# SPDX-License-Identifier: Apache-2.0 # SPDX-FileCopyrightText: Copyright contributors to the vLLM project import copy import getpass import json import os import tempfile import threading import time from contextlib import contextmanager from dataclasses import is_dataclass from datetime import datetime from enum import IntEnum from functools import lru_cache from pathlib import Path from typing import TYPE_CHECKING, Any, Literal, TypeVar, get_args import torch from pydantic import ConfigDict, Field, model_validator import vllm.envs as envs from vllm.logger import enable_trace_function_call, init_logger from vllm.transformers_utils.runai_utils import is_runai_obj_uri from vllm.utils import random_uuid from vllm.utils.hashing import safe_hash from .attention import AttentionConfig from .cache import CacheConfig from .compilation import CompilationConfig, CompilationMode, CUDAGraphMode from .device import DeviceConfig from .ec_transfer import ECTransferConfig from .kernel import KernelConfig from .kv_events import KVEventsConfig from .kv_transfer import KVTransferConfig from .load import LoadConfig from .lora import LoRAConfig from .model import ModelConfig from .observability import ObservabilityConfig from .offload import OffloadConfig from .parallel import ParallelConfig from .profiler import ProfilerConfig from .scheduler import SchedulerConfig from .speculative import EagleModelTypes, SpeculativeConfig from .structured_outputs import StructuredOutputsConfig from .utils import SupportsHash, config, replace from .weight_transfer import WeightTransferConfig if TYPE_CHECKING: from transformers import PretrainedConfig from vllm.model_executor.layers.quantization.base_config import QuantizationConfig from vllm.v1.kv_cache_interface import KVCacheConfig else: PretrainedConfig = Any QuantizationConfig = Any KVCacheConfig = Any logger = init_logger(__name__) class OptimizationLevel(IntEnum): """Optimization level enum.""" O0 = 0 """O0 : No optimization. no compilation, no cudagraphs, no other optimization, just starting up immediately""" O1 = 1 """O1: Quick optimizations. Dynamo+Inductor compilation and Piecewise cudagraphs""" O2 = 2 """O2: Full optimizations. -O1 as well as Full and Piecewise cudagraphs.""" O3 = 3 """O3: Currently the same as -O2s.""" PerformanceMode = Literal["balanced", "interactivity", "throughput"] IS_QUANTIZED = False IS_DENSE = False # The optimizations that depend on these properties currently set to False # in all cases. # if model_config is not None: # IS_QUANTIZED = lambda c: c.model_config.is_quantized() # IS_DENSE = lambda c: not c.model_config.is_model_moe() # See https://github.com/vllm-project/vllm/issues/25689. def enable_norm_fusion(cfg: "VllmConfig") -> bool: """Enable if either RMS norm or quant FP8 custom op is active; otherwise Inductor handles fusion.""" return cfg.compilation_config.is_custom_op_enabled( "rms_norm" ) or cfg.compilation_config.is_custom_op_enabled("quant_fp8") def enable_act_fusion(cfg: "VllmConfig") -> bool: """ Enable if either SiLU+Mul or quant FP8 custom op is active; otherwise Inductor handles fusion. Also enable for FP4 models as FP4 quant is always custom so Inductor cannot fuse it. """ return ( cfg.compilation_config.is_custom_op_enabled("silu_and_mul") or cfg.compilation_config.is_custom_op_enabled("quant_fp8") or (cfg.model_config is not None and cfg.model_config.is_nvfp4_quantized()) ) def enable_allreduce_rms_fusion(cfg: "VllmConfig") -> bool: """Enable if TP > 1 and Hopper/Blackwell and flashinfer installed.""" from vllm.platforms import current_platform from vllm.utils.flashinfer import has_flashinfer return ( cfg.parallel_config.tensor_parallel_size > 1 and current_platform.is_cuda() and has_flashinfer() and ( current_platform.is_device_capability(100) or current_platform.is_device_capability(90) ) # tp-dp combination broken: # https://github.com/vllm-project/vllm/issues/34458 and cfg.parallel_config.data_parallel_size == 1 # tp-pp combination broken: # https://github.com/vllm-project/vllm/issues/35426 and cfg.parallel_config.pipeline_parallel_size == 1 ) def enable_rope_kvcache_fusion(cfg: "VllmConfig") -> bool: """Enable if rotary embedding custom op is active and use_inductor_graph_partition is enabled. """ from vllm._aiter_ops import rocm_aiter_ops return ( rocm_aiter_ops.is_enabled() and cfg.compilation_config.is_custom_op_enabled("rotary_embedding") and cfg.compilation_config.use_inductor_graph_partition ) def enable_norm_pad_fusion(cfg: "VllmConfig") -> bool: """Enable if using AITER RMSNorm and AITER Triton GEMMs and hidden size is 2880 i.e. gpt-oss; otherwise Inductor handles fusion.""" from vllm._aiter_ops import rocm_aiter_ops return ( rocm_aiter_ops.is_rmsnorm_enabled() and not rocm_aiter_ops.is_triton_gemm_enabled() and cfg.model_config is not None and cfg.model_config.get_hidden_size() == 2880 ) OPTIMIZATION_LEVEL_00 = { "compilation_config": { "pass_config": { "fuse_norm_quant": False, "fuse_act_quant": False, "fuse_allreduce_rms": False, "fuse_attn_quant": False, "enable_sp": False, "fuse_gemm_comms": False, "fuse_act_padding": False, "fuse_rope_kvcache": False, }, "cudagraph_mode": CUDAGraphMode.NONE, "use_inductor_graph_partition": False, }, "kernel_config": { "enable_flashinfer_autotune": False, }, } OPTIMIZATION_LEVEL_01 = { "compilation_config": { "pass_config": { "fuse_norm_quant": enable_norm_fusion, "fuse_act_quant": enable_act_fusion, "fuse_allreduce_rms": False, "fuse_attn_quant": False, "enable_sp": False, "fuse_gemm_comms": False, "fuse_act_padding": enable_norm_pad_fusion, "fuse_rope_kvcache": enable_rope_kvcache_fusion, }, "cudagraph_mode": CUDAGraphMode.PIECEWISE, "use_inductor_graph_partition": False, }, "kernel_config": { "enable_flashinfer_autotune": True, }, } OPTIMIZATION_LEVEL_02 = { "compilation_config": { "pass_config": { "fuse_norm_quant": enable_norm_fusion, "fuse_act_quant": enable_act_fusion, "fuse_allreduce_rms": enable_allreduce_rms_fusion, "fuse_attn_quant": IS_QUANTIZED, "enable_sp": IS_DENSE, "fuse_gemm_comms": IS_DENSE, "fuse_act_padding": enable_norm_pad_fusion, "fuse_rope_kvcache": enable_rope_kvcache_fusion, }, "cudagraph_mode": CUDAGraphMode.FULL_AND_PIECEWISE, "use_inductor_graph_partition": False, }, "kernel_config": { "enable_flashinfer_autotune": True, }, } OPTIMIZATION_LEVEL_03 = { "compilation_config": { "pass_config": { "fuse_norm_quant": enable_norm_fusion, "fuse_act_quant": enable_act_fusion, "fuse_allreduce_rms": enable_allreduce_rms_fusion, "fuse_attn_quant": IS_QUANTIZED, "enable_sp": IS_DENSE, "fuse_gemm_comms": IS_DENSE, "fuse_act_padding": enable_norm_pad_fusion, "fuse_rope_kvcache": enable_rope_kvcache_fusion, }, "cudagraph_mode": CUDAGraphMode.FULL_AND_PIECEWISE, "use_inductor_graph_partition": False, }, "kernel_config": { "enable_flashinfer_autotune": True, }, } OPTIMIZATION_LEVEL_TO_CONFIG = { OptimizationLevel.O0: OPTIMIZATION_LEVEL_00, OptimizationLevel.O1: OPTIMIZATION_LEVEL_01, OptimizationLevel.O2: OPTIMIZATION_LEVEL_02, OptimizationLevel.O3: OPTIMIZATION_LEVEL_03, } @config(config=ConfigDict(arbitrary_types_allowed=True)) class VllmConfig: """Dataclass which contains all vllm-related configuration. This simplifies passing around the distinct configurations in the codebase. """ # TODO: use default_factory once default constructing ModelConfig doesn't # try to download a model model_config: ModelConfig = Field(default=None) """Model configuration.""" cache_config: CacheConfig = Field(default_factory=CacheConfig) """Cache configuration.""" parallel_config: ParallelConfig = Field(default_factory=ParallelConfig) """Parallel