# Copyright 2023-2024 SGLang Team # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. # ============================================================================== """The arguments of the server.""" from __future__ import annotations import argparse import dataclasses import importlib import importlib.util import json import logging import os import random import tempfile from typing import Any, Callable, Dict, List, Literal, Optional, Union from sglang.srt.connector import ConnectorType from sglang.srt.environ import envs from sglang.srt.function_call.function_call_parser import FunctionCallParser from sglang.srt.layers.attention.fla.chunk_delta_h import CHUNK_SIZE as FLA_CHUNK_SIZE from sglang.srt.lora.lora_registry import LoRARef from sglang.srt.parser.reasoning_parser import ReasoningParser from sglang.srt.utils.common import ( LORA_TARGET_ALL_MODULES, SUPPORTED_LORA_TARGET_MODULES, configure_ipv6, cpu_has_amx_support, get_bool_env_var, get_device, get_device_memory_capacity, get_device_name, get_device_sm, get_free_port, get_int_env_var, get_quantization_config, is_blackwell_supported, is_cpu, is_cuda, is_flashinfer_available, is_hip, is_hopper_with_cuda_12_3, is_no_spec_infer_or_topk_one, is_npu, is_remote_url, is_sm90_supported, is_sm100_supported, is_sm120_supported, is_triton_kernels_available, is_valid_ipv6_address, json_list_type, nullable_str, parse_connector_type, torch_release, wait_port_available, xpu_has_xmx_support, ) from sglang.srt.utils.hf_transformers_utils import check_gguf_file from sglang.utils import is_in_ci logger = logging.getLogger(__name__) # Define constants DEFAULT_UVICORN_ACCESS_LOG_EXCLUDE_PREFIXES = () SAMPLING_BACKEND_CHOICES = {"flashinfer", "pytorch", "ascend"} LOAD_FORMAT_CHOICES = [ "auto", "pt", "safetensors", "npcache", "dummy", "sharded_state", "gguf", "bitsandbytes", "layered", "flash_rl", "remote", "remote_instance", "fastsafetensors", "private", ] QUANTIZATION_CHOICES = [ "awq", "fp8", "mxfp8", "gptq", "marlin", "gptq_marlin", "awq_marlin", "bitsandbytes", "gguf", "modelopt", "modelopt_fp8", "modelopt_fp4", "petit_nvfp4", "w8a8_int8", "w8a8_fp8", "moe_wna16", "qoq", "w4afp8", "mxfp4", "auto-round", "compressed-tensors", # for Ktransformers "modelslim", # for NPU "quark_int4fp8_moe", ] SPECULATIVE_DRAFT_MODEL_QUANTIZATION_CHOICES = [*QUANTIZATION_CHOICES, "unquant"] ATTENTION_BACKEND_CHOICES = [ # Common "triton", "torch_native", "flex_attention", "nsa", # NVIDIA specific "cutlass_mla", "fa3", "fa4", "flashinfer", "flashmla", "trtllm_mla", "trtllm_mha", "dual_chunk_flash_attn", # AMD specific "aiter", "wave", # Other platforms "intel_amx", "ascend", "intel_xpu", ] LORA_BACKEND_CHOICES = ["triton", "csgmv", "ascend", "torch_native"] DISAGG_TRANSFER_BACKEND_CHOICES = ["mooncake", "nixl", "ascend", "fake", "mori"] ENCODER_TRANSFER_BACKEND_CHOICES = ["zmq_to_scheduler", "zmq_to_tokenizer", "mooncake"] GRAMMAR_BACKEND_CHOICES = ["xgrammar", "outlines", "llguidance", "none"] DETERMINISTIC_ATTENTION_BACKEND_CHOICES = ["flashinfer", "fa3", "triton"] RADIX_SUPPORTED_DETERMINISTIC_ATTENTION_BACKEND = ["fa3", "triton"] NSA_PREFILL_CP_SPLIT_CHOICES = ["in-seq-split", "round-robin-split"] DEFAULT_LORA_EVICTION_POLICY = "lru" NSA_CHOICES = [ "flashmla_sparse", "flashmla_kv", "flashmla_auto", "fa3", "tilelang", "aiter", "trtllm", ] RADIX_EVICTION_POLICY_CHOICES = ["lru", "lfu"] RL_ON_POLICY_TARGET_CHOICES = ["fsdp"] MOE_RUNNER_BACKEND_CHOICES = [ "auto", "deep_gemm", "triton", "triton_kernel", "flashinfer_trtllm", "flashinfer_cutlass", "flashinfer_mxfp4", "flashinfer_cutedsl", "cutlass", ] MOE_A2A_BACKEND_CHOICES = [ "none", "deepep", "mooncake", "mori", "ascend_fuseep", "flashinfer", ] FP8_GEMM_RUNNER_BACKEND_CHOICES = [ "auto", "deep_gemm", "flashinfer_trtllm", "flashinfer_cutlass", "flashinfer_deepgemm", "cutlass", "triton", "aiter", ] FP4_GEMM_RUNNER_BACKEND_CHOICES = [ "auto", "flashinfer_cudnn", "flashinfer_cutlass", "flashinfer_trtllm", ] MAMBA_SSM_DTYPE_CHOICES = ["float32", "bfloat16", "float16"] MAMBA_SCHEDULER_STRATEGY_CHOICES = ["auto", "no_buffer", "extra_buffer"] MAMBA_BACKEND_CHOICES = ["triton", "flashinfer"] LINEAR_ATTN_KERNEL_BACKEND_CHOICES = ["triton", "cutedsl", "flashinfer"] # Allow external code to add more choices def add_load_format_choices(choices): LOAD_FORMAT_CHOICES.extend(choices) def add_quantization_method_choices(choices): QUANTIZATION_CHOICES.extend(choices) def