182 lines
6.4 KiB
Python
182 lines
6.4 KiB
Python
"""
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策略:顺序(per-sequence)— F.scaled_dot_product_attention,可走硬件 kernel
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=============================================================================
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逐条序列调用 F.scaled_dot_product_attention,is_causal=False + 显式因果 mask。
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与 patch_xformers_sdpa_seq.py(纯 matmul)的区别:
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SDPA 可分发到 Flash Attention / mem-efficient attention kernel,
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而纯 matmul 固定走 cublas。
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硬件限制(BI-V100):
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cudnnFlashAttnForward 不支持 is_causal=True(直接报错)。
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必须使用 is_causal=False + 显式 additive causal mask。
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每条序列单独构造上三角 -inf mask,peak 显存 = max(seq_len)² × dtype,
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比 batch 版的 total_tokens² 小得多。
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与 batch_kernel 的对比:
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seq_kernel: 显存小,peak = max_single_seq²;并发 prefill 串行排队
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batch_kernel: 显存大,peak = total_tokens²;并发 prefill 一次并行处理,
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通过 --max-num-batched-tokens 控制 total_tokens 上限
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Deploy:
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python3 modified_scripts/patch_xformers_sdpa_seq_kernel.py
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"""
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XFORMERS_PATH = (
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"/usr/local/corex/lib64/python3/dist-packages/"
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"vllm/attention/backends/xformers.py"
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)
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FALLBACK_METHOD = '''
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def _run_sdpa_fallback(
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self,
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query: torch.Tensor,
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key: torch.Tensor,
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value: torch.Tensor,
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attn_metadata: "XFormersMetadata",
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) -> torch.Tensor:
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"""顺序 F.scaled_dot_product_attention fallback(可走硬件 kernel)。
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逐条序列调用 SDPA,is_causal=False + 显式上三角 additive mask。
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cudnnFlashAttnForward 不支持 is_causal=True,必须用显式 mask。
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逐序列构造 mask,peak 显存 = max(seq_len)² × dtype(远小于 batch 版)。
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Args:
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query : [1, total_prefill_tokens, num_heads, head_dim]
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key : [1, total_prefill_tokens, num_kv_heads, head_dim]
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value : [1, total_prefill_tokens, num_kv_heads, head_dim]
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Returns:
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[1, total_prefill_tokens, num_heads, head_dim]
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"""
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import torch.nn.functional as F
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assert attn_metadata.seq_lens is not None
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orig_dtype = query.dtype
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q_flat = query.squeeze(0) # [T, H, D]
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k_flat = key.squeeze(0) # [T, Hkv, D]
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v_flat = value.squeeze(0)
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output = torch.empty_like(q_flat)
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start = 0
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for seq_len in attn_metadata.seq_lens:
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end = start + seq_len
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# [1, H, L, D]
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q_s = q_flat[start:end].permute(1, 0, 2).contiguous().unsqueeze(0)
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k_s = k_flat[start:end].permute(1, 0, 2).contiguous().unsqueeze(0)
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v_s = v_flat[start:end].permute(1, 0, 2).contiguous().unsqueeze(0)
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# GQA:展开 KV heads
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if k_s.shape[1] != q_s.shape[1]:
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n = q_s.shape[1] // k_s.shape[1]
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k_s = k_s.repeat_interleave(n, dim=1).contiguous()
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v_s = v_s.repeat_interleave(n, dim=1).contiguous()
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# 逐序列因果 mask [L, L],上三角 -inf
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causal_mask = torch.tril(
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torch.zeros(seq_len, seq_len, dtype=orig_dtype, device=q_s.device)
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)
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causal_mask = causal_mask.masked_fill(
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torch.triu(torch.ones(seq_len, seq_len, dtype=torch.bool,
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device=q_s.device), diagonal=1),
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float("-inf"),
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)
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# is_causal=False + 显式 mask,规避 cudnnFlashAttnForward 不支持 is_causal=True
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out_s = F.scaled_dot_product_attention(
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q_s, k_s, v_s,
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attn_mask=causal_mask,
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dropout_p=0.0,
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is_causal=False,
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scale=self.scale,
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)
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# [1, H, L, D] → [L, H, D]
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output[start:end] = out_s.squeeze(0).permute(1, 0, 2).to(orig_dtype)
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start = end
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return output.unsqueeze(0) # [1, T, H, D]
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'''
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OLD_XFORMER_BLOCK = """\
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self.attn_op = xops.fmha.flash.FwOp()
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if self.alibi_slopes is None:
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# Add the batch dimension.
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query = query.unsqueeze(0)
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key = key.unsqueeze(0)
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value = value.unsqueeze(0)
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out = xops.memory_efficient_attention_forward(
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query,
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key,
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value,
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attn_bias=attn_bias[0],
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p=0.0,
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scale=self.scale,
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op = self.attn_op
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)
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return out.view_as(original_query)\
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"""
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NEW_XFORMER_BLOCK = """\
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self.attn_op = xops.fmha.flash.FwOp()
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if self.alibi_slopes is None:
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# Add the batch dimension.
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query = query.unsqueeze(0)
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key = key.unsqueeze(0)
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value = value.unsqueeze(0)
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if self.head_size > 128:
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out = self._run_sdpa_fallback(query, key, value, attn_metadata)
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else:
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out = xops.memory_efficient_attention_forward(
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query,
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key,
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value,
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attn_bias=attn_bias[0],
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p=0.0,
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scale=self.scale,
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op=self.attn_op,
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)
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return out.view_as(original_query)\
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"""
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INJECT_ANCHOR = " def _run_memory_efficient_xformers_forward("
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def patch_file(path):
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with open(path, "r") as f:
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content = f.read()
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changed = False
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if "_run_sdpa_fallback" in content:
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print(" [skip] _run_sdpa_fallback already present")
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elif INJECT_ANCHOR not in content:
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print(" [warn] inject anchor not found")
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else:
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content = content.replace(INJECT_ANCHOR, FALLBACK_METHOD + INJECT_ANCHOR, 1)
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print(" [ok] injected _run_sdpa_fallback (seq, F.sdpa kernel)")
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changed = True
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if NEW_XFORMER_BLOCK in content:
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print(" [skip] dispatch block already patched")
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elif OLD_XFORMER_BLOCK in content:
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content = content.replace(OLD_XFORMER_BLOCK, NEW_XFORMER_BLOCK, 1)
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print(" [ok] patched dispatch block")
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changed = True
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else:
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print(" [warn] dispatch block anchor not found")
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if changed:
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with open(path, "w") as f:
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f.write(content)
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print(f" Written: {path}")
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def main():
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print("=== patch_xformers_sdpa_seq_kernel (seq, F.sdpa + kernel dispatch) ===")
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print(f"Target: {XFORMERS_PATH}")
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patch_file(XFORMERS_PATH)
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print("\nDone.")
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if __name__ == "__main__":
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main()
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