configuration.""" scheduler_config: SchedulerConfig = Field( default_factory=SchedulerConfig.default_factory, ) """Scheduler configuration.""" device_config: DeviceConfig = Field(default_factory=DeviceConfig) """Device configuration.""" load_config: LoadConfig = Field(default_factory=LoadConfig) """Load configuration.""" offload_config: OffloadConfig = Field(default_factory=OffloadConfig) """Model weight offloading configuration.""" attention_config: AttentionConfig = Field(default_factory=AttentionConfig) """Attention configuration.""" kernel_config: KernelConfig = Field(default_factory=KernelConfig) """Kernel configuration.""" lora_config: LoRAConfig | None = None """LoRA configuration.""" speculative_config: SpeculativeConfig | None = None """Speculative decoding configuration.""" structured_outputs_config: StructuredOutputsConfig = Field( default_factory=StructuredOutputsConfig ) """Structured outputs configuration.""" observability_config: ObservabilityConfig = Field( default_factory=ObservabilityConfig ) """Observability configuration.""" quant_config: QuantizationConfig | None = None """Quantization configuration.""" compilation_config: CompilationConfig = Field(default_factory=CompilationConfig) """`torch.compile` and cudagraph capture configuration for the model. As a shorthand, one can append compilation arguments via -cc.parameter=argument such as `-cc.mode=3` (same as `-cc='{"mode":3}'`). You can specify the full compilation config like so: `{"mode": 3, "cudagraph_capture_sizes": [1, 2, 4, 8]}` """ profiler_config: ProfilerConfig = Field(default_factory=ProfilerConfig) """Profiling configuration.""" kv_transfer_config: KVTransferConfig | None = None """The configurations for distributed KV cache transfer.""" kv_events_config: KVEventsConfig | None = None """The configurations for event publishing.""" ec_transfer_config: ECTransferConfig | None = None """The configurations for distributed EC cache transfer.""" # some opaque config, only used to provide additional information # for the hash computation, mainly used for testing, debugging or out of # tree config registration. additional_config: dict | SupportsHash = Field(default_factory=dict) """Additional config for specified platform. Different platforms may support different configs. Make sure the configs are valid for the platform you are using. Contents must be hashable.""" instance_id: str = "" """The ID of the vLLM instance.""" optimization_level: OptimizationLevel = OptimizationLevel.O2 """The optimization level. These levels trade startup time cost for performance, with -O0 having the best startup time and -O3 having the best performance. -O2 is used by default. See OptimizationLevel for full description.""" performance_mode: PerformanceMode = "balanced" """Performance mode for runtime behavior, 'balanced' is the default. 'interactivity' favors low end-to-end per-request latency at small batch sizes (fine-grained CUDA graphs, latency-oriented kernels). 'throughput' favors aggregate tokens/sec at high concurrency (larger CUDA graphs, more aggressive batching, throughput-oriented kernels).""" weight_transfer_config: WeightTransferConfig | None = None """The configurations for weight transfer during RL training.""" def compute_hash(self) -> str: """ WARNING: Whenever a new field is added to this config, ensure that it is included in the factors list if it affects the computation graph. Provide a hash that uniquely identifies all the configs that affect the structure of the computation graph from input ids/embeddings to the final hidden states, excluding anything before input ids/embeddings and after the final hidden states. """ factors: list[Any] = [] # summarize vllm config vllm_factors: list[Any] = [] from vllm import __version__ vllm_factors.append(__version__) if self.model_config: vllm_factors.append(self.model_config.compute_hash()) if ( self.compilation_config and getattr(self.compilation_config, "compile_mm_encoder", False) and self.model_config.multimodal_config ): vllm_factors.append(self.model_config.multimodal_config.compute_hash()) else: vllm_factors.append("None") if self.cache_config: vllm_factors.append(self.cache_config.compute_hash()) else: vllm_factors.append("None") if self.parallel_config: vllm_factors.append(self.parallel_config.compute_hash()) else: vllm_factors.append("None") if self.scheduler_config: vllm_factors.append(self.scheduler_config.compute_hash()) else: vllm_factors.append("None") if self.device_config: vllm_factors.append(self.device_config.compute_hash()) else: vllm_factors.append("None") if self.load_config: vllm_factors.append(self.load_config.compute_hash()) else: vllm_factors.append("None") if self.offload_config: vllm_factors.append(self.offload_config.compute_hash()) else: vllm_factors.append("None") if self.attention_config: vllm_factors.append(self.attention_config.compute_hash()) else: vllm_factors.append("None") if self.lora_config: vllm_factors.append(self.lora_config.compute_hash()) else: vllm_factors.append("None") if self.speculative_config: vllm_factors.append(self.speculative_config.compute_hash()) else: vllm_factors.append("None") if self.structured_outputs_config: vllm_factors.append(self.structured_outputs_config.compute_hash()) if self.profiler_config: vllm_factors.append(self.profiler_config.compute_hash()) else: vllm_factors.append("None") vllm_factors.append(self.observability_config.compute_hash()) if self.quant_config: pass # should be captured by model_config.quantization if self.compilation_config: vllm_factors.append(self.compilation_config.compute_hash()) else: vllm_factors.append("None") if self.kv_transfer_config: vllm_factors.append(self.kv_transfer_config.compute_hash()) else: vllm_factors.append("None") if self.ec_transfer_config: vllm_factors.append(self.ec_transfer_config.compute_hash()) else: vllm_factors.append("None") if self.additional_config: if isinstance(additional_config := self.additional_config, dict): additional_config_hash = safe_hash( json.dumps(additional_config, sort_keys=True).encode(), usedforsecurity=False, ).hexdigest() else: additional_config_hash = additional_config.compute_hash() vllm_factors.append(additional_config_hash) else: vllm_factors.append("None") factors.append(vllm_factors) hash_str = safe_hash(str(factors).encode(), usedforsecurity=False).hexdigest()[ :10 ] return hash_str @property def num_speculative_tokens(self) -> int: if ( self.speculative_config is not None and self.speculative_config.num_speculative_tokens is not None ): return self.speculative_config.num_speculative_tokens return 0 @property def needs_dp_coordinator(self) -> bool: """ Determine if the DPCoordinator process is needed. The DPCoordinator is needed in two cases: 1. For MoE models with DP > 1: to handle wave coordination (even in external LB mode, since wave coordination runs in the coordinator) 2. For non-MoE models in internal/hybrid LB mode: to collect and publish queue stats for load balancing across DP ranks Returns: True if DPCoordinator process is needed, False otherwise. """ # For non-MoE models, only need coordinator in internal/hybrid LB mode # (for stats collection). return self.parallel_config.data_parallel_size > 1 and ( self.model_config is None or self.model_config.is_moe or not self.parallel_config.data_parallel_external_lb ) def enable_trace_function_call_for_thread(self) -> None: """ Set up function tracing for the current thread, if enabled via the `VLLM_TRACE_FUNCTION` environment variable. """ if envs.VLLM_TRACE_FUNCTION: tmp_dir = tempfile.gettempdir() # add username to tmp_dir