add_attention_backend_choices(choices): ATTENTION_BACKEND_CHOICES.extend(choices) def add_disagg_transfer_backend_choices(choices): DISAGG_TRANSFER_BACKEND_CHOICES.extend(choices) def add_grammar_backend_choices(choices): GRAMMAR_BACKEND_CHOICES.extend(choices) def add_moe_runner_backend_choices(choices): MOE_RUNNER_BACKEND_CHOICES.extend(choices) def add_fp8_gemm_runner_backend_choices(choices): FP8_GEMM_RUNNER_BACKEND_CHOICES.extend(choices) def add_fp4_gemm_runner_backend_choices(choices): FP4_GEMM_RUNNER_BACKEND_CHOICES.extend(choices) def add_deterministic_attention_backend_choices(choices): DETERMINISTIC_ATTENTION_BACKEND_CHOICES.extend(choices) def add_radix_supported_deterministic_attention_backend_choices(choices): RADIX_SUPPORTED_DETERMINISTIC_ATTENTION_BACKEND.extend(choices) def add_radix_eviction_policy_choices(choices): RADIX_EVICTION_POLICY_CHOICES.extend(choices) def add_rl_on_policy_target_choices(choices): RL_ON_POLICY_TARGET_CHOICES.extend(choices) def add_mamba_ssm_dtype_choices(choices): MAMBA_SSM_DTYPE_CHOICES.extend(choices) @dataclasses.dataclass class ServerArgs: """ The arguments of the server. NOTE: When you add new arguments, please make sure the order in this class definition the same as the order in the the function `ServerArgs.add_cli_args`. Please follow the existing style to group the new arguments into related groups or create new groups. """ # Model and tokenizer model_path: str tokenizer_path: Optional[str] = None tokenizer_mode: str = "auto" tokenizer_worker_num: int = 1 skip_tokenizer_init: bool = False load_format: str = "auto" model_loader_extra_config: str = "{}" trust_remote_code: bool = False context_length: Optional[int] = None is_embedding: bool = False enable_multimodal: Optional[bool] = None revision: Optional[str] = None model_impl: str = "auto" # HTTP server host: str = "127.0.0.1" port: int = 30000 fastapi_root_path: str = "" grpc_mode: bool = False skip_server_warmup: bool = False warmups: Optional[str] = None nccl_port: Optional[int] = None checkpoint_engine_wait_weights_before_ready: bool = False # SSL/TLS ssl_keyfile: Optional[str] = None ssl_certfile: Optional[str] = None ssl_ca_certs: Optional[str] = None ssl_keyfile_password: Optional[str] = None enable_ssl_refresh: bool = False # Quantization and data type dtype: str = "auto" quantization: Optional[str] = None quantization_param_path: Optional[str] = None kv_cache_dtype: str = "auto" enable_fp32_lm_head: bool = False modelopt_quant: Optional[Union[str, Dict]] = None modelopt_checkpoint_restore_path: Optional[str] = None modelopt_checkpoint_save_path: Optional[str] = None modelopt_export_path: Optional[str] = None quantize_and_serve: bool = False rl_quant_profile: Optional[str] = None # For flash_rl load format # Memory and scheduling mem_fraction_static: Optional[float] = None max_running_requests: Optional[int] = None max_queued_requests: Optional[int] = None max_total_tokens: Optional[int] = None chunked_prefill_size: Optional[int] = None enable_dynamic_chunking: bool = False max_prefill_tokens: int = 16384 prefill_max_requests: Optional[int] = None schedule_policy: str = "fcfs" enable_priority_scheduling: bool = False disable_priority_preemption: bool = False default_priority_value: Optional[int] = None abort_on_priority_when_disabled: bool = False schedule_low_priority_values_first: bool = False priority_scheduling_preemption_threshold: int = 10 schedule_conservativeness: float = 1.0 page_size: Optional[int] = None swa_full_tokens_ratio: float = 0.8 disable_hybrid_swa_memory: bool = False radix_eviction_policy: str = "lru" enable_prefill_delayer: bool = False prefill_delayer_max_delay_passes: int = 30 prefill_delayer_token_usage_low_watermark: Optional[float] = None prefill_delayer_forward_passes_buckets: Optional[List[float]] = None prefill_delayer_wait_seconds_buckets: Optional[List[float]] = None # Runtime options device: Optional[str] = None tp_size: int = 1 pp_size: int = 1 pp_max_micro_batch_size: Optional[int] = None pp_async_batch_depth: int = 0 stream_interval: int = 1 stream_output: bool = False enable_streaming_session: bool = False random_seed: Optional[int] = None constrained_json_whitespace_pattern: Optional[str] = None constrained_json_disable_any_whitespace: bool = False watchdog_timeout: float = 300 soft_watchdog_timeout: Optional[float] = None dist_timeout: Optional[int] = None # timeout for torch.distributed download_dir: Optional[str] = None model_checksum: Optional[str] = None base_gpu_id: int = 0 gpu_id_step: int = 1 sleep_on_idle: bool = False custom_sigquit_handler: Optional[Callable] = None # Logging log_level: str = "info" log_level_http: Optional[str] = None log_requests: bool = False log_requests_level: int = 2 log_requests_format: str = "text" log_requests_target: Optional[List[str]] = None uvicorn_access_log_exclude_prefixes: List[str] = dataclasses.field( default_factory=lambda: list(DEFAULT_UVICORN_ACCESS_LOG_EXCLUDE_PREFIXES) ) crash_dump_folder: Optional[str] = None show_time_cost: bool = False enable_metrics: bool = False enable_metrics_for_all_schedulers: bool = False tokenizer_metrics_custom_labels_header: str = "x-custom-labels" tokenizer_metrics_allowed_custom_labels: Optional[List[str]] = None extra_metric_labels: Optional[Dict[str, str]] = None bucket_time_to_first_token: Optional[List[float]] = None bucket_inter_token_latency: Optional[List[float]] = None bucket_e2e_request_latency: Optional[List[float]] = None collect_tokens_histogram: bool = False prompt_tokens_buckets: Optional[List[str]] = None generation_tokens_buckets: Optional[List[str]] = None gc_warning_threshold_secs: float = 0.0 decode_log_interval: int = 40 enable_request_time_stats_logging: bool = False kv_events_config: Optional[str] = None enable_trace: bool = False otlp_traces_endpoint: str = "localhost:4317" # RequestMetricsExporter configuration export_metrics_to_file: bool = False export_metrics_to_file_dir: Optional[str] = None # API related api_key: Optional[str] = None admin_api_key: Optional[str] = None served_model_name: Optional[str] = None weight_version: str = "default" chat_template: Optional[str] = None hf_chat_template_name: Optional[str] = None completion_template: Optional[str] = None file_storage_path: str = "sglang_storage" enable_cache_report: bool = False reasoning_parser: Optional[str] = None tool_call_parser: Optional[str] = None tool_server: Optional[str] = None sampling_defaults: str = "model" # Data parallelism dp_size: int = 1 load_balance_method: str = "auto" attn_cp_size: int = 1 moe_dp_size: int = 1 # Multi-node distributed serving dist_init_addr: Optional[str] = None nnodes: int = 1 node_rank: int = 0 # Model override args in JSON json_model_override_args: str = "{}" preferred_sampling_params: Optional[str] = None # LoRA enable_lora: Optional[bool] = None enable_lora_overlap_loading: Optional[bool] = None max_lora_rank: Optional[int] = None lora_target_modules: Optional[Union[set[str], List[str]]] = None lora_paths: Optional[ Union[dict[str, str], List[dict[str, str]], List[str], List[LoRARef]] ] = None max_loaded_loras: Optional[int] = None max_loras_per_batch: int = 8 lora_eviction_policy: str = "lru" lora_backend: str = "csgmv" max_lora_chunk_size: Optional[int] = 16 # Kernel backend attention_backend: Optional[str] = None decode_attention_backend: Optional[str] = None prefill_attention_backend: Optional[str] = None sampling_backend: Optional[str] = None grammar_backend: Optional[str] = None mm_attention_backend: Optional[str] = None fp8_gemm_runner_backend: str = "auto" fp4_gemm_runner_backend: str = "flashinfer_cutlass" nsa_prefill_backend: Optional[str] = ( None # None = auto-detect based on hardware/kv_cache_dtype ) nsa_decode_backend: Optional[str] = ( None # auto-detect based on hardware/kv_cache_dtype ) disable_flashinfer_autotune: bool = False mamba_backend: str = "triton" # Speculative decoding speculative_algorithm: Optional[str] = None speculative_draft_model_path: Optional[str] = None speculative_draft_model_revision: Optional[str] = None speculative_draft_load_format: Optional[str] = None speculative_num_steps: Optional[int] = None speculative_eagle_topk: Optional[int] = None speculative_num_draft_tokens: Optional[int] = None speculative_accept_threshold_single: float = 1.0 speculative_accept_threshold_acc: float = 1.0 speculative_token_map: Optional[str] = None speculative_attention_mode: str = "prefill" speculative_draft_attention_backend: Optional[str] = None speculative_moe_runner_backend: Optional[str] = None speculative_moe_a2a_backend: Optional[str] = None speculative_draft_model_quantization: Optional[str] = None # Speculative decoding (ngram) speculative_ngram_min_match_window_size: int = 1 speculative_ngram_max_match_window_size: int = 12 speculative_ngram_min_bfs_breadth: int = 1 speculative_ngram_max_bfs_breadth: int = 10 speculative_ngram_match_type: Literal["BFS", "PROB"] = "BFS" speculative_ngram_branch_length: int = 18 speculative_ngram_capacity: int = 10 * 1000 * 1000 enable_multi_layer_eagle: bool = False # Expert parallelism ep_size: int = 1 moe_a2a_backend: Literal[ "none", "deepep", "mooncake", "mori", "ascend_fuseep", "flashinfer" ] = "none" moe_runner_backend: str = "auto" flashinfer_mxfp4_moe_precision: Literal["default", "bf16"] = "default" enable_flashinfer_allreduce_fusion: bool = False enable_aiter_allreduce_fusion: bool = False deepep_mode: Literal["auto", "normal", "low_latency"] = "auto" ep_num_redundant_experts: int = 0 ep_dispatch_algorithm: Optional[Literal["static", "dynamic", "fake"]] = None init_expert_location: str = "trivial" enable_eplb: bool = False eplb_algorithm: str = "auto" eplb_rebalance_num_iterations: int = 1000 eplb_rebalance_layers_per_chunk: Optional[int] = None eplb_min_rebalancing_utilization_threshold: float = 1.0 expert_distribution_recorder_mode: Optional[ Literal["stat", "stat_approx", "per_pass", "per_token"] ] = None expert_distribution_recorder_buffer_size: Optional[int] = None enable_expert_distribution_metrics: bool = False deepep_config: Optional[str] = None moe_dense_tp_size: Optional[int] = None elastic_ep_backend: Literal[None, "mooncake"] = None enable_elastic_expert_backup: bool = False mooncake_ib_device: Optional[str] = None # Mamba cache max_mamba_cache_size: Optional[int] = None mamba_ssm_dtype: Optional[str] = None mamba_full_memory_ratio: float = 0.9 mamba_scheduler_strategy: str = "auto" mamba_track_interval: int = 256 linear_attn_backend: str = "triton" linear_attn_decode_backend: Optional[str] = None linear_attn_prefill_backend: Optional[str] = None # Hierarchical cache enable_hierarchical_cache: bool = False hicache_ratio: float = 2.0 hicache_size: int = 0 hicache_write_policy: str = "write_through" hicache_io_backend: str = "kernel" hicache_mem_layout: str = "layer_first" disable_hicache_numa_detect: bool = False hicache_storage_backend: Optional[str] = None hicache_storage_prefetch_policy: str = "best_effort" hicache_storage_backend_extra_config: Optional[str] = None # Hierarchical sparse attention hierarchical_sparse_attention_extra_config: Optional[str] = None # LMCache enable_lmcache: bool = False # Ktransformers/AMX expert parallelism kt_weight_path: Optional[str] = None kt_method: Optional[str] = None kt_cpuinfer: Optional[int] = None kt_threadpool_count: Optional[int] = None kt_num_gpu_experts: Optional[int] = None kt_max_deferred_experts_per_token: Optional[int] = None # Diffusion LLM dllm_algorithm: Optional[str] = None dllm_algorithm_config: Optional[str] = None # Double Sparsity enable_double_sparsity: bool = False ds_channel_config_path: Optional[str] = None ds_heavy_channel_num: int = 32 ds_heavy_token_num: int = 256 ds_heavy_channel_type: str = "qk" ds_sparse_decode_threshold: int = 4096 # Offloading cpu_offload_gb: int = 0 offload_group_size: int = -1 offload_num_in_group: int = 1 offload_prefetch_step: int = 1 offload_mode: str = "cpu" # Scoring configuration # Delimiter token ID used to combine Query and Items into a single sequence for multi-item scoring. # Format: QueryItem1Item2... # This enables efficient batch processing of multiple items against a single query. multi_item_scoring_delimiter: Optional[Union[int]] = None # Optimization/debug options disable_radix_cache: bool = False cuda_graph_max_bs: Optional[int] = None cuda_graph_bs: Optional[List[int]] = None disable_cuda_graph: bool = False disable_cuda_graph_padding: bool = False enable_profile_cuda_graph: bool = False enable_cudagraph_gc: bool = False enable_layerwise_nvtx_marker: bool = False enable_nccl_nvls: bool = False enable_symm_mem: bool = False disable_flashinfer_cutlass_moe_fp4_allgather: bool = False enable_tokenizer_batch_encode: bool = False disable_tokenizer_batch_decode: bool = False disable_outlines_disk_cache: bool = False disable_custom_all_reduce: bool = False enable_mscclpp: bool = False enable_torch_symm_mem: bool = False disable_overlap_schedule: bool = False enable_mixed_chunk: bool = False enable_dp_attention: bool = False enable_dp_lm_head: bool = False enable_two_batch_overlap: bool = False enable_single_batch_overlap: bool = False tbo_token_distribution_threshold: float = 0.48 enable_torch_compile: bool = False disable_piecewise_cuda_graph: bool = False enforce_piecewise_cuda_graph: bool = False enable_torch_compile_debug_mode: bool = False torch_compile_max_bs: int = 32 piecewise_cuda_graph_max_tokens: Optional[int] = None piecewise_cuda_graph_tokens: Optional[List[int]] = None piecewise_cuda_graph_compiler: str = "eager" torchao_config: str = "" enable_nan_detection: bool = False enable_p2p_check: bool = False triton_attention_reduce_in_fp32: bool = False triton_attention_num_kv_splits: int = 8 triton_attention_split_tile_size: Optional[int] = None num_continuous_decode_steps: int = 1 delete_ckpt_after_loading: bool = False enable_memory_saver: bool = False enable_weights_cpu_backup: bool = False enable_draft_weights_cpu_backup: bool = False allow_auto_truncate: bool = False enable_custom_logit_processor: bool = False flashinfer_mla_disable_ragged: bool = False disable_shared_experts_fusion: bool = False disable_chunked_prefix_cache: bool = False disable_fast_image_processor: bool = False keep_mm_feature_on_device: bool = False enable_return_hidden_states: bool = False enable_return_routed_experts: bool = False scheduler_recv_interval: int = 1 numa_node: Optional[List[int]] = None enable_deterministic_inference: bool = False rl_on_policy_target: Optional[str] = None enable_attn_tp_input_scattered: bool = False # Context parallelism used in the long sequence prefill phase of DeepSeek v3.2 enable_nsa_prefill_context_parallel: bool = False nsa_prefill_cp_mode: str = "round-robin-split" enable_fused_qk_norm_rope: bool = False enable_precise_embedding_interpolation: bool = False enable_fused_moe_sum_all_reduce: bool = False # Dynamic batch tokenizer enable_dynamic_batch_tokenizer: bool = False dynamic_batch_tokenizer_batch_size: int = 32 dynamic_batch_tokenizer_batch_timeout: float = 0.002 # Debug tensor dumps debug_tensor_dump_output_folder: Optional[str] = None # None means dump all layers. debug_tensor_dump_layers: Optional[List[int]] = None # TODO(guoyuhong): clean the old dumper code. debug_tensor_dump_input_file: Optional[str] = None debug_tensor_dump_inject: bool = False # PD disaggregation: can be "null" (not disaggregated), "prefill" (prefill-only), or "decode" (decode-only) disaggregation_mode: Literal["null", "prefill", "decode"] = "null" disaggregation_transfer_backend: str = "mooncake" disaggregation_bootstrap_port: int = 8998 disaggregation_ib_device: Optional[str] = None disaggregation_decode_enable_offload_kvcache: bool = False num_reserved_decode_tokens: int = 512 # used for decode kv cache offload in PD # FIXME: hack to reduce ITL when decode bs is small disaggregation_decode_polling_interval: int = 1 # Encode prefill disaggregation encoder_only: bool = False language_only: bool = False encoder_transfer_backend: str = ENCODER_TRANSFER_BACKEND_CHOICES[0] encoder_urls: List[str] = dataclasses.field(default_factory=list) # For model weight update and weight loading custom_weight_loader: Optional[List[str]] = None weight_loader_disable_mmap: bool = False remote_instance_weight_loader_seed_instance_ip: Optional[str] = None remote_instance_weight_loader_seed_instance_service_port: Optional[int] = None remote_instance_weight_loader_send_weights_group_ports: Optional[List[int]] = None remote_instance_weight_loader_backend: Literal["transfer_engine", "nccl"] = "nccl" remote_instance_weight_loader_start_seed_via_transfer_engine: bool = False # For PD-Multiplexing enable_pdmux: bool = False pdmux_config_path: Optional[str] = None sm_group_num: int = 8 # For Multi-Modal mm_max_concurrent_calls: int = 32 mm_per_request_timeout: float = 10.0 enable_broadcast_mm_inputs_process: bool = False enable_prefix_mm_cache: bool = False mm_enable_dp_encoder: bool = False mm_process_config: Optional[Dict[str, Any]] = None limit_mm_data_per_request: Optional[Union[str, Dict[str, int]]] = None enable_mm_global_cache: bool = False # For checkpoint decryption decrypted_config_file: Optional[str] = None decrypted_draft_config_file: Optional[str] = None # For forward hooks forward_hooks: Optional[List[dict[str, Any]]] = None def __post_init__(self): """ Orchestrates the handling of various server arguments, ensuring proper configuration and validation. """ # Normalize load balancing defaults