4594    #[doc = " Creates a memory descriptor using dimensions and memory format tag.\n\n @note\n     As always, the logical order of dimensions corresponds to the `abc...`\n     format tag, and the physical meaning of the dimensions depends on both\n     the primitive that consumes the memory and the context of that\n     consumption.\n\n @param memory_desc Output memory descriptor.\n @param ndims Number of dimensions\n @param dims Array of dimensions.\n @param data_type Elements data type.\n @param tag Memory format tag. Can be #dnnl_format_tag_any which would\n     allow a primitive to chose the final memory format. In this case the\n     format_kind field of the memory descriptor would be set to\n     #dnnl_format_kind_any.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4595    pub fn dnnl_memory_desc_create_with_tag(
4596        memory_desc: *mut dnnl_memory_desc_t,
4597        ndims: ::std::os::raw::c_int,
4598        dims: *const dnnl_dim_t,
4599        data_type: dnnl_data_type_t::Type,
4600        tag: dnnl_format_tag_t::Type,
4601    ) -> dnnl_status_t::Type;
4602}
4603unsafe extern "C" {
4604    #[doc = " @param memory_desc Output memory descriptor.\n @param parent_memory_desc An existing memory descriptor.\n @param dims Sizes of the region.\n @param offsets Offsets to the region from the encompassing\n     memory object in each dimension\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4605    pub fn dnnl_memory_desc_create_submemory(
4606        memory_desc: *mut dnnl_memory_desc_t,
4607        parent_memory_desc: const_dnnl_memory_desc_t,
4608        dims: *const dnnl_dim_t,
4609        offsets: *const dnnl_dim_t,
4610    ) -> dnnl_status_t::Type;
4611}
4612unsafe extern "C" {
4613    #[doc = " Creates a memory descriptor by reshaping an existing one. The new\n memory descriptor inherits the data type. This operation is valid only for\n memory descriptors that have format_kind #dnnl_blocked or\n #dnnl_format_kind_any.\n\n The resulting memory descriptor must be destroyed separately.\n\n The operation ensures the transformation of the physical memory format\n corresponds to the transformation of the logical dimensions. If such\n transformation is impossible, the function returns #dnnl_invalid_arguments.\n\n The reshape operation can be described as a combination of the following\n basic operations:\n 1. Add a dimension of size `1`. This is always possible.\n 2. Remove a dimension of size `1`. This is possible only if the dimension\n    has no padding (i.e. `padded_dims[dim] == dims[dim] && dims[dim] == 1`).\n 3. Split a dimension into multiple ones. This is possible only if the size\n    of the dimension is exactly equal to the product of the split ones and\n    the dimension does not have padding (i.e.\n    `padded_dims[dim] = dims[dim]`).\n 4. Joining multiple consecutive dimensions into a single one. As in the\n    cases above, this requires that the dimensions do not have padding and\n    that the memory format is such that in physical memory these dimensions\n    are dense and have the same order as their logical counterparts. This\n    also assumes that these dimensions are not blocked.\n    - Here, dense means:\n      `stride for dim[i] == (stride for dim[i + 1]) * dim[i + 1]`;\n    - And same order means:\n      `i < j` if and only if `stride for dim[j] <= stride for dim[i]`.\n\n @warning\n     Some combinations of physical memory layout and/or offsets or\n     dimensions may result in a failure to make a reshape.\n\n @param out_memory_desc Output memory descriptor.\n @param in_memory_desc An existing memory descriptor. Must have format_kind\n     set to #dnnl_blocked or #dnnl_format_kind_any.\n @param ndims Number of dimensions for the output memory descriptor.\n @param dims Dimensions for the output memory descriptor.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4614    pub fn dnnl_memory_desc_reshape(
4615        out_memory_desc: *mut dnnl_memory_desc_t,
4616        in_memory_desc: const_dnnl_memory_desc_t,
4617        ndims: ::std::os::raw::c_int,
4618        dims: *const dnnl_dim_t,
4619    ) -> dnnl_status_t::Type;
4620}
4621unsafe extern "C" {
4622    #[doc = " Creates a memory descriptor by permuting axes in an existing one.\n\n The physical memory layout representation is adjusted accordingly to\n maintain the consistency between the logical and physical parts of the\n memory descriptor.\n\n The resulting memory descriptor must be destroyed separately.\n\n The new memory descriptor inherits the data type. This operation is valid\n only for memory descriptors that have format_kind set to #dnnl_blocked or\n #dnnl_format_kind_any.\n\n The logical axes will be permuted in the following manner:\n ```\n for (i: 0 .. in_memory_desc->ndims)\n     out_memory_desc->dims[permutation[i]] = in_memory_desc->dims[i];\n ```\n\n Example:\n @code\n     dnnl_memory_desc_t in_md, out_md, expect_out_md;\n\n     const int permutation[] = {1, 0}; // swap the first and the second axes\n\n     dnnl_dims_t in_dims = {2, 3}, out_dims = {3, 2};\n     dnnl_format_tag_t in_tag = dnnl_ab, out_tag = dnnl_ba;\n\n     dnnl_memory_desc_create_with_tag(\n             &in_md, 2, in_dims, data_type, in_tag);\n     dnnl_memory_desc_create_with_tag(\n             &expect_out_md, 2, out_dims, data_type, out_tag);\n\n     dnnl_memory_desc_permute_axes(&out_md, in_md, permutation);\n     assert(dnnl_memory_desc_equal(out_md, expect_out_md));\n\n     dnnl_memory_desc_destroy(in_md);\n     dnnl_memory_desc_destroy(out_md);\n     dnnl_memory_desc_destroy(expect_out_md);\n @endcode\n\n @param out_memory_desc Output memory descriptor.\n @param in_memory_desc An existing memory descriptor. Must have format_kind\n     set to #dnnl_blocked or #dnnl_format_kind_any.\n @param permutation Axes permutation (of size `in_memory_desc->ndims`).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4623    pub fn dnnl_memory_desc_permute_axes(
4624        out_memory_desc: *mut dnnl_memory_desc_t,
4625        in_memory_desc: const_dnnl_memory_desc_t,
4626        permutation: *const ::std::os::raw::c_int,
4627    ) -> dnnl_status_t::Type;
4628}
4629unsafe extern "C" {
4630    #[doc = " Queries a memory descriptor for various pieces of information.\n\n The following information can be queried:\n  - Number of dimensions (#dnnl_query_ndims_s32)\n  - Dimensions (#dnnl_query_dims) in the following order:\n    - CNN data tensors: mini-batch, channel, spatial\n      (<code>{N, C, [[D,] H,] W}</code>)\n    - CNN weight tensors: group (optional), output channel, input channel,\n      spatial (<code>{[G,] O, I, [[D,] H,] W}</code>)\n    - RNN data tensors: time, mini-batch, channels (<code>{T, N, C}</code>)\n      or layers, directions, states, mini-batch, channels\n      (<code>{L, D, S, N, C}</code>)\n    - RNN weight tensor: layers, directions, input channel, gates, output\n      channels (<code>{L, D, I, G, O}</code>)\n  - Data type of the tensor elements (#dnnl_query_data_type)\n  - Padded dimensions (#dnnl_query_padded_dims) - size of the data including\n    padding in each dimension\n  - Padded offsets (#dnnl_query_padded_offsets) - per-dimension offset from\n    the padding to actual data, the top-level tensor with offsets applied\n    must lie within the padding area.\n  - Submemory offset (#dnnl_query_submemory_offset_s64) - offset from memory\n    origin to the current block, non-zero only in a description of a memory\n    sub-block.\n  - Format kind (#dnnl_query_format_kind) - memory format kind\n\n @note\n    The order of dimensions does not depend on the memory format, so\n    whether the data is laid out in #dnnl_nchw or #dnnl_nhwc\n    the dims for 4D CN data tensor would be <code>{N, C, H, W}</code>.\n\n The following queries are applicable only to format kind #dnnl_blocked.\n  - Strides (#dnnl_query_strides) between the outermost blocks or in case\n    of plain (non-blocked) formats the strides between dimensions\n  - Number of innermost blocks (#dnnl_query_inner_nblks_s32), e.g.\n    `{4, 16, 4}` in case of `OIhw_4i16o4i`\n  - Size of the innermost blocks (#dnnl_query_inner_blks), e.g. 3 in case\n    of `OIhw_4i16o4i_`\n  - Logical indices of the blocks (#dnnl_query_inner_idxs), e.g. `{1, 0, 1}`\n    in case of `4i16o4i`, because `i` is the 1st dim and `o` is the 0st dim\n\n @param memory_desc Memory descriptor.\n @param what Parameter to query.\n @param result Output result. The type depends on the query. For example,\n     it must be a @c dnnl_dims_t** if querying for a strides.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4631    pub fn dnnl_memory_desc_query(
4632        memory_desc: const_dnnl_memory_desc_t,
4633        what: dnnl_query_t::Type,
4634        result: *mut ::std::os::raw::c_void,
4635    ) -> dnnl_status_t::Type;
4636}
4637unsafe extern "C" {
4638    #[doc = " Compares two memory descriptors.\n\n Use this function to identify whether a reorder is required between the\n two memories\n\n @param lhs Left-hand side of the comparison.\n @param rhs Right-hand side of the comparison.\n @returns 1 if the descriptors are the same.\n @returns 0 if the descriptors are different."]
4639    pub fn dnnl_memory_desc_equal(
4640        lhs: const_dnnl_memory_desc_t,
4641        rhs: const_dnnl_memory_desc_t,
4642    ) -> ::std::os::raw::c_int;
4643}
4644unsafe extern "C" {
4645    #[doc = " Returns the size of a memory descriptor.\n\n @param memory_desc Memory descriptor.\n @returns The number of bytes required for memory described by a memory\n     descriptor."]
4646    pub fn dnnl_memory_desc_get_size(memory_desc: const_dnnl_memory_desc_t) -> usize;
4647}
4648unsafe extern "C" {
4649    #[doc = " Returns the size of data type.\n\n @param data_type Data type.\n @returns The number of bytes occupied by data type."]
4650    pub fn dnnl_data_type_size(data_type: dnnl_data_type_t::Type) -> usize;
4651}
4652unsafe extern "C" {
4653    #[doc = " Creates a memory object.\n\n Unless @p handle is equal to DNNL_MEMORY_NONE, the constructed memory\n object will have the underlying buffer set. In this case, the buffer will\n be initialized as if dnnl_memory_set_data_handle() had been called.\n\n @sa dnnl_memory_set_data_handle()\n\n @param memory Output memory object.\n @param memory_desc Memory descriptor.\n @param engine Engine to use.\n @param handle Handle of the memory buffer to use as an underlying storage.\n     - A pointer to the user-allocated buffer. In this case the library\n       doesn't own the buffer.\n     - The DNNL_MEMORY_ALLOCATE special value. Instructs the library to\n       allocate the buffer for the memory object. In this case the library\n       owns the buffer.\n     - DNNL_MEMORY_NONE to create dnnl_memory without an underlying buffer.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4654    pub fn dnnl_memory_create(
4655        memory: *mut dnnl_memory_t,
4656        memory_desc: const_dnnl_memory_desc_t,
4657        engine: dnnl_engine_t,
4658        handle: *mut ::std::os::raw::c_void,
4659    ) -> dnnl_status_t::Type;
4660}
4661unsafe extern "C" {
4662    #[doc = " Returns the memory descriptor for a memory object.\n\n @param memory Memory object.\n @param memory_desc Output memory descriptor (a copy).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4663    pub fn dnnl_memory_get_memory_desc(
4664        memory: const_dnnl_memory_t,
4665        memory_desc: *mut const_dnnl_memory_desc_t,
4666    ) -> dnnl_status_t::Type;
4667}
4668unsafe extern "C" {
4669    #[doc = " Returns the engine of a memory object.\n\n @param memory Memory object.\n @param engine Output engine on which the memory is located.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4670    pub fn dnnl_memory_get_engine(
4671        memory: const_dnnl_memory_t,
4672        engine: *mut dnnl_engine_t,
4673    ) -> dnnl_status_t::Type;
4674}
4675unsafe extern "C" {
4676    #[doc = " Maps a memory object and returns a host-side pointer to a memory buffer\n with a copy of its contents.\n\n Mapping enables explicit direct access to memory contents for the engines\n that do not support it implicitly.\n\n Mapping is an exclusive operation - a memory object cannot be used in\n other operations until this memory object is unmapped.\n\n @note\n     Any primitives working with @p memory should be completed before\n     the memory is mapped. Use dnnl_stream_wait to synchronize the\n     corresponding execution stream.\n\n @note\n     The dnnl_memory_map_data() and dnnl_memory_unmap_data() functions are\n     mainly provided for debug and testing purposes, and their performance\n     may be suboptimal.\n\n @param memory Memory object.\n @param mapped_ptr Output pointer to the mapped buffer.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4677    pub fn dnnl_memory_map_data(
4678        memory: const_dnnl_memory_t,
4679        mapped_ptr: *mut *mut ::std::os::raw::c_void,
4680    ) -> dnnl_status_t::Type;
4681}
4682unsafe extern "C" {
4683    #[doc = " Unmaps a memory object and writes back any changes made to the previously\n mapped memory buffer. The pointer to the mapped buffer must be obtained\n via the dnnl_memory_map_data() call.\n\n @note\n     The dnnl_memory_map_data() and dnnl_memory_unmap_data() functions are\n     mainly provided for debug and testing purposes, and their performance\n     may be suboptimal.\n\n @param memory Memory object.\n @param mapped_ptr Pointer to the mapped buffer that must have been\n     obtained using the dnnl_memory_map_data() function.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4684    pub fn dnnl_memory_unmap_data(
4685        memory: const_dnnl_memory_t,
4686        mapped_ptr: *mut ::std::os::raw::c_void,
4687    ) -> dnnl_status_t::Type;
4688}
4689unsafe extern "C" {
4690    #[doc = " Returns memory object's data handle.\n\n @param memory Memory object.\n @param handle Output data handle. For the CPU engine, the data handle is a\n     pointer to the actual data. For OpenCL it is a cl_mem.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4691    pub fn dnnl_memory_get_data_handle(
4692        memory: const_dnnl_memory_t,
4693        handle: *mut *mut ::std::os::raw::c_void,
4694    ) -> dnnl_status_t::Type;
4695}
4696unsafe extern "C" {
4697    #[doc = " Sets the underlying memory buffer.\n\n @param memory Memory object.\n @param handle Data handle. For the CPU engine or when USM is used, the\n     memory buffer is a pointer to the actual data. For OpenCL it is a\n     `cl_mem`.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4698    pub fn dnnl_memory_set_data_handle(
4699        memory: dnnl_memory_t,
4700        handle: *mut ::std::os::raw::c_void,
4701    ) -> dnnl_status_t::Type;
4702}
4703unsafe extern "C" {
4704    #[doc = " Destroys a memory object.\n\n @param memory Memory object to destroy.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4705    pub fn dnnl_memory_destroy(memory: dnnl_memory_t) -> dnnl_status_t::Type;
4706}
4707unsafe extern "C" {
4708    #[doc = " Creates a primitive descriptor for a reorder primitive.\n\n @param reorder_primitive_desc Output primitive descriptor.\n @param src_desc Source memory descriptor.\n @param src_engine Engine on which the source memory object will be\n     located.\n @param dst_desc Destination memory descriptor.\n @param dst_engine Engine on which the destination memory object\n     will be located.\n @param attr Primitive attributes to use (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4709    pub fn dnnl_reorder_primitive_desc_create(
4710        reorder_primitive_desc: *mut dnnl_primitive_desc_t,
4711        src_desc: const_dnnl_memory_desc_t,
4712        src_engine: dnnl_engine_t,
4713        dst_desc: const_dnnl_memory_desc_t,
4714        dst_engine: dnnl_engine_t,
4715        attr: const_dnnl_primitive_attr_t,
4716    ) -> dnnl_status_t::Type;
4717}
4718unsafe extern "C" {
4719    #[doc = " Creates a primitive descriptor for an out-of-place concatenation\n primitive.\n\n @param concat_primitive_desc Output primitive descriptor.\n @param dst_desc Destination memory descriptor.\n @param n Number of source parameters.\n @param concat_dimension Source tensors will be concatenated over\n     dimension with this index. Note that order of dimensions does\n     not depend on memory format.\n @param src_descs Array of source memory descriptors with @p n elements.\n @param attr Primitive attributes to use (can be NULL).\n @param engine Engine to use.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4720    pub fn dnnl_concat_primitive_desc_create(
4721        concat_primitive_desc: *mut dnnl_primitive_desc_t,
4722        engine: dnnl_engine_t,
4723        dst_desc: const_dnnl_memory_desc_t,
4724        n: ::std::os::raw::c_int,
4725        concat_dimension: ::std::os::raw::c_int,
4726        src_descs: *const const_dnnl_memory_desc_t,
4727        attr: const_dnnl_primitive_attr_t,
4728    ) -> dnnl_status_t::Type;
4729}
4730unsafe extern "C" {
4731    #[doc = " Creates a primitive descriptor for an (out-of-place) sum primitive.\n\n @param sum_primitive_desc Output primitive descriptor.\n @param dst_desc Destination memory descriptor.\n @param n Number of source parameters.\n @param scales Vector of scales to multiply data in each source\n     memory by.\n @param src_descs Array of source memory descriptors having @p n elements.\n @param attr Primitive attributes to use (can be NULL).\n @param engine Engine to use.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4732    pub fn dnnl_sum_primitive_desc_create(
4733        sum_primitive_desc: *mut dnnl_primitive_desc_t,
4734        engine: dnnl_engine_t,
4735        dst_desc: const_dnnl_memory_desc_t,
4736        n: ::std::os::raw::c_int,
4737        scales: *const f32,
4738        src_descs: *const const_dnnl_memory_desc_t,
4739        attr: const_dnnl_primitive_attr_t,
4740    ) -> dnnl_status_t::Type;
4741}
4742unsafe extern "C" {
4743    #[doc = " Creates a primitive descriptor for a binary primitive.\n\n @note\n     Memory descriptors @p src1_desc and @p dst_desc are allowed to be\n     initialized with #dnnl_format_tag_any or with format_kind set to\n     #dnnl_format_kind_any.\n\n @note\n     Both memory descriptors must have the same number of dimensions.\n     Element broadcasting is supported for memory descriptor @p src1_desc\n     and are applied to @p src1_desc dimensions that have size equal to 1.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param alg_kind Algorithm kind. Valid values are #dnnl_binary_add,\n     #dnnl_binary_mul, #dnnl_binary_max, #dnnl_binary_min, #dnnl_binary_div,\n     #dnnl_binary_sub, #dnnl_binary_ge, #dnnl_binary_gt, #dnnl_binary_le,\n     #dnnl_binary_lt, #dnnl_binary_eq and #dnnl_binary_ne.\n @param src0_desc Source 0 memory descriptor.\n @param src1_desc Source 1 memory descriptor.\n @param dst_desc Destination memory descriptor.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4744    pub fn dnnl_binary_primitive_desc_create(
4745        primitive_desc: *mut dnnl_primitive_desc_t,
4746        engine: dnnl_engine_t,
4747        alg_kind: dnnl_alg_kind_t::Type,
4748        src0_desc: const_dnnl_memory_desc_t,
4749        src1_desc: const_dnnl_memory_desc_t,
4750        dst_desc: const_dnnl_memory_desc_t,
4751        attr: const_dnnl_primitive_attr_t,
4752    ) -> dnnl_status_t::Type;
4753}
4754unsafe extern "C" {
4755    #[doc = " Creates a primitive descriptor for a binary primitive with support of\n ternary operators.\n\n @note\n     Memory descriptors @p src1_desc, @p src2_desc and @p dst_desc are\n     allowed to be initialized with #dnnl_format_tag_any or with format_kind\n     set to #dnnl_format_kind_any.\n\n @note\n     All memory descriptors must have the same number of dimensions.\n     Element broadcasting is supported for memory descriptor @p src1_desc\n     and is applied to @p src1_desc dimensions that have a size equal to 1.\n     There is no broadcasting support for @p src2_desc.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param alg_kind Algorithm kind.\n @param src0_desc Source 0 memory descriptor.\n @param src1_desc Source 1 memory descriptor.\n @param src2_desc Source memory descriptor for ternary operations. Might\n     be empty.\n @param dst_desc Destination memory descriptor.\n @param attr Primitive attributes.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4756    pub fn dnnl_binary_primitive_desc_create_v2(
4757        primitive_desc: *mut dnnl_primitive_desc_t,
4758        engine: dnnl_engine_t,
4759        alg_kind: dnnl_alg_kind_t::Type,
4760        src0_desc: const_dnnl_memory_desc_t,
4761        src1_desc: const_dnnl_memory_desc_t,
4762        src2_desc: const_dnnl_memory_desc_t,
4763        dst_desc: const_dnnl_memory_desc_t,
4764        attr: const_dnnl_primitive_attr_t,
4765    ) -> dnnl_status_t::Type;
4766}
4767unsafe extern "C" {
4768    #[doc = " Creates a primitive descriptor for a convolution forward propagation\n     primitive.\n\n @note\n     Memory descriptors can be initialized with\n     #dnnl_format_tag_any or with format_kind set to #dnnl_format_kind_any.\n\n Arrays @p strides, @p dilates, @p padding_l, and @p padding_r contain\n values for spatial dimensions only and hence must have the same number of\n elements as there are spatial dimensions. The order of values is the same\n as in the tensor: depth (for 3D tensors), height (for 3D and 2D tensors),\n and width.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Possible values are\n     #dnnl_forward_training and #dnnl_forward_inference.\n @param alg_kind Convolution algorithm. Possible values are\n     #dnnl_convolution_direct, #dnnl_convolution_winograd,\n     #dnnl_convolution_auto.\n @param src_desc Source memory descriptor.\n @param weights_desc Weights memory descriptor.\n @param bias_desc Bias memory descriptor. Passing NULL, a zero memory\n     descriptor, or a memory descriptor with format_kind set to\n     #dnnl_format_kind_undef disables the bias term.\n @param dst_desc Destination memory descriptor.\n @param strides Array of strides for spatial dimension.\n @param dilates Array of dilations for spatial dimension. A zero value\n     means no dilation in the corresponding dimension.\n @param padding_l Array of padding values for low indices for each spatial\n     dimension `([[front,] top,] left)`.\n @param padding_r Array of padding values for high indices for each spatial\n     dimension `([[back,] bottom,] right)`. Can be NULL in which case\n     padding is considered to be symmetrical.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4769    pub fn dnnl_convolution_forward_primitive_desc_create(
4770        primitive_desc: *mut dnnl_primitive_desc_t,
4771        engine: dnnl_engine_t,
4772        prop_kind: dnnl_prop_kind_t::Type,
4773        alg_kind: dnnl_alg_kind_t::Type,
4774        src_desc: const_dnnl_memory_desc_t,
4775        weights_desc: const_dnnl_memory_desc_t,
4776        bias_desc: const_dnnl_memory_desc_t,
4777        dst_desc: const_dnnl_memory_desc_t,
4778        strides: *const dnnl_dim_t,
4779        dilates: *const dnnl_dim_t,
4780        padding_l: *const dnnl_dim_t,
4781        padding_r: *const dnnl_dim_t,
4782        attr: const_dnnl_primitive_attr_t,
4783    ) -> dnnl_status_t::Type;
4784}
4785unsafe extern "C" {
