Fix the default chunked prefill size (#2268)
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@@ -253,6 +253,8 @@ class Scheduler:
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# Init chunked prefill
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self.chunked_prefill_size = server_args.chunked_prefill_size
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if self.chunked_prefill_size <= 0: # -1 means disable
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self.chunked_prefill_size = None
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self.being_chunked_req = None
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self.is_mixed_chunk = (
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self.chunked_prefill_size is not None and server_args.enable_mixed_chunk
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@@ -118,7 +118,7 @@ class ModelRunner:
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logger.info(
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"Automatically turn off --chunked-prefill-size and adjust --mem-fraction-static for multimodal models."
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)
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server_args.chunked_prefill_size = None
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server_args.chunked_prefill_size = -1
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self.mem_fraction_static *= 0.95
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# TODO: qwen2-vl does not support radix cache now, set disable_radix_cache=True automatically
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if self.model_config.hf_config.architectures == [
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@@ -148,12 +148,14 @@ class ModelRunner:
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set_cpu_offload_max_bytes(int(server_args.cpu_offload_gb * 1024**3))
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# Init components
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# Get memory before model loading
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min_per_gpu_memory = self.init_torch_distributed()
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# Load the model
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self.sampler = Sampler()
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self.load_model()
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# Apply torch TP if model supports it
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# Apply torch TP if the model supports it
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supports_torch_tp = getattr(self.model, "supports_torch_tp", False)
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if self.tp_size > 1 and supports_torch_tp:
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self.apply_torch_tp()
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@@ -161,6 +163,7 @@ class ModelRunner:
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else:
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self.torch_tp_applied = False
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# Init memory pool and attention backends
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if server_args.lora_paths is not None:
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self.init_lora_manager()
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self.init_memory_pool(
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@@ -58,7 +58,7 @@ class ServerArgs:
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mem_fraction_static: Optional[float] = None
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max_running_requests: Optional[int] = None
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max_total_tokens: Optional[int] = None
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chunked_prefill_size: int = 8192
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chunked_prefill_size: Optional[int] = None
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max_prefill_tokens: int = 16384
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schedule_policy: str = "lpm"
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schedule_conservativeness: float = 1.0
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@@ -128,7 +128,7 @@ class ServerArgs:
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enable_dp_attention: bool = False
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enable_torch_compile: bool = False
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torch_compile_max_bs: int = 32
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cuda_graph_max_bs: int = 160
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cuda_graph_max_bs: Optional[int] = None
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torchao_config: str = ""
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enable_nan_detection: bool = False
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enable_p2p_check: bool = False
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@@ -144,14 +144,15 @@ class ServerArgs:
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if self.served_model_name is None:
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self.served_model_name = self.model_path
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if self.chunked_prefill_size is not None and self.chunked_prefill_size <= 0:
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# Disable chunked prefill
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self.chunked_prefill_size = None
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if self.random_seed is None:
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self.random_seed = random.randint(0, 1 << 30)
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# Mem fraction depends on the tensor parallelism size
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if is_hip():
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gpu_mem = get_amdgpu_memory_capacity()
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else:
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gpu_mem = get_nvgpu_memory_capacity()
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# Set mem fraction static, which depends on the tensor parallelism size
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if self.mem_fraction_static is None:
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if self.tp_size >= 16:
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self.mem_fraction_static = 0.79
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@@ -164,18 +165,21 @@ class ServerArgs:
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else:
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self.mem_fraction_static = 0.88
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# Adjust for GPUs with small memory capacities
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if is_hip():
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gpu_mem = get_amdgpu_memory_capacity()
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else:
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gpu_mem = get_nvgpu_memory_capacity()
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# Set chunked prefill size, which depends on the gpu memory capacity
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if self.chunked_prefill_size is None:
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if gpu_mem < 25_000:
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self.chunked_prefill_size = 2048
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else:
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self.chunked_prefill_size = 8192
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if gpu_mem < 25000:
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logger.warning(
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"Your GPU has less than 25GB memory. You may want to set a smaller --chunked-prefill-size (e.g., 512) to improve performance."
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)
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# Set cuda graph max batch size
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if self.cuda_graph_max_bs is None:
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if gpu_mem < 25_000:
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self.cuda_graph_max_bs = 8
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else:
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self.cuda_graph_max_bs = 160
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# Choose kernel backends
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# Set kernel backends
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if not is_flashinfer_available():
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self.attention_backend = "triton"
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self.sampling_backend = "pytorch"
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