early (before dummy-model short-circuit). self._handle_load_balance_method() # Validate SSL arguments early (before dummy-model short-circuit). self._handle_ssl_validation() if self.model_path.lower() in ["none", "dummy"]: # Skip for dummy models return # Handle deprecated arguments. self._handle_deprecated_args() # Handle deprecated environment variables for prefill delayer. self._handle_prefill_delayer_env_compat() # Set missing default values. self._handle_missing_default_values() # Handle device-specific backends. self._handle_hpu_backends() self._handle_cpu_backends() self._handle_npu_backends() # Handle piecewise CUDA graph. self._handle_piecewise_cuda_graph() # Get GPU memory capacity, which is a common dependency for several configuration steps. gpu_mem = get_device_memory_capacity(self.device) # Handle memory-related, chunked prefill, and CUDA graph batch size configurations. self._handle_gpu_memory_settings(gpu_mem) # Apply model-specific adjustments. self._handle_model_specific_adjustments() # Set kernel backends. self._handle_sampling_backend() self._handle_attention_backend_compatibility() self._handle_mamba_backend() self._handle_kv4_compatibility() self._handle_page_size() self._handle_amd_specifics() self._handle_grammar_backend() # Handle Hicache settings. self._handle_hicache() # Handle data parallelism. self._handle_data_parallelism() # Handle context parallelism. self._handle_context_parallelism() # Handle MoE configurations. self._handle_moe_kernel_config() self._handle_a2a_moe() self._handle_eplb_and_dispatch() self._handle_expert_distribution_metrics() self._handle_elastic_ep() # Handle pipeline parallelism. self._handle_pipeline_parallelism() # Handle speculative decoding logic. self._handle_speculative_decoding() # Handle model loading format. self._handle_load_format() # Handle PD disaggregation. self._handle_pd_disaggregation() # Handle Encoder disaggregation. self._handle_encoder_disaggregation() # Validate tokenizer settings. self._handle_tokenizer_batching() # Propagate environment variables. self._handle_environment_variables() # Validate cache settings. self._handle_cache_compatibility() # Handle deterministic inference. self._handle_deterministic_inference() # Handle diffusion LLM inference. self._handle_dllm_inference() # Handle debug utilities. self._handle_debug_utils() # Handle any other necessary validations. self._handle_other_validations() def _handle_load_balance_method(self): if self.disaggregation_mode not in ("null", "prefill", "decode"): raise ValueError( f"Invalid disaggregation_mode={self.disaggregation_mode!r}" ) if self.load_balance_method == "auto": # Default behavior: # - non-PD: round_robin # - PD prefill: follow_bootstrap_room # - PD decode: round_robin self.load_balance_method = ( "follow_bootstrap_room" if self.disaggregation_mode == "prefill" else "round_robin" ) return def _handle_ssl_validation(self): """Ensure SSL arguments are consistent and referenced files exist.""" if self.ssl_keyfile and not self.ssl_certfile: raise ValueError( "--ssl-keyfile requires --ssl-certfile to be specified as well." ) if self.ssl_certfile and not self.ssl_keyfile: raise ValueError( "--ssl-certfile requires --ssl-keyfile to be specified as well." ) if not self.ssl_certfile and not self.ssl_keyfile: if self.ssl_ca_certs: raise ValueError( "--ssl-ca-certs has no effect without --ssl-certfile and --ssl-keyfile." ) if self.ssl_keyfile_password: raise ValueError( "--ssl-keyfile-password has no effect without --ssl-certfile and --ssl-keyfile." ) # Validate files exist early to avoid late failures after model loading. if self.ssl_keyfile and not os.path.isfile(self.ssl_keyfile): raise ValueError( f"SSL key file not found: '{self.ssl_keyfile}'. " f"Please check the --ssl-keyfile path." ) if self.ssl_certfile and not os.path.isfile(self.ssl_certfile): raise ValueError( f"SSL certificate file not found: '{self.ssl_certfile}'. " f"Please check the --ssl-certfile path." ) if self.ssl_ca_certs and not os.path.isfile(self.ssl_ca_certs): raise ValueError( f"SSL CA certificates file not found: '{self.ssl_ca_certs}'. " f"Please check the --ssl-ca-certs path." ) if self.enable_ssl_refresh and not (self.ssl_certfile and self.ssl_keyfile): raise ValueError( "--enable-ssl-refresh requires --ssl-certfile and --ssl-keyfile " "to be specified." ) def _handle_deprecated_args(self): # Handle