4786    #[doc = " Creates a primitive descriptor for a convolution backward propagation\n     primitive.\n\n @note\n     Memory descriptors can be initialized with\n     #dnnl_format_tag_any or with format_kind set to #dnnl_format_kind_any.\n\n Arrays @p strides, @p dilates, @p padding_l, and @p padding_r contain\n values for spatial dimensions only and hence must have the same number of\n elements as there are spatial dimensions. The order of values is the same\n as in the tensor: depth (for 3D tensors), height (for 3D and 2D tensors),\n and width.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param alg_kind Convolution algorithm. Possible values are\n     #dnnl_convolution_direct, #dnnl_convolution_winograd,\n     #dnnl_convolution_auto.\n @param diff_src_desc Diff source memory descriptor.\n @param weights_desc Weights memory descriptor.\n @param diff_dst_desc Diff destination memory descriptor.\n @param strides Array of strides for spatial dimension.\n @param dilates Array of dilations for spatial dimension. A zero value\n     means no dilation in the corresponding dimension.\n @param padding_l Array of padding values for low indices for each spatial\n     dimension `([[front,] top,] left)`.\n @param padding_r Array of padding values for high indices for each spatial\n     dimension `([[back,] bottom,] right)`. Can be NULL in which case\n     padding is considered to be symmetrical.\n @param hint_fwd_pd Primitive descriptor for a respective forward propagation\n     primitive.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4787    pub fn dnnl_convolution_backward_data_primitive_desc_create(
4788        primitive_desc: *mut dnnl_primitive_desc_t,
4789        engine: dnnl_engine_t,
4790        alg_kind: dnnl_alg_kind_t::Type,
4791        diff_src_desc: const_dnnl_memory_desc_t,
4792        weights_desc: const_dnnl_memory_desc_t,
4793        diff_dst_desc: const_dnnl_memory_desc_t,
4794        strides: *const dnnl_dim_t,
4795        dilates: *const dnnl_dim_t,
4796        padding_l: *const dnnl_dim_t,
4797        padding_r: *const dnnl_dim_t,
4798        hint_fwd_pd: const_dnnl_primitive_desc_t,
4799        attr: const_dnnl_primitive_attr_t,
4800    ) -> dnnl_status_t::Type;
4801}
4802unsafe extern "C" {
4803    #[doc = " Creates a primitive descriptor for a convolution weights gradient primitive.\n\n @note\n     Memory descriptors can be initialized with\n     #dnnl_format_tag_any or with format_kind set to #dnnl_format_kind_any.\n\n Arrays @p strides, @p dilates, @p padding_l, and @p padding_r contain\n values for spatial dimensions only and hence must have the same number of\n elements as there are spatial dimensions. The order of values is the same\n as in the tensor: depth (for 3D tensors), height (for 3D and 2D tensors),\n and width.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param alg_kind Convolution algorithm. Possible values are\n     #dnnl_convolution_direct, #dnnl_convolution_winograd,\n     #dnnl_convolution_auto.\n @param src_desc Source memory descriptor.\n @param diff_weights_desc Diff weights memory descriptor.\n @param diff_bias_desc Diff bias memory descriptor. Passing NULL, a zero\n     memory descriptor, or a memory descriptor with format_kind set to\n     #dnnl_format_kind_undef disables the bias term.\n @param diff_dst_desc Diff destination memory descriptor.\n @param strides Array of strides for spatial dimension.\n @param dilates Array of dilations for spatial dimension. A zero value\n     means no dilation in the corresponding dimension.\n @param padding_l Array of padding values for low indices for each spatial\n     dimension `([[front,] top,] left)`.\n @param padding_r Array of padding values for high indices for each spatial\n     dimension `([[back,] bottom,] right)`. Can be NULL in which case\n     padding is considered to be symmetrical.\n @param hint_fwd_pd Primitive descriptor for a respective forward propagation\n     primitive.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4804    pub fn dnnl_convolution_backward_weights_primitive_desc_create(
4805        primitive_desc: *mut dnnl_primitive_desc_t,
4806        engine: dnnl_engine_t,
4807        alg_kind: dnnl_alg_kind_t::Type,
4808        src_desc: const_dnnl_memory_desc_t,
4809        diff_weights_desc: const_dnnl_memory_desc_t,
4810        diff_bias_desc: const_dnnl_memory_desc_t,
4811        diff_dst_desc: const_dnnl_memory_desc_t,
4812        strides: *const dnnl_dim_t,
4813        dilates: *const dnnl_dim_t,
4814        padding_l: *const dnnl_dim_t,
4815        padding_r: *const dnnl_dim_t,
4816        hint_fwd_pd: const_dnnl_primitive_desc_t,
4817        attr: const_dnnl_primitive_attr_t,
4818    ) -> dnnl_status_t::Type;
4819}
4820unsafe extern "C" {
4821    #[doc = " Creates a primitive descriptor for a deconvolution forward propagation\n     primitive.\n\n @note\n     Memory descriptors can be initialized with\n     #dnnl_format_tag_any or with format_kind set to #dnnl_format_kind_any.\n\n Arrays @p strides, @p dilates, @p padding_l, and @p padding_r contain\n values for spatial dimensions only and hence must have the same number of\n elements as there are spatial dimensions. The order of values is the same\n as in the tensor: depth (for 3D tensors), height (for 3D and 2D tensors),\n and width.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Possible values are\n     #dnnl_forward_training and #dnnl_forward_inference.\n @param alg_kind Deconvolution algorithm. Possible values are\n     #dnnl_deconvolution_direct, #dnnl_deconvolution_winograd.\n @param src_desc Source memory descriptor.\n @param weights_desc Weights memory descriptor.\n @param bias_desc Bias memory descriptor. Passing NULL, a zero memory\n     descriptor, or a memory descriptor with format_kind set to\n     #dnnl_format_kind_undef disables the bias term.\n @param dst_desc Destination memory descriptor.\n @param strides Array of strides for spatial dimension.\n @param dilates Array of dilations for spatial dimension. A zero value\n     means no dilation in the corresponding dimension.\n @param padding_l Array of padding values for low indices for each spatial\n     dimension `([[front,] top,] left)`.\n @param padding_r Array of padding values for high indices for each spatial\n     dimension `([[back,] bottom,] right)`. Can be NULL in which case\n     padding is considered to be symmetrical.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4822    pub fn dnnl_deconvolution_forward_primitive_desc_create(
4823        primitive_desc: *mut dnnl_primitive_desc_t,
4824        engine: dnnl_engine_t,
4825        prop_kind: dnnl_prop_kind_t::Type,
4826        alg_kind: dnnl_alg_kind_t::Type,
4827        src_desc: const_dnnl_memory_desc_t,
4828        weights_desc: const_dnnl_memory_desc_t,
4829        bias_desc: const_dnnl_memory_desc_t,
4830        dst_desc: const_dnnl_memory_desc_t,
4831        strides: *const dnnl_dim_t,
4832        dilates: *const dnnl_dim_t,
4833        padding_l: *const dnnl_dim_t,
4834        padding_r: *const dnnl_dim_t,
4835        attr: const_dnnl_primitive_attr_t,
4836    ) -> dnnl_status_t::Type;
4837}
4838unsafe extern "C" {
4839    #[doc = " Creates a primitive descriptor for a deconvolution backward propagation\n     primitive.\n\n @note\n     Memory descriptors can be initialized with\n     #dnnl_format_tag_any or with format_kind set to #dnnl_format_kind_any.\n\n Arrays @p strides, @p dilates, @p padding_l, and @p padding_r contain\n values for spatial dimensions only and hence must have the same number of\n elements as there are spatial dimensions. The order of values is the same\n as in the tensor: depth (for 3D tensors), height (for 3D and 2D tensors),\n and width.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param alg_kind Deconvolution algorithm. Possible values are\n     #dnnl_deconvolution_direct, #dnnl_deconvolution_winograd.\n @param diff_src_desc Diff source memory descriptor.\n @param weights_desc Weights memory descriptor.\n @param diff_dst_desc Diff destination memory descriptor.\n @param strides Array of strides for spatial dimension.\n @param dilates Array of dilations for spatial dimension. A zero value\n     means no dilation in the corresponding dimension.\n @param padding_l Array of padding values for low indices for each spatial\n     dimension `([[front,] top,] left)`.\n @param padding_r Array of padding values for high indices for each spatial\n     dimension `([[back,] bottom,] right)`. Can be NULL in which case\n     padding is considered to be symmetrical.\n @param hint_fwd_pd Primitive descriptor for a respective forward propagation\n     primitive.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4840    pub fn dnnl_deconvolution_backward_data_primitive_desc_create(
4841        primitive_desc: *mut dnnl_primitive_desc_t,
4842        engine: dnnl_engine_t,
4843        alg_kind: dnnl_alg_kind_t::Type,
4844        diff_src_desc: const_dnnl_memory_desc_t,
4845        weights_desc: const_dnnl_memory_desc_t,
4846        diff_dst_desc: const_dnnl_memory_desc_t,
4847        strides: *const dnnl_dim_t,
4848        dilates: *const dnnl_dim_t,
4849        padding_l: *const dnnl_dim_t,
4850        padding_r: *const dnnl_dim_t,
4851        hint_fwd_pd: const_dnnl_primitive_desc_t,
4852        attr: const_dnnl_primitive_attr_t,
4853    ) -> dnnl_status_t::Type;
4854}
4855unsafe extern "C" {
4856    #[doc = " Creates a primitive descriptor for a deconvolution weights gradient\n     primitive.\n\n @note\n     Memory descriptors can be initialized with\n     #dnnl_format_tag_any or with format_kind set to #dnnl_format_kind_any.\n\n Arrays @p strides, @p dilates, @p padding_l, and @p padding_r contain\n values for spatial dimensions only and hence must have the same number of\n elements as there are spatial dimensions. The order of values is the same\n as in the tensor: depth (for 3D tensors), height (for 3D and 2D tensors),\n and width.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param alg_kind Deconvolution algorithm. Possible values are\n     #dnnl_deconvolution_direct, #dnnl_deconvolution_winograd.\n @param src_desc Source memory descriptor.\n @param diff_weights_desc Diff weights memory descriptor.\n @param diff_bias_desc Diff bias memory descriptor. Passing NULL, a zero\n     memory descriptor, or a memory descriptor with format_kind set to\n     #dnnl_format_kind_undef disables the bias term.\n @param diff_dst_desc Diff destination memory descriptor.\n @param strides Array of strides for spatial dimension.\n @param dilates Array of dilations for spatial dimension. A zero value\n     means no dilation in the corresponding dimension.\n @param padding_l Array of padding values for low indices for each spatial\n     dimension `([[front,] top,] left)`.\n @param padding_r Array of padding values for high indices for each spatial\n     dimension `([[back,] bottom,] right)`. Can be NULL in which case\n     padding is considered to be symmetrical.\n @param hint_fwd_pd Primitive descriptor for a respective forward propagation\n     primitive.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4857    pub fn dnnl_deconvolution_backward_weights_primitive_desc_create(
4858        primitive_desc: *mut dnnl_primitive_desc_t,
4859        engine: dnnl_engine_t,
4860        alg_kind: dnnl_alg_kind_t::Type,
4861        src_desc: const_dnnl_memory_desc_t,
4862        diff_weights_desc: const_dnnl_memory_desc_t,
4863        diff_bias_desc: const_dnnl_memory_desc_t,
4864        diff_dst_desc: const_dnnl_memory_desc_t,
4865        strides: *const dnnl_dim_t,
4866        dilates: *const dnnl_dim_t,
4867        padding_l: *const dnnl_dim_t,
4868        padding_r: *const dnnl_dim_t,
4869        hint_fwd_pd: const_dnnl_primitive_desc_t,
4870        attr: const_dnnl_primitive_attr_t,
4871    ) -> dnnl_status_t::Type;
4872}
4873unsafe extern "C" {
4874    #[doc = " Creates a primitive descriptor for a shuffle forward propagation primitive\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Possible values are\n     #dnnl_forward_training and #dnnl_forward_inference.\n @param src_desc Source memory descriptor.\n @param dst_desc Destination memory descriptor.\n @param axis The axis along which the data is shuffled.\n @param group_size Shuffle group size.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4875    pub fn dnnl_shuffle_forward_primitive_desc_create(
4876        primitive_desc: *mut dnnl_primitive_desc_t,
4877        engine: dnnl_engine_t,
4878        prop_kind: dnnl_prop_kind_t::Type,
4879        src_desc: const_dnnl_memory_desc_t,
4880        dst_desc: const_dnnl_memory_desc_t,
4881        axis: ::std::os::raw::c_int,
4882        group_size: dnnl_dim_t,
4883        attr: const_dnnl_primitive_attr_t,
4884    ) -> dnnl_status_t::Type;
4885}
4886unsafe extern "C" {
4887    #[doc = " Creates a primitive descriptor for a shuffle backward propagation primitive\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param diff_src_desc Diff source memory descriptor.\n @param diff_dst_desc Diff destination memory descriptor.\n @param axis The axis along which the data is shuffled.\n @param group_size Shuffle group size.\n @param hint_fwd_pd Primitive descriptor for a respective forward propagation\n     primitive.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4888    pub fn dnnl_shuffle_backward_primitive_desc_create(
4889        primitive_desc: *mut dnnl_primitive_desc_t,
4890        engine: dnnl_engine_t,
4891        diff_src_desc: const_dnnl_memory_desc_t,
4892        diff_dst_desc: const_dnnl_memory_desc_t,
4893        axis: ::std::os::raw::c_int,
4894        group_size: dnnl_dim_t,
4895        hint_fwd_pd: const_dnnl_primitive_desc_t,
4896        attr: const_dnnl_primitive_attr_t,
4897    ) -> dnnl_status_t::Type;
4898}
4899unsafe extern "C" {
4900    #[doc = " Creates a primitive descriptor for an eltwise forward propagation primitive.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Possible values are\n     #dnnl_forward_training and #dnnl_forward_inference.\n @param alg_kind Elementwise algorithm kind.\n @param src_desc Source memory descriptor.\n @param dst_desc Destination memory descriptor.\n @param alpha The alpha parameter for the elementwise operation. Specific\n     meaning depends on the algorithm.\n @param beta The beta parameter for the elementwise operation. Specific\n     meaning depends on the algorithm.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4901    pub fn dnnl_eltwise_forward_primitive_desc_create(
4902        primitive_desc: *mut dnnl_primitive_desc_t,
4903        engine: dnnl_engine_t,
4904        prop_kind: dnnl_prop_kind_t::Type,
4905        alg_kind: dnnl_alg_kind_t::Type,
4906        src_desc: const_dnnl_memory_desc_t,
4907        dst_desc: const_dnnl_memory_desc_t,
4908        alpha: f32,
4909        beta: f32,
4910        attr: const_dnnl_primitive_attr_t,
4911    ) -> dnnl_status_t::Type;
4912}
4913unsafe extern "C" {
4914    #[doc = " Creates a primitive descriptor for an eltwise backward propagation\n     primitive.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param alg_kind Elementwise algorithm kind.\n @param diff_src_desc Diff source memory descriptor.\n @param diff_dst_desc Diff destination memory descriptor.\n @param data_desc Destination memory descriptor if one of the\n     \"use_dst_for_bwd\" algorithms are used (such as\n     #dnnl_eltwise_relu_use_dst_for_bwd), source memory descriptor otherwise.\n @param alpha The alpha parameter for the elementwise operation. Specific\n     meaning depends on the algorithm.\n @param beta The beta parameter for the elementwise operation. Specific\n     meaning depends on the algorithm.\n @param hint_fwd_pd Primitive descriptor for a respective forward propagation\n     primitive.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4915    pub fn dnnl_eltwise_backward_primitive_desc_create(
4916        primitive_desc: *mut dnnl_primitive_desc_t,
4917        engine: dnnl_engine_t,
4918        alg_kind: dnnl_alg_kind_t::Type,
4919        diff_src_desc: const_dnnl_memory_desc_t,
4920        diff_dst_desc: const_dnnl_memory_desc_t,
4921        data_desc: const_dnnl_memory_desc_t,
4922        alpha: f32,
4923        beta: f32,
4924        hint_fwd_pd: const_dnnl_primitive_desc_t,
4925        attr: const_dnnl_primitive_attr_t,
4926    ) -> dnnl_status_t::Type;
4927}
4928unsafe extern "C" {
4929    #[doc = " Creates a primitive descriptor for a softmax forward propagation primitive.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Possible values are\n     #dnnl_forward_training and #dnnl_forward_inference.\n @param alg_kind Softmax algorithm kind: either #dnnl_softmax_accurate, or\n     #dnnl_softmax_log.\n @param src_desc Source memory descriptor.\n @param dst_desc Destination memory descriptor.\n @param softmax_axis Axis over which softmax is computed.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4930    pub fn dnnl_softmax_forward_primitive_desc_create(
4931        primitive_desc: *mut dnnl_primitive_desc_t,
4932        engine: dnnl_engine_t,
4933        prop_kind: dnnl_prop_kind_t::Type,
4934        alg_kind: dnnl_alg_kind_t::Type,
4935        src_desc: const_dnnl_memory_desc_t,
4936        dst_desc: const_dnnl_memory_desc_t,
4937        softmax_axis: ::std::os::raw::c_int,
4938        attr: const_dnnl_primitive_attr_t,
4939    ) -> dnnl_status_t::Type;
4940}
4941unsafe extern "C" {
4942    #[doc = " Creates a primitive descriptor for a softmax backward propagation primitive.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param alg_kind Softmax algorithm kind: either #dnnl_softmax_accurate, or\n     #dnnl_softmax_log.\n @param diff_src_desc Diff source memory descriptor.\n @param diff_dst_desc Diff destination memory descriptor.\n @param dst_desc Destination memory descriptor.\n @param softmax_axis Axis over which softmax is computed.\n @param hint_fwd_pd Primitive descriptor for a respective forward propagation\n     primitive.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4943    pub fn dnnl_softmax_backward_primitive_desc_create(
4944        primitive_desc: *mut dnnl_primitive_desc_t,
4945        engine: dnnl_engine_t,
4946        alg_kind: dnnl_alg_kind_t::Type,
4947        diff_src_desc: const_dnnl_memory_desc_t,
4948        diff_dst_desc: const_dnnl_memory_desc_t,
4949        dst_desc: const_dnnl_memory_desc_t,
4950        softmax_axis: ::std::os::raw::c_int,
4951        hint_fwd_pd: const_dnnl_primitive_desc_t,
4952        attr: const_dnnl_primitive_attr_t,
4953    ) -> dnnl_status_t::Type;
4954}
4955unsafe extern "C" {
4956    #[doc = " Creates a primitive descriptor for a pooling forward propagation\n     primitive.\n\n Arrays @p strides, @p kernel, @p dilation, @p padding_l and @p padding_r\n contain values for spatial dimensions only and hence must have the same\n number of elements as there are spatial dimensions. The order of values\n is the same as in the tensor: depth (for 3D tensors),\n height (for 3D and 2D tensors), and width.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Possible values are\n     #dnnl_forward_training and #dnnl_forward_inference.\n @param alg_kind Pooling algorithm kind: either #dnnl_pooling_max,\n     #dnnl_pooling_avg_include_padding, or #dnnl_pooling_avg_exclude_padding.\n @param src_desc Source memory descriptor.\n @param dst_desc Destination memory descriptor.\n @param strides Array of strides for spatial dimension.\n @param kernel Array of kernel spatial dimensions.\n @param dilation Array of dilations for spatial dimension.\n @param padding_l Array of padding values for low indices for each spatial\n     dimension `([[front,] top,] left)`.\n @param padding_r Array of padding values for high indices for each spatial\n     dimension `([[back,] bottom,] right)`. Can be NULL in which case\n     padding is considered to be symmetrical.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4957    pub fn dnnl_pooling_forward_primitive_desc_create(
4958        primitive_desc: *mut dnnl_primitive_desc_t,
4959        engine: dnnl_engine_t,
4960        prop_kind: dnnl_prop_kind_t::Type,
4961        alg_kind: dnnl_alg_kind_t::Type,
4962        src_desc: const_dnnl_memory_desc_t,
4963        dst_desc: const_dnnl_memory_desc_t,
4964        strides: *const dnnl_dim_t,
4965        kernel: *const dnnl_dim_t,
4966        dilation: *const dnnl_dim_t,
4967        padding_l: *const dnnl_dim_t,
4968        padding_r: *const dnnl_dim_t,
4969        attr: const_dnnl_primitive_attr_t,
4970    ) -> dnnl_status_t::Type;
4971}
4972unsafe extern "C" {
4973    #[doc = " Creates a primitive descriptor for a pooling backward propagation\n     primitive.\n\n Arrays @p strides, @p kernel, @p dilation, @p padding_l and @p padding_r\n contain values for spatial dimensions only and hence must have the same\n number of elements as there are spatial dimensions. The order of values\n is the same as in the tensor: depth (for 3D tensors),\n height (for 3D and 2D tensors), and width.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param alg_kind Pooling algorithm kind: either #dnnl_pooling_max,\n     #dnnl_pooling_avg_include_padding, or #dnnl_pooling_avg_exclude_padding.\n @param diff_src_desc Diff source memory descriptor.\n @param diff_dst_desc Diff destination memory descriptor.\n @param strides Array of strides for spatial dimension.\n @param kernel Array of kernel spatial dimensions.\n @param dilation Array of dilations for spatial dimension.\n @param padding_l Array of padding values for low indices for each spatial\n     dimension `([[front,] top,] left)`.\n @param padding_r Array of padding values for high indices for each spatial\n     dimension `([[back,] bottom,] right)`. Can be NULL in which case\n     padding is considered to be symmetrical.\n @param hint_fwd_pd Primitive descriptor for a respective forward propagation\n     primitive.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4974    pub fn dnnl_pooling_backward_primitive_desc_create(
4975        primitive_desc: *mut dnnl_primitive_desc_t,
4976        engine: dnnl_engine_t,
4977        alg_kind: dnnl_alg_kind_t::Type,
4978        diff_src_desc: const_dnnl_memory_desc_t,
4979        diff_dst_desc: const_dnnl_memory_desc_t,
4980        strides: *const dnnl_dim_t,
4981        kernel: *const dnnl_dim_t,
4982        dilation: *const dnnl_dim_t,
4983        padding_l: *const dnnl_dim_t,
4984        padding_r: *const dnnl_dim_t,
4985        hint_fwd_pd: const_dnnl_primitive_desc_t,
4986        attr: const_dnnl_primitive_attr_t,
4987    ) -> dnnl_status_t::Type;
4988}
4989unsafe extern "C" {
4990    #[doc = " Creates a primitive descriptor for a PReLU (leaky ReLU with trainable\n     alpha parameter) forward propagation primitive.\n\n @note\n     weights descriptor is allowed to be initialized with\n     #dnnl_format_tag_any or with format_kind set to #dnnl_format_kind_any.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Possible values are\n     #dnnl_forward_training and #dnnl_forward_inference.\n @param src_desc Source memory descriptor.\n @param weights_desc Alpha parameters memory descriptor.\n @param dst_desc Destination memory descriptor.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
4991    pub fn dnnl_prelu_forward_primitive_desc_create(
4992        primitive_desc: *mut dnnl_primitive_desc_t,
4993        engine: dnnl_engine_t,
4994        prop_kind: dnnl_prop_kind_t::Type,
4995        src_desc: const_dnnl_memory_desc_t,
4996        weights_desc: const_dnnl_memory_desc_t,
4997        dst_desc: const_dnnl_memory_desc_t,
4998        attr: const_dnnl_primitive_attr_t,
4999    ) -> dnnl_status_t::Type;
5000}
5001unsafe extern "C" {
5002    #[doc = " Creates a primitive descriptor for a PReLU (leaky ReLU with trainable\n     alpha parameter) backward propagation primitive.\n\n @note\n     weights descriptor and diff_weights descriptor are allowed\n     to be initialized with #dnnl_format_tag_any or with format_kind\n     set to #dnnl_format_kind_any.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param src_desc Source memory descriptor.\n @param weights_desc Alpha parameters memory descriptor.\n @param diff_src_desc Diff source memory descriptor.\n @param diff_weights_desc Diff alpha parameters memory descriptor.\n @param diff_dst_desc Diff destination memory descriptor.\n @param hint_fwd_pd Primitive descriptor for a respective forward propagation\n     primitive.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5003    pub fn dnnl_prelu_backward_primitive_desc_create(
5004        primitive_desc: *mut dnnl_primitive_desc_t,
5005        engine: dnnl_engine_t,
5006        src_desc: const_dnnl_memory_desc_t,
5007        weights_desc: const_dnnl_memory_desc_t,
5008        diff_src_desc: const_dnnl_memory_desc_t,
5009        diff_weights_desc: const_dnnl_memory_desc_t,
5010        diff_dst_desc: const_dnnl_memory_desc_t,