to avoid permission issues tmp_dir = os.path.join(tmp_dir, getpass.getuser()) filename = ( f"VLLM_TRACE_FUNCTION_for_process_{os.getpid()}" f"_thread_{threading.get_ident()}_at_{datetime.now()}.log" ).replace(" ", "_") log_path = os.path.join( tmp_dir, "vllm", f"vllm-instance-{self.instance_id}", filename, ) os.makedirs(os.path.dirname(log_path), exist_ok=True) enable_trace_function_call(log_path) @staticmethod def _get_quantization_config( model_config: ModelConfig, load_config: LoadConfig ) -> QuantizationConfig | None: """Get the quantization config.""" from vllm.platforms import current_platform if model_config.quantization is not None: from vllm.model_executor.model_loader.weight_utils import get_quant_config quant_config = get_quant_config(model_config, load_config) capability_tuple = current_platform.get_device_capability() if capability_tuple is not None: capability = capability_tuple.to_int() if capability < quant_config.get_min_capability(): raise ValueError( f"The quantization method {model_config.quantization} " "is not supported for the current GPU. Minimum " f"capability: {quant_config.get_min_capability()}. " f"Current capability: {capability}." ) supported_dtypes = quant_config.get_supported_act_dtypes() if model_config.dtype not in supported_dtypes: raise ValueError( f"{model_config.dtype} is not supported for quantization " f"method {model_config.quantization}. Supported dtypes: " f"{supported_dtypes}" ) quant_config.maybe_update_config(model_config.model) return quant_config return None @staticmethod def get_quantization_config( model_config: ModelConfig, load_config: LoadConfig ) -> QuantizationConfig | None: import copy # For some reason, the _ version of this modifies the model_config # object, so using deepcopy to avoid this problem. return VllmConfig._get_quantization_config( copy.deepcopy(model_config), load_config ) def with_hf_config( self, hf_config: PretrainedConfig, architectures: list[str] | None = None, ) -> "VllmConfig": if architectures is not None: hf_config = copy.deepcopy(hf_config) hf_config.architectures = architectures model_config = copy.deepcopy(self.model_config) if ( model_config.is_multimodal_model and hasattr(model_config.hf_config, "tie_word_embeddings") and not hasattr(hf_config.get_text_config(), "tie_word_embeddings") ): # In Transformers v5, tie_word_embeddings belongs to the config of the class # that can see both layers to be tied. For example: # # SomeVLModel: # self.language_model = SomeLanguageModel() # self.vision_model = SomeVisionModel() # # SomeVLModelForMultimodalLM: # self.model = SomeVLModel() # self.lm_head = nn.Linear() # # Therefore, tie_word_embeddings is defined in SomeVLModelForMultimodalLM's # config and is not present in SomeVLModel's config. In vLLM, the lm_head # belongs to the language_model, so we must ensure that tie_word_embeddings # is set in the language_model's config. tie_word_embeddings = model_config.hf_config.tie_word_embeddings hf_config.get_text_config().tie_word_embeddings = tie_word_embeddings model_config.hf_config = hf_config model_config.model_arch_config = model_config.get_model_arch_config() return replace(self, model_config=model_config) def _set_config_default(self, config_obj: Any, key: str, value: Any) -> None: """Set config attribute to default if not already set by user. Args: config_obj: Configuration object to update. key: Attribute name. value: Default value (static or callable). """ if getattr(config_obj, key) is None: # Some config values are known before initialization and are # hard coded. # Other values depend on the user given configuration, so they are # implemented with lambda functions and decided at run time. setattr(config_obj, key, value(self) if callable(value) else value) def _apply_optimization_level_defaults(self, defaults: dict[str, Any]) -> None: """Apply optimization level defaults using self as root. Recursively applies values from defaults into nested config objects. Only fields present in defaults are overwritten. If the user configuration does not specify a value for a default field and if the default field is still None after all user selections are applied, then default values will be applied to the field. User speciied fields will not be overridden by the default. Args: defaults: Dictionary of default values to apply. """ def apply_recursive(config_obj: Any, config_defaults: dict[str, Any]) -> None: """Recursively apply defaults to config_obj, using self as root.""" for key, value in config_defaults.items(): if not hasattr(config_obj, key): continue current = getattr(config_obj, key) if isinstance(value, dict) and is_dataclass(current): apply_recursive(current, value) else: self._set_config_default(config_obj, key, value) apply_recursive(self, defaults) def _post_init_kv_transfer_config(self) -> None: """Update KVTransferConfig based on top-level configs in VllmConfig. Right now, this function reads the offloading settings from CacheConfig and configures the KVTransferConfig accordingly. """ # KV offloading is only activated when kv_offloading_size is set. if (kv_offloading_size := self.cache_config.kv_offloading_size) is None: return kv_offloading_backend = self.cache_config.kv_offloading_backend # If no KVTransferConfig is provided, create a default one. if self.kv_transfer_config is None: self.kv_transfer_config = KVTransferConfig() num_kv_ranks = ( self.parallel_config.tensor_parallel_size * self.parallel_config.pipeline_parallel_size ) if kv_offloading_backend == "native": self.kv_transfer_config.kv_connector = "OffloadingConnector" self.kv_transfer_config.kv_connector_extra_config.update( {"cpu_bytes_to_use": kv_offloading_size * (1 << 30)} ) elif kv_offloading_backend == "lmcache": self.kv_transfer_config.kv_connector = "LMCacheConnectorV1" kv_gb_per_rank = kv_offloading_size / num_kv_ranks self.kv_transfer_config.kv_connector_extra_config = { "lmcache.local_cpu": True, "lmcache.max_local_cpu_size": kv_gb_per_rank, } # This is the same for all backends self.kv_transfer_config.kv_role = "kv_both" def __post_init__(self): """Verify configs are valid & consistent with each other.""" # To give each torch profile run a unique instance name. self.instance_id = f"{time.time_ns()}" if self.performance_mode != "balanced": logger.info_once( "Performance mode set to '%s'.", self.performance_mode, scope="local" ) self.try_verify_and_update_config() if self.model_config is not None: self.model_config.verify_with_parallel_config(self.parallel_config) self.model_config.verify_dual_chunk_attention_config(self.load_config) self.parallel_config.is_moe_model = self.model_config.is_moe self.cache_config.verify_with_parallel_config(self.parallel_config) if self.lora_config is not None: self.lora_config.verify_with_model_config(self.model_config) if self.quant_config is None and self.model_config is not None: self.quant_config = VllmConfig._get_quantization_config( self.model_config, self.load_config ) executor_backend = self.parallel_config.distributed_executor_backend executor_supports_async_sched = executor_backend in ( "mp", "uni", "external_launcher", ) if self.scheduler_config.async_scheduling: # Async scheduling explicitly enabled, hard fail any incompatibilities. # Currently, async scheduling only support eagle speculative # decoding. if self.speculative_config is not None: if ( self.speculative_config.method not in get_args(EagleModelTypes) and self.speculative_config.method != "draft_model" ): raise ValueError( "Currently, async scheduling is only supported " "with EAGLE/MTP/Draft Model kind of speculative decoding." ) if