1use anyhow::Result;
17use rlx_ir::HirGraphExt;
18use rlx_ir::Shape;
19use rlx_ir::hir::HirMut;
20
21use super::BlockStage;
22use crate::context::FlowCtx;
23use crate::value::FlowValue;
24
25#[derive(Debug, Clone, Copy, PartialEq, Eq)]
27pub enum BertQkvStyle {
28 Bert,
30 Mpnet,
32}
33
34#[derive(Debug, Clone)]
35pub struct BertEncoderLayerSpec {
36 pub layer_prefix: String,
37 pub qkv_style: BertQkvStyle,
38 pub hidden_size: usize,
39 pub num_heads: usize,
40 pub head_dim: usize,
41 pub eps: f32,
42 pub attention_mask_input: String,
43}
44
45impl BertEncoderLayerSpec {
46 pub fn hf(
47 layer_prefix: impl Into<String>,
48 qkv_style: BertQkvStyle,
49 hidden_size: usize,
50 num_heads: usize,
51 eps: f32,
52 ) -> Self {
53 Self {
54 layer_prefix: layer_prefix.into(),
55 qkv_style,
56 hidden_size,
57 num_heads,
58 head_dim: hidden_size / num_heads,
59 eps,
60 attention_mask_input: "attention_mask".into(),
61 }
62 }
63}
64
65#[derive(Debug, Clone)]
66pub struct BertEncoderLayerStage {
67 pub spec: BertEncoderLayerSpec,
68}
69
70impl BertEncoderLayerStage {
71 pub fn new(spec: BertEncoderLayerSpec) -> Self {
72 Self { spec }
73 }
74}
75
76impl BlockStage for BertEncoderLayerStage {
77 fn emit(&self, ctx: &mut FlowCtx<'_>, input: FlowValue) -> Result<Option<FlowValue>> {
78 let spec = &self.spec;
79 let h = spec.hidden_size;
80 let nh = spec.num_heads;
81 let dh = spec.head_dim;
82 let lp = &spec.layer_prefix;
83
84 let (qkv_w, qkv_b) = load_fused_qkv(ctx, lp, h, spec.qkv_style)?;
85
86 let out_w = ctx.load_param(&format!("{lp}.attention.output.dense.weight"), true)?;
87 let out_b = ctx.load_param(&format!("{lp}.attention.output.dense.bias"), false)?;
88 let ln1_g = ctx.load_param(&format!("{lp}.attention.output.LayerNorm.weight"), false)?;
89 let ln1_b = ctx.load_param(&format!("{lp}.attention.output.LayerNorm.bias"), false)?;
90 let ln2_g = ctx.load_param(&format!("{lp}.output.LayerNorm.weight"), false)?;
91 let ln2_b = ctx.load_param(&format!("{lp}.output.LayerNorm.bias"), false)?;
92 let int_w = ctx.load_param(&format!("{lp}.intermediate.dense.weight"), true)?;
93 let int_b = ctx.load_param(&format!("{lp}.intermediate.dense.bias"), false)?;
94 let out2_w = ctx.load_param(&format!("{lp}.output.dense.weight"), true)?;
95 let out2_b = ctx.load_param(&format!("{lp}.output.dense.bias"), false)?;
96
97 let mask_id = ctx
98 .state
99 .inputs
100 .get(&spec.attention_mask_input)
101 .map(|(id, _)| *id)
102 .ok_or_else(|| {
103 anyhow::anyhow!(
104 "BertEncoderLayer requires input `{}`",
105 spec.attention_mask_input
106 )
107 })?;
108
109 let mut gb = HirMut::new(ctx.hir());
110 let skip = input.id;
111
112 let qkv_mm = gb.mm(skip, qkv_w);
113 let qkv = gb.add(qkv_mm, qkv_b);
114 let last_ax = gb.shape(qkv).rank() - 1;
115 let q = gb.narrow_(qkv, last_ax, 0, h);
116 let k = gb.narrow_(qkv, last_ax, h, h);
117 let v = gb.narrow_(qkv, last_ax, 2 * h, h);
118 let attn = gb.attention_(q, k, v, mask_id, nh, dh);