5011        hint_fwd_pd: const_dnnl_primitive_desc_t,
5012        attr: const_dnnl_primitive_attr_t,
5013    ) -> dnnl_status_t::Type;
5014}
5015unsafe extern "C" {
5016    #[doc = " Creates a primitive descriptor for an LRN forward propagation primitive.\n\n @param primitive_desc Output primitive_descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Possible values are\n     #dnnl_forward_training and #dnnl_forward_inference.\n @param alg_kind LRN algorithm kind: either #dnnl_lrn_across_channels or\n     #dnnl_lrn_within_channel.\n @param src_desc Source memory descriptor.\n @param dst_desc Destination memory descriptor.\n @param local_size Regularization local size.\n @param alpha The alpha regularization parameter.\n @param beta The beta regularization parameter.\n @param k The k regularization parameter.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5017    pub fn dnnl_lrn_forward_primitive_desc_create(
5018        primitive_desc: *mut dnnl_primitive_desc_t,
5019        engine: dnnl_engine_t,
5020        prop_kind: dnnl_prop_kind_t::Type,
5021        alg_kind: dnnl_alg_kind_t::Type,
5022        src_desc: const_dnnl_memory_desc_t,
5023        dst_desc: const_dnnl_memory_desc_t,
5024        local_size: dnnl_dim_t,
5025        alpha: f32,
5026        beta: f32,
5027        k: f32,
5028        attr: const_dnnl_primitive_attr_t,
5029    ) -> dnnl_status_t::Type;
5030}
5031unsafe extern "C" {
5032    #[doc = " Creates a primitive descriptor for an LRN backward propagation primitive.\n\n @param primitive_desc Output primitive_descriptor.\n @param engine Engine to use.\n @param alg_kind LRN algorithm kind: either #dnnl_lrn_across_channels or\n     #dnnl_lrn_within_channel.\n @param diff_src_desc Diff source memory descriptor.\n @param diff_dst_desc Diff destination memory descriptor.\n @param src_desc Source memory descriptor.\n @param local_size Regularization local size.\n @param alpha The alpha regularization parameter.\n @param beta The beta regularization parameter.\n @param k The k regularization parameter.\n @param hint_fwd_pd Primitive descriptor for a respective forward propagation\n     primitive.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5033    pub fn dnnl_lrn_backward_primitive_desc_create(
5034        primitive_desc: *mut dnnl_primitive_desc_t,
5035        engine: dnnl_engine_t,
5036        alg_kind: dnnl_alg_kind_t::Type,
5037        diff_src_desc: const_dnnl_memory_desc_t,
5038        diff_dst_desc: const_dnnl_memory_desc_t,
5039        src_desc: const_dnnl_memory_desc_t,
5040        local_size: dnnl_dim_t,
5041        alpha: f32,
5042        beta: f32,
5043        k: f32,
5044        hint_fwd_pd: const_dnnl_primitive_desc_t,
5045        attr: const_dnnl_primitive_attr_t,
5046    ) -> dnnl_status_t::Type;
5047}
5048unsafe extern "C" {
5049    #[doc = " Creates a primitive descriptor for a batch normalization forward propagation\n     primitive.\n\n @note\n     In-place operation is supported: the dst can refer to the same memory\n     as the src.\n\n @param primitive_desc Output primitive_descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Possible values are\n     #dnnl_forward_training and #dnnl_forward_inference.\n @param src_desc Source memory descriptor.\n @param dst_desc Destination memory descriptor.\n @param epsilon Batch normalization epsilon parameter.\n @param flags Batch normalization flags (@ref dnnl_normalization_flags_t).\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5050    pub fn dnnl_batch_normalization_forward_primitive_desc_create(
5051        primitive_desc: *mut dnnl_primitive_desc_t,
5052        engine: dnnl_engine_t,
5053        prop_kind: dnnl_prop_kind_t::Type,
5054        src_desc: const_dnnl_memory_desc_t,
5055        dst_desc: const_dnnl_memory_desc_t,
5056        epsilon: f32,
5057        flags: ::std::os::raw::c_uint,
5058        attr: const_dnnl_primitive_attr_t,
5059    ) -> dnnl_status_t::Type;
5060}
5061unsafe extern "C" {
5062    #[doc = " Creates a primitive descriptor for a batch normalization backward\n     propagation primitive.\n\n @note\n     In-place operation is supported: the diff_dst can refer to the same\n     memory as the diff_src.\n\n @param primitive_desc Output primitive_descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Possible values are\n     #dnnl_backward_data and #dnnl_backward (diffs for all parameters are\n     computed in this case).\n @param diff_src_desc Diff source memory descriptor.\n @param diff_dst_desc Diff destination memory descriptor.\n @param src_desc Source memory descriptor.\n @param epsilon Batch normalization epsilon parameter.\n @param flags Batch normalization flags (@ref dnnl_normalization_flags_t).\n @param hint_fwd_pd Primitive descriptor for a respective forward propagation\n     primitive.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5063    pub fn dnnl_batch_normalization_backward_primitive_desc_create(
5064        primitive_desc: *mut dnnl_primitive_desc_t,
5065        engine: dnnl_engine_t,
5066        prop_kind: dnnl_prop_kind_t::Type,
5067        diff_src_desc: const_dnnl_memory_desc_t,
5068        diff_dst_desc: const_dnnl_memory_desc_t,
5069        src_desc: const_dnnl_memory_desc_t,
5070        epsilon: f32,
5071        flags: ::std::os::raw::c_uint,
5072        hint_fwd_pd: const_dnnl_primitive_desc_t,
5073        attr: const_dnnl_primitive_attr_t,
5074    ) -> dnnl_status_t::Type;
5075}
5076unsafe extern "C" {
5077    #[doc = " Creates a primitive descriptor for a group normalization forward propagation\n     primitive.\n\n @note\n     In-place operation is supported: the dst can refer to the same memory\n     as the src.\n\n @param primitive_desc Output primitive_descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Possible values are\n     #dnnl_forward_training and #dnnl_forward_inference.\n @param src_desc Source memory descriptor.\n @param dst_desc Destination memory descriptor.\n @param groups Group normalization groups parameter.\n @param epsilon Group normalization epsilon parameter.\n @param flags Group normalization flags (@ref dnnl_normalization_flags_t).\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5078    pub fn dnnl_group_normalization_forward_primitive_desc_create(
5079        primitive_desc: *mut dnnl_primitive_desc_t,
5080        engine: dnnl_engine_t,
5081        prop_kind: dnnl_prop_kind_t::Type,
5082        src_desc: const_dnnl_memory_desc_t,
5083        dst_desc: const_dnnl_memory_desc_t,
5084        groups: dnnl_dim_t,
5085        epsilon: f32,
5086        flags: ::std::os::raw::c_uint,
5087        attr: const_dnnl_primitive_attr_t,
5088    ) -> dnnl_status_t::Type;
5089}
5090unsafe extern "C" {
5091    #[doc = " Creates a primitive descriptor for a group normalization backward\n     propagation primitive.\n\n @note\n     In-place operation is supported: the diff_dst can refer to the same\n     memory as the diff_src.\n\n @param primitive_desc Output primitive_descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Possible values are\n     #dnnl_backward_data and #dnnl_backward (diffs for all parameters are\n     computed in this case).\n @param diff_src_desc Diff source memory descriptor.\n @param diff_dst_desc Diff destination memory descriptor.\n @param src_desc Source memory descriptor.\n @param groups Group normalization groups parameter.\n @param epsilon Group normalization epsilon parameter.\n @param flags Group normalization flags (@ref dnnl_normalization_flags_t).\n @param hint_fwd_pd Primitive descriptor for a respective forward propagation\n     primitive.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5092    pub fn dnnl_group_normalization_backward_primitive_desc_create(
5093        primitive_desc: *mut dnnl_primitive_desc_t,
5094        engine: dnnl_engine_t,
5095        prop_kind: dnnl_prop_kind_t::Type,
5096        diff_src_desc: const_dnnl_memory_desc_t,
5097        diff_dst_desc: const_dnnl_memory_desc_t,
5098        src_desc: const_dnnl_memory_desc_t,
5099        groups: dnnl_dim_t,
5100        epsilon: f32,
5101        flags: ::std::os::raw::c_uint,
5102        hint_fwd_pd: const_dnnl_primitive_desc_t,
5103        attr: const_dnnl_primitive_attr_t,
5104    ) -> dnnl_status_t::Type;
5105}
5106unsafe extern "C" {
5107    #[doc = " Creates a primitive descriptor for a layer normalization forward propagation\n     primitive.\n\n @note\n     In-place operation is supported: the dst can refer to the same memory\n     as the src.\n\n @param primitive_desc Output primitive_descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Possible values are\n     #dnnl_forward_training and #dnnl_forward_inference.\n @param src_desc Source memory descriptor.\n @param dst_desc Destination memory descriptor.\n @param stat_desc Memory descriptor for mean and variance. If this\n     parameter is NULL, a zero memory descriptor, or a memory descriptor\n     with format_kind set to #dnnl_format_kind_undef, then the memory\n     descriptor for stats is derived from @p src_desc by removing the last\n     dimension.\n @param epsilon Layer normalization epsilon parameter.\n @param flags Layer normalization flags (@ref dnnl_normalization_flags_t).\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5108    pub fn dnnl_layer_normalization_forward_primitive_desc_create(
5109        primitive_desc: *mut dnnl_primitive_desc_t,
5110        engine: dnnl_engine_t,
5111        prop_kind: dnnl_prop_kind_t::Type,
5112        src_desc: const_dnnl_memory_desc_t,
5113        dst_desc: const_dnnl_memory_desc_t,
5114        stat_desc: const_dnnl_memory_desc_t,
5115        epsilon: f32,
5116        flags: ::std::os::raw::c_uint,
5117        attr: const_dnnl_primitive_attr_t,
5118    ) -> dnnl_status_t::Type;
5119}
5120unsafe extern "C" {
5121    #[doc = " Creates a primitive descriptor for a layer normalization backward\n     propagation primitive.\n\n @note\n     In-place operation is supported: the diff_dst can refer to the same\n     memory as the diff_src.\n\n @param primitive_desc Output primitive_descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Possible values are\n     #dnnl_backward_data and #dnnl_backward (diffs for all parameters are\n     computed in this case).\n @param diff_src_desc Diff source memory descriptor.\n @param diff_dst_desc Diff destination memory descriptor.\n @param src_desc Source memory descriptor.\n @param stat_desc Memory descriptor for mean and variance. If this\n     parameter is NULL, a zero memory descriptor, or a memory descriptor\n     with format_kind set to #dnnl_format_kind_undef, then the memory\n     descriptor for stats is derived from @p src_desc by removing the last\n     dimension.\n @param epsilon Layer normalization epsilon parameter.\n @param flags Layer normalization flags (@ref dnnl_normalization_flags_t).\n @param hint_fwd_pd Primitive descriptor for a respective forward propagation\n     primitive.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5122    pub fn dnnl_layer_normalization_backward_primitive_desc_create(
5123        primitive_desc: *mut dnnl_primitive_desc_t,
5124        engine: dnnl_engine_t,
5125        prop_kind: dnnl_prop_kind_t::Type,
5126        diff_src_desc: const_dnnl_memory_desc_t,
5127        diff_dst_desc: const_dnnl_memory_desc_t,
5128        src_desc: const_dnnl_memory_desc_t,
5129        stat_desc: const_dnnl_memory_desc_t,
5130        epsilon: f32,
5131        flags: ::std::os::raw::c_uint,
5132        hint_fwd_pd: const_dnnl_primitive_desc_t,
5133        attr: const_dnnl_primitive_attr_t,
5134    ) -> dnnl_status_t::Type;
5135}
5136unsafe extern "C" {
5137    #[doc = " Creates a primitive descriptor for a layer normalization forward propagation\n     primitive with a user-provided data type for the scale and shift\n     memory objects.\n\n @note\n     In-place operation is supported: the dst can refer to the same memory\n     as the src.\n\n @param primitive_desc Output primitive_descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Possible values are\n     #dnnl_forward_training and #dnnl_forward_inference.\n @param src_desc Source memory descriptor.\n @param dst_desc Destination memory descriptor.\n @param stat_desc Memory descriptor for mean and variance. If this\n     parameter is NULL, a zero memory descriptor, or a memory descriptor\n     with format_kind set to #dnnl_format_kind_undef, then the memory\n     descriptor for stats is derived from @p src_desc by removing the last\n     dimension.\n @param scale_shift_data_type Data type of scale and shift memory. If neither scale\n     nor shift flag are specified the parameter is ignored.\n @param epsilon Layer normalization epsilon parameter.\n @param flags Layer normalization flags (@ref dnnl_normalization_flags_t).\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5138    pub fn dnnl_layer_normalization_forward_primitive_desc_create_v2(
5139        primitive_desc: *mut dnnl_primitive_desc_t,
5140        engine: dnnl_engine_t,
5141        prop_kind: dnnl_prop_kind_t::Type,
5142        src_desc: const_dnnl_memory_desc_t,
5143        dst_desc: const_dnnl_memory_desc_t,
5144        stat_desc: const_dnnl_memory_desc_t,
5145        scale_shift_data_type: dnnl_data_type_t::Type,
5146        epsilon: f32,
5147        flags: ::std::os::raw::c_uint,
5148        attr: const_dnnl_primitive_attr_t,
5149    ) -> dnnl_status_t::Type;
5150}
5151unsafe extern "C" {
5152    #[doc = " Creates a primitive descriptor for a layer normalization backward\n     propagation primitive with a user-provided data type for the\n     scale and shift memory objects.\n\n @note\n     In-place operation is supported: the diff_dst can refer to the same\n     memory as the diff_src.\n\n @param primitive_desc Output primitive_descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Possible values are\n     #dnnl_backward_data and #dnnl_backward (diffs for all parameters are\n     computed in this case).\n @param diff_src_desc Diff source memory descriptor.\n @param diff_dst_desc Diff destination memory descriptor.\n @param src_desc Source memory descriptor.\n @param stat_desc Memory descriptor for mean and variance. If this\n     parameter is NULL, a zero memory descriptor, or a memory descriptor\n     with format_kind set to #dnnl_format_kind_undef, then the memory\n     descriptor for stats is derived from @p src_desc by removing the last\n     dimension.\n @param diff_scale_shift_data_type Data type of diff scale and shift memory. If neither scale\n     nor shift flag are specified the parameter is ignored.\n @param scale_shift_data_type Data type of scale and shift memory. If neither scale\n     nor shift flag are specified the parameter is ignored.\n @param epsilon Layer normalization epsilon parameter.\n @param flags Layer normalization flags (@ref dnnl_normalization_flags_t).\n @param hint_fwd_pd Primitive descriptor for a respective forward propagation\n     primitive.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5153    pub fn dnnl_layer_normalization_backward_primitive_desc_create_v2(
5154        primitive_desc: *mut dnnl_primitive_desc_t,
5155        engine: dnnl_engine_t,
5156        prop_kind: dnnl_prop_kind_t::Type,
5157        diff_src_desc: const_dnnl_memory_desc_t,
5158        diff_dst_desc: const_dnnl_memory_desc_t,
5159        src_desc: const_dnnl_memory_desc_t,
5160        stat_desc: const_dnnl_memory_desc_t,
5161        diff_scale_shift_data_type: dnnl_data_type_t::Type,
5162        scale_shift_data_type: dnnl_data_type_t::Type,
5163        epsilon: f32,
5164        flags: ::std::os::raw::c_uint,
5165        hint_fwd_pd: const_dnnl_primitive_desc_t,
5166        attr: const_dnnl_primitive_attr_t,
5167    ) -> dnnl_status_t::Type;
5168}
5169unsafe extern "C" {
5170    #[doc = " Creates a primitive descriptor for an inner product forward propagation\n     primitive.\n\n @note\n     Memory descriptors can be initialized with\n     #dnnl_format_tag_any or with format_kind set to #dnnl_format_kind_any.\n\n @param primitive_desc Output primitive_descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Possible values are\n     #dnnl_forward_training and #dnnl_forward_inference.\n @param src_desc Source memory descriptor.\n @param weights_desc Weights memory descriptor.\n @param bias_desc Bias memory descriptor. Passing NULL, a zero memory\n     descriptor, or a memory descriptor with format_kind set to\n     #dnnl_format_kind_undef disables the bias term.\n @param dst_desc Destination memory descriptor.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5171    pub fn dnnl_inner_product_forward_primitive_desc_create(
5172        primitive_desc: *mut dnnl_primitive_desc_t,
5173        engine: dnnl_engine_t,
5174        prop_kind: dnnl_prop_kind_t::Type,
5175        src_desc: const_dnnl_memory_desc_t,
5176        weights_desc: const_dnnl_memory_desc_t,
5177        bias_desc: const_dnnl_memory_desc_t,
5178        dst_desc: const_dnnl_memory_desc_t,
5179        attr: const_dnnl_primitive_attr_t,
5180    ) -> dnnl_status_t::Type;
5181}
5182unsafe extern "C" {
5183    #[doc = " Creates a primitive descriptor for an inner product backward propagation\n     primitive.\n\n @note\n     Memory descriptors can be initialized with\n     #dnnl_format_tag_any or with format_kind set to #dnnl_format_kind_any.\n\n @param primitive_desc Output primitive_descriptor.\n @param engine Engine to use.\n @param diff_src_desc Diff source memory descriptor.\n @param weights_desc Weights memory descriptor.\n @param diff_dst_desc Diff destination memory descriptor.\n @param hint_fwd_pd Primitive descriptor for a respective forward propagation\n     primitive.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5184    pub fn dnnl_inner_product_backward_data_primitive_desc_create(
5185        primitive_desc: *mut dnnl_primitive_desc_t,
5186        engine: dnnl_engine_t,
5187        diff_src_desc: const_dnnl_memory_desc_t,
5188        weights_desc: const_dnnl_memory_desc_t,
5189        diff_dst_desc: const_dnnl_memory_desc_t,
5190        hint_fwd_pd: const_dnnl_primitive_desc_t,
5191        attr: const_dnnl_primitive_attr_t,
5192    ) -> dnnl_status_t::Type;
5193}
5194unsafe extern "C" {
5195    #[doc = " Creates a primitive descriptor for an inner product  weights gradient\n     primitive.\n\n @note\n     Memory descriptors can be initialized with\n     #dnnl_format_tag_any or with format_kind set to #dnnl_format_kind_any.\n\n @param primitive_desc Output primitive_descriptor.\n @param engine Engine to use.\n @param src_desc Source memory descriptor.\n @param diff_weights_desc Diff weights memory descriptor.\n @param diff_bias_desc Diff bias memory descriptor. Passing NULL, a zero\n     memory descriptor, or a memory descriptor with format_kind set to\n     #dnnl_format_kind_undef disables the bias term.\n @param diff_dst_desc Diff destination memory descriptor.\n @param hint_fwd_pd Primitive descriptor for a respective forward propagation\n     primitive.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5196    pub fn dnnl_inner_product_backward_weights_primitive_desc_create(
5197        primitive_desc: *mut dnnl_primitive_desc_t,
5198        engine: dnnl_engine_t,
5199        src_desc: const_dnnl_memory_desc_t,
5200        diff_weights_desc: const_dnnl_memory_desc_t,
5201        diff_bias_desc: const_dnnl_memory_desc_t,
5202        diff_dst_desc: const_dnnl_memory_desc_t,
5203        hint_fwd_pd: const_dnnl_primitive_desc_t,
5204        attr: const_dnnl_primitive_attr_t,
5205    ) -> dnnl_status_t::Type;
5206}
5207unsafe extern "C" {
5208    #[doc = " Set quantization scale and shift parameters for RNN data tensors.\n\n For performance reasons, the low-precision configuration of the RNN\n primitives expects input activations to have the unsigned 8-bit integer\n data type. The scale and shift parameters are used to quantize\n floating-point data to unsigned integer and must be passed to the RNN\n primitive using attributes.\n\n The quantization formula is `scale * data + shift`.\n\n @note\n     Quantization scale and shift are common for src_layer, src_iter,\n     dst_iter, and dst_layer.\n\n Example usage:\n @code\n     // RNN parameters\n     int l = 2, t = 2, mb = 32, sic = 32, slc = 32, dic = 32, dlc = 32;\n     // Activations quantization parameters\n     float scale = 63.f, shift = 64.f;\n\n     dnnl_primitive_attr_t rnn_attr;\n     // Create default attributes\n     dnnl_primitive_attr_create(&rnn_attr);\n\n     // Set scale and shift for int8 quantization of activation\n     dnnl_primitive_attr_set_rnn_data_qparams(rnn_attr, scale, shift);\n\n     // Create an RNN primitive descriptor.\n     dnnl_primitive_desc_t rnn_pd;\n     dnnl_vanilla_rnn_forward_primitive_desc_create(&rnn_pd,\n             engine, /* arguments */, attr);\n @endcode\n\n @param attr Primitive attributes.\n @param scale The value to scale the data by.\n @param shift The value to shift the data by.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5209    pub fn dnnl_primitive_attr_set_rnn_data_qparams(
5210        attr: dnnl_primitive_attr_t,
5211        scale: f32,
5212        shift: f32,
5213    ) -> dnnl_status_t::Type;
5214}
5215unsafe extern "C" {
5216    #[doc = " Returns the quantization scale and shift parameters for RNN data tensors.\n\n @note\n     Quantization scale and shift are common for src_layer, src_iter,\n     dst_iter, and dst_layer.\n\n @param attr Primitive attributes.\n @param scale The value to scale the data by.\n @param shift The value to shift the data by.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5217    pub fn dnnl_primitive_attr_get_rnn_data_qparams(
5218        attr: const_dnnl_primitive_attr_t,
5219        scale: *mut f32,
5220        shift: *mut f32,
5221    ) -> dnnl_status_t::Type;
5222}
5223unsafe extern "C" {
5224    #[doc = " Sets quantization scaling factors for RNN weights tensors. The\n low-precision configuration of the RNN primitives expects input weights to\n use the signed 8-bit integer data type. The scaling factors are used to\n quantize floating-point data to signed integer and must be passed to RNN\n primitives using attributes.\n\n @note\n     The dimension order is always native and does not depend on the actual\n     layout used. For example, five-dimensional weights always have (l, d,\n     i, g, o) logical dimension ordering.\n\n @note\n     Quantization scales are common for weights_layer and weights_iteration\n\n @param attr Primitive attributes.\n @param count Number of elements in the @p scales array.\n @param mask Scaling factors correspondence mask that defines the\n     correspondence between the output tensor dimensions and the @p\n     scales vector. The set i-th bit indicates that a dedicated scaling\n     factor should be used for each index along that dimension. Set the\n     mask to 0 to use a common scaling factor for the whole output\n     tensor.\n @param scales Array of output scaling factors that must contain @p count\n     values and the following equality must hold:\n     \\f[count = \\prod\\limits_{d \\in mask} weights.dims[d].\\f]\n     Violations can only be detected when the attributes are used to create\n     a primitive descriptor.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5225    pub fn dnnl_primitive_attr_set_rnn_weights_qparams(
5226        attr: dnnl_primitive_attr_t,
5227        count: dnnl_dim_t,
5228        mask: ::std::os::raw::c_int,
5229        scales: *const f32,
5230    ) -> dnnl_status_t::Type;
5231}
5232unsafe extern "C" {
5233    #[doc = " Returns the quantization scaling factors for RNN weights tensors.\n\n @param attr Primitive attributes.\n @param count Number of elements in the @p scales array.\n @param mask Scaling factors correspondence mask that defines the\n     correspondence between the output tensor dimensions and the @p\n     scales vector. The set i-th bit indicates that a dedicated scaling\n     factor should be used for each index along that dimension. Set the\n     mask to 0 to use a common scaling factor for the whole output\n     tensor.\n @param scales Array of output scaling factors that contain @p count\n     values and the following equality must hold:\n     \\f[count = \\prod\\limits_{d \\in mask} weights.dims[d].\\f]\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5234    pub fn dnnl_primitive_attr_get_rnn_weights_qparams(