self.speculative_config.disable_padded_drafter_batch: raise ValueError( "Async scheduling is not compatible with " "disable_padded_drafter_batch=True." ) if not executor_supports_async_sched: raise ValueError( "Currently, async scheduling only supports `mp`, `uni`, or " "`external_launcher` distributed executor backend, but you chose " f"`{executor_backend}`." ) elif self.scheduler_config.async_scheduling is None: # Enable async scheduling unless there is an incompatible option. if ( self.speculative_config is not None and self.speculative_config.method not in get_args(EagleModelTypes) ): logger.warning_once( "Async scheduling not supported with %s-based " "speculative decoding and will be disabled.", self.speculative_config.method, scope="local", ) self.scheduler_config.async_scheduling = False elif ( self.speculative_config is not None and self.speculative_config.disable_padded_drafter_batch ): logger.warning_once( "Async scheduling is not compatible with " "disable_padded_drafter_batch=True and will be disabled.", scope="local", ) self.scheduler_config.async_scheduling = False elif not executor_supports_async_sched: logger.warning_once( "Async scheduling will be disabled because it is not supported " "with the `%s` distributed executor backend (only `mp`, `uni`, and " "`external_launcher` are supported).", executor_backend, scope="local", ) self.scheduler_config.async_scheduling = False else: self.scheduler_config.async_scheduling = True logger.info_once( "Asynchronous scheduling is %s.", "enabled" if self.scheduler_config.async_scheduling else "disabled", ) if self.parallel_config.disable_nccl_for_dp_synchronization is None: if self.scheduler_config.async_scheduling: if self.parallel_config.data_parallel_size > 1 and ( self.model_config is None or self.model_config.is_moe ): logger.info_once( "Disabling NCCL for DP synchronization " "when using async scheduling.", scope="local", ) self.parallel_config.disable_nccl_for_dp_synchronization = True else: self.parallel_config.disable_nccl_for_dp_synchronization = False from vllm.platforms import current_platform if ( self.model_config is not None and self.scheduler_config.enable_chunked_prefill and self.model_config.dtype == torch.float32 and current_platform.get_device_capability() == (7, 5) ): logger.warning_once( "Turing devices tensor cores do not support float32 matmul. " "To workaround this limitation, vLLM will set 'ieee' input " "precision for chunked prefill triton kernels." ) if self.model_config is not None and self.model_config.enforce_eager: logger.warning( "Enforce eager set, disabling torch.compile and CUDAGraphs. " "This is equivalent to setting -cc.mode=none -cc.cudagraph_mode=none" ) self.compilation_config.mode = CompilationMode.NONE self.compilation_config.cudagraph_mode = CUDAGraphMode.NONE if self.compilation_config.backend == "eager" or ( self.compilation_config.mode is not None and self.compilation_config.mode != CompilationMode.VLLM_COMPILE ): logger.warning( "Inductor compilation was disabled by user settings, " "optimizations settings that are only active during " "inductor compilation will be ignored." ) def has_blocked_weights(): if self.quant_config is not None: if hasattr(self.quant_config, "weight_block_size"): return self.quant_config.weight_block_size is not None elif hasattr(self.quant_config, "has_blocked_weights"): return self.quant_config.has_blocked_weights() return False # Enable quant_fp8 CUDA ops (TODO disable in follow up) # On H100 the CUDA kernel is faster than # native implementation # https://github.com/vllm-project/vllm/issues/25094 if has_blocked_weights(): custom_ops = self.compilation_config.custom_ops if "-quant_fp8" not in custom_ops: custom_ops.append("+quant_fp8") current_platform.apply_config_platform_defaults(self) if self.compilation_config.mode is None: if self.optimization_level > OptimizationLevel.O0: self.compilation_config.mode = CompilationMode.VLLM_COMPILE else: self.compilation_config.mode = CompilationMode.NONE if all(s not in self.compilation_config.custom_ops for s in ("all", "none")): if ( self.compilation_config.backend == "inductor" and self.compilation_config.mode != CompilationMode.NONE ): self.compilation_config.custom_ops.append("none") else: self.compilation_config.custom_ops.append("all") default_config = OPTIMIZATION_LEVEL_TO_CONFIG[self.optimization_level] self._apply_optimization_level_defaults(default_config) if self.kernel_config.enable_flashinfer_autotune is None: raise ValueError( "KernelConfig.enable_flashinfer_autotune must be set after applying " "optimization level defaults." ) if ( self.compilation_config.cudagraph_mode.requires_piecewise_compilation() and self.compilation_config.mode != CompilationMode.VLLM_COMPILE ): logger.info( "Cudagraph mode %s is not compatible with compilation mode %s." "Overriding to NONE.", self.compilation_config.cudagraph_mode, self.compilation_config.mode, ) self.compilation_config.cudagraph_mode = CUDAGraphMode.NONE # async tp is built on top of sequence parallelism # and requires it to be enabled. if self.compilation_config.pass_config.fuse_gemm_comms: self.compilation_config.pass_config.enable_sp = True if self.compilation_config.pass_config.enable_sp: if self.parallel_config.tensor_parallel_size == 1: logger.warning("Sequence Parallelism requires TP>1, disabling") self.compilation_config.pass_config.enable_sp = False self.compilation_config.pass_config.fuse_gemm_comms = False else: # Compute SP threshold early; disable if None (model too # small for SP to be beneficial). pass_config = self.compilation_config.pass_config if pass_config.sp_min_token_num is None: from vllm.compilation.passes.fusion.sequence_parallelism import ( get_sequence_parallelism_threshold, ) tp_size = self.parallel_config.tensor_parallel_size hidden_size = self.model_config.get_hidden_size() element_size = self.model_config.dtype.itemsize pass_config.sp_min_token_num = get_sequence_parallelism_threshold( hidden_size, tp_size, element_size ) if pass_config.sp_min_token_num is None: logger.warning( "Model hidden_size too small for the SP " "threshold heuristic, disabling. To force SP, " "set pass_config.sp_min_token_num manually." ) self.compilation_config.pass_config.enable_sp = False self.compilation_config.pass_config.fuse_gemm_comms = False from vllm.utils.torch_utils import HAS_OPAQUE_TYPE if HAS_OPAQUE_TYPE: # On torch >= 2.11 the hoisted OpaqueObject approach supersedes # fast_moe_cold_start, so force it off. self.compilation_config.fast_moe_cold_start = False elif self.compilation_config.fast_moe_cold_start is None: # resolve default behavior: try to be as safe as possible # this config is unsafe if any spec decoding draft model has a MOE. # We'll conservatively turn it off if we see spec decoding. self.compilation_config.fast_moe_cold_start = ( self.speculative_config is None ) self._set_max_num_scheduled_tokens() if current_platform.support_static_graph_mode(): # if cudagraph_mode has full cudagraphs, we need to check support if model_config := self.model_config: if ( self.compilation_config.cudagraph_mode.has_full_cudagraphs() and model_config.pooler_config is not None ): logger.warning_once( "Pooling models do not support full cudagraphs. " "Overriding cudagraph_mode to NONE." ) self.compilation_config.cudagraph_mode = CUDAGraphMode.NONE elif ( model_config.is_encoder_decoder and self.compilation_config.cudagraph_mode not in (CUDAGraphMode.NONE, CUDAGraphMode.FULL_DECODE_ONLY) ): logger.info_once( "Encoder-decoder models do not support %s. " "Overriding cudagraph_mode to FULL_DECODE_ONLY.", self.compilation_config.cudagraph_mode.name, ) self.compilation_config.cudagraph_mode = ( CUDAGraphMode.FULL_DECODE_ONLY ) # Check if KV connector requires PIECEWISE mode for CUDA graphs if ( self.kv_transfer_config is not None and self.kv_transfer_config.is_kv_transfer_instance and self.compilation_config.cudagraph_mode.has_full_cudagraphs() ): # Lazy import to avoid circular dependencies from vllm.distributed.kv_transfer.kv_connector.factory import ( KVConnectorFactory, ) connector_cls = KVConnectorFactory.get_connector_class( self.kv_transfer_config ) if connector_cls.requires_piecewise_for_cudagraph( self.kv_transfer_config.kv_connector_extra_config ): logger.warning_once( "KV connector %s requires PIECEWISE CUDA graph mode " "due to layerwise async operations that cannot be " "captured in CUDA graphs. " "Overriding cudagraph_mode from %s to PIECEWISE.", connector_cls.