#include "src/common/conv_bias.h"
#include "src/cuda/conv_bias/algo.h"
#include "src/cuda/conv_bias/chanwise/kern.cuh"
#include "src/cuda/utils.h"
using namespace megdnn;
using namespace cuda;
using namespace conv_bias;
namespace {
inline bool is_available_small(const chanwise::Param& param) {
return param.chl_mul == 1 && param.stride_h == 1 && param.stride_w == 1 &&
param.src_h <= 32 && param.src_w <= 32 && param.src_h == param.out_h &&
param.src_w == param.out_w && param.pad_h < param.flt_h &&
param.pad_w < param.flt_w &&
param.flt_h * param.flt_w <= (param.src_h + 1) / 2 * param.src_w;
}
}
bool ConvBiasForwardImpl::AlgoChanwiseSmall::is_available(const SizeArgs& args) const {
if (!args.src_layout->is_contiguous() || !args.dst_layout->is_contiguous()) {
return false;
}
if (args.src_layout->dtype == args.filter_layout->dtype &&
args.src_layout->dtype == dtype::BFloat16()) {
return false;
}
if (args.z_layout->ndim > 0)
return false;
#if CUDA_VERSION < 9000
if (args.src_layout->dtype.enumv() == DTypeEnum::Float16)
return false;
#endif
auto param = chanwise::Param::from_fwd_args(args);
auto&& fm = args.filter_meta;
return args.filter_meta.format == Param::Format::NCHW &&
args.src_layout->dtype.category() == DTypeCategory::FLOAT &&
args.opr->param().compute_mode == Param::ComputeMode::DEFAULT &&
fm.spatial_ndim == 2 && fm.icpg == 1 && fm.dilation[0] == 1 &&
fm.dilation[1] == 1 && !fm.should_flip && is_available_small(param);
}
size_t ConvBiasForwardImpl::AlgoChanwiseSmall::get_workspace_in_bytes(
const SizeArgs& args) const {
auto dst_layout = *args.dst_layout;
if (dst_layout.dtype.enumv() != args.bias_layout->dtype.enumv()) {
dst_layout.dtype = DType();
args.opr->check_or_deduce_dtype_fwd(
args.src_layout->dtype, args.filter_layout->dtype, dst_layout.dtype);
return dst_layout.span().dist_byte();
}
return 0;
}
void ConvBiasForwardImpl::AlgoChanwiseSmall::exec(const ExecArgs& args) const {
WorkspaceBundle bundle{args.workspace.raw_ptr, {get_workspace_in_bytes(args)}};
TensorND conv_dst_tensor = *args.dst_tensor;
if (args.dst_layout->dtype.enumv() != args.bias_layout->dtype.enumv()) {
conv_dst_tensor = TensorND{bundle.get(0), conv_dst_tensor.layout};
conv_dst_tensor.layout.dtype = DType();
args.opr->check_or_deduce_dtype_fwd(
args.src_layout->dtype, args.filter_layout->dtype,
conv_dst_tensor.layout.dtype);
}
{
auto kparam = chanwise::Param::from_fwd_args(args);
auto stream = cuda_stream(args.handle);
switch (args.src_layout->dtype.enumv()) {
case DTypeEnum::Float32:
chanwise::run_fwd_small(
conv_dst_tensor.ptr<float>(), args.src_tensor->ptr<float>(),
args.filter_tensor->ptr<float>(), kparam, stream);
break;
#if CUDA_VERSION >= 9000
case DTypeEnum::Float16:
chanwise::run_fwd_small(
static_cast<half*>(conv_dst_tensor.raw_ptr()),
static_cast<half*>(args.src_tensor->raw_ptr()),
static_cast<half*>(args.filter_tensor->raw_ptr()), kparam,
stream);
break;
#endif
default:
megdnn_assert_internal(0);
}
}
handle_bias_and_nonlinear(
args.handle, args.nonlinear_mode, &conv_dst_tensor, args.dst_tensor,
args.bias_tensor);
}