5235        attr: const_dnnl_primitive_attr_t,
5236        count: *mut dnnl_dim_t,
5237        mask: *mut ::std::os::raw::c_int,
5238        scales: *mut *const f32,
5239    ) -> dnnl_status_t::Type;
5240}
5241unsafe extern "C" {
5242    #[doc = " Sets quantization scaling factors for RNN projection weights tensors. The\n low-precision configuration of the RNN primitives expects input weights to\n use the signed 8-bit integer data type. The scaling factors are used to\n quantize floating-point data to signed integer and must be passed to RNN\n primitives using attributes.\n\n @note\n     The dimension order is always native and does not depend on the actual\n     layout used. For example, five-dimensional weights always have (l, d,\n     i, g, o) logical dimension ordering.\n\n @param attr Primitive attributes.\n @param count Number of elements in the @p scales array.\n @param mask Scaling factors correspondence mask that defines the\n     correspondence between the output tensor dimensions and the @p\n     scales vector. The set i-th bit indicates that a dedicated scaling\n     factor should be used for each index along that dimension. Set the\n     mask to 0 to use a common scaling factor for the whole output\n     tensor.\n @param scales Array of output scaling factors that must contain @p count\n     values and the following equality must hold:\n     \\f[count = \\prod\\limits_{d \\in mask} weights.dims[d].\\f]\n     Violations can only be detected when the attributes are used to create\n     a primitive descriptor.\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5243    pub fn dnnl_primitive_attr_set_rnn_weights_projection_qparams(
5244        attr: dnnl_primitive_attr_t,
5245        count: dnnl_dim_t,
5246        mask: ::std::os::raw::c_int,
5247        scales: *const f32,
5248    ) -> dnnl_status_t::Type;
5249}
5250unsafe extern "C" {
5251    #[doc = " Returns the quantization scaling factors for RNN projection weights tensors.\n\n @param attr Primitive attributes.\n @param count Number of elements in the @p scales array.\n @param mask Scaling factors correspondence mask that defines the\n     correspondence between the output tensor dimensions and the @p\n     scales vector. The set i-th bit indicates that a dedicated scaling\n     factor should be used for each index along that dimension. Set the\n     mask to 0 to use a common scaling factor for the whole output\n     tensor.\n @param scales Array of output scaling factors that contain @p count\n     values and the following equality must hold:\n     \\f[count = \\prod\\limits_{d \\in mask} weights.dims[d].\\f]\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5252    pub fn dnnl_primitive_attr_get_rnn_weights_projection_qparams(
5253        attr: const_dnnl_primitive_attr_t,
5254        count: *mut dnnl_dim_t,
5255        mask: *mut ::std::os::raw::c_int,
5256        scales: *mut *const f32,
5257    ) -> dnnl_status_t::Type;
5258}
5259unsafe extern "C" {
5260    #[doc = " Creates a primitive descriptor for vanilla RNN forward propagation\n     primitive.\n\n The following arguments may either be @c NULL or point to a zero memory\n descriptor:\n - @p src_iter_desc,\n - @p bias_desc,\n - @p dst_iter_desc.\n\n This would then indicate that the RNN forward propagation primitive should\n not use them and should default to zero values instead.\n\n @note\n     All memory descriptors can be initialized with\n     #dnnl_format_tag_any or with format_kind set to #dnnl_format_kind_any.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Possible values are\n     #dnnl_forward_training and #dnnl_forward_inference.\n @param activation Activation kind. Possible values are #dnnl_eltwise_relu,\n     #dnnl_eltwise_tanh or #dnnl_eltwise_logistic.\n @param direction RNN direction. See @ref dnnl_rnn_direction_t for more\n     info.\n @param src_layer_desc Memory descriptor for the input vector.\n @param src_iter_desc Memory descriptor for the input recurrent hidden\n     state vector.\n @param weights_layer_desc Memory descriptor for the weights applied to the\n     layer input.\n @param weights_iter_desc Memory descriptor for the weights applied to the\n     recurrent input.\n @param bias_desc Bias memory descriptor.\n @param dst_layer_desc Memory descriptor for the output vector.\n @param dst_iter_desc Memory descriptor for the output recurrent hidden\n     state vector.\n @param flags Unused.\n @param alpha Negative slope if activation is #dnnl_eltwise_relu.\n @param beta Unused.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5261    pub fn dnnl_vanilla_rnn_forward_primitive_desc_create(
5262        primitive_desc: *mut dnnl_primitive_desc_t,
5263        engine: dnnl_engine_t,
5264        prop_kind: dnnl_prop_kind_t::Type,
5265        activation: dnnl_alg_kind_t::Type,
5266        direction: dnnl_rnn_direction_t::Type,
5267        src_layer_desc: const_dnnl_memory_desc_t,
5268        src_iter_desc: const_dnnl_memory_desc_t,
5269        weights_layer_desc: const_dnnl_memory_desc_t,
5270        weights_iter_desc: const_dnnl_memory_desc_t,
5271        bias_desc: const_dnnl_memory_desc_t,
5272        dst_layer_desc: const_dnnl_memory_desc_t,
5273        dst_iter_desc: const_dnnl_memory_desc_t,
5274        flags: ::std::os::raw::c_uint,
5275        alpha: f32,
5276        beta: f32,
5277        attr: const_dnnl_primitive_attr_t,
5278    ) -> dnnl_status_t::Type;
5279}
5280unsafe extern "C" {
5281    #[doc = " Creates a primitive descriptor for vanilla RNN backward propagation\n     primitive.\n\n The following arguments may either be @c NULL or point to a zero memory\n descriptor:\n - @p src_iter_desc together with @p diff_src_iter_desc,\n - @p bias_desc together with @p diff_bias_desc,\n - @p dst_iter_desc together with @p diff_dst_iter_desc.\n\n This would then indicate that the RNN backward propagation primitive should\n not use the respective data and should use zero values instead.\n\n @note\n     All memory descriptors can be initialized with\n     #dnnl_format_tag_any or with format_kind set to #dnnl_format_kind_any.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Must be #dnnl_backward.\n @param activation Activation kind. Possible values are #dnnl_eltwise_relu,\n     #dnnl_eltwise_tanh or #dnnl_eltwise_logistic.\n @param direction RNN direction. See @ref dnnl_rnn_direction_t for more\n     info.\n @param src_layer_desc Memory descriptor for the input vector.\n @param src_iter_desc Memory descriptor for the input recurrent hidden\n     state vector.\n @param weights_layer_desc Memory descriptor for the weights applied to the\n     layer input.\n @param weights_iter_desc Memory descriptor for the weights applied to the\n     recurrent input.\n @param bias_desc Bias memory descriptor.\n @param dst_layer_desc Memory descriptor for the output vector.\n @param dst_iter_desc Memory descriptor for the output recurrent hidden\n     state vector.\n @param diff_src_layer_desc Memory descriptor for the diff of input vector.\n @param diff_src_iter_desc Memory descriptor for the diff of input recurrent\n     hidden state vector.\n @param diff_weights_layer_desc Memory descriptor for the diff of weights\n     applied to the layer input.\n @param diff_weights_iter_desc Memory descriptor for the diff of weights\n     applied to the recurrent input.\n @param diff_bias_desc Diff bias memory descriptor.\n @param diff_dst_layer_desc Memory descriptor for the diff of output\n     vector.\n @param diff_dst_iter_desc Memory descriptor for the diff of output\n     recurrent hidden state vector.\n @param flags Unused.\n @param alpha Negative slope if activation is #dnnl_eltwise_relu.\n @param beta Unused.\n @param hint_fwd_pd Primitive descriptor for a respective forward propagation\n     primitive.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5282    pub fn dnnl_vanilla_rnn_backward_primitive_desc_create(
5283        primitive_desc: *mut dnnl_primitive_desc_t,
5284        engine: dnnl_engine_t,
5285        prop_kind: dnnl_prop_kind_t::Type,
5286        activation: dnnl_alg_kind_t::Type,
5287        direction: dnnl_rnn_direction_t::Type,
5288        src_layer_desc: const_dnnl_memory_desc_t,
5289        src_iter_desc: const_dnnl_memory_desc_t,
5290        weights_layer_desc: const_dnnl_memory_desc_t,
5291        weights_iter_desc: const_dnnl_memory_desc_t,
5292        bias_desc: const_dnnl_memory_desc_t,
5293        dst_layer_desc: const_dnnl_memory_desc_t,
5294        dst_iter_desc: const_dnnl_memory_desc_t,
5295        diff_src_layer_desc: const_dnnl_memory_desc_t,
5296        diff_src_iter_desc: const_dnnl_memory_desc_t,
5297        diff_weights_layer_desc: const_dnnl_memory_desc_t,
5298        diff_weights_iter_desc: const_dnnl_memory_desc_t,
5299        diff_bias_desc: const_dnnl_memory_desc_t,
5300        diff_dst_layer_desc: const_dnnl_memory_desc_t,
5301        diff_dst_iter_desc: const_dnnl_memory_desc_t,
5302        flags: ::std::os::raw::c_uint,
5303        alpha: f32,
5304        beta: f32,
5305        hint_fwd_pd: const_dnnl_primitive_desc_t,
5306        attr: const_dnnl_primitive_attr_t,
5307    ) -> dnnl_status_t::Type;
5308}
5309unsafe extern "C" {
5310    #[doc = " Creates a primitive descriptor for an LSTM forward propagation primitive.\n\n The following arguments may either be @c NULL or point to a zero memory\n descriptor:\n - @p src_iter_desc together with @p src_iter_c_desc,\n - @p weights_peephole_desc,\n - @p bias_desc,\n - @p dst_iter_desc together with @p dst_iter_c_desc.\n\n This would then indicate that the LSTM forward propagation primitive should\n not use them and should default to zero values instead.\n\n The @p weights_projection_desc could either be @c NULL or point to a zero\n memory descriptor. This would then indicate that the LSTM doesn't have\n recurrent projection layer.\n\n @note\n     All memory descriptors can be initialized with #dnnl_format_tag_any or\n     with format_kind set to #dnnl_format_kind_any.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Possible values are\n     #dnnl_forward_training and #dnnl_forward_inference.\n @param direction RNN direction. See @ref dnnl_rnn_direction_t for more\n     info.\n @param src_layer_desc Memory descriptor for the input vector.\n @param src_iter_desc Memory descriptor for the input recurrent hidden\n     state vector.\n @param src_iter_c_desc Memory descriptor for the input recurrent cell\n     state vector.\n @param weights_layer_desc Memory descriptor for the weights applied to the\n     layer input.\n @param weights_iter_desc Memory descriptor for the weights applied to the\n     recurrent input.\n @param weights_peephole_desc Memory descriptor for the weights applied to\n     the cell states (according to the Peephole LSTM formula).\n @param weights_projection_desc Memory descriptor for the weights applied to\n     the hidden states to get the recurrent projection (according to the\n     Projection LSTM formula).\n @param bias_desc Bias memory descriptor.\n @param dst_layer_desc Memory descriptor for the output vector.\n @param dst_iter_desc Memory descriptor for the output recurrent hidden\n     state vector.\n @param dst_iter_c_desc Memory descriptor for the output recurrent cell\n     state vector.\n @param flags Unused.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5311    pub fn dnnl_lstm_forward_primitive_desc_create(
5312        primitive_desc: *mut dnnl_primitive_desc_t,
5313        engine: dnnl_engine_t,
5314        prop_kind: dnnl_prop_kind_t::Type,
5315        direction: dnnl_rnn_direction_t::Type,
5316        src_layer_desc: const_dnnl_memory_desc_t,
5317        src_iter_desc: const_dnnl_memory_desc_t,
5318        src_iter_c_desc: const_dnnl_memory_desc_t,
5319        weights_layer_desc: const_dnnl_memory_desc_t,
5320        weights_iter_desc: const_dnnl_memory_desc_t,
5321        weights_peephole_desc: const_dnnl_memory_desc_t,
5322        weights_projection_desc: const_dnnl_memory_desc_t,
5323        bias_desc: const_dnnl_memory_desc_t,
5324        dst_layer_desc: const_dnnl_memory_desc_t,
5325        dst_iter_desc: const_dnnl_memory_desc_t,
5326        dst_iter_c_desc: const_dnnl_memory_desc_t,
5327        flags: ::std::os::raw::c_uint,
5328        attr: const_dnnl_primitive_attr_t,
5329    ) -> dnnl_status_t::Type;
5330}
5331unsafe extern "C" {
5332    #[doc = " Creates a primitive descriptor for an LSTM backward propagation primitive.\n\n The following arguments may either be @c NULL or point to a zero memory\n descriptor:\n - @p src_iter_desc together with @p src_iter_c_desc, @p diff_src_iter_desc,\n   and @p diff_src_iter_c_desc,\n - @p weights_peephole_desc together with @p diff_weights_peephole_desc,\n - @p bias_desc together with @p diff_bias_desc,\n - @p dst_iter_desc together with @p dst_iter_c_desc, @p diff_dst_iter_desc,\n   and @p diff_dst_iter_c_desc.\n\n This would then indicate that the LSTM backward propagation primitive\n should not use them and should default to zero values instead.\n\n The @p weights_projection_desc together with @p\n diff_weights_projection_desc could either be @c NULL or point to a zero\n memory descriptor. This would then indicate that the LSTM doesn't have\n recurrent projection layer.\n\n @note\n     All memory descriptors can be initialized with #dnnl_format_tag_any or\n     with format_kind set to #dnnl_format_kind_any.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Must be #dnnl_backward.\n @param direction RNN direction. See @ref dnnl_rnn_direction_t for more\n     info.\n @param src_layer_desc Memory descriptor for the input vector.\n @param src_iter_desc Memory descriptor for the input recurrent hidden\n     state vector.\n @param src_iter_c_desc Memory descriptor for the input recurrent cell\n     state vector.\n @param weights_layer_desc Memory descriptor for the weights applied to the\n     layer input.\n @param weights_iter_desc Memory descriptor for the weights applied to the\n     recurrent input.\n @param weights_peephole_desc Memory descriptor for the weights applied to\n     the cell states (according to the Peephole LSTM formula).\n @param weights_projection_desc Memory descriptor for the weights applied to\n     the hidden states to get the recurrent projection (according to the\n     Projection LSTM formula).\n @param bias_desc Bias memory descriptor.\n @param dst_layer_desc Memory descriptor for the output vector.\n @param dst_iter_desc Memory descriptor for the output recurrent hidden\n     state vector.\n @param dst_iter_c_desc Memory descriptor for the output recurrent cell\n     state vector.\n @param diff_src_layer_desc Memory descriptor for the diff of input vector.\n @param diff_src_iter_desc Memory descriptor for the diff of input recurrent\n     hidden state vector.\n @param diff_src_iter_c_desc Memory descriptor for the diff of input\n recurrent cell state vector.\n @param diff_weights_layer_desc Memory descriptor for the diff of weights\n     applied to the layer input.\n @param diff_weights_iter_desc Memory descriptor for the diff of weights\n     applied to the recurrent input.\n @param diff_weights_peephole_desc Memory descriptor for the diff of weights\n     applied to the cell states (according to the Peephole LSTM formula).\n @param diff_weights_projection_desc Memory descriptor for the diff of\n     weights applied to the hidden states to get the recurrent projection\n     (according to the Projection LSTM formula).\n @param diff_bias_desc Diff bias memory descriptor.\n @param diff_dst_layer_desc Memory descriptor for the diff of output\n     vector.\n @param diff_dst_iter_desc Memory descriptor for the diff of output\n     recurrent hidden state vector.\n @param diff_dst_iter_c_desc Memory descriptor for the diff of output\n     recurrent cell state vector.\n @param flags Unused.\n @param hint_fwd_pd Primitive descriptor for a respective forward propagation\n     primitive.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5333    pub fn dnnl_lstm_backward_primitive_desc_create(
5334        primitive_desc: *mut dnnl_primitive_desc_t,
5335        engine: dnnl_engine_t,
5336        prop_kind: dnnl_prop_kind_t::Type,
5337        direction: dnnl_rnn_direction_t::Type,
5338        src_layer_desc: const_dnnl_memory_desc_t,
5339        src_iter_desc: const_dnnl_memory_desc_t,
5340        src_iter_c_desc: const_dnnl_memory_desc_t,
5341        weights_layer_desc: const_dnnl_memory_desc_t,
5342        weights_iter_desc: const_dnnl_memory_desc_t,
5343        weights_peephole_desc: const_dnnl_memory_desc_t,
5344        weights_projection_desc: const_dnnl_memory_desc_t,
5345        bias_desc: const_dnnl_memory_desc_t,
5346        dst_layer_desc: const_dnnl_memory_desc_t,
5347        dst_iter_desc: const_dnnl_memory_desc_t,
5348        dst_iter_c_desc: const_dnnl_memory_desc_t,
5349        diff_src_layer_desc: const_dnnl_memory_desc_t,
5350        diff_src_iter_desc: const_dnnl_memory_desc_t,
5351        diff_src_iter_c_desc: const_dnnl_memory_desc_t,
5352        diff_weights_layer_desc: const_dnnl_memory_desc_t,
5353        diff_weights_iter_desc: const_dnnl_memory_desc_t,
5354        diff_weights_peephole_desc: const_dnnl_memory_desc_t,
5355        diff_weights_projection_desc: const_dnnl_memory_desc_t,
5356        diff_bias_desc: const_dnnl_memory_desc_t,
5357        diff_dst_layer_desc: const_dnnl_memory_desc_t,
5358        diff_dst_iter_desc: const_dnnl_memory_desc_t,
5359        diff_dst_iter_c_desc: const_dnnl_memory_desc_t,
5360        flags: ::std::os::raw::c_uint,
5361        hint_fwd_pd: const_dnnl_primitive_desc_t,
5362        attr: const_dnnl_primitive_attr_t,
5363    ) -> dnnl_status_t::Type;
5364}
5365unsafe extern "C" {
5366    #[doc = " Creates a primitive descriptor for GRU forward propagation primitive.\n\n The following arguments may either be @c NULL or point to a zero memory\n descriptor:\n - @p src_iter_desc,\n - @p bias_desc,\n - @p dst_iter_desc.\n\n This would then indicate that the GRU forward propagation primitive should\n not use them and should default to zero values instead.\n\n @note\n     All memory descriptors can be initialized with\n     #dnnl_format_tag_any or with format_kind set to #dnnl_format_kind_any.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Possible values are\n     #dnnl_forward_training and #dnnl_forward_inference.\n @param direction RNN direction. See @ref dnnl_rnn_direction_t for more\n     info.\n @param src_layer_desc Memory descriptor for the input vector.\n @param src_iter_desc Memory descriptor for the input recurrent hidden\n     state vector.\n @param weights_layer_desc Memory descriptor for the weights applied to the\n     layer input.\n @param weights_iter_desc Memory descriptor for the weights applied to the\n     recurrent input.\n @param bias_desc Bias memory descriptor.\n @param dst_layer_desc Memory descriptor for the output vector.\n @param dst_iter_desc Memory descriptor for the output recurrent hidden\n     state vector.\n @param flags Unused.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5367    pub fn dnnl_gru_forward_primitive_desc_create(
5368        primitive_desc: *mut dnnl_primitive_desc_t,
5369        engine: dnnl_engine_t,
5370        prop_kind: dnnl_prop_kind_t::Type,
5371        direction: dnnl_rnn_direction_t::Type,
5372        src_layer_desc: const_dnnl_memory_desc_t,
5373        src_iter_desc: const_dnnl_memory_desc_t,
5374        weights_layer_desc: const_dnnl_memory_desc_t,
5375        weights_iter_desc: const_dnnl_memory_desc_t,
5376        bias_desc: const_dnnl_memory_desc_t,
5377        dst_layer_desc: const_dnnl_memory_desc_t,
5378        dst_iter_desc: const_dnnl_memory_desc_t,
5379        flags: ::std::os::raw::c_uint,
5380        attr: const_dnnl_primitive_attr_t,
5381    ) -> dnnl_status_t::Type;
5382}
5383unsafe extern "C" {
5384    #[doc = " Creates a primitive descriptor for GRU backward propagation primitive.\n\n The following arguments may either be @c NULL or point to a zero memory\n descriptor:\n - @p src_iter_desc together with @p diff_src_iter_desc,\n - @p bias_desc together with @p diff_bias_desc,\n - @p dst_iter_desc together with @p diff_dst_iter_desc.\n\n This would then indicate that the GRU backward propagation primitive\n should not use them and should default to zero values instead.\n\n @note\n     All memory descriptors can be initialized with\n     #dnnl_format_tag_any or with format_kind set to #dnnl_format_kind_any.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Must be #dnnl_backward.\n @param direction RNN direction. See @ref dnnl_rnn_direction_t for more\n     info.\n @param src_layer_desc Memory descriptor for the input vector.\n @param src_iter_desc Memory descriptor for the input recurrent hidden\n     state vector.\n @param weights_layer_desc Memory descriptor for the weights applied to the\n     layer input.\n @param weights_iter_desc Memory descriptor for the weights applied to the\n     recurrent input.\n @param bias_desc Bias memory descriptor.\n @param dst_layer_desc Memory descriptor for the output vector.\n @param dst_iter_desc Memory descriptor for the output recurrent hidden\n     state vector.\n @param diff_src_layer_desc Memory descriptor for the diff of input vector.\n @param diff_src_iter_desc Memory descriptor for the diff of input recurrent\n     hidden state vector.\n @param diff_weights_layer_desc Memory descriptor for the diff of weights\n     applied to the layer input.\n @param diff_weights_iter_desc Memory descriptor for the diff of weights\n     applied to the recurrent input.\n @param diff_bias_desc Diff bias memory descriptor.\n @param diff_dst_layer_desc Memory descriptor for the diff of output\n     vector.\n @param diff_dst_iter_desc Memory descriptor for the diff of output\n     recurrent hidden state vector.\n @param flags Unused.\n @param hint_fwd_pd Primitive descriptor for a respective forward propagation\n     primitive.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5385    pub fn dnnl_gru_backward_primitive_desc_create(
5386        primitive_desc: *mut dnnl_primitive_desc_t,
5387        engine: dnnl_engine_t,
5388        prop_kind: dnnl_prop_kind_t::Type,
5389        direction: dnnl_rnn_direction_t::Type,
5390        src_layer_desc: const_dnnl_memory_desc_t,
5391        src_iter_desc: const_dnnl_memory_desc_t,
5392        weights_layer_desc: const_dnnl_memory_desc_t,
5393        weights_iter_desc: const_dnnl_memory_desc_t,
5394        bias_desc: const_dnnl_memory_desc_t,
5395        dst_layer_desc: const_dnnl_memory_desc_t,
5396        dst_iter_desc: const_dnnl_memory_desc_t,
5397        diff_src_layer_desc: const_dnnl_memory_desc_t,
5398        diff_src_iter_desc: const_dnnl_memory_desc_t,
5399        diff_weights_layer_desc: const_dnnl_memory_desc_t,
5400        diff_weights_iter_desc: const_dnnl_memory_desc_t,
5401        diff_bias_desc: const_dnnl_memory_desc_t,
5402        diff_dst_layer_desc: const_dnnl_memory_desc_t,
5403        diff_dst_iter_desc: const_dnnl_memory_desc_t,
5404        flags: ::std::os::raw::c_uint,
5405        hint_fwd_pd: const_dnnl_primitive_desc_t,
5406        attr: const_dnnl_primitive_attr_t,
5407    ) -> dnnl_status_t::Type;
5408}
5409unsafe extern "C" {