__name__, self.compilation_config.cudagraph_mode.name, ) self.compilation_config.cudagraph_mode = CUDAGraphMode.PIECEWISE # disable cudagraph when enforce eager execution if self.model_config is not None and self.model_config.enforce_eager: logger.info("Cudagraph is disabled under eager mode") self.compilation_config.cudagraph_mode = CUDAGraphMode.NONE # override related settings when enforce eager self.compilation_config.max_cudagraph_capture_size = 0 self.compilation_config.cudagraph_capture_sizes = [] else: self.compilation_config.cudagraph_num_of_warmups = 1 self._set_cudagraph_sizes() else: self.compilation_config.cudagraph_mode = CUDAGraphMode.NONE if self.cache_config.kv_sharing_fast_prefill: if ( self.speculative_config is not None and self.speculative_config.use_eagle() ): raise ValueError( "Fast prefill optimization for KV sharing is not " "compatible with EAGLE as EAGLE requires correct logits " "for all tokens while fast prefill gives incorrect logits " "for prompt tokens." ) logger.warning_once( "--kv-sharing-fast-prefill requires changes on model side for " "correctness and to realize prefill savings." ) # TODO: Move after https://github.com/vllm-project/vllm/pull/26847 lands self._set_compile_ranges() if ( self.model_config and self.model_config.architecture == "WhisperForConditionalGeneration" and os.environ.get("VLLM_WORKER_MULTIPROC_METHOD") != "spawn" ): logger.warning( "Whisper is known to have issues with " "forked workers. If startup is hanging, " "try setting 'VLLM_WORKER_MULTIPROC_METHOD' " "to 'spawn'." ) if ( self.kv_events_config is not None and self.kv_events_config.enable_kv_cache_events and not self.cache_config.enable_prefix_caching ): logger.warning( "KV cache events are on, but prefix caching is not enabled. " "Use --enable-prefix-caching to enable." ) if ( self.kv_events_config is not None and self.kv_events_config.publisher != "null" and not self.kv_events_config.enable_kv_cache_events ): logger.warning( "KV cache events are disabled, " "but the scheduler is configured to publish them. " "Modify KVEventsConfig.enable_kv_cache_events " "to True to enable." ) current_platform.check_and_update_config(self) # If DCP, ensure the block size is right. if self.parallel_config.decode_context_parallel_size > 1: if self.parallel_config.dcp_kv_cache_interleave_size > 1 and ( self.parallel_config.cp_kv_cache_interleave_size != self.parallel_config.dcp_kv_cache_interleave_size ): self.parallel_config.cp_kv_cache_interleave_size = ( self.parallel_config.dcp_kv_cache_interleave_size ) logger.warning_once( "cp_kv_cache_interleave_size is overridden by dcp_kv_cache" "_interleave_size. And dcp-kv-cache-interleave-size will be " "deprecated when PCP is fully supported." ) assert ( self.parallel_config.cp_kv_cache_interleave_size <= self.cache_config.block_size and self.cache_config.block_size % self.parallel_config.cp_kv_cache_interleave_size == 0 ), ( f"Block_size({self.cache_config.block_size}) should be greater " "than or equal to and divisible by cp_kv_cache_interleave_size " f"({self.parallel_config.cp_kv_cache_interleave_size})." ) # Do this after all the updates to compilation_config.mode effective_dp_size = ( self.parallel_config.data_parallel_size if self.model_config is None or self.model_config.is_moe else 1 ) self.compilation_config.set_splitting_ops_for_v1( all2all_backend=self.parallel_config.all2all_backend, data_parallel_size=effective_dp_size, ) if self.compilation_config.pass_config.enable_sp: # With pipeline parallelism or dynamo partitioning, # native rms norm tracing errors due to incorrect residual shape. # Use custom rms norm to unblock. In the future, # the pass will operate on higher-level IR to avoid the issue. # TODO: https://github.com/vllm-project/vllm/issues/27894 if self.compilation_config.mode != CompilationMode.VLLM_COMPILE: logger.warning( "Sequence parallelism is enabled, but running in wrong " "vllm compile mode: %s.", self.compilation_config.mode, ) is_fullgraph = ( self.compilation_config.use_inductor_graph_partition or len(self.compilation_config.splitting_ops) == 0 ) if self.parallel_config.pipeline_parallel_size > 1 or not is_fullgraph: if "-rms_norm" not in self.compilation_config.custom_ops: self.compilation_config.custom_ops.append("+rms_norm") else: regime = ( "Dynamo partition" if not is_fullgraph else "pipeline parallelism" ) logger.warning_once( "Sequence parallelism not supported with " "native rms_norm when using %s, " "this will likely lead to an error.", regime, ) # final check of cudagraph mode after all possible updates if current_platform.is_cuda_alike(): if ( self.compilation_config.cudagraph_mode.has_full_cudagraphs() and self.model_config is not None and not self.model_config.disable_cascade_attn and not self.compilation_config.cudagraph_mode.has_piecewise_cudagraphs() # noqa: E501 ): logger.warning_once( "No piecewise cudagraph for executing cascade attention." " Will fall back to eager execution if a batch runs " "into cascade attentions." ) if self.compilation_config.cudagraph_mode.requires_piecewise_compilation(): assert self.compilation_config.mode == CompilationMode.VLLM_COMPILE, ( "Compilation mode should be CompilationMode.VLLM_COMPILE " "when cudagraph_mode piecewise cudagraphs is used, " f"cudagraph_mode={self.compilation_config.cudagraph_mode}" ) from vllm.model_executor.layers.batch_invariant import vllm_is_batch_invariant if ( self.model_config and vllm_is_batch_invariant() and not self.model_config.disable_cascade_attn ): self.model_config.disable_cascade_attn = True logger.warning_once( "Disabling cascade attention when VLLM_BATCH_INVARIANT is enabled.", scope="local", ) if self.parallel_config.use_ubatching: a2a_backend = self.parallel_config.all2all_backend assert a2a_backend in [ "deepep_low_latency", "deepep_high_throughput", ], ( "Microbatching currently only supports the deepep_low_latency and " f"deepep_high_throughput all2all backend. {a2a_backend} is not " "supported. To fix use --all2all-backend=deepep_low_latency or " "--all2all-backend=deepep_high_throughput and install the DeepEP" " kernels." ) if not self.model_config.disable_cascade_attn: self.model_config.disable_cascade_attn = True logger.warning_once("Disabling cascade attention when DBO is enabled.") if not self.instance_id: self.instance_id = random_uuid()[:5] def is_ixserver_connector(kv_transfer_config) -> bool: if kv_transfer_config is not None and hasattr( kv_transfer_config, "kv_connector" ): connector = kv_transfer_config.kv_connector if isinstance(connector, str): connector_name = connector else: connector_name = getattr( type(connector), "__name__", str(connector) ) return "IxServer" in connector_name return False # Hybrid KV