feat: use fa3 mla by default on hopper (#5210)
Co-authored-by: yundai424 <yundai424@gmail.com> Co-authored-by: hebiao064 <hebiaobuaa@gmail.com>
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@@ -325,7 +325,7 @@ class FlashAttentionBackend(AttentionBackend):
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batch_size = len(seqlens_in_batch)
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device = seqlens_in_batch.device
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if forward_batch.forward_mode.is_decode():
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if forward_batch.forward_mode.is_decode_or_idle():
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# Draft Decode
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if forward_batch.spec_info is not None:
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metadata.cache_seqlens_int32 = (
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@@ -527,7 +527,9 @@ class FlashAttentionBackend(AttentionBackend):
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else (-1, -1)
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)
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k_descale, v_descale = None, None
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if self.kv_cache_dtype_str != "auto":
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# only use kv scaling if: 1) fp8 kv is explicitly enabled, 2) RadixAttention
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# has corresponding quantization method so that layer.k_scale is not None
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if self.kv_cache_dtype_str != "auto" and layer.k_scale is not None:
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descale_shape = (forward_batch.batch_size, layer.tp_k_head_num)
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k_descale = layer.k_scale.expand(descale_shape)
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v_descale = layer.v_scale.expand(descale_shape)
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@@ -670,10 +672,13 @@ class FlashAttentionBackend(AttentionBackend):
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causal = not layer.is_cross_attention
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k_descale, v_descale = None, None
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# only use kv scaling if: 1) fp8 kv is explicitly enabled, 2) RadixAttention
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# has corresponding quantization method so that layer.k_scale is not None
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if self.kv_cache_dtype_str != "auto":
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descale_shape = (forward_batch.batch_size, layer.tp_k_head_num)
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k_descale = layer.k_scale.expand(descale_shape)
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v_descale = layer.v_scale.expand(descale_shape)
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if layer.k_scale is not None:
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descale_shape = (forward_batch.batch_size, layer.tp_k_head_num)
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k_descale = layer.k_scale.expand(descale_shape)
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v_descale = layer.v_scale.expand(descale_shape)
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q = q.to(self.kv_cache_dtype)
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if not self.use_mla:
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@@ -834,7 +839,7 @@ class FlashAttentionBackend(AttentionBackend):
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"""Initialize forward metadata for capturing CUDA graph."""
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metadata = FlashAttentionMetadata()
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device = seq_lens.device
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if forward_mode.is_decode():
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if forward_mode.is_decode_or_idle():
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if spec_info is not None:
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# Draft Decode
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metadata.cache_seqlens_int32 = self.decode_cuda_graph_metadata[
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@@ -937,7 +942,7 @@ class FlashAttentionBackend(AttentionBackend):
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seq_lens = seq_lens[:bs]
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seq_lens_cpu = seq_lens_cpu[:bs]
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req_pool_indices = req_pool_indices[:bs]
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if forward_mode.is_decode():
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if forward_mode.is_decode_or_idle():
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metadata = self.decode_cuda_graph_metadata[bs]
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if spec_info is not None:
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@@ -80,6 +80,7 @@ from sglang.srt.utils import (
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is_cuda,
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is_flashinfer_available,
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is_hip,
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is_hopper_with_cuda_12_3,
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monkey_patch_p2p_access_check,
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monkey_patch_vllm_gguf_config,
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set_cpu_offload_max_bytes,
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@@ -245,7 +246,16 @@ class ModelRunner:
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"flashinfer" if is_flashinfer_available() else "triton"
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)
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else:
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server_args.attention_backend = "triton"
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if is_hopper_with_cuda_12_3():
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if server_args.speculative_eagle_topk is None or (
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server_args.speculative_eagle_topk is not None
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and server_args.speculative_eagle_topk == 1
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):
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server_args.attention_backend = "fa3"
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else:
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server_args.attention_backend = "triton"
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else:
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server_args.attention_backend = "triton"
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logger.info(
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f"Attention backend not set. Use {server_args.attention_backend} backend by default."
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)
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@@ -263,6 +273,16 @@ class ModelRunner:
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else:
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raise ValueError(f"MLA optimization not supported on CPU.")
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if (
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server_args.attention_backend == "fa3"
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and server_args.kv_cache_dtype == "fp8_e5m2"
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):
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logger.warning(
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"FlashAttention3 only supports fp8_e4m3 if using FP8; "
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"Setting attention backend to triton."
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)
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server_args.attention_backend = "triton"
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if server_args.enable_double_sparsity:
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logger.info(
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"Double sparsity optimization is turned on. Use triton backend without CUDA graph."
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@@ -889,9 +909,6 @@ class ModelRunner:
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"FlashAttention v3 Backend requires SM>=90. "
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"Please use `--attention-backend flashinfer`."
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)
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logger.warning(
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"FlashAttention v3 Backend is in Beta. FP8 is not supported."
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)
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from sglang.srt.layers.attention.flashattention_backend import (
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FlashAttentionBackend,
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)
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@@ -1828,3 +1828,12 @@ def fast_topk(values, topk, dim):
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else:
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# Use topk for efficiency with larger k values
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return torch.topk(values, topk, dim=dim)
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def is_hopper_with_cuda_12_3():
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if not is_cuda():
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return False
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is_hopper = torch.cuda.get_device_capability()[0] == 9
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cuda_version = torch.version.cuda.split(".")
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is_cuda_compatible = int(cuda_version[0]) == 12 and int(cuda_version[1]) >= 3
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return is_hopper and is_cuda_compatible
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