5410    #[doc = " Creates a descriptor for LBR GRU forward propagation primitive.\n\n The following arguments may either be @c NULL or point to a zero memory\n descriptor:\n - @p src_iter_desc,\n - @p bias_desc,\n - @p dst_iter_desc.\n\n This would then indicate that the LBR GRU forward propagation primitive\n should not use them and should default to zero values instead.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Possible values are\n     #dnnl_forward_training and #dnnl_forward_inference.\n @param direction RNN direction. See @ref dnnl_rnn_direction_t for more\n     info.\n @param src_layer_desc Memory descriptor for the input vector.\n @param src_iter_desc Memory descriptor for the input recurrent hidden\n     state vector.\n @param weights_layer_desc Memory descriptor for the weights applied to the\n     layer input.\n @param weights_iter_desc Memory descriptor for the weights applied to the\n     recurrent input.\n @param bias_desc Bias memory descriptor.\n @param dst_layer_desc Memory descriptor for the output vector.\n @param dst_iter_desc Memory descriptor for the output recurrent hidden\n     state vector.\n @param flags Unused.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5411    pub fn dnnl_lbr_gru_forward_primitive_desc_create(
5412        primitive_desc: *mut dnnl_primitive_desc_t,
5413        engine: dnnl_engine_t,
5414        prop_kind: dnnl_prop_kind_t::Type,
5415        direction: dnnl_rnn_direction_t::Type,
5416        src_layer_desc: const_dnnl_memory_desc_t,
5417        src_iter_desc: const_dnnl_memory_desc_t,
5418        weights_layer_desc: const_dnnl_memory_desc_t,
5419        weights_iter_desc: const_dnnl_memory_desc_t,
5420        bias_desc: const_dnnl_memory_desc_t,
5421        dst_layer_desc: const_dnnl_memory_desc_t,
5422        dst_iter_desc: const_dnnl_memory_desc_t,
5423        flags: ::std::os::raw::c_uint,
5424        attr: const_dnnl_primitive_attr_t,
5425    ) -> dnnl_status_t::Type;
5426}
5427unsafe extern "C" {
5428    #[doc = " Creates a primitive descriptor for LBR GRU backward propagation primitive.\n\n The following arguments may either be @c NULL or point to a zero memory\n descriptor:\n - @p src_iter_desc together with @p diff_src_iter_desc,\n - @p bias_desc together with @p diff_bias_desc,\n - @p dst_iter_desc together with @p diff_dst_iter_desc.\n\n This would then indicate that the LBR GRU backward propagation primitive\n should not use them and should default to zero values instead.\n\n @note\n     All memory descriptors can be initialized with\n     #dnnl_format_tag_any or with format_kind set to #dnnl_format_kind_any.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Must be #dnnl_backward.\n @param direction RNN direction. See @ref dnnl_rnn_direction_t for more\n     info.\n @param src_layer_desc Memory descriptor for the input vector.\n @param src_iter_desc Memory descriptor for the input recurrent hidden\n     state vector.\n @param weights_layer_desc Memory descriptor for the weights applied to the\n     layer input.\n @param weights_iter_desc Memory descriptor for the weights applied to the\n     recurrent input.\n @param bias_desc Bias memory descriptor.\n @param dst_layer_desc Memory descriptor for the output vector.\n @param dst_iter_desc Memory descriptor for the output recurrent hidden\n     state vector.\n @param diff_src_layer_desc Memory descriptor for the diff of input vector.\n @param diff_src_iter_desc Memory descriptor for the diff of input recurrent\n     hidden state vector.\n @param diff_weights_layer_desc Memory descriptor for the diff of weights\n     applied to the layer input.\n @param diff_weights_iter_desc Memory descriptor for the diff of weights\n     applied to the recurrent input.\n @param diff_bias_desc Diff bias memory descriptor.\n @param diff_dst_layer_desc Memory descriptor for the diff of output\n     vector.\n @param diff_dst_iter_desc Memory descriptor for the diff of output\n     recurrent hidden state vector.\n @param flags Unused.\n @param hint_fwd_pd Primitive descriptor for a respective forward propagation\n     primitive.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5429    pub fn dnnl_lbr_gru_backward_primitive_desc_create(
5430        primitive_desc: *mut dnnl_primitive_desc_t,
5431        engine: dnnl_engine_t,
5432        prop_kind: dnnl_prop_kind_t::Type,
5433        direction: dnnl_rnn_direction_t::Type,
5434        src_layer_desc: const_dnnl_memory_desc_t,
5435        src_iter_desc: const_dnnl_memory_desc_t,
5436        weights_layer_desc: const_dnnl_memory_desc_t,
5437        weights_iter_desc: const_dnnl_memory_desc_t,
5438        bias_desc: const_dnnl_memory_desc_t,
5439        dst_layer_desc: const_dnnl_memory_desc_t,
5440        dst_iter_desc: const_dnnl_memory_desc_t,
5441        diff_src_layer_desc: const_dnnl_memory_desc_t,
5442        diff_src_iter_desc: const_dnnl_memory_desc_t,
5443        diff_weights_layer_desc: const_dnnl_memory_desc_t,
5444        diff_weights_iter_desc: const_dnnl_memory_desc_t,
5445        diff_bias_desc: const_dnnl_memory_desc_t,
5446        diff_dst_layer_desc: const_dnnl_memory_desc_t,
5447        diff_dst_iter_desc: const_dnnl_memory_desc_t,
5448        flags: ::std::os::raw::c_uint,
5449        hint_fwd_pd: const_dnnl_primitive_desc_t,
5450        attr: const_dnnl_primitive_attr_t,
5451    ) -> dnnl_status_t::Type;
5452}
5453unsafe extern "C" {
5454    #[doc = " Creates a primitive descriptor for AUGRU forward propagation primitive.\n\n The following arguments may either be @c NULL or point to a zero memory\n descriptor:\n - @p src_iter_desc,\n - @p bias_desc,\n - @p dst_iter_desc.\n\n This would then indicate that the AUGRU forward propagation primitive should\n not use them and should default to zero values instead.\n\n @note\n     All memory descriptors can be initialized with\n     #dnnl_format_tag_any or with format_kind set to #dnnl_format_kind_any.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Possible values are\n     #dnnl_forward_training and #dnnl_forward_inference.\n @param direction RNN direction. See @ref dnnl_rnn_direction_t for more\n     info.\n @param src_layer_desc Memory descriptor for the input vector.\n @param src_iter_desc Memory descriptor for the input recurrent hidden\n     state vector.\n @param attention_desc Memory descriptor for the attention vector.\n @param weights_layer_desc Memory descriptor for the weights applied to the\n     layer input.\n @param weights_iter_desc Memory descriptor for the weights applied to the\n     recurrent input.\n @param bias_desc Bias memory descriptor.\n @param dst_layer_desc Memory descriptor for the output vector.\n @param dst_iter_desc Memory descriptor for the output recurrent hidden\n     state vector.\n @param flags Unused.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5455    pub fn dnnl_augru_forward_primitive_desc_create(
5456        primitive_desc: *mut dnnl_primitive_desc_t,
5457        engine: dnnl_engine_t,
5458        prop_kind: dnnl_prop_kind_t::Type,
5459        direction: dnnl_rnn_direction_t::Type,
5460        src_layer_desc: const_dnnl_memory_desc_t,
5461        src_iter_desc: const_dnnl_memory_desc_t,
5462        attention_desc: const_dnnl_memory_desc_t,
5463        weights_layer_desc: const_dnnl_memory_desc_t,
5464        weights_iter_desc: const_dnnl_memory_desc_t,
5465        bias_desc: const_dnnl_memory_desc_t,
5466        dst_layer_desc: const_dnnl_memory_desc_t,
5467        dst_iter_desc: const_dnnl_memory_desc_t,
5468        flags: ::std::os::raw::c_uint,
5469        attr: const_dnnl_primitive_attr_t,
5470    ) -> dnnl_status_t::Type;
5471}
5472unsafe extern "C" {
5473    #[doc = " Creates a primitive descriptor for AUGRU backward propagation primitive.\n\n The following arguments may either be @c NULL or point to a zero memory\n descriptor:\n - @p src_iter_desc together with @p diff_src_iter_desc,\n - @p bias_desc together with @p diff_bias_desc,\n - @p dst_iter_desc together with @p diff_dst_iter_desc.\n\n This would then indicate that the AUGRU backward propagation primitive\n should not use them and should default to zero values instead.\n\n @note\n     All memory descriptors can be initialized with\n     #dnnl_format_tag_any or with format_kind set to #dnnl_format_kind_any.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Must be #dnnl_backward.\n @param direction RNN direction. See @ref dnnl_rnn_direction_t for more\n     info.\n @param src_layer_desc Memory descriptor for the input vector.\n @param src_iter_desc Memory descriptor for the input recurrent hidden\n     state vector.\n @param attention_desc Memory descriptor for the attention vector.\n @param weights_layer_desc Memory descriptor for the weights applied to the\n     layer input.\n @param weights_iter_desc Memory descriptor for the weights applied to the\n     recurrent input.\n @param bias_desc Bias memory descriptor.\n @param dst_layer_desc Memory descriptor for the output vector.\n @param dst_iter_desc Memory descriptor for the output recurrent hidden\n     state vector.\n @param diff_src_layer_desc Memory descriptor for the diff of input vector.\n @param diff_src_iter_desc Memory descriptor for the diff of input recurrent\n     hidden state vector.\n @param diff_attention_desc Memory descriptor for the diff of attention vector.\n @param diff_weights_layer_desc Memory descriptor for the diff of weights\n     applied to the layer input.\n @param diff_weights_iter_desc Memory descriptor for the diff of weights\n     applied to the recurrent input.\n @param diff_bias_desc Diff bias memory descriptor.\n @param diff_dst_layer_desc Memory descriptor for the diff of output\n     vector.\n @param diff_dst_iter_desc Memory descriptor for the diff of output\n     recurrent hidden state vector.\n @param flags Unused.\n @param hint_fwd_pd Primitive descriptor for a respective forward propagation\n     primitive.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5474    pub fn dnnl_augru_backward_primitive_desc_create(
5475        primitive_desc: *mut dnnl_primitive_desc_t,
5476        engine: dnnl_engine_t,
5477        prop_kind: dnnl_prop_kind_t::Type,
5478        direction: dnnl_rnn_direction_t::Type,
5479        src_layer_desc: const_dnnl_memory_desc_t,
5480        src_iter_desc: const_dnnl_memory_desc_t,
5481        attention_desc: const_dnnl_memory_desc_t,
5482        weights_layer_desc: const_dnnl_memory_desc_t,
5483        weights_iter_desc: const_dnnl_memory_desc_t,
5484        bias_desc: const_dnnl_memory_desc_t,
5485        dst_layer_desc: const_dnnl_memory_desc_t,
5486        dst_iter_desc: const_dnnl_memory_desc_t,
5487        diff_src_layer_desc: const_dnnl_memory_desc_t,
5488        diff_src_iter_desc: const_dnnl_memory_desc_t,
5489        diff_attention_desc: const_dnnl_memory_desc_t,
5490        diff_weights_layer_desc: const_dnnl_memory_desc_t,
5491        diff_weights_iter_desc: const_dnnl_memory_desc_t,
5492        diff_bias_desc: const_dnnl_memory_desc_t,
5493        diff_dst_layer_desc: const_dnnl_memory_desc_t,
5494        diff_dst_iter_desc: const_dnnl_memory_desc_t,
5495        flags: ::std::os::raw::c_uint,
5496        hint_fwd_pd: const_dnnl_primitive_desc_t,
5497        attr: const_dnnl_primitive_attr_t,
5498    ) -> dnnl_status_t::Type;
5499}
5500unsafe extern "C" {
5501    #[doc = " Creates a primitive descriptor for LBR AUGRU forward propagation primitive.\n\n The following arguments may either be @c NULL or point to a zero memory\n descriptor:\n - @p src_iter_desc,\n - @p bias_desc,\n - @p dst_iter_desc.\n\n This would then indicate that the LBR AUGRU forward propagation primitive\n should not use them and should default to zero values instead.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Possible values are\n     #dnnl_forward_training and #dnnl_forward_inference.\n @param direction RNN direction. See @ref dnnl_rnn_direction_t for more\n     info.\n @param src_layer_desc Memory descriptor for the input vector.\n @param src_iter_desc Memory descriptor for the input recurrent hidden\n     state vector.\n @param attention_desc Memory descriptor for the attention vector.\n @param weights_layer_desc Memory descriptor for the weights applied to the\n     layer input.\n @param weights_iter_desc Memory descriptor for the weights applied to the\n     recurrent input.\n @param bias_desc Bias memory descriptor.\n @param dst_layer_desc Memory descriptor for the output vector.\n @param dst_iter_desc Memory descriptor for the output recurrent hidden\n     state vector.\n @param flags Unused.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5502    pub fn dnnl_lbr_augru_forward_primitive_desc_create(
5503        primitive_desc: *mut dnnl_primitive_desc_t,
5504        engine: dnnl_engine_t,
5505        prop_kind: dnnl_prop_kind_t::Type,
5506        direction: dnnl_rnn_direction_t::Type,
5507        src_layer_desc: const_dnnl_memory_desc_t,
5508        src_iter_desc: const_dnnl_memory_desc_t,
5509        attention_desc: const_dnnl_memory_desc_t,
5510        weights_layer_desc: const_dnnl_memory_desc_t,
5511        weights_iter_desc: const_dnnl_memory_desc_t,
5512        bias_desc: const_dnnl_memory_desc_t,
5513        dst_layer_desc: const_dnnl_memory_desc_t,
5514        dst_iter_desc: const_dnnl_memory_desc_t,
5515        flags: ::std::os::raw::c_uint,
5516        attr: const_dnnl_primitive_attr_t,
5517    ) -> dnnl_status_t::Type;
5518}
5519unsafe extern "C" {
5520    #[doc = " Creates a primitive descriptor for LBR AUGRU backward propagation primitive.\n\n The following arguments may either be @c NULL or point to a zero memory\n descriptor:\n - @p src_iter_desc together with @p diff_src_iter_desc,\n - @p bias_desc together with @p diff_bias_desc,\n - @p dst_iter_desc together with @p diff_dst_iter_desc.\n\n This would then indicate that the LBR AUGRU backward propagation primitive\n should not use them and should default to zero values instead.\n\n @note\n     All memory descriptors can be initialized with\n     #dnnl_format_tag_any or with format_kind set to #dnnl_format_kind_any.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Must be #dnnl_backward.\n @param direction RNN direction. See @ref dnnl_rnn_direction_t for more\n     info.\n @param src_layer_desc Memory descriptor for the input vector.\n @param src_iter_desc Memory descriptor for the input recurrent hidden\n     state vector.\n @param attention_desc Memory descriptor for the attention vector.\n @param weights_layer_desc Memory descriptor for the weights applied to the\n     layer input.\n @param weights_iter_desc Memory descriptor for the weights applied to the\n     recurrent input.\n @param bias_desc Bias memory descriptor.\n @param dst_layer_desc Memory descriptor for the output vector.\n @param dst_iter_desc Memory descriptor for the output recurrent hidden\n     state vector.\n @param diff_src_layer_desc Memory descriptor for the diff of input vector.\n @param diff_src_iter_desc Memory descriptor for the diff of input recurrent\n     hidden state vector.\n @param diff_attention_desc Memory descriptor for the diff of attention vector.\n @param diff_weights_layer_desc Memory descriptor for the diff of weights\n     applied to the layer input.\n @param diff_weights_iter_desc Memory descriptor for the diff of weights\n     applied to the recurrent input.\n @param diff_bias_desc Diff bias memory descriptor.\n @param diff_dst_layer_desc Memory descriptor for the diff of output\n     vector.\n @param diff_dst_iter_desc Memory descriptor for the diff of output\n     recurrent hidden state vector.\n @param flags Unused.\n @param hint_fwd_pd Primitive descriptor for a respective forward propagation\n     primitive.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5521    pub fn dnnl_lbr_augru_backward_primitive_desc_create(
5522        primitive_desc: *mut dnnl_primitive_desc_t,
5523        engine: dnnl_engine_t,
5524        prop_kind: dnnl_prop_kind_t::Type,
5525        direction: dnnl_rnn_direction_t::Type,
5526        src_layer_desc: const_dnnl_memory_desc_t,
5527        src_iter_desc: const_dnnl_memory_desc_t,
5528        attention_desc: const_dnnl_memory_desc_t,
5529        weights_layer_desc: const_dnnl_memory_desc_t,
5530        weights_iter_desc: const_dnnl_memory_desc_t,
5531        bias_desc: const_dnnl_memory_desc_t,
5532        dst_layer_desc: const_dnnl_memory_desc_t,
5533        dst_iter_desc: const_dnnl_memory_desc_t,
5534        diff_src_layer_desc: const_dnnl_memory_desc_t,
5535        diff_src_iter_desc: const_dnnl_memory_desc_t,
5536        diff_attention_desc: const_dnnl_memory_desc_t,
5537        diff_weights_layer_desc: const_dnnl_memory_desc_t,
5538        diff_weights_iter_desc: const_dnnl_memory_desc_t,
5539        diff_bias_desc: const_dnnl_memory_desc_t,
5540        diff_dst_layer_desc: const_dnnl_memory_desc_t,
5541        diff_dst_iter_desc: const_dnnl_memory_desc_t,
5542        flags: ::std::os::raw::c_uint,
5543        hint_fwd_pd: const_dnnl_primitive_desc_t,
5544        attr: const_dnnl_primitive_attr_t,
5545    ) -> dnnl_status_t::Type;
5546}
5547unsafe extern "C" {
5548    #[doc = " Creates a primitive descriptor for a matrix multiplication primitive.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param src_desc Source memory descriptor (matrix A)\n @param weights_desc Weights memory descriptor (matrix B)\n @param bias_desc Bias memory descriptor. Passing NULL, a zero memory\n     descriptor, or a memory descriptor with format_kind set to\n     #dnnl_format_kind_undef disables the bias term.\n @param dst_desc Destination memory descriptor (matrix C).\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5549    pub fn dnnl_matmul_primitive_desc_create(
5550        primitive_desc: *mut dnnl_primitive_desc_t,
5551        engine: dnnl_engine_t,
5552        src_desc: const_dnnl_memory_desc_t,
5553        weights_desc: const_dnnl_memory_desc_t,
5554        bias_desc: const_dnnl_memory_desc_t,
5555        dst_desc: const_dnnl_memory_desc_t,
5556        attr: const_dnnl_primitive_attr_t,
5557    ) -> dnnl_status_t::Type;
5558}
5559unsafe extern "C" {
5560    #[doc = " Creates a primitive descriptor for a resampling forward propagation\n     primitive.\n\n @note\n     Destination memory descriptor is allowed to be initialized with\n     #dnnl_format_tag_any or with format_kind set to #dnnl_format_kind_any.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param prop_kind Propagation kind. Possible values are\n     #dnnl_forward_training and #dnnl_forward_inference.\n @param alg_kind resampling algorithm kind: either #dnnl_resampling_nearest,\n     or #dnnl_resampling_linear.\n @param factors Array of scaling factors for spatial dimension.\n @param src_desc Source memory descriptor.\n @param dst_desc Destination memory descriptor.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5561    pub fn dnnl_resampling_forward_primitive_desc_create(
5562        primitive_desc: *mut dnnl_primitive_desc_t,
5563        engine: dnnl_engine_t,
5564        prop_kind: dnnl_prop_kind_t::Type,
5565        alg_kind: dnnl_alg_kind_t::Type,
5566        factors: *const f32,
5567        src_desc: const_dnnl_memory_desc_t,
5568        dst_desc: const_dnnl_memory_desc_t,
5569        attr: const_dnnl_primitive_attr_t,
5570    ) -> dnnl_status_t::Type;
5571}
5572unsafe extern "C" {
5573    #[doc = " Creates a primitive descriptor for a resampling backward propagation\n     primitive.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param alg_kind resamplinging algorithm kind: either\n     #dnnl_resampling_nearest, or #dnnl_resampling_linear.\n @param diff_src_desc Diff source memory descriptor.\n @param diff_dst_desc Diff destination memory descriptor.\n @param factors Array of scaling factors for spatial dimension.\n @param hint_fwd_pd Primitive descriptor for a respective forward propagation\n     primitive.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise.\n"]
5574    pub fn dnnl_resampling_backward_primitive_desc_create(
5575        primitive_desc: *mut dnnl_primitive_desc_t,
5576        engine: dnnl_engine_t,
5577        alg_kind: dnnl_alg_kind_t::Type,
5578        factors: *const f32,
5579        diff_src_desc: const_dnnl_memory_desc_t,
5580        diff_dst_desc: const_dnnl_memory_desc_t,
5581        hint_fwd_pd: const_dnnl_primitive_desc_t,
5582        attr: const_dnnl_primitive_attr_t,
5583    ) -> dnnl_status_t::Type;
5584}
5585unsafe extern "C" {
5586    #[doc = " Creates a primitive descriptor for a reduction primitive.\n\n @note\n     Destination memory descriptor is allowed to be initialized with\n     #dnnl_format_tag_any or with format_kind set to #dnnl_format_kind_any.\n\n @param primitive_desc Output primitive descriptor.\n @param engine Engine to use.\n @param alg_kind reduction algorithm kind. Possible values:\n     #dnnl_reduction_max, #dnnl_reduction_min, #dnnl_reduction_sum,\n     #dnnl_reduction_mul, #dnnl_reduction_mean, #dnnl_reduction_norm_lp_max,\n     #dnnl_reduction_norm_lp_sum, #dnnl_reduction_norm_lp_power_p_max,\n     #dnnl_reduction_norm_lp_power_p_sum.\n @param p Algorithm specific parameter.\n @param eps Algorithm specific parameter.\n @param src_desc Source memory descriptor.\n @param dst_desc Destination memory descriptor.\n @param attr Primitive attributes (can be NULL).\n @returns #dnnl_success on success and a status describing the error\n     otherwise."]
5587    pub fn dnnl_reduction_primitive_desc_create(
5588        primitive_desc: *mut dnnl_primitive_desc_t,
5589        engine: dnnl_engine_t,
5590        alg_kind: dnnl_alg_kind_t::Type,
5591        src_desc: const_dnnl_memory_desc_t,
5592        dst_desc: const_dnnl_memory_desc_t,
5593        p: f32,
5594        eps: f32,
5595        attr: const_dnnl_primitive_attr_t,
5596    ) -> dnnl_status_t::Type;
5597}
5598unsafe extern "C" {
5599    #[doc = " Returns the number of primitives that can be held in the primitive cache\n at the same time.\n\n @param capacity Primitive cache capacity to query. Concurrently\n accessing @p capacity is safe.\n @returns #dnnl_invalid_arguments/#dnnl::status::invalid_arguments if the\n     @p capacity value is invalid, and #dnnl_success/#dnnl::status::success on\n     success."]
5600    pub fn dnnl_get_primitive_cache_capacity(
5601        capacity: *mut ::std::os::raw::c_int,
5602    ) -> dnnl_status_t::Type;
5603}
5604unsafe extern "C" {
5605    #[doc = " Sets a number of primitives that can be held in the primitive cache\n at a time.\n\n @param capacity Primitive cache capacity to set. If a new @p capacity is\n less than a number of primitives that the primitive cache already has\n then the excess entries will be evicted. Setting the @p capacity to 0\n clears the primitive cache and disables it. Concurrently modifying\n @p capacity is safe.\n @returns #dnnl_invalid_arguments/#dnnl::status::invalid_arguments if the\n     @p capacity value is invalid, and #dnnl_success/#dnnl::status::success on\n     success."]
5606    pub fn dnnl_set_primitive_cache_capacity(
5607        capacity: ::std::os::raw::c_int,
5608    ) -> dnnl_status_t::Type;
5609}
5610unsafe extern "C" {
5611    #[doc = " Configures dumping of JIT-generated code.\n\n @note\n     This setting overrides the DNNL_JIT_DUMP environment variable.\n\n @param enable Flag value. Set to 0 to disable and set to 1 to enable.\n @returns #dnnl_invalid_arguments/#dnnl::status::invalid_arguments if the\n     @p flag value is invalid, and #dnnl_success/#dnnl::status::success on\n     success."]
5612    pub fn dnnl_set_jit_dump(enable: ::std::os::raw::c_int) -> dnnl_status_t::Type;
5613}
5614unsafe extern "C" {
5615    #[doc = " Sets library profiling flags. The flags define which profilers are\n supported.\n\n @note\n     This setting overrides DNNL_JIT_PROFILE environment variable.\n\n @sa @ref dev_guide_profilers\n\n @param flags Profiling flags that can contain the following bits:\n     - @ref DNNL_JIT_PROFILE_VTUNE -- integration with VTune Profiler\n         (on by default)\n     - @ref DNNL_JIT_PROFILE_LINUX_JITDUMP -- produce Linux-specific\n         jit-pid.dump output (off by default). The location of the output\n         is controlled via JITDUMPDIR environment variable or via\n         dnnl_set_jit_profiling_jitdumpdir() function.\n     - @ref DNNL_JIT_PROFILE_LINUX_PERFMAP -- produce Linux-specific\n         perf-pid.map output (off by default). The output is always placed\n         into /tmp.\n\n     Passing @ref DNNL_JIT_PROFILE_NONE disables profiling completely.\n\n @returns #dnnl_invalid_arguments/#dnnl::status::invalid_arguments if the\n     @p flags value is invalid, and #dnnl_success/#dnnl::status::success on\n     success."]