cache manager (HMA) runtime rules: # - Explicit enable (--no-disable-kv-cache-manager): error if runtime # disables it # - No preference: auto-disable for unsupported features (e.g. kv connector) # - Explicit disable (--disable-kv-cache-manager): always respect it need_disable_hybrid_kv_cache_manager = False # logger should only print warning message for hybrid models. As we # can't know whether the model is hybrid or not now, so we don't log # warning message here and will log it later. if not current_platform.support_hybrid_kv_cache(): # Hybrid KV cache manager is not supported on non-GPU platforms. need_disable_hybrid_kv_cache_manager = True if self.kv_events_config is not None: # Hybrid KV cache manager is not compatible with KV events. need_disable_hybrid_kv_cache_manager = True if ( self.model_config is not None and self.model_config.attention_chunk_size is not None ): if ( self.speculative_config is not None and self.speculative_config.use_eagle() ): # Hybrid KV cache manager is not yet supported with chunked # local attention + eagle. need_disable_hybrid_kv_cache_manager = True elif not envs.VLLM_ALLOW_CHUNKED_LOCAL_ATTN_WITH_HYBRID_KV_CACHE: logger.warning( "There is a latency regression when using chunked local" " attention with the hybrid KV cache manager. Disabling" " it, by default. To enable it, set the environment " "VLLM_ALLOW_CHUNKED_LOCAL_ATTN_WITH_HYBRID_KV_CACHE=1." ) # Hybrid KV cache manager is not yet supported with chunked # local attention. need_disable_hybrid_kv_cache_manager = True if self.scheduler_config.disable_hybrid_kv_cache_manager is None: # Default to disable HMA, but only if the user didn't express a preference. if self.kv_transfer_config is not None: if is_ixserver_connector(self.kv_transfer_config): pass # NOTE(Kuntai): turn HMA off for connector unless specifically enabled. else: need_disable_hybrid_kv_cache_manager = True logger.warning( "Turning off hybrid kv cache manager because " "`--kv-transfer-config` is set. This will reduce the " "performance of vLLM on LLMs with sliding window attention " "or Mamba attention. If you are a developer of kv connector" ", please consider supporting hybrid kv cache manager for " "your connector by making sure your connector is a subclass" " of `SupportsHMA` defined in kv_connector/v1/base.py and" " use --no-disable-hybrid-kv-cache-manager to start vLLM." ) self.scheduler_config.disable_hybrid_kv_cache_manager = ( need_disable_hybrid_kv_cache_manager ) else: self.scheduler_config.disable_hybrid_kv_cache_manager = ( need_disable_hybrid_kv_cache_manager ) elif ( self.scheduler_config.disable_hybrid_kv_cache_manager is False and need_disable_hybrid_kv_cache_manager ): raise ValueError( "Hybrid KV cache manager was explicitly enabled but is not " "supported in this configuration. Consider omitting the " "--no-disable-hybrid-kv-cache-manager flag to let vLLM decide" " automatically." ) if self.scheduler_config.disable_hybrid_kv_cache_manager is None: # Default to enable HMA if not explicitly disabled by user or logic above. self.scheduler_config.disable_hybrid_kv_cache_manager = False if self.cache_config.mamba_cache_mode == "align": assert ( self.cache_config.block_size <= self.scheduler_config.max_num_batched_tokens ), ( "In Mamba cache align mode, block_size " f"({self.cache_config.block_size}) must be <= " "max_num_batched_tokens " f"({self.scheduler_config.max_num_batched_tokens})." ) if self.scheduler_config.long_prefill_token_threshold > 0: assert ( self.scheduler_config.long_prefill_token_threshold >= self.cache_config.block_size ) assert not self.scheduler_config.disable_chunked_mm_input, ( "Chunked MM input is required because we need the flexibility to " "schedule a multiple of block_size tokens even if they are in the " "middle of a mm input" ) if self.compilation_config.debug_dump_path: self.compilation_config.debug_dump_path = ( self.compilation_config.debug_dump_path.absolute().expanduser() ) if envs.VLLM_DEBUG_DUMP_PATH is not None: env_path = Path(envs.VLLM_DEBUG_DUMP_PATH).absolute().expanduser() if self.compilation_config.debug_dump_path: logger.warning( "Config-specified debug dump path is overridden" " by VLLM_DEBUG_DUMP_PATH to %s", env_path, ) self.compilation_config.debug_dump_path = env_path def has_blocked_weights(): if self.quant_config is not None: if hasattr(self.quant_config, "weight_block_size"): return self.quant_config.weight_block_size is not None elif hasattr(self.quant_config, "has_blocked_weights"): return self.quant_config.has_blocked_weights() return False # Enable quant_fp8 CUDA ops (TODO disable in follow up) # On H100 the CUDA kernel is faster than # native implementation # https://github.com/vllm-project/vllm/issues/25094 if has_blocked_weights(): custom_ops = self.compilation_config.custom_ops if "-quant_fp8" not in custom_ops: custom_ops.append("+quant_fp8") # Handle the KV connector configs self._post_init_kv_transfer_config() def update_sizes_for_sequence_parallelism(self, possible_sizes: list) -> list: # remove the sizes that not multiple of tp_size when # enable sequence parallelism removed_sizes = [ size for size in possible_sizes if size % self.parallel_config.tensor_parallel_size != 0 ] if removed_sizes: logger.warning( "Batch sizes %s are removed because they are not " "multiple of tp_size %d when " "sequence parallelism is enabled", removed_sizes, self.parallel_config.tensor_parallel_size, ) return [ size for size in possible_sizes if size % self.parallel_config.tensor_parallel_size == 0 ] def _set_max_num_scheduled_tokens(self): """ In most cases, the scheduler may schedule a batch with as many tokens as the worker is configured to handle. However for some speculative decoding methods, the drafter model may insert additional slots into the batch when drafting. To account for this, we need to decrease the max_num_scheduled_tokens by an upper bound on the number of slots that can be added. """ if self.speculative_config is not None: scheduled_token_delta = ( self.speculative_config.max_num_new_slots_for_drafting * self.scheduler_config.max_num_seqs ) max_num_batched_tokens = self.scheduler_config.max_num_batched_tokens if self.scheduler_config.max_num_scheduled_tokens is None: self.scheduler_config.max_num_scheduled_tokens = ( max_num_batched_tokens - scheduled_token_delta ) max_num_scheduled_tokens = self.scheduler_config.max_num_scheduled_tokens if max_num_batched_tokens < max_num_scheduled_tokens + ( self.speculative_config.max_num_new_slots_for_drafting * self.scheduler_config.max_num_seqs ): raise ValueError( f"VllmConfig received max_num_scheduled_tokens but it does not have" " enough slots to support the speculative decoding settings." f" It should be greater by at least {scheduled_token_delta}, but" f" got {max_num_batched_tokens=} and {max_num_scheduled_tokens=}." ) def _set_cudagraph_sizes(self): """ vLLM defines the default candidate list of batch sizes for CUDA graph capture as: ```python max_graph_size = min(max_num_seqs * 2, 512) # 1, 2, 4, then multiples of 8 up to 256 and then multiples of 16 # up to max_graph_size cudagraph_capture_sizes = [1, 2, 4] + list(range(8, 256, 8)) + list( range(256, max_graph_size + 1, 16)) In the end, `vllm_config.compilation_config.cudagraph_capture_sizes` will be the final sizes to capture cudagraph (in ascending order). These sizes are used to capture and reuse CUDA graphs for performance-critical paths (e.g., decoding). Capturing enables significantly faster kernel dispatch by avoiding Python overhead. The list is then filtered based on `max_num_batched_tokens` (e.g., 8192 on most