119
120 let attn_mm = gb.mm(attn, out_w);
121 let attn_out = gb.add(attn_mm, out_b);
122 let res1 = gb.add(attn_out, skip);
123 let normed1 = gb.ln(res1, ln1_g, ln1_b, spec.eps);
124
125 let int_mm = gb.mm(normed1, int_w);
126 let int_add = gb.add(int_mm, int_b);
127 let ffn_int = gb.gelu(int_add);
128 let out2_mm = gb.mm(ffn_int, out2_w);
129 let ffn_out = gb.add(out2_mm, out2_b);
130 let res2 = gb.add(ffn_out, normed1);
131 let out = gb.ln(res2, ln2_g, ln2_b, spec.eps);
132
133 Ok(Some(ctx.wrap(out, input.shape.clone())))
134 }
135}
136
137fn load_fused_qkv(
138 ctx: &mut FlowCtx<'_>,
139 layer_prefix: &str,
140 h: usize,
141 style: BertQkvStyle,
142) -> Result<(rlx_ir::HirNodeId, rlx_ir::HirNodeId)> {
143 let (wq_key, wk_key, wv_key, bq_key, bk_key, bv_key) = match style {
144 BertQkvStyle::Bert => (
145 format!("{layer_prefix}.attention.self.query.weight"),
146 format!("{layer_prefix}.attention.self.key.weight"),
147 format!("{layer_prefix}.attention.self.value.weight"),
148 format!("{layer_prefix}.attention.self.query.bias"),
149 format!("{layer_prefix}.attention.self.key.bias"),
150 format!("{layer_prefix}.attention.self.value.bias"),
151 ),
152 BertQkvStyle::Mpnet => (
153 format!("{layer_prefix}.attention.attn.q.weight"),
154 format!("{layer_prefix}.attention.attn.k.weight"),
155 format!("{layer_prefix}.attention.attn.v.weight"),
156 format!("{layer_prefix}.attention.attn.q.bias"),
157 format!("{layer_prefix}.attention.attn.k.bias"),
158 format!("{layer_prefix}.attention.attn.v.bias"),
159 ),
160 };
161
162 let wq_data = ctx.weights.take(&wq_key, true)?;
163 let wk_data = ctx.weights.take(&wk_key, true)?;
164 let wv_data = ctx.weights.take(&wv_key, true)?;
165 let (bq_data, _) = ctx.weights.take(&bq_key, false)?;
166 let (bk_data, _) = ctx.weights.take(&bk_key, false)?;
167 let (bv_data, _) = ctx.weights.take(&bv_key, false)?;
168
169 let w_name = format!("{layer_prefix}.attention.qkv.weight");
170 let b_name = format!("{layer_prefix}.attention.qkv.bias");
171
172 let (wq, _) = wq_data;
173 let (wk, _) = wk_data;
174 let (wv, _) = wv_data;
175
176 let mut fused_w = vec![0f32; h * 3 * h];
177 let mut fused_b = vec![0f32; 3 * h];
178 for row in 0..h {
179 fused_w[row * 3 * h..row * 3 * h + h].copy_from_slice(&wq[row * h..(row + 1) * h]);
180 fused_w[row * 3 * h + h..row * 3 * h + 2 * h].copy_from_slice(&wk[row * h..(row + 1) * h]);
181 fused_w[row * 3 * h + 2 * h..row * 3 * h + 3 * h]
182 .copy_from_slice(&wv[row * h..(row + 1) * h]);
183 }
184 fused_b[..h].copy_from_slice(&bq_data);
185 fused_b[h..2 * h].copy_from_slice(&bk_data);
186 fused_b[2 * h..].copy_from_slice(&bv_data);
187
188 let w_id = ctx
189 .hir()
190 .param(&w_name, Shape::new(&[h, 3 * h], rlx_ir::DType::F32));
191 let b_id = ctx
192 .hir()
193 .param(&b_name, Shape::new(&[3 * h], rlx_ir::DType::F32));
194 ctx.params.insert(w_name, fused_w);
195 ctx.params.insert(b_name, fused_b);
196 Ok((w_id, b_id))
197}