5616    pub fn dnnl_set_jit_profiling_flags(flags: ::std::os::raw::c_uint) -> dnnl_status_t::Type;
5617}
5618unsafe extern "C" {
5619    #[doc = " Sets JIT dump output path. Only applicable to Linux and is only\n used when profiling flags have DNNL_JIT_PROFILE_LINUX_PERF bit set.\n\n After the first JIT kernel is generated, the jitdump output will be placed\n into temporary directory created using the mkdtemp template\n 'dir/.debug/jit/dnnl.XXXXXX'.\n\n @sa @ref dev_guide_profilers\n\n @note\n     This setting overrides JITDUMPDIR environment variable.  If\n     JITDUMPDIR is not set, and this function is never called, the path\n     defaults to HOME. Passing NULL reverts the value to default.\n\n @note\n     The directory is accessed only when the first JIT kernel is being\n     created. JIT profiling will be disabled in case of any errors\n     accessing or creating this directory.\n\n @param dir JIT dump output path.\n @returns #dnnl_success/#dnnl::status::success if the\n     output directory was set correctly and an error status otherwise.\n @returns #dnnl_unimplemented/#dnnl::status::unimplemented on Windows."]
5620    pub fn dnnl_set_jit_profiling_jitdumpdir(
5621        dir: *const ::std::os::raw::c_char,
5622    ) -> dnnl_status_t::Type;
5623}
5624unsafe extern "C" {
5625    #[doc = " Sets the maximal ISA the library can dispatch to on the CPU. See\n #dnnl_cpu_isa_t and #dnnl::cpu_isa for the list of the values accepted by\n the C and C++ API functions respectively.\n\n This function has effect only once, and returns an error on subsequent\n calls. It should also be invoked before any other oneDNN API call, otherwise\n it may return an error.\n\n This function overrides the DNNL_MAX_CPU_ISA environment variable. The\n environment variable can be set to the desired maximal ISA name in upper\n case and with dnnl_cpu_isa prefix removed. For example:\n `DNNL_MAX_CPU_ISA=AVX2`.\n\n @note\n     The ISAs are only partially ordered:\n         - SSE41 < AVX < AVX2 < AVX2_VNNI < AVX2_VNNI_2,\n         - AVX2 < AVX512_CORE < AVX512_CORE_VNNI < AVX512_CORE_BF16\n           < AVX10_1_512 < AVX10_1_512_AMX < AVX10_1_512_AMX_FP16,\n         - AVX2_VNNI < AVX10_1_512.\n     Aliases:\n         - AVX512_CORE_FP16 = AVX10_1_512\n         - AVX512_CORE_AMX = AVX10_1_512_AMX\n         - AVX512_CORE_AMX_FP16 = AVX10_1_512_AMX_FP16\n\n @sa @ref dev_guide_cpu_dispatcher_control for more details\n\n @param isa Maximal ISA the library should dispatch to. Pass\n     #dnnl_cpu_isa_default/#dnnl::cpu_isa::isa_default to remove ISA restrictions\n     (except for ISAs with initial support in the library).\n @returns #dnnl_success/#dnnl::status::success on success and a\n     #dnnl_invalid_arguments/#dnnl::status::invalid_arguments if the @p isa\n     parameter is invalid or the ISA cannot be changed at this time.\n @returns #dnnl_unimplemented/#dnnl::status::unimplemented if the feature\n     was disabled at build time (see @ref dev_guide_build_options for more\n     details)."]
5626    pub fn dnnl_set_max_cpu_isa(isa: dnnl_cpu_isa_t::Type) -> dnnl_status_t::Type;
5627}
5628unsafe extern "C" {
5629    #[doc = " Gets the maximal ISA the library can dispatch to on the CPU. See\n #dnnl_cpu_isa_t and #dnnl::cpu_isa for the list of the values returned by\n the C and C++ API functions respectively.\n\n @sa @ref dev_guide_cpu_dispatcher_control for more details\n\n @returns #dnnl_cpu_isa_t value reflecting the maximal ISA the library may\n     dispatch to."]
5630    pub fn dnnl_get_effective_cpu_isa() -> dnnl_cpu_isa_t::Type;
5631}
5632unsafe extern "C" {
5633    #[doc = " Sets the hints flag for the CPU ISA. See #dnnl_cpu_isa_hints_t and\n #dnnl::cpu_isa_hints for the list of the values accepted by the C and C++\n API functions respectively.\n\n This function has effect only once, and returns an error on subsequent\n calls. It should also be invoked before any other oneDNN API call, otherwise\n it may return an error.\n\n This function overrides the DNNL_CPU_ISA_HINTS environment variable.\n @sa @ref dev_guide_cpu_isa_hints for more details\n\n @param isa_hints CPU ISA hints to be passed over to the implementation.\n     Pass #dnnl_cpu_isa_no_hints/#dnnl::cpu_isa_hints::no_hints to use\n     default features i.e. no hints.\n @returns #dnnl_success/#dnnl::status::success on success and a\n     #dnnl_runtime_error/#dnnl::status::runtime_error if the ISA hints cannot\n     be specified at the current time.\n @returns #dnnl_unimplemented/#dnnl::status::unimplemented if the feature\n     was disabled at build time (see @ref dev_guide_build_options for more\n     details)."]
5634    pub fn dnnl_set_cpu_isa_hints(isa_hints: dnnl_cpu_isa_hints_t::Type) -> dnnl_status_t::Type;
5635}
5636unsafe extern "C" {
5637    #[doc = " Gets the ISA specific hints that library can follow. See\n #dnnl_cpu_isa_hints_t and #dnnl::cpu_isa_hints for the list of the values\n  returned by the C and C++ API functions respectively.\n\n @sa @ref dev_guide_cpu_isa_hints for more details\n\n @returns #dnnl_cpu_isa_hints_t value reflecting the ISA specific hints the\n library can follow."]
5638    pub fn dnnl_get_cpu_isa_hints() -> dnnl_cpu_isa_hints_t::Type;
5639}
5640unsafe extern "C" {
5641    #[doc = " Performs single-precision matrix-matrix multiply.\n\n The operation is defined as:\n\n `C := alpha * op( A ) * op( B ) + beta * C`\n\n where\n  - `op( X ) = X` or `op( X ) = X**T`,\n  - `alpha` and `beta` are scalars, and\n  - `A`, `B`, and `C` are matrices:\n     - `op( A )` is an `MxK` matrix,\n     - `op( B )` is an `KxN` matrix,\n     - `C` is an `MxN` matrix.\n\n The matrices are assumed to be stored in row-major order (the elements in\n each of the matrix rows are contiguous in memory).\n\n @note\n     This API does not support XERBLA. Instead, unlike the standard BLAS\n     functions, this one returns a dnnl_status_t value to allow error\n     handling.\n\n @param transa Transposition flag for matrix A: 'N' or 'n' means A is not\n     transposed, and 'T' or 't' means that A is transposed.\n @param transb Transposition flag for matrix B: 'N' or 'n' means B is not\n     transposed, and 'T' or 't' means that B is transposed.\n @param M The M dimension.\n @param N The N dimension.\n @param K The K dimension.\n @param alpha The alpha parameter that is used to scale the product of\n     matrices A and B.\n @param A A pointer to the A matrix data.\n @param lda The leading dimension for the matrix A.\n @param B A pointer to the B matrix data.\n @param ldb The leading dimension for the matrix B.\n @param beta The beta parameter that is used to scale the matrix C.\n @param C A pointer to the C matrix data.\n @param ldc The leading dimension for the matrix C.\n @returns #dnnl_success/#dnnl::status::success on success and a status\n     describing the error otherwise."]
5642    pub fn dnnl_sgemm(
5643        transa: ::std::os::raw::c_char,
5644        transb: ::std::os::raw::c_char,
5645        M: dnnl_dim_t,
5646        N: dnnl_dim_t,
5647        K: dnnl_dim_t,
5648        alpha: f32,
5649        A: *const f32,
5650        lda: dnnl_dim_t,
5651        B: *const f32,
5652        ldb: dnnl_dim_t,
5653        beta: f32,
5654        C: *mut f32,
5655        ldc: dnnl_dim_t,
5656    ) -> dnnl_status_t::Type;
5657}
5658unsafe extern "C" {
5659    #[doc = " Performs integer matrix-matrix multiply on 8-bit unsigned matrix A, 8-bit\n signed matrix B, and 32-bit signed resulting matrix C.\n\n The operation is defined as:\n\n `C := alpha * (op(A) - A_offset) * (op(B) - B_offset) + beta * C + C_offset`\n\n where\n  - `op( X ) = X` or `op( X ) = X**T`,\n  - `alpha` and `beta` are scalars, and\n  - `A`, `B`, and `C` are matrices:\n     - `op( A )` is an `MxK` matrix,\n     - `op( B )` is an `KxN` matrix,\n     - `C` is an `MxN` matrix.\n  - `A_offset` is an `MxK` matrix with every element equal the `ao` value,\n  - `B_offset` is an `KxN` matrix with every element equal the `bo` value,\n  - `C_offset` is an `MxN` matrix which is defined by the `co` array of size `len`:\n    - if `offsetc = F`: the `len` must be at least `1`,\n    - if `offsetc = C`: the `len` must be at least `max(1, m)`,\n    - if `offsetc = R`: the `len` must be at least `max(1, n)`,\n\n The matrices are assumed to be stored in row-major order (the elements in\n each of the matrix rows are contiguous in memory).\n\n @note\n     This API does not support XERBLA. Instead, unlike the standard BLAS\n     functions, this one returns a dnnl_status_t value to allow error\n     handling.\n\n @warning\n     On some architectures saturation may happen during intermediate\n     computations, which would lead to unexpected results. For more\n     details, refer to @ref dev_guide_int8_computations.\n\n @param transa Transposition flag for matrix A: 'N' or 'n' means A is not\n     transposed, and 'T' or 't' means that A is transposed.\n @param transb Transposition flag for matrix B: 'N' or 'n' means B is not\n     transposed, and 'T' or 't' means that B is transposed.\n @param offsetc Flag specifying how offsets should be applied to matrix C:\n     - 'F' means that the same offset will be applied to each element of\n         the matrix C,\n     - 'C' means that individual offset will be applied to each element\n         within each column,\n     - 'R' means that individual offset will be applied to each element\n         within each row.\n @param M The M dimension.\n @param N The N dimension.\n @param K The K dimension.\n @param alpha The alpha parameter that is used to scale the product of\n     matrices A and B.\n @param A A pointer to the A matrix data.\n @param lda The leading dimension for the matrix A.\n @param ao The offset value for the matrix A.\n @param B A pointer to the B matrix data.\n @param ldb The leading dimension for the matrix B.\n @param bo The offset value for the matrix B.\n @param beta The beta parameter that is used to scale the matrix C.\n @param C A pointer to the C matrix data.\n @param ldc The leading dimension for the matrix C.\n @param co An array of offset values for the matrix C. The number of\n     elements in the array depends on the value of @p offsetc.\n @returns #dnnl_success/#dnnl::status::success on success and a status\n     describing the error otherwise."]
5660    pub fn dnnl_gemm_u8s8s32(
5661        transa: ::std::os::raw::c_char,
5662        transb: ::std::os::raw::c_char,
5663        offsetc: ::std::os::raw::c_char,
5664        M: dnnl_dim_t,
5665        N: dnnl_dim_t,
5666        K: dnnl_dim_t,
5667        alpha: f32,
5668        A: *const u8,
5669        lda: dnnl_dim_t,
5670        ao: u8,
5671        B: *const i8,
5672        ldb: dnnl_dim_t,
5673        bo: i8,
5674        beta: f32,
5675        C: *mut i32,
5676        ldc: dnnl_dim_t,
5677        co: *const i32,
5678    ) -> dnnl_status_t::Type;
5679}
5680unsafe extern "C" {
5681    #[doc = " Performs integer matrix-matrix multiply on 8-bit signed matrix A, 8-bit\n signed matrix B, and 32-bit signed resulting matrix C.\n\n The operation is defined as:\n\n `C := alpha * (op(A) - A_offset) * (op(B) - B_offset) + beta * C + C_offset`\n\n where\n  - `op( X ) = X` or `op( X ) = X**T`,\n  - `alpha` and `beta` are scalars, and\n  - `A`, `B`, and `C` are matrices:\n     - `op( A )` is an `MxK` matrix,\n     - `op( B )` is an `KxN` matrix,\n     - `C` is an `MxN` matrix.\n  - `A_offset` is an `MxK` matrix with every element equal the `ao` value,\n  - `B_offset` is an `KxN` matrix with every element equal the `bo` value,\n  - `C_offset` is an `MxN` matrix which is defined by the `co` array of size `len`:\n    - if `offsetc = F`: the `len` must be at least `1`,\n    - if `offsetc = C`: the `len` must be at least `max(1, m)`,\n    - if `offsetc = R`: the `len` must be at least `max(1, n)`,\n\n The matrices are assumed to be stored in row-major order (the elements in\n each of the matrix rows are contiguous in memory).\n\n @note\n     This API does not support XERBLA. Instead, unlike the standard BLAS\n     functions, this one returns a dnnl_status_t value to allow error\n     handling.\n\n @warning\n     On some architectures saturation may happen during intermediate\n     computations, which would lead to unexpected results. For more\n     details, refer to @ref dev_guide_int8_computations.\n\n @param transa Transposition flag for matrix A: 'N' or 'n' means A is not\n     transposed, and 'T' or 't' means that A is transposed.\n @param transb Transposition flag for matrix B: 'N' or 'n' means B is not\n     transposed, and 'T' or 't' means that B is transposed.\n @param offsetc Flag specifying how offsets should be applied to matrix C:\n     - 'F' means that the same offset will be applied to each element of\n         the matrix C,\n     - 'C' means that individual offset will be applied to each element\n         within each column,\n     - 'R' means that individual offset will be applied to each element\n         within each row.\n @param M The M dimension.\n @param N The N dimension.\n @param K The K dimension.\n @param alpha The alpha parameter that is used to scale the product of\n     matrices A and B.\n @param A A pointer to the A matrix data.\n @param lda The leading dimension for the matrix A.\n @param ao The offset value for the matrix A.\n @param B A pointer to the B matrix data.\n @param ldb The leading dimension for the matrix B.\n @param bo The offset value for the matrix B.\n @param beta The beta parameter that is used to scale the matrix C.\n @param C A pointer to the C matrix data.\n @param ldc The leading dimension for the matrix C.\n @param co An array of offset values for the matrix C. The number of\n     elements in the array depends on the value of @p offsetc.\n @returns #dnnl_success/#dnnl::status::success on success and a status\n     describing the error otherwise."]
5682    pub fn dnnl_gemm_s8s8s32(
5683        transa: ::std::os::raw::c_char,
5684        transb: ::std::os::raw::c_char,
5685        offsetc: ::std::os::raw::c_char,
5686        M: dnnl_dim_t,
5687        N: dnnl_dim_t,
5688        K: dnnl_dim_t,
5689        alpha: f32,
5690        A: *const i8,
5691        lda: dnnl_dim_t,
5692        ao: i8,
5693        B: *const i8,
5694        ldb: dnnl_dim_t,
5695        bo: i8,
5696        beta: f32,
5697        C: *mut i32,
5698        ldc: dnnl_dim_t,
5699        co: *const i32,
5700    ) -> dnnl_status_t::Type;
5701}
5702pub mod dnnl_graph_layout_type_t {
5703    #[doc = " Layout type specification"]
5704    pub type Type = ::std::os::raw::c_uint;
5705    #[doc = " Undefined layout type"]
5706    pub const dnnl_graph_layout_type_undef: Type = 0;
5707    #[doc = " Any means to let the library to decide the layout for a tensor during\n partition compilation."]
5708    pub const dnnl_graph_layout_type_any: Type = 1;
5709    #[doc = " Strided means that the layout of a tensor is determined by the strides\n field in the logical tensor."]
5710    pub const dnnl_graph_layout_type_strided: Type = 2;
5711    #[doc = " Opaque means that the layout of a tensor is the library specific.\n Usually, an opaque layout is generated by a partition which is compiled\n with layout type any."]
5712    pub const dnnl_graph_layout_type_opaque: Type = 3;
5713}
5714pub mod dnnl_graph_tensor_property_t {
5715    #[doc = " Logical tensor property"]
5716    pub type Type = ::std::os::raw::c_uint;
5717    #[doc = " Undefined tensor property"]
5718    pub const dnnl_graph_tensor_property_undef: Type = 0;
5719    #[doc = " Variable means the tensor may be changed during computation or between\n different iterations."]
5720    pub const dnnl_graph_tensor_property_variable: Type = 1;
5721    #[doc = " Constant means the tensor will keep unchanged during computation and\n between different iterations. It's useful for the library to apply\n optimizations for constant tensors or cache constant tensors inside the\n library. For example, constant weight tensors in inference scenarios."]
5722    pub const dnnl_graph_tensor_property_constant: Type = 2;
5723}
5724#[doc = " Logical tensor. It is based on an ID, a number of dimensions, dimensions\n themselves, element data type, tensor property and tensor memory layout."]
5725#[repr(C)]
5726#[derive(Copy, Clone)]
5727pub struct dnnl_graph_logical_tensor_t {
5728    #[doc = " Unique id of each logical tensor. The library uses logical tensor IDs to\n build up the connections between operations if the output of one\n operation has the same ID as the input of another operation."]
5729    pub id: usize,
5730    #[doc = " Number of dimensions. -1 means unknown (DNNL_GRAPH_UNKNOWN_NDIMS). 0 is\n used to define scalar tensor."]
5731    pub ndims: ::std::os::raw::c_int,
5732    #[doc = " Size of each dimension. #DNNL_GRAPH_UNKNOWN_DIM means the size of that\n dimension is unknown. 0 is used to define zero-dimension tensor. The\n library supports to deduce output shapes according to input shapes\n during compilation. Unlike memory descriptor in oneDNN primitive API,\n the order of dimensions is not defined in logical tensor. It is defined\n by the operations which respect the order through the attributes\n #dnnl_graph_op_attr_data_format or #dnnl_graph_op_attr_weights_format.\n For example, for a Convolution with `data_format=NXC`, it means the\n first element of dims of activation tensor is mini-batch size, the last\n effective element of dims is channel size, and other elements between\n them are spatial dimensions."]
5733    pub dims: dnnl_dims_t,
5734    #[doc = " Data type of the tensor elements."]
5735    pub data_type: dnnl_data_type_t::Type,
5736    #[doc = " Property type of the tensor."]
5737    pub property: dnnl_graph_tensor_property_t::Type,
5738    #[doc = " Layout type of the tensor."]
5739    pub layout_type: dnnl_graph_layout_type_t::Type,
5740    pub layout: dnnl_graph_logical_tensor_t__bindgen_ty_1,
5741}
5742#[repr(C)]
5743#[derive(Copy, Clone)]
5744pub union dnnl_graph_logical_tensor_t__bindgen_ty_1 {
5745    #[doc = " The field is valid when `layout_type` is\n #dnnl_graph_layout_type_strided. #DNNL_GRAPH_UNKNOWN_DIM means the\n stride of the dimension is unknown. The library currently doesn't\n support other negative stride values."]
5746    pub strides: dnnl_dims_t,
5747    #[doc = " The field is valid when `layout_type` is\n #dnnl_graph_layout_type_opaque. An opaque layout ID is usually\n generated by a partition which is compiled with layout type any."]
5748    pub layout_id: usize,
5749}
5750#[allow(clippy::unnecessary_operation, clippy::identity_op)]
5751const _: () = {
5752    ["Size of dnnl_graph_logical_tensor_t__bindgen_ty_1"]
5753        [::std::mem::size_of::<dnnl_graph_logical_tensor_t__bindgen_ty_1>() - 96usize];
5754    ["Alignment of dnnl_graph_logical_tensor_t__bindgen_ty_1"]
5755        [::std::mem::align_of::<dnnl_graph_logical_tensor_t__bindgen_ty_1>() - 8usize];
5756    ["Offset of field: dnnl_graph_logical_tensor_t__bindgen_ty_1::strides"]
5757        [::std::mem::offset_of!(dnnl_graph_logical_tensor_t__bindgen_ty_1, strides) - 0usize];
5758    ["Offset of field: dnnl_graph_logical_tensor_t__bindgen_ty_1::layout_id"]
5759        [::std::mem::offset_of!(dnnl_graph_logical_tensor_t__bindgen_ty_1, layout_id) - 0usize];
5760};
5761#[allow(clippy::unnecessary_operation, clippy::identity_op)]
5762const _: () = {
5763    ["Size of dnnl_graph_logical_tensor_t"]
5764        [::std::mem::size_of::<dnnl_graph_logical_tensor_t>() - 224usize];
5765    ["Alignment of dnnl_graph_logical_tensor_t"]
5766        [::std::mem::align_of::<dnnl_graph_logical_tensor_t>() - 8usize];
5767    ["Offset of field: dnnl_graph_logical_tensor_t::id"]
5768        [::std::mem::offset_of!(dnnl_graph_logical_tensor_t, id) - 0usize];
5769    ["Offset of field: dnnl_graph_logical_tensor_t::ndims"]
5770        [::std::mem::offset_of!(dnnl_graph_logical_tensor_t, ndims) - 8usize];
5771    ["Offset of field: dnnl_graph_logical_tensor_t::dims"]
5772        [::std::mem::offset_of!(dnnl_graph_logical_tensor_t, dims) - 16usize];
5773    ["Offset of field: dnnl_graph_logical_tensor_t::data_type"]
5774        [::std::mem::offset_of!(dnnl_graph_logical_tensor_t, data_type) - 112usize];
5775    ["Offset of field: dnnl_graph_logical_tensor_t::property"]
5776        [::std::mem::offset_of!(dnnl_graph_logical_tensor_t, property) - 116usize];
5777    ["Offset of field: dnnl_graph_logical_tensor_t::layout_type"]
5778        [::std::mem::offset_of!(dnnl_graph_logical_tensor_t, layout_type) - 120usize];
5779    ["Offset of field: dnnl_graph_logical_tensor_t::layout"]
5780        [::std::mem::offset_of!(dnnl_graph_logical_tensor_t, layout) - 128usize];
5781};
5782pub mod dnnl_graph_partition_policy_t {
5783    #[doc = " Policy specifications for partitioning"]
5784    pub type Type = ::std::os::raw::c_uint;
5785    #[doc = " Fusion policy returns partitions with typical post-op fusions, eg.\n Convolution + ReLU or other element-wise operations or a chian of\n post-ops."]
5786    pub const dnnl_graph_partition_policy_fusion: Type = 1;
5787    #[doc = " Debug policy doesn't not apply any fusions. It returns partitions with\n single operation in each partition. The policy is useful when users\n notice any bug or correctness issue in fusion policy."]
5788    pub const dnnl_graph_partition_policy_debug: Type = 2;
5789}
5790#[doc = " An opaque structure to describe a partition."]
5791#[repr(C)]
5792#[derive(Debug, Copy, Clone)]
5793pub struct dnnl_graph_partition {
5794    _unused: [u8; 0],
5795}
5796#[doc = " A partition handle."]
5797pub type dnnl_graph_partition_t = *mut dnnl_graph_partition;
5798#[doc = " A constant partition handle."]
5799pub type const_dnnl_graph_partition_t = *const dnnl_graph_partition;
5800#[doc = " An opaque structure to describe a graph."]
5801#[repr(C)]
5802#[derive(Debug, Copy, Clone)]
5803pub struct dnnl_graph_graph {
5804    _unused: [u8; 0],
5805}
5806#[doc = " A graph handle."]
5807pub type dnnl_graph_graph_t = *mut dnnl_graph_graph;
5808#[doc = " A constant graph handle."]