GPUs), which controls the total allowed number of tokens in a batch. Since each sequence may have a variable number of tokens, the maximum usable batch size will depend on actual sequence lengths. Example: With `max_num_batched_tokens = 8192`, and typical sequences averaging ~32 tokens, most practical batch sizes fall below 256. However, the system will still allow capture sizes up to 512 if shape and memory permit. Note: If users explicitly specify cudagraph capture sizes in the compilation config, those will override this default logic. At runtime: - If batch size <= one of the `cudagraph_capture_sizes`, the closest padded CUDA graph will be used. - If batch size > largest `cudagraph_capture_sizes`, cudagraph will not be used. """ if ( self.model_config is not None and not self.model_config.enforce_eager and self.compilation_config.cudagraph_mode != CUDAGraphMode.NONE ): # determine the initial max_cudagraph_capture_size max_cudagraph_capture_size = ( self.compilation_config.max_cudagraph_capture_size ) if max_cudagraph_capture_size is None: decode_query_len = 1 if ( self.speculative_config and self.speculative_config.num_speculative_tokens ): decode_query_len += self.speculative_config.num_speculative_tokens max_cudagraph_capture_size = min( self.scheduler_config.max_num_seqs * decode_query_len * 2, 512 ) max_num_tokens = self.scheduler_config.max_num_batched_tokens max_cudagraph_capture_size = min(max_num_tokens, max_cudagraph_capture_size) assert max_cudagraph_capture_size >= 1, ( "Maximum cudagraph size should be greater than or equal to 1 " "when using cuda graph." ) # determine the cudagraph_capture_sizes if self.compilation_config.cudagraph_capture_sizes is not None: assert len(self.compilation_config.cudagraph_capture_sizes) > 0, ( "cudagraph_capture_sizes should contain at least one element " "when using cuda graph." ) # de-duplicate the sizes provided by the config dedup_sizes = list(set(self.compilation_config.cudagraph_capture_sizes)) cudagraph_capture_sizes = [ i for i in dedup_sizes if i <= max_num_tokens ] # sort to make sure the sizes are in ascending order cudagraph_capture_sizes.sort() else: if self.performance_mode == "interactivity": # Fine-grained CUDA graphs at small batch sizes # for minimal padding overhead interactivity_max = min(max_cudagraph_capture_size, 32) cudagraph_capture_sizes = list(range(1, interactivity_max + 1)) else: cudagraph_capture_sizes = [ i for i in [1, 2, 4] if i <= max_cudagraph_capture_size ] if max_cudagraph_capture_size >= 8: # Step size 8 for small batch sizes, up to 256(not included) cudagraph_capture_sizes += list( range(8, min(max_cudagraph_capture_size + 1, 256), 8) ) if max_cudagraph_capture_size >= 256: # Step size 16 for larger batch sizes cudagraph_capture_sizes += list( range(256, max_cudagraph_capture_size + 1, 16) ) # de-duplicate and sort the sizes cudagraph_capture_sizes = sorted(set(cudagraph_capture_sizes)) if ( self.parallel_config.tensor_parallel_size > 1 and self.compilation_config.pass_config.enable_sp ): cudagraph_capture_sizes = self.update_sizes_for_sequence_parallelism( cudagraph_capture_sizes ) # user-specific compilation_config.max_cudagraph_capture_size get # truncated to valid_max_size when they are inconsistent. valid_max_size = ( cudagraph_capture_sizes[-1] if cudagraph_capture_sizes else 0 ) if ( self.compilation_config.max_cudagraph_capture_size is not None and self.compilation_config.max_cudagraph_capture_size != valid_max_size ): # raise error only when both two flags are user-specified # and they are inconsistent with each other if self.compilation_config.cudagraph_capture_sizes is not None: raise ValueError( "customized max_cudagraph_capture_size" f"(={self.compilation_config.max_cudagraph_capture_size}) " "should be consistent with the max value of " f"cudagraph_capture_sizes(={valid_max_size})" ) logger.warning( "Truncating max_cudagraph_capture_size to %d", valid_max_size, ) # always set the final max_cudagraph_capture_size self.compilation_config.max_cudagraph_capture_size = valid_max_size if self.compilation_config.cudagraph_capture_sizes is not None and len( cudagraph_capture_sizes ) < len(self.compilation_config.cudagraph_capture_sizes): # If users have specified capture sizes, we only need to # compare the lens before and after modification since the modified # list is only the subset of the original list. logger.warning( ( "cudagraph_capture_sizes specified in compilation_config" " %s is overridden by config %s" ), self.compilation_config.cudagraph_capture_sizes, cudagraph_capture_sizes, ) # always write back the final sizes self.compilation_config.cudagraph_capture_sizes = cudagraph_capture_sizes else: # no cudagraph in use self.compilation_config.max_cudagraph_capture_size = 0 self.compilation_config.cudagraph_capture_sizes = [] # complete the remaining process. self.compilation_config.post_init_cudagraph_sizes() def _set_compile_ranges(self): """ Set the compile ranges for the compilation config. """ compilation_config = self.compilation_config computed_compile_ranges_split_points = [] # The upper bound of the compile ranges is the max_num_batched_tokens. compile_range_end = self.scheduler_config.max_num_batched_tokens if compile_range_end is not None: computed_compile_ranges_split_points.append(compile_range_end) # Add the compile ranges for flashinfer if compilation_config.pass_config.fuse_allreduce_rms: tp_size = self.parallel_config.tensor_parallel_size max_size = compilation_config.pass_config.flashinfer_max_size(tp_size) if max_size is not None: max_token_num = max_size // ( self.model_config.get_hidden_size() * self.model_config.dtype.itemsize ) if compile_range_end is not None and max_token_num < compile_range_end: computed_compile_ranges_split_points.append(max_token_num) else: logger.debug( "Max num batched tokens below allreduce-rms fusion threshold, " "allreduce-rms fusion will be enabled for all num_tokens." ) # Add the compile ranges for sequence parallelism if compilation_config.pass_config.enable_sp: pass_config = compilation_config.pass_config # Calculate min_token_num if not explicitly provided # User override works regardless of hidden_size if pass_config.sp_min_token_num is None: from vllm.compilation.passes.fusion.sequence_parallelism import ( get_sequence_parallelism_threshold, ) tp_size = self.parallel_config.tensor_parallel_size hidden_size = self.model_config.get_hidden_size() element_size = self.model_config.dtype.itemsize pass_config.sp_min_token_num = get_sequence_parallelism_threshold( hidden_size, tp_size, element_size ) min_token_num = pass_config.sp_min_token_num max_num_batched_tokens = self.scheduler_config.max_num_batched_tokens if min_token_num is not None and ( max_num_batched_tokens is not None and min_token_num < max_num_batched_tokens and min_token_num > 1 ): # Add split point at min_token_num - 1 to ensure SP applies # starting from min_token_num # This creates ranges: [1, min-1] (no SP), [min, max] (SP applies) computed_compile_ranges_split_points.append(min_token_num - 1) if compilation_config.pass_config.fuse_rope_kvcache: max_token_num = ( compilation_config.pass_config.rope_kvcache_fusion_max_token_num ) if max_token_num is not None: if compile_range_end is not None and max_token_num < compile_range_end: computed_compile_ranges_split_points.append(max_token_num) else: logger.debug( "Max num batched tokens below rope+kvcache fusion threshold, " "rope+kvcache fusion enabled for num_tokens <= %d.", compile_range_end, ) if compilation_config.compile_ranges_split_points is not None: for x in