5809pub type const_dnnl_graph_graph_t = *const dnnl_graph_graph;
5810pub mod dnnl_graph_op_kind_t {
5811    #[doc = " Kinds of operations"]
5812    pub type Type = ::std::os::raw::c_uint;
5813    pub const dnnl_graph_op_abs: Type = 0;
5814    pub const dnnl_graph_op_abs_backward: Type = 1;
5815    pub const dnnl_graph_op_add: Type = 2;
5816    pub const dnnl_graph_op_avg_pool: Type = 3;
5817    pub const dnnl_graph_op_avg_pool_backward: Type = 4;
5818    pub const dnnl_graph_op_batch_norm_backward: Type = 5;
5819    pub const dnnl_graph_op_batch_norm_forward_training: Type = 6;
5820    pub const dnnl_graph_op_batch_norm_inference: Type = 7;
5821    pub const dnnl_graph_op_bias_add: Type = 8;
5822    pub const dnnl_graph_op_bias_add_backward: Type = 9;
5823    pub const dnnl_graph_op_clamp: Type = 10;
5824    pub const dnnl_graph_op_clamp_backward: Type = 11;
5825    pub const dnnl_graph_op_concat: Type = 12;
5826    pub const dnnl_graph_op_convolution: Type = 13;
5827    pub const dnnl_graph_op_convolution_backward_data: Type = 14;
5828    pub const dnnl_graph_op_convolution_backward_weights: Type = 15;
5829    pub const dnnl_graph_op_conv_transpose: Type = 16;
5830    pub const dnnl_graph_op_conv_transpose_backward_data: Type = 17;
5831    pub const dnnl_graph_op_conv_transpose_backward_weights: Type = 18;
5832    pub const dnnl_graph_op_dequantize: Type = 19;
5833    pub const dnnl_graph_op_divide: Type = 20;
5834    pub const dnnl_graph_op_dynamic_dequantize: Type = 21;
5835    pub const dnnl_graph_op_dynamic_quantize: Type = 22;
5836    pub const dnnl_graph_op_elu: Type = 23;
5837    pub const dnnl_graph_op_elu_backward: Type = 24;
5838    pub const dnnl_graph_op_end: Type = 25;
5839    pub const dnnl_graph_op_exp: Type = 26;
5840    pub const dnnl_graph_op_gelu: Type = 27;
5841    pub const dnnl_graph_op_gelu_backward: Type = 28;
5842    pub const dnnl_graph_op_hard_swish: Type = 29;
5843    pub const dnnl_graph_op_hard_swish_backward: Type = 30;
5844    pub const dnnl_graph_op_interpolate: Type = 31;
5845    pub const dnnl_graph_op_interpolate_backward: Type = 32;
5846    pub const dnnl_graph_op_layer_norm: Type = 33;
5847    pub const dnnl_graph_op_layer_norm_backward: Type = 34;
5848    pub const dnnl_graph_op_leaky_relu: Type = 35;
5849    pub const dnnl_graph_op_log: Type = 36;
5850    pub const dnnl_graph_op_log_softmax: Type = 37;
5851    pub const dnnl_graph_op_log_softmax_backward: Type = 38;
5852    pub const dnnl_graph_op_matmul: Type = 39;
5853    pub const dnnl_graph_op_maximum: Type = 40;
5854    pub const dnnl_graph_op_max_pool: Type = 41;
5855    pub const dnnl_graph_op_max_pool_backward: Type = 42;
5856    pub const dnnl_graph_op_minimum: Type = 43;
5857    pub const dnnl_graph_op_mish: Type = 44;
5858    pub const dnnl_graph_op_mish_backward: Type = 45;
5859    pub const dnnl_graph_op_multiply: Type = 46;
5860    pub const dnnl_graph_op_prelu: Type = 47;
5861    pub const dnnl_graph_op_prelu_backward: Type = 48;
5862    pub const dnnl_graph_op_quantize: Type = 49;
5863    pub const dnnl_graph_op_reciprocal: Type = 50;
5864    pub const dnnl_graph_op_reduce_l1: Type = 51;
5865    pub const dnnl_graph_op_reduce_l2: Type = 52;
5866    pub const dnnl_graph_op_reduce_max: Type = 53;
5867    pub const dnnl_graph_op_reduce_mean: Type = 54;
5868    pub const dnnl_graph_op_reduce_min: Type = 55;
5869    pub const dnnl_graph_op_reduce_prod: Type = 56;
5870    pub const dnnl_graph_op_reduce_sum: Type = 57;
5871    pub const dnnl_graph_op_relu: Type = 58;
5872    pub const dnnl_graph_op_relu_backward: Type = 59;
5873    pub const dnnl_graph_op_reorder: Type = 60;
5874    pub const dnnl_graph_op_round: Type = 61;
5875    pub const dnnl_graph_op_sigmoid: Type = 62;
5876    pub const dnnl_graph_op_sigmoid_backward: Type = 63;
5877    pub const dnnl_graph_op_softmax: Type = 64;
5878    pub const dnnl_graph_op_softmax_backward: Type = 65;
5879    pub const dnnl_graph_op_softplus: Type = 66;
5880    pub const dnnl_graph_op_softplus_backward: Type = 67;
5881    pub const dnnl_graph_op_sqrt: Type = 68;
5882    pub const dnnl_graph_op_sqrt_backward: Type = 69;
5883    pub const dnnl_graph_op_square: Type = 70;
5884    pub const dnnl_graph_op_squared_difference: Type = 71;
5885    pub const dnnl_graph_op_static_reshape: Type = 72;
5886    pub const dnnl_graph_op_static_transpose: Type = 73;
5887    pub const dnnl_graph_op_subtract: Type = 74;
5888    pub const dnnl_graph_op_tanh: Type = 75;
5889    pub const dnnl_graph_op_tanh_backward: Type = 76;
5890    pub const dnnl_graph_op_type_cast: Type = 77;
5891    pub const dnnl_graph_op_wildcard: Type = 78;
5892    pub const dnnl_graph_op_hard_sigmoid: Type = 79;
5893    pub const dnnl_graph_op_hard_sigmoid_backward: Type = 80;
5894    pub const dnnl_graph_op_select: Type = 81;
5895    pub const dnnl_graph_op_pow: Type = 82;
5896    pub const dnnl_graph_op_group_norm: Type = 83;
5897    pub const dnnl_graph_op_gen_index: Type = 84;
5898    pub const dnnl_graph_op_greater_equal: Type = 85;
5899    pub const dnnl_graph_op_last_symbol: Type = 86;
5900}
5901pub mod dnnl_graph_op_attr_t {
5902    #[doc = " Attributes of operations"]
5903    pub type Type = ::std::os::raw::c_uint;
5904    #[doc = " Undefined op attribute."]
5905    pub const dnnl_graph_op_attr_undef: Type = 0;
5906    #[doc = " Specifies an alpha attribute to an op."]
5907    pub const dnnl_graph_op_attr_alpha: Type = 1;
5908    #[doc = " Specifies an beta attribute to an op."]
5909    pub const dnnl_graph_op_attr_beta: Type = 2;
5910    #[doc = " Specifies an epsilon attribute to an op."]
5911    pub const dnnl_graph_op_attr_epsilon: Type = 3;
5912    #[doc = " Specifies a max attribute to an op."]
5913    pub const dnnl_graph_op_attr_max: Type = 4;
5914    #[doc = "Specifies a min attribute to an op."]
5915    pub const dnnl_graph_op_attr_min: Type = 5;
5916    #[doc = " Specifies a momentum attribute to an op."]
5917    pub const dnnl_graph_op_attr_momentum: Type = 6;
5918    #[doc = " Specifies a scales attribute to an op."]
5919    pub const dnnl_graph_op_attr_scales: Type = 32;
5920    #[doc = " Specifies an axis attribute to an op."]
5921    pub const dnnl_graph_op_attr_axis: Type = 48;
5922    #[doc = " Specifies a begin_norm_axis attribute to an op."]
5923    pub const dnnl_graph_op_attr_begin_norm_axis: Type = 49;
5924    #[doc = " Specifies a groups attribute to an op."]
5925    pub const dnnl_graph_op_attr_groups: Type = 50;
5926    #[doc = " Specifies an axes attribute to an op."]
5927    pub const dnnl_graph_op_attr_axes: Type = 64;
5928    #[doc = " Specifies a dilations attribute to an op."]
5929    pub const dnnl_graph_op_attr_dilations: Type = 65;
5930    #[doc = " Specifies an dst_shape attribute to an op."]
5931    pub const dnnl_graph_op_attr_dst_shape: Type = 66;
5932    #[doc = " Specifies a kernel attribute to an op."]
5933    pub const dnnl_graph_op_attr_kernel: Type = 67;
5934    #[doc = " Specifies an order attribute to an op."]
5935    pub const dnnl_graph_op_attr_order: Type = 68;
5936    #[doc = " Specifies an output_padding attribute to an op."]
5937    pub const dnnl_graph_op_attr_output_padding: Type = 69;
5938    #[doc = " Specifies a pads_begin attribute to an op."]
5939    pub const dnnl_graph_op_attr_pads_begin: Type = 70;
5940    #[doc = " Specifies a pads_end attribute to an op."]
5941    pub const dnnl_graph_op_attr_pads_end: Type = 71;
5942    #[doc = " Specifies a shape attribute to an op."]
5943    pub const dnnl_graph_op_attr_shape: Type = 72;
5944    #[doc = " Specifies a sizes attribute to an op."]
5945    pub const dnnl_graph_op_attr_sizes: Type = 73;
5946    #[doc = " Specifies a input_shape attribute to an op."]
5947    pub const dnnl_graph_op_attr_src_shape: Type = 74;
5948    #[doc = " Specifies a strides attribute to an op."]
5949    pub const dnnl_graph_op_attr_strides: Type = 75;
5950    #[doc = " Specifies a weight_shape attribute to an op."]
5951    pub const dnnl_graph_op_attr_weights_shape: Type = 76;
5952    #[doc = " Specifies a zps attribute to an op."]
5953    pub const dnnl_graph_op_attr_zps: Type = 77;
5954    #[doc = " Specifies a group shape attribute to an op."]
5955    pub const dnnl_graph_op_attr_group_shape: Type = 78;
5956    #[doc = " Specifies an exclude_pad attribute to an op."]
5957    pub const dnnl_graph_op_attr_exclude_pad: Type = 96;
5958    #[doc = " Specifies a keep_dims attribute to an op."]
5959    pub const dnnl_graph_op_attr_keep_dims: Type = 97;
5960    #[doc = " Specifies a keep_stats attribute to an op."]
5961    pub const dnnl_graph_op_attr_keep_stats: Type = 98;
5962    #[doc = " Specifies a per_channel_broadcast attribute to an op."]
5963    pub const dnnl_graph_op_attr_per_channel_broadcast: Type = 99;
5964    #[doc = " Specifies a special_zero attribute to an op."]
5965    pub const dnnl_graph_op_attr_special_zero: Type = 100;
5966    #[doc = " Specifies a transpose_a attribute to an op."]
5967    pub const dnnl_graph_op_attr_transpose_a: Type = 101;
5968    #[doc = " Specifies a transpose_b attribute to an op."]
5969    pub const dnnl_graph_op_attr_transpose_b: Type = 102;
5970    #[doc = " Specifies an use_affine attribute to an op."]
5971    pub const dnnl_graph_op_attr_use_affine: Type = 103;
5972    #[doc = " Specifies an use_dst attribute to an op."]
5973    pub const dnnl_graph_op_attr_use_dst: Type = 104;
5974    #[doc = " Specifies an auto_broadcast attribute to an op. The value can be \"none\"\n or \"numpy\"."]
5975    pub const dnnl_graph_op_attr_auto_broadcast: Type = 128;
5976    #[doc = " Specifies an auto_pad attribute to an op. The value can be \"none\",\n \"same_upper\", \"same_lower\", or \"valid\"."]
5977    pub const dnnl_graph_op_attr_auto_pad: Type = 129;
5978    #[doc = " Specifies an coordinate_transformation_mode attribute to an op. The\n value can be \"half_pixel\" or \"align_corners\". The attribute is defined\n for Interpolate operations."]
5979    pub const dnnl_graph_op_attr_coordinate_transformation_mode: Type = 130;
5980    #[doc = " Specifies a data_format of an op. The value can be \"NCX\" or \"NXC\"."]
5981    pub const dnnl_graph_op_attr_data_format: Type = 131;
5982    #[doc = " Specifies a mode attribute of an op.\n Interpolate: \"nearest\", \"linear\", \"bilinear\", or \"trilinear\".\n SoftMax: \"none\", \"inf_as_zero\"."]
5983    pub const dnnl_graph_op_attr_mode: Type = 132;
5984    #[doc = " Specifies a qtype attribute to an op. The value can be \"per_channel\" or\n \"per_tensor\". The attribute is defined for quantization operations."]
5985    pub const dnnl_graph_op_attr_qtype: Type = 133;
5986    #[doc = " Specifies a rounding_type attribute to an op. The value can be \"ceil\" or\n \"floor\"."]
5987    pub const dnnl_graph_op_attr_rounding_type: Type = 134;
5988    #[doc = " Specifies a weights_format of an op. The value can be \"OIX\", \"XIO\",\n \"IOX\", or \"XOI\". Different operations may support different values."]
5989    pub const dnnl_graph_op_attr_weights_format: Type = 135;
5990    #[doc = " Specifies the end of all above exteral attributes for check."]
5991    pub const dnnl_graph_op_attr_end: Type = 255;
5992}
5993#[doc = " An opaque structure to describe an operation."]
5994#[repr(C)]
5995#[derive(Debug, Copy, Clone)]
5996pub struct dnnl_graph_op {
5997    _unused: [u8; 0],
5998}
5999#[doc = " An operation handle."]
6000pub type dnnl_graph_op_t = *mut dnnl_graph_op;
6001#[doc = " A constant operation handle."]
6002pub type const_dnnl_graph_op_t = *const dnnl_graph_op;
6003#[doc = " Allocation call-back function interface for host. For SYCL allocator, see\n #dnnl_graph_sycl_allocate_f."]
6004pub type dnnl_graph_host_allocate_f = ::std::option::Option<
6005    unsafe extern "C" fn(size: usize, alignment: usize) -> *mut ::std::os::raw::c_void,
6006>;
6007#[doc = " Deallocation call-back function interface for host. For SYCL allocator, see\n #dnnl_graph_sycl_deallocate_f."]
6008pub type dnnl_graph_host_deallocate_f =
6009    ::std::option::Option<unsafe extern "C" fn(arg1: *mut ::std::os::raw::c_void)>;
6010#[doc = " An opaque structure to describe an allocator."]
6011#[repr(C)]
6012#[derive(Debug, Copy, Clone)]
6013pub struct dnnl_graph_allocator {
6014    _unused: [u8; 0],
6015}
6016#[doc = " An allocator handle."]
6017pub type dnnl_graph_allocator_t = *mut dnnl_graph_allocator;
6018#[doc = " A constant allocator handle."]
6019pub type const_dnnl_graph_allocator_t = *const dnnl_graph_allocator;
6020#[doc = " In-place pair definition. It can queried from a compiled partition\n indicating that an input and an output of the partition can share the same\n memory buffer for computation. In-place computation helps to reduce the\n memory footprint and improves cache locality. But since the library may not\n have a global view of user's application, it's possible that the tensor with\n `input_id` is used at other places in user's computation graph. In this\n case, the user should take the in-place pair as a hint and pass a different\n memory buffer for output tensor to avoid overwriting the input memory buffer\n which will probably cause unexpected incorrect results."]
6021#[repr(C)]
6022#[derive(Debug, Copy, Clone)]
6023pub struct dnnl_graph_inplace_pair_t {
6024    #[doc = " The id of input tensor"]
6025    pub input_id: usize,
6026    #[doc = " The id of output tensor"]
6027    pub output_id: usize,
6028}
6029#[allow(clippy::unnecessary_operation, clippy::identity_op)]
6030const _: () = {
6031    ["Size of dnnl_graph_inplace_pair_t"]
6032        [::std::mem::size_of::<dnnl_graph_inplace_pair_t>() - 16usize];
6033    ["Alignment of dnnl_graph_inplace_pair_t"]
6034        [::std::mem::align_of::<dnnl_graph_inplace_pair_t>() - 8usize];
6035    ["Offset of field: dnnl_graph_inplace_pair_t::input_id"]
6036        [::std::mem::offset_of!(dnnl_graph_inplace_pair_t, input_id) - 0usize];
6037    ["Offset of field: dnnl_graph_inplace_pair_t::output_id"]
6038        [::std::mem::offset_of!(dnnl_graph_inplace_pair_t, output_id) - 8usize];
6039};
6040#[doc = " An opaque structure to describe a compiled partition."]
6041#[repr(C)]
6042#[derive(Debug, Copy, Clone)]
6043pub struct dnnl_graph_compiled_partition {
6044    _unused: [u8; 0],
6045}
6046#[doc = " A compiled partition handle."]
6047pub type dnnl_graph_compiled_partition_t = *mut dnnl_graph_compiled_partition;
6048#[doc = " A constant compiled partition handle."]
6049pub type const_dnnl_graph_compiled_partition_t = *const dnnl_graph_compiled_partition;
6050#[doc = " An opaque structure to describe a tensor."]
6051#[repr(C)]
6052#[derive(Debug, Copy, Clone)]
6053pub struct dnnl_graph_tensor {
6054    _unused: [u8; 0],
6055}
6056#[doc = " A tensor handle."]
6057pub type dnnl_graph_tensor_t = *mut dnnl_graph_tensor;
6058#[doc = " A constant tensor handle."]
6059pub type const_dnnl_graph_tensor_t = *const dnnl_graph_tensor;
6060unsafe extern "C" {
6061    #[doc = " Creates a host allocator with the given allocation and deallocation\n call-back function pointers.\n\n @param allocator Output allocator.\n @param host_malloc A pointer to malloc function for host.\n @param host_free A pointer to free function for host.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6062    pub fn dnnl_graph_allocator_create(
6063        allocator: *mut dnnl_graph_allocator_t,
6064        host_malloc: dnnl_graph_host_allocate_f,
6065        host_free: dnnl_graph_host_deallocate_f,
6066    ) -> dnnl_status_t::Type;
6067}
6068unsafe extern "C" {
6069    #[doc = " Destroys an allocator.\n\n @param allocator The allocator to be destroyed.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6070    pub fn dnnl_graph_allocator_destroy(allocator: dnnl_graph_allocator_t) -> dnnl_status_t::Type;
6071}
6072unsafe extern "C" {
6073    #[doc = " This API is a supplement for existing onednn engine API."]
6074    pub fn dnnl_graph_make_engine_with_allocator(
6075        engine: *mut dnnl_engine_t,
6076        kind: dnnl_engine_kind_t::Type,
6077        index: usize,
6078        alloc: const_dnnl_graph_allocator_t,
6079    ) -> dnnl_status_t::Type;
6080}
6081unsafe extern "C" {
6082    #[doc = " Initializes a logical tensor with id, data type, number of dimensions,\n layout type, and property. The logical tensor's dims are unknown with this\n interface.\n\n @param logical_tensor Output logical tensor.\n @param tid The unique id of the output logical tensor.\n @param dtype Elements data type.\n @param ndims Number of dimensions.\n @param ltype Layout type of the underlying tensor buffer.\n @param ptype Tensor property type.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6083    pub fn dnnl_graph_logical_tensor_init(
6084        logical_tensor: *mut dnnl_graph_logical_tensor_t,
6085        tid: usize,
6086        dtype: dnnl_data_type_t::Type,
6087        ndims: i32,
6088        ltype: dnnl_graph_layout_type_t::Type,
6089        ptype: dnnl_graph_tensor_property_t::Type,
6090    ) -> dnnl_status_t::Type;
6091}
6092unsafe extern "C" {
6093    #[doc = " Initializes a logical tensor with basic information and dims. The logical\n tensor's dimensions and layout will be initialized according to the input\n arguments.\n\n @note\n     If dims contains all valid values and layout type is\n     #dnnl_graph_layout_type_strided. The strides field in\n     #dnnl_graph_logical_tensor_t will be calculated in a row major and\n     contiguous way. Otherwise, Accessing the strides field is an undefined\n     behavior.\n\n     Eg. dims (2, 3, 4, 5) will get strides (60, 20, 5, 1)\n\n @param logical_tensor Output logical tensor.\n @param tid The unique id of output logical tensor.\n @param dtype Elements data type.\n @param ndims Number of dimensions.\n @param dims Array of dimensions.\n @param ltype Layout type of the underlying tensor memory.\n @param ptype Tensor property type.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6094    pub fn dnnl_graph_logical_tensor_init_with_dims(
6095        logical_tensor: *mut dnnl_graph_logical_tensor_t,
6096        tid: usize,
6097        dtype: dnnl_data_type_t::Type,
6098        ndims: i32,
6099        dims: *const dnnl_dim_t,
6100        ltype: dnnl_graph_layout_type_t::Type,
6101        ptype: dnnl_graph_tensor_property_t::Type,
6102    ) -> dnnl_status_t::Type;
6103}
6104unsafe extern "C" {
6105    #[doc = " Initializes a logical tensor with dimensions and strides provided by user.\n\n @note\n     Once strides are explicitly provided through the API, the `layout_type`\n     in #dnnl_graph_logical_tensor_t can only be\n     #dnnl_graph_layout_type_strided or #dnnl_graph_layout_type_any.\n\n @param logical_tensor Output logical tensor.\n @param tid The unique id of output logical tensor.\n @param dtype Elements data type.\n @param ndims Number of dimensions.\n @param dims Array of dimensions.\n @param strides Array of strides.\n @param ptype Tensor property type.\n @returns #dnnl_success on success or a status describing the error\n otherwise."]