compilation_config.compile_ranges_split_points: assert isinstance(x, int) assert x > 0, f"Invalid compile range split point: {x}" if compile_range_end is not None and x < compile_range_end and x > 1: computed_compile_ranges_split_points.append(x) compilation_config.compile_ranges_split_points = sorted( computed_compile_ranges_split_points ) def try_verify_and_update_config(self): if self.model_config is None: return # Avoid running try_verify_and_update_config multiple times if getattr(self.model_config, "config_updated", False): return self.model_config.config_updated = True architecture = self.model_config.architecture if architecture is None: return from vllm.model_executor.models.config import ( MODELS_CONFIG_MAP, HybridAttentionMambaModelConfig, ) cls = MODELS_CONFIG_MAP.get(architecture, None) if cls is not None: cls.verify_and_update_config(self) if self.model_config.is_hybrid: HybridAttentionMambaModelConfig.verify_and_update_config(self) if self.model_config.convert_type == "classify": # Maybe convert ForCausalLM into ForSequenceClassification model. from vllm.model_executor.models.adapters import SequenceClassificationConfig SequenceClassificationConfig.verify_and_update_config(self) if hasattr(self.model_config, "model_weights") and is_runai_obj_uri( self.model_config.model_weights ): if self.load_config.load_format == "auto": logger.info( "Detected Run:ai model config. " "Overriding `load_format` to 'runai_streamer'" ) self.load_config.load_format = "runai_streamer" elif self.load_config.load_format not in ( "runai_streamer", "runai_streamer_sharded", ): raise ValueError( f"To load a model from S3, 'load_format' " f"must be 'runai_streamer' or 'runai_streamer_sharded', " f"but got '{self.load_config.load_format}'. " f"Model: {self.model_config.model}" ) def compile_debug_dump_path(self) -> Path | None: """Returns a rank-aware path for dumping torch.compile debug information. """ if self.compilation_config.debug_dump_path is None: return None tp_rank = self.parallel_config.rank dp_rank = self.parallel_config.data_parallel_index append_path = f"rank_{tp_rank}_dp_{dp_rank}" path = self.compilation_config.debug_dump_path / append_path return path def __str__(self): return ( f"model={self.model_config.model!r}, " f"speculative_config={self.speculative_config!r}, " f"tokenizer={self.model_config.tokenizer!r}, " f"skip_tokenizer_init={self.model_config.skip_tokenizer_init}, " f"tokenizer_mode={self.model_config.tokenizer_mode}, " f"revision={self.model_config.revision}, " f"tokenizer_revision={self.model_config.tokenizer_revision}, " f"trust_remote_code={self.model_config.trust_remote_code}, " f"dtype={self.model_config.dtype}, " f"max_seq_len={self.model_config.max_model_len}, " f"download_dir={self.load_config.download_dir!r}, " f"load_format={self.load_config.load_format}, " f"tensor_parallel_size={self.parallel_config.tensor_parallel_size}, " # noqa f"pipeline_parallel_size={self.parallel_config.pipeline_parallel_size}, " # noqa f"data_parallel_size={self.parallel_config.data_parallel_size}, " # noqa f"disable_custom_all_reduce={self.parallel_config.disable_custom_all_reduce}, " # noqa f"quantization={self.model_config.quantization}, " f"enforce_eager={self.model_config.enforce_eager}, " f"enable_return_routed_experts={self.model_config.enable_return_routed_experts}, " # noqa f"kv_cache_dtype={self.cache_config.cache_dtype}, " f"device_config={self.device_config.device}, " f"structured_outputs_config={self.structured_outputs_config!r}, " f"observability_config={self.observability_config!r}, " f"seed={self.model_config.seed}, " f"served_model_name={self.model_config.served_model_name}, " f"enable_prefix_caching={self.cache_config.enable_prefix_caching}, " f"enable_chunked_prefill={self.scheduler_config.enable_chunked_prefill}, " # noqa f"pooler_config={self.model_config.pooler_config!r}, " f"compilation_config={self.compilation_config!r}" ) @model_validator(mode="after") def validate_mamba_block_size(self) -> "VllmConfig": if self.model_config is None: return self mamba_block_size_is_set = ( self.cache_config.mamba_block_size is not None and self.cache_config.mamba_block_size != self.model_config.max_model_len ) if mamba_block_size_is_set and not self.cache_config.enable_prefix_caching: raise ValueError( "--mamba-block-size can only be set with --enable-prefix-caching" ) return self _current_vllm_config: VllmConfig | None = None _current_prefix: str | None = None @contextmanager def set_current_vllm_config( vllm_config: VllmConfig, check_compile=False, prefix: str | None = None ): """ Temporarily set the current vLLM config. Used during model initialization. We save the current vLLM config in a global variable, so that all modules can access it, e.g. custom ops can access the vLLM config to determine how to dispatch. """ global _current_vllm_config, _current_prefix old_vllm_config = _current_vllm_config old_prefix = _current_prefix from vllm.compilation.counter import compilation_counter num_models_seen = compilation_counter.num_models_seen try: # Clear the compilation config cache when context changes. # This is needed since the old config may have been accessed # and cached before the new config is set. get_cached_compilation_config.cache_clear() _current_vllm_config = vllm_config _current_prefix = prefix yield except Exception: raise else: if check_compile: vllm_config.compilation_config.custom_op_log_check() if ( check_compile and vllm_config.compilation_config.mode == CompilationMode.VLLM_COMPILE and compilation_counter.num_models_seen == num_models_seen ): # If the model supports compilation, # compilation_counter.num_models_seen should be increased # by at least 1. # If it is not increased, it means the model does not support # compilation (does not have @support_torch_compile decorator). logger.warning( "`torch.compile` is turned on, but the model %s" " does not support it. Please open an issue on GitHub" " if you want it to be supported.", vllm_config.model_config.model, ) finally: _current_vllm_config = old_vllm_config _current_prefix = old_prefix # Clear the compilation config cache when context changes get_cached_compilation_config.cache_clear() @lru_cache(maxsize=1) def get_cached_compilation_config(): """Cache config to avoid repeated calls to get_current_vllm_config()""" return get_current_vllm_config().compilation_config def get_current_vllm_config() -> VllmConfig: if _current_vllm_config is None: raise AssertionError( "Current vLLM config is not set. This typically means " "get_current_vllm_config() was called outside of a " "set_current_vllm_config() context, or a CustomOp was instantiated " "at module import time or model forward time when config is not set. " "For tests that directly test custom ops/modules, use the " "'default_vllm_config' pytest fixture from tests/conftest.py." ) return _current_vllm_config def get_current_vllm_config_or_none() -> VllmConfig | None: return _current_vllm_config T = TypeVar("T") def get_layers_from_vllm_config( vllm_config: VllmConfig, layer_type: type[T], layer_names: list[str] | None = None, ) -> dict[str, T]: """ Get layers from the vLLM config. Args: vllm_config: The vLLM config. layer_type: The type of the layer to get. layer_names: The names of the layers to get. If None, return all layers. """ if layer_names is None: layer_names = list(vllm_config.compilation_config.static_forward_context.keys()) forward_context = vllm_config.compilation_config.static_forward_context return { layer_name: forward_context[layer_name] for layer_name in layer_names if isinstance(forward_context[layer_name], layer_type) }