6106    pub fn dnnl_graph_logical_tensor_init_with_strides(
6107        logical_tensor: *mut dnnl_graph_logical_tensor_t,
6108        tid: usize,
6109        dtype: dnnl_data_type_t::Type,
6110        ndims: i32,
6111        dims: *const dnnl_dim_t,
6112        strides: *const dnnl_dim_t,
6113        ptype: dnnl_graph_tensor_property_t::Type,
6114    ) -> dnnl_status_t::Type;
6115}
6116unsafe extern "C" {
6117    #[doc = " Returns the memory size described by the logical tensor. If it's a strided\n layout, the size will be calculated by `dims` and `strides`. If it's an\n opaque layout, the size will be decided by `layout_id`.\n\n @param logical_tensor Logical tensor.\n @param size Output memory size in bytes.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6118    pub fn dnnl_graph_logical_tensor_get_mem_size(
6119        logical_tensor: *const dnnl_graph_logical_tensor_t,
6120        size: *mut usize,
6121    ) -> dnnl_status_t::Type;
6122}
6123unsafe extern "C" {
6124    #[doc = " Compares if two logical tenors are equal. Users can decide accordingly\n if layout reordering is needed for two logical tensors. The method will\n return true for below two circumstances:\n\n 1. the two logical tensors are equal regarding each field in the struct,\n eg. id, ndims, dims, layout type, property, etc.\n 2. If all other fields are equal but the layout types in two logical\n tensors are different, the method will return true when the underlying\n memory layout is the same. For example, one logical tensor has strided\n layout type while the other one has opaque layout type, but underneath,\n both layouts are NHWC, the method will still return true for this case.\n\n @param lt1 The handle of first logical tensor.\n @param lt2 The handle of second logical tensor.\n @param is_equal 1 if these two logical tensors are equal, 0 otherwise.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6125    pub fn dnnl_graph_logical_tensor_is_equal(
6126        lt1: *const dnnl_graph_logical_tensor_t,
6127        lt2: *const dnnl_graph_logical_tensor_t,
6128        is_equal: *mut u8,
6129    ) -> dnnl_status_t::Type;
6130}
6131unsafe extern "C" {
6132    #[doc = " Creates a tensor with logical tensor, engine, and data handle.\n\n @param tensor Output tensor.\n @param logical_tensor Description for this tensor.\n @param engine Engine to use.\n @param handle Handle of the memory buffer to use as an underlying storage.\n     - A pointer to the user-allocated buffer. In this case the library\n       doesn't own the buffer.\n     - The DNNL_MEMORY_ALLOCATE special value. Instructs the library to\n       allocate the buffer for the tensor. In this case the library\n       owns the buffer.\n     - DNNL_MEMORY_NONE to create tensor without an underlying buffer.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6133    pub fn dnnl_graph_tensor_create(
6134        tensor: *mut dnnl_graph_tensor_t,
6135        logical_tensor: *const dnnl_graph_logical_tensor_t,
6136        engine: dnnl_engine_t,
6137        handle: *mut ::std::os::raw::c_void,
6138    ) -> dnnl_status_t::Type;
6139}
6140unsafe extern "C" {
6141    #[doc = " Destroys a tensor.\n\n @param tensor The tensor to be destroyed.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6142    pub fn dnnl_graph_tensor_destroy(tensor: dnnl_graph_tensor_t) -> dnnl_status_t::Type;
6143}
6144unsafe extern "C" {
6145    #[doc = " Gets the data handle of a tensor.\n\n @param tensor The input tensor.\n @param handle Pointer to the data of input tensor.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6146    pub fn dnnl_graph_tensor_get_data_handle(
6147        tensor: const_dnnl_graph_tensor_t,
6148        handle: *mut *mut ::std::os::raw::c_void,
6149    ) -> dnnl_status_t::Type;
6150}
6151unsafe extern "C" {
6152    #[doc = " Set data handle for a tensor.\n\n @param tensor The input tensor.\n @param handle New data handle for tensor.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6153    pub fn dnnl_graph_tensor_set_data_handle(
6154        tensor: dnnl_graph_tensor_t,
6155        handle: *mut ::std::os::raw::c_void,
6156    ) -> dnnl_status_t::Type;
6157}
6158unsafe extern "C" {
6159    #[doc = " Returns the engine of a tensor object.\n\n @param tensor The input tensor.\n @param engine Output engine on which the tensor is located.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6160    pub fn dnnl_graph_tensor_get_engine(
6161        tensor: const_dnnl_graph_tensor_t,
6162        engine: *mut dnnl_engine_t,
6163    ) -> dnnl_status_t::Type;
6164}
6165unsafe extern "C" {
6166    #[doc = " Returns the logical tensor of a tensor object.\n\n @param tensor The input tensor.\n @param logical_tensor Output logical tensor of the tensor object.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6167    pub fn dnnl_graph_tensor_get_logical_tensor(
6168        tensor: const_dnnl_graph_tensor_t,
6169        logical_tensor: *mut dnnl_graph_logical_tensor_t,
6170    ) -> dnnl_status_t::Type;
6171}
6172unsafe extern "C" {
6173    #[doc = " Initializes an op with unique id, kind, and name.\n\n @param op Output op\n @param id The unique id of the output op.\n @param kind The op kind.\n @param verbose_name The string added as the op name.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6174    pub fn dnnl_graph_op_create(
6175        op: *mut dnnl_graph_op_t,
6176        id: usize,
6177        kind: dnnl_graph_op_kind_t::Type,
6178        verbose_name: *const ::std::os::raw::c_char,
6179    ) -> dnnl_status_t::Type;
6180}
6181unsafe extern "C" {
6182    #[doc = " Destroys an op.\n\n @param op The op to be destroyed.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6183    pub fn dnnl_graph_op_destroy(op: dnnl_graph_op_t) -> dnnl_status_t::Type;
6184}
6185unsafe extern "C" {
6186    #[doc = " Adds input logical tensor to the op.\n\n @param op Input op.\n @param input The input logical tensor to be added.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6187    pub fn dnnl_graph_op_add_input(
6188        op: dnnl_graph_op_t,
6189        input: *const dnnl_graph_logical_tensor_t,
6190    ) -> dnnl_status_t::Type;
6191}
6192unsafe extern "C" {
6193    #[doc = " Adds output logical tensor to the op.\n\n @param op Input op.\n @param output The output logical tensor to be added.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6194    pub fn dnnl_graph_op_add_output(
6195        op: dnnl_graph_op_t,
6196        output: *const dnnl_graph_logical_tensor_t,
6197    ) -> dnnl_status_t::Type;
6198}
6199unsafe extern "C" {
6200    #[doc = " Sets floating point attribute to an op.\n\n @param op Input op.\n @param name The attribute's name.\n @param value The attribute's value.\n @param value_len The number of value element.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6201    pub fn dnnl_graph_op_set_attr_f32(
6202        op: dnnl_graph_op_t,
6203        name: dnnl_graph_op_attr_t::Type,
6204        value: *const f32,
6205        value_len: usize,
6206    ) -> dnnl_status_t::Type;
6207}
6208unsafe extern "C" {
6209    #[doc = " Sets boolean attribute to an op.\n\n @param op Input op.\n @param name The attribute's name.\n @param value The attribute's value.\n @param value_len The number of value element.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6210    pub fn dnnl_graph_op_set_attr_bool(
6211        op: dnnl_graph_op_t,
6212        name: dnnl_graph_op_attr_t::Type,
6213        value: *const u8,
6214        value_len: usize,
6215    ) -> dnnl_status_t::Type;
6216}
6217unsafe extern "C" {
6218    #[doc = " Sets integer attribute to an op.\n\n @param op Input op.\n @param name The attribute's name.\n @param value The attribute's value.\n @param value_len The number of value element.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6219    pub fn dnnl_graph_op_set_attr_s64(
6220        op: dnnl_graph_op_t,
6221        name: dnnl_graph_op_attr_t::Type,
6222        value: *const i64,
6223        value_len: usize,
6224    ) -> dnnl_status_t::Type;
6225}
6226unsafe extern "C" {
6227    #[doc = " Sets string attribute to an op.\n\n @param op Input op.\n @param name The attribute's name.\n @param value The attribute's value.\n @param value_len The length of the string value.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6228    pub fn dnnl_graph_op_set_attr_str(
6229        op: dnnl_graph_op_t,
6230        name: dnnl_graph_op_attr_t::Type,
6231        value: *const ::std::os::raw::c_char,
6232        value_len: usize,
6233    ) -> dnnl_status_t::Type;
6234}
6235unsafe extern "C" {
6236    #[doc = " Returns the unique id of an op.\n\n @param op Input op.\n @param id Output the unique id.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6237    pub fn dnnl_graph_op_get_id(op: const_dnnl_graph_op_t, id: *mut usize) -> dnnl_status_t::Type;
6238}
6239unsafe extern "C" {
6240    #[doc = " Returns the kind of an op.\n\n @param op Input op.\n @param kind Output op kind.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6241    pub fn dnnl_graph_op_get_kind(
6242        op: const_dnnl_graph_op_t,
6243        kind: *mut dnnl_graph_op_kind_t::Type,
6244    ) -> dnnl_status_t::Type;
6245}
6246unsafe extern "C" {
6247    #[doc = " Creates a new partition with a given operator and engine kind. The API is\n used to create a partition from an operation directly without creating the\n graph and calling `get_partitions()`. The output partition contains only one\n operation specified by the parameter. The output partition instance should\n be destroyed via #dnnl_graph_partition_destroy after use.\n\n @param partition The handle of output partition.\n @param op The operation used to create partition.\n @param ekind The engine kind used to create partition.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6248    pub fn dnnl_graph_partition_create_with_op(
6249        partition: *mut dnnl_graph_partition_t,
6250        op: const_dnnl_graph_op_t,
6251        ekind: dnnl_engine_kind_t::Type,
6252    ) -> dnnl_status_t::Type;
6253}
6254unsafe extern "C" {
6255    #[doc = " Destroys a partition.\n\n @param partition The partition to be destroyed.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6256    pub fn dnnl_graph_partition_destroy(partition: dnnl_graph_partition_t) -> dnnl_status_t::Type;
6257}
6258unsafe extern "C" {
6259    #[doc = " Returns the number of operations in a partition.\n\n @param partition The target partition.\n @param num Output the number of operations.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6260    pub fn dnnl_graph_partition_get_op_num(
6261        partition: const_dnnl_graph_partition_t,
6262        num: *mut usize,
6263    ) -> dnnl_status_t::Type;
6264}
6265unsafe extern "C" {
6266    #[doc = " Returns the list of op IDs of the partition.\n\n @param partition The target partition.\n @param num The number of ops.\n @param ids Output the op IDs.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6267    pub fn dnnl_graph_partition_get_ops(
6268        partition: dnnl_graph_partition_t,
6269        num: usize,
6270        ids: *mut usize,
6271    ) -> dnnl_status_t::Type;
6272}
6273unsafe extern "C" {
6274    #[doc = " Returns the ID of a partition.\n\n @param partition The target partition.\n @param id Output the ID of the partition.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6275    pub fn dnnl_graph_partition_get_id(
6276        partition: const_dnnl_graph_partition_t,
6277        id: *mut usize,
6278    ) -> dnnl_status_t::Type;
6279}
6280unsafe extern "C" {
6281    #[doc = " Compiles a partition with given input and output logical tensors. The output\n logical tensors can contain unknown dimensions. For this case, the\n compilation will deduce the output shapes according to input shapes. The\n output logical tensors can also have layout type `any`. The compilation will\n choose the optimal layout for output tensors. The optimal layout will be\n represented as an opaque layout ID saved in the output logical tensor.\n\n @param partition The target partition.\n @param compiled_partition Output compiled partition.\n @param in_num The number of input logical tensors.\n @param inputs A list of input logical tensors.\n @param out_num The number of output logical tensors.\n @param outputs A list of output logical tensors.\n @param engine The target engine of the compilation.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6282    pub fn dnnl_graph_partition_compile(
6283        partition: dnnl_graph_partition_t,
6284        compiled_partition: dnnl_graph_compiled_partition_t,
6285        in_num: usize,
6286        inputs: *mut *const dnnl_graph_logical_tensor_t,
6287        out_num: usize,
6288        outputs: *mut *const dnnl_graph_logical_tensor_t,
6289        engine: dnnl_engine_t,
6290    ) -> dnnl_status_t::Type;
6291}
6292unsafe extern "C" {
6293    #[doc = " Returns the number of input logical tensors of a partition.\n\n @param partition The target partition.\n @param num Output the number of input logical tensors.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6294    pub fn dnnl_graph_partition_get_input_ports_num(
6295        partition: const_dnnl_graph_partition_t,
6296        num: *mut usize,
6297    ) -> dnnl_status_t::Type;
6298}
6299unsafe extern "C" {
6300    #[doc = " Returns a list of input logical tensors from a partition.\n\n @param partition The target partition.\n @param num The number of input logical tensors.\n @param inputs The list of input logical tensors.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6301    pub fn dnnl_graph_partition_get_input_ports(
6302        partition: const_dnnl_graph_partition_t,
6303        num: usize,
6304        inputs: *mut dnnl_graph_logical_tensor_t,
6305    ) -> dnnl_status_t::Type;
6306}
6307unsafe extern "C" {
6308    #[doc = " Returns the number of output logical tensors of a partition.\n\n @param partition The target partition.\n @param num Output the number of output logical tensors.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6309    pub fn dnnl_graph_partition_get_output_ports_num(
6310        partition: const_dnnl_graph_partition_t,
6311        num: *mut usize,
6312    ) -> dnnl_status_t::Type;
6313}
6314unsafe extern "C" {
6315    #[doc = " Returns a list of output logical tensors from a partition.\n\n @param partition The target partition.\n @param num The number of output logical tensors.\n @param outputs The list of output logical tensors.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6316    pub fn dnnl_graph_partition_get_output_ports(
6317        partition: const_dnnl_graph_partition_t,
6318        num: usize,
6319        outputs: *mut dnnl_graph_logical_tensor_t,
6320    ) -> dnnl_status_t::Type;
6321}
6322unsafe extern "C" {
6323    #[doc = " Returns the supporting status of a partition. Some operations may not be\n supported by the library under certain circumstances. During partitioning\n stage, unsupported partitions will be returned to users with each containing\n an unsupported operation. Users should check the supporting status of a\n partition before transforming the computation graph or compiling the\n partition.\n\n @param partition The target partition.\n @param is_supported Output flag to indicate the supporting status. 0 means\n     unsupported while 1 means supported.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6324    pub fn dnnl_graph_partition_is_supported(
6325        partition: const_dnnl_graph_partition_t,
6326        is_supported: *mut u8,
6327    ) -> dnnl_status_t::Type;
6328}
6329unsafe extern "C" {
6330    #[doc = " Returns the engine kind of a partition.\n\n @param partition The target partition.\n @param kind The output engine kind.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6331    pub fn dnnl_graph_partition_get_engine_kind(
6332        partition: const_dnnl_graph_partition_t,
6333        kind: *mut dnnl_engine_kind_t::Type,
6334    ) -> dnnl_status_t::Type;
6335}
6336unsafe extern "C" {
6337    #[doc = " Creates a new compiled partition handle.\n\n @param compiled_partition The handle of output compiled partition.\n @param partition The handle of input partition.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6338    pub fn dnnl_graph_compiled_partition_create(
6339        compiled_partition: *mut dnnl_graph_compiled_partition_t,
6340        partition: dnnl_graph_partition_t,
6341    ) -> dnnl_status_t::Type;
6342}
6343unsafe extern "C" {
6344    #[doc = " Executes a compiled partition.\n\n @param compiled_partition The handle of target compiled partition.\n @param stream The stream used for execution.\n @param num_inputs The number of input tensors.\n @param inputs A list of input tensors.\n @param num_outputs The number of output tensors.\n @param outputs A non-empty list of output tensors.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6345    pub fn dnnl_graph_compiled_partition_execute(
6346        compiled_partition: const_dnnl_graph_compiled_partition_t,
6347        stream: dnnl_stream_t,
6348        num_inputs: usize,
6349        inputs: *mut const_dnnl_graph_tensor_t,
6350        num_outputs: usize,
6351        outputs: *mut const_dnnl_graph_tensor_t,
6352    ) -> dnnl_status_t::Type;
6353}
6354unsafe extern "C" {
6355    #[doc = " Destroys a compiled partition.\n\n @param compiled_partition The compiled partition to be destroyed.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6356    pub fn dnnl_graph_compiled_partition_destroy(
6357        compiled_partition: dnnl_graph_compiled_partition_t,
6358    ) -> dnnl_status_t::Type;
6359}
6360unsafe extern "C" {
6361    #[doc = " Queries an input or output logical tensor according to tensor ID. If the\n tensor ID doesn't belong to any input or output of the compiled partition,\n an error status #dnnl_invalid_arguments will be returned by the API.\n\n @param compiled_partition The handle of target compiled_partition.\n @param tid The unique id of required tensor.\n @param lt The output logical tensor.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6362    pub fn dnnl_graph_compiled_partition_query_logical_tensor(
6363        compiled_partition: const_dnnl_graph_compiled_partition_t,
6364        tid: usize,
6365        lt: *mut dnnl_graph_logical_tensor_t,
6366    ) -> dnnl_status_t::Type;
6367}
6368unsafe extern "C" {
6369    #[doc = " Returns the hint of in-place pairs from a compiled partition. It indicates\n that an input and an output of the partition can share the same memory\n buffer for computation. In-place computation helps to reduce the memory\n footprint and improves cache locality. But since the library may not have a\n global view of user's application, it's possible that the tensor with\n `input_id` is used at other places in user's computation graph. In this\n case, the user should take the in-place pair as a hint and pass a different\n memory buffer for output tensor to avoid overwriting the input memory buffer\n which will probably cause unexpected incorrect results.\n\n @param compiled_partition The handle of target compiled_partition.\n @param num_inplace_pairs The number of in-place pairs.\n @param inplace_pairs The handle of in-place pairs.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6370    pub fn dnnl_graph_compiled_partition_get_inplace_ports(
6371        compiled_partition: const_dnnl_graph_compiled_partition_t,
6372        num_inplace_pairs: *mut usize,
6373        inplace_pairs: *mut *const dnnl_graph_inplace_pair_t,
6374    ) -> dnnl_status_t::Type;
6375}
6376unsafe extern "C" {
6377    #[doc = " Creates a new empty graph. A graph is associated to a specific engine kind.\n The partitions returned from the graph will inherit the engine kind of the\n graph.\n\n @param graph The handle of output graph.\n @param engine_kind The target engine kind.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6378    pub fn dnnl_graph_graph_create(
6379        graph: *mut dnnl_graph_graph_t,
6380        engine_kind: dnnl_engine_kind_t::Type,
6381    ) -> dnnl_status_t::Type;
6382}
6383unsafe extern "C" {
6384    #[doc = " Creates a new empty graph with an engine kind and a floating-point math\n mode. All partitions returned from the graph will inherit the engine kind\n and floating-point math mode.\n\n @param graph The handle of output graph.\n @param engine_kind The kind for engine.\n @param mode The floating-point math mode.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6385    pub fn dnnl_graph_graph_create_with_fpmath_mode(
6386        graph: *mut dnnl_graph_graph_t,
6387        engine_kind: dnnl_engine_kind_t::Type,
6388        mode: dnnl_fpmath_mode_t::Type,
6389    ) -> dnnl_status_t::Type;
6390}
6391unsafe extern "C" {
6392    #[doc = " Destroys a graph.\n\n @param graph The graph to be destroyed.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6393    pub fn dnnl_graph_graph_destroy(graph: dnnl_graph_graph_t) -> dnnl_status_t::Type;
6394}
6395unsafe extern "C" {
6396    #[doc = " Set the floating point math mode for a graph.\n\n @param graph The target graph.\n @param mode The floating-point math mode.\n @param apply_to_int The flag that controls whether to use floating-point\n     arithmetic for integral operations.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6397    pub fn dnnl_graph_graph_set_fpmath_mode(
6398        graph: dnnl_graph_graph_t,
6399        mode: dnnl_fpmath_mode_t::Type,
6400        apply_to_int: ::std::os::raw::c_int,
6401    ) -> dnnl_status_t::Type;
6402}
6403unsafe extern "C" {
6404    #[doc = " Get the floating point math mode for a graph.\n\n @param graph The target graph.\n @param mode The floating-point math mode.\n @param apply_to_int The flag that controls whether to use floating-point\n     arithmetic for integral operations.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6405    pub fn dnnl_graph_graph_get_fpmath_mode(
6406        graph: dnnl_graph_graph_t,
6407        mode: *mut dnnl_fpmath_mode_t::Type,
6408        apply_to_int: *mut ::std::os::raw::c_int,
6409    ) -> dnnl_status_t::Type;
6410}
6411unsafe extern "C" {
6412    #[doc = " Adds an operation into a graph. The API will return failure if the operator\n has already been added to the graph or the operation cannot pass the schema\n check in the library (eg. input and output numbers and data types, the\n attributes of the operation, etc.).\n\n @param graph The target graph.\n @param op The operation to be added.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6413    pub fn dnnl_graph_add_op(graph: dnnl_graph_graph_t, op: dnnl_graph_op_t)
6414        -> dnnl_status_t::Type;
6415}
6416unsafe extern "C" {
6417    #[doc = " Finalizes a graph. It means users have finished adding operations into the\n graph and the graph is ready for partitioning. Adding a new operation into a\n finalized graph will return failures. Similarly, partitioning on a\n un-finalized graph will also return failures.\n\n @param graph The target graph to be finalized.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6418    pub fn dnnl_graph_graph_finalize(graph: dnnl_graph_graph_t) -> dnnl_status_t::Type;
6419}
6420unsafe extern "C" {
6421    #[doc = " Checks if a graph is finalized.\n\n @param graph The target graph to be finalized.\n @param finalized Output the finalization status. 0 means then graph is not\n     finalized. Other values means the graph is finalized.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6422    pub fn dnnl_graph_graph_is_finalized(
6423        graph: dnnl_graph_graph_t,
6424        finalized: *mut u8,
6425    ) -> dnnl_status_t::Type;
6426}
6427unsafe extern "C" {
6428    #[doc = " Filters a graph. Partitions will be claimed internally according to the\n capability of the library, the engine kind, and the policy.\n\n @param graph The target graph.\n @param policy The partition policy.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6429    pub fn dnnl_graph_graph_filter(
6430        graph: dnnl_graph_graph_t,
6431        policy: dnnl_graph_partition_policy_t::Type,
6432    ) -> dnnl_status_t::Type;
6433}
6434unsafe extern "C" {
6435    #[doc = " Returns the number of partitions of a graph. The API should be called after\n a partition is already filtered. Otherwise, the output number is zero.\n\n @param graph The graph.\n @param num Output the number of partitions.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6436    pub fn dnnl_graph_graph_get_partition_num(
6437        graph: const_dnnl_graph_graph_t,
6438        num: *mut usize,
6439    ) -> dnnl_status_t::Type;
6440}
6441unsafe extern "C" {
6442    #[doc = " Returns the partitions from a filtered graph. Output partition instances\n will be written into the parameter `partitions`. Users need to make sure\n `partitions` is valid and has enough space to accept the partition\n instances. Each output partition instance should be destroyed via\n #dnnl_graph_partition_destroy explicitly after use.\n\n @param graph The target graph.\n @param num The number of partitions.\n @param partitions Output the partitions.\n @returns #dnnl_success on success or a status describing the error\n     otherwise."]
6443    pub fn dnnl_graph_graph_get_partitions(
6444        graph: dnnl_graph_graph_t,
6445        num: usize,
6446        partitions: *mut dnnl_graph_partition_t,
6447    ) -> dnnl_status_t::Type;
6448}
6449unsafe extern "C" {
6450    #[doc = " Returns the number of compiled partitions that can be held in the compiled\n partition cache at the same time.\n\n @param capacity Compiled partition cache capacity to query. Concurrently\n accessing @p capacity is safe.\n @returns #dnnl_invalid_arguments if the @p capacity value\n     is invalid, and #dnnl_success on success."]
6451    pub fn dnnl_graph_get_compiled_partition_cache_capacity(
6452        capacity: *mut ::std::os::raw::c_int,
6453    ) -> dnnl_status_t::Type;
6454}
6455unsafe extern "C" {
6456    #[doc = " Sets a number of compiled partitions that can be held in the compiled\n partition cache at the same time. The default capacity of compiled partition\n cache is 1024.\n\n @param capacity Compiled partition cache capacity to set. The default cache\n capacity is 1024. If a new @p capacity is less than a number of compiled\n partition that the compiled partition cache already has, then the excess\n entries will be evicted. Setting the @p capacity to 0 clears the compiled\n partition cache and disables it. Concurrently modifying @p capacity is safe.\n @returns #dnnl_invalid_arguments if the @p capacity value\n is invalid, and #dnnl_success on success."]
6457    pub fn dnnl_graph_set_compiled_partition_cache_capacity(
6458        capacity: ::std::os::raw::c_int,
6459    ) -> dnnl_status_t::Type;
6460}
6461unsafe extern "C" {
6462    #[doc = " Control the enabling or disabling of constant tensor cache. This API must\n be called once before compilation stage. By default, constant tensor cache is\n disabled in the library.\n\n @param flag Set to positive value to enable the cache and set to 0 to\n disable the cache. Negative values are invalid.\n @returns #dnnl_invalid_arguments if the @p flag value is\n invalid, and #dnnl_success on success.\n @note This API is deprecated and will be removed in future release, please\n use the dnnl_graph_set_constant_tensor_cache_capacity API to disable\n constant tensor cache by setting it's capacity to zero."]
6463    pub fn dnnl_graph_set_constant_tensor_cache(flag: ::std::os::raw::c_int)
6464        -> dnnl_status_t::Type;
6465}
6466unsafe extern "C" {
6467    #[doc = " Return the enabling or disabling status of constant tensor cache.\n\n @param flag The constant tensor cache enabling status to query.\n @returns #dnnl_invalid_arguments if the @p flag value is\n nullptr, and #dnnl_success on success.\n @note This API is deprecated and will be removed in future release, please\n use the dnnl_graph_get_constant_tensor_cache_capacity API to check the\n enabling status by checking it's capacity."]
6468    pub fn dnnl_graph_get_constant_tensor_cache(
6469        flag: *mut ::std::os::raw::c_int,
6470    ) -> dnnl_status_t::Type;
6471}
6472unsafe extern "C" {
6473    #[doc = " Control the capacity for the constant tensor cache that used for specific\n engine kind. This API is thread safe and can be called multiple times at\n runtime. The capacity is set to zero by default which means the cache is\n disabled. When calling this API, the corresponding cache will be flushed.\n Setting capacity to 0 means to clear all cached tensors and disable cache.\n Once the capacity limit is reached, no new tensors will be cached. If there\n are multiple devices for an engine kind, the capacity set here is for each\n device.\n\n @param eng_kind The engine kind that the constant tensor cache used for.\n @param size The constant tensor cache capacity size to set.\n @returns #dnnl_invalid_arguments if the @p eng_kind value is invalid, and\n #dnnl_success on success."]
6474    pub fn dnnl_graph_set_constant_tensor_cache_capacity(
6475        eng_kind: dnnl_engine_kind_t::Type,
6476        size: usize,
6477    ) -> dnnl_status_t::Type;
6478}
6479unsafe extern "C" {
6480    #[doc = " Return the current capacity of constant tensor cache.\n\n @param eng_kind The engine kind that the constant tensor cache used for.\n @param size The constant tensor cache capacity size to query.\n @returns #dnnl_invalid_arguments if the @p eng_kind value is\n nullptr or the @p size is nullptr, and #dnnl_success on success."]
6481    pub fn dnnl_graph_get_constant_tensor_cache_capacity(
6482        eng_kind: dnnl_engine_kind_t::Type,
6483        size: *mut usize,
6484    ) -> dnnl_status_t::Type;
6485}