deprecated tool call parsers deprecated_tool_call_parsers = {"qwen25": "qwen", "glm45": "glm"} if self.tool_call_parser in deprecated_tool_call_parsers: logger.warning( f"The tool_call_parser '{self.tool_call_parser}' is deprecated. Please use '{deprecated_tool_call_parsers[self.tool_call_parser]}' instead." ) self.tool_call_parser = deprecated_tool_call_parsers[self.tool_call_parser] def _handle_prefill_delayer_env_compat(self): if envs.SGLANG_SCHEDULER_DECREASE_PREFILL_IDLE.get(): self.enable_prefill_delayer = True if x := envs.SGLANG_PREFILL_DELAYER_MAX_DELAY_PASSES.get(): self.prefill_delayer_max_delay_passes = x if x := envs.SGLANG_PREFILL_DELAYER_TOKEN_USAGE_LOW_WATERMARK.get(): self.prefill_delayer_token_usage_low_watermark = x def _handle_missing_default_values(self): if self.tokenizer_path is None: self.tokenizer_path = self.model_path if self.served_model_name is None: self.served_model_name = self.model_path if self.device is None: self.device = get_device() if self.random_seed is None: self.random_seed = random.randint(0, 1 << 30) if self.mm_process_config is None: self.mm_process_config = {} # Handle ModelScope model downloads if get_bool_env_var("SGLANG_USE_MODELSCOPE"): if not os.path.exists(self.model_path): from modelscope import snapshot_download self.model_path = snapshot_download( self.model_path, cache_dir=self.download_dir, revision=self.revision ) self.tokenizer_path = snapshot_download( self.tokenizer_path, cache_dir=self.download_dir, revision=self.revision, ignore_patterns=["*.bin", "*.safetensors"], ) # Mamba scheduler strategy if self.mamba_scheduler_strategy == "auto": # TODO: when extra_buffer is more verified, we can set the default path based on # [overlap, non-overlap] self.mamba_scheduler_strategy = "no_buffer" # In speculative scenario: # - If `speculative_draft_model_quantization` is specified, the draft model uses this quantization method. # - Otherwise, the draft model defaults to the same quantization as the target model. if self.speculative_draft_model_quantization is None: self.speculative_draft_model_quantization = self.quantization elif self.speculative_draft_model_quantization == "unquant": self.speculative_draft_model_quantization = None def _handle_hpu_backends(self): if self.device == "hpu": self.attention_backend = "torch_native" self.sampling_backend = "pytorch" def _handle_cpu_backends(self): if self.device == "cpu": if self.attention_backend is None: self.attention_backend = "intel_amx" self.sampling_backend = "pytorch" def _handle_npu_backends(self): if self.device == "npu": from sglang.srt.hardware_backend.npu.utils import set_default_server_args set_default_server_args(self) if self.piecewise_cuda_graph_compiler != "eager": logger.warning( "At this moment Ascend platform only support prefill graph compilation with " "piecewise_cuda_graph_compiler='eager', change piecewise_cuda_graph_compiler to 'eager'." ) self.piecewise_cuda_graph_compiler = "eager" def _handle_piecewise_cuda_graph(self): # Skip auto-disable when enforce flag is set (for testing) if self.enforce_piecewise_cuda_graph: self.disable_piecewise_cuda_graph = False return # Disable piecewise cuda graph with following conditions: # 1. Disable Model Arch if self.get_model_config().is_piecewise_cuda_graph_disabled_model: self.disable_piecewise_cuda_graph = True # 2. Speculative decoding if self.speculative_algorithm is not None: self.disable_piecewise_cuda_graph = True # 3. DP attention if self.enable_dp_attention: self.disable_piecewise_cuda_graph = True # 4. Torch compile if self.enable_torch_compile: self.disable_piecewise_cuda_graph = True # 5. Pipeline parallelism if self.pp_size > 1: self.disable_piecewise_cuda_graph = True # 6. Non-CUDA hardware (AMD, NPU, CPU, etc.) if is_hip() or is_npu() or is_cpu(): self.disable_piecewise_cuda_graph = True # 7. MoE A2A backend if self.moe_a2a_backend != "none": self.disable_piecewise_cuda_graph = True # 8. LoRA if self.lora_paths or self.enable_lora: self.disable_piecewise_cuda_graph = True # 9. Multimodal / VLM models if self.get_model_config().is_multimodal: self.disable_piecewise_cuda_graph = True # 10. GGUF quantized models (custom dequant ops unsupported by torch.compile) if ( self.load_format == "gguf" or self.quantization == "gguf" or check_gguf_file(self.model_path) ): self.disable_piecewise_cuda_graph = True # 11. DLLM (diffusion LLM) models (context manager in forward breaks dynamo) if self.dllm_algorithm is not None: self.disable_piecewise_cuda_graph = True # 12. CPU offload (breaks dynamo) if self.cpu_offload_gb > 0 or self.enable_hierarchical_cache: self.disable_piecewise_cuda_graph = True # 13. Deterministic inference if self.enable_deterministic_inference: self.disable_piecewise_cuda_graph = True # 14. PD disaggregation if self.disaggregation_mode != "null": self.disable_piecewise_cuda_graph = True # 15. Symmetric memory (torch.cuda.use_mem_pool is untraceable by dynamo) if self.enable_symm_mem: self.disable_piecewise_cuda_graph = True # 16. Expert distribution recorder if self.enable_eplb or self.expert_distribution_recorder_mode is not None: self.disable_piecewise_cuda_graph = True def _handle_gpu_memory_settings(self, gpu_mem): """ Configure GPU memory-dependent settings including chunked_prefill_size, cuda_graph_max_bs, and mem_fraction_static. Here are our heuristics: - Set chunked_prefill_size and cuda_graph_max_bs based on the GPU memory capacity. This is because GPUs with more memory are generally more powerful, we need to use a larger chunked_prefill_size and a larger cuda_graph_max_bs to fully utilize the GPU. - Then set mem_fraction_static based on chunked_prefill_size and cuda_graph_max_bs. GPU memory capacity = model weights + KV cache pool + activations + cuda graph buffers The argument mem_fraction_static is defined as (model weights + KV cache pool) / GPU memory capacity, or equivalently, mem_fraction_static = (GPU memory capacity - activations - cuda graph buffers) / GPU memory capacity. In order to compute mem_fraction_static, we need to estimate the size of activations and cuda graph buffers. The activation memory is proportional to the chunked_prefill_size. The cuda graph memory is proportional to the cuda_graph_max_bs. We use reserved_mem = chunked_prefill_size * 1.5 + cuda_graph_max_bs * 2 to estimate the size of activations and cuda graph buffers in GB. and set mem_fraction_static = (GPU memory capacity - reserved_mem) / GPU memory capacity. The coefficient 1.5 is a heuristic value, in the future, we can do better estimation by looking at the model types, hidden sizes or even do a dummy run. """ if gpu_mem is not None: if gpu_mem < 20 * 1024: # T4, 4080 # (chunked_prefill_size 2k, cuda_graph_max_bs 8) if self.chunked_prefill_size is None: self.chunked_prefill_size = 2048 if self.cuda_graph_max_bs is None: self.cuda_graph_max_bs = 8 elif gpu_mem < 35 * 1024: # A10, 4090, 5090 # (chunked_prefill_size 2k, cuda_graph_max_bs 24 if tp < 4 else 80) if self.chunked_prefill_size is None: self.chunked_prefill_size = 2048 if self.cuda_graph_max_bs is None: # Based on detailed statistics, when serving TP1/TP2 models on lower-end GPUs with HBM < 35GB, you can either disable cuda graph or set `cuda_graph_max_bs` to a very small value to reduce the memory overhead of creating cuda graphs, with almost no impact on performance. # However, when serving models with TP4 or TP8, we need to enable cuda graph to maintain high performance. In this case, we can set `cuda_graph_max_bs` to 80 (half of the default value 160) to reduce the memory overhead of creating cuda graphs. Looking at the logs # from TP4 serving of qwen2-72b, a value of 80 is sufficient and can reduce the memory overhead of creating cuda graphs on lower-end GPUs compared to the original 160, avoiding OOM issues. if self.tp_size < 4: self.cuda_graph_max_bs = 24 else: self.cuda_graph_max_bs = 80 elif gpu_mem < 60 * 1024: # A100 (40GB), L40, # (chunked_prefill_size 4k, cuda_graph_max_bs 32 if tp < 4 else 160) if self.chunked_prefill_size is None: self.chunked_prefill_size = 4096 if self.cuda_graph_max_bs is None: if self.tp_size < 4: self.cuda_graph_max_bs = 32 else: self.cuda_graph_max_bs = 160 elif gpu_mem < 90 * 1024: # H100, A100 # (chunked_prefill_size 8k, cuda_graph_max_bs 256 if tp < 4 else 512) if self.chunked_prefill_size is None: self.chunked_prefill_size = 8192 if self.cuda_graph_max_bs is None: if self.tp_size < 4: self.cuda_graph_max_bs = 256 else: self.cuda_graph_max_bs = 512 elif gpu_mem < 160 * 1024: # H20, H200 # (chunked_prefill_size 8k, cuda_graph_max_bs 256 if tp < 4 else 512) if self.chunked_prefill_size is None: self.chunked_prefill_size = 8192 if self.cuda_graph_max_bs is None: if self.tp_size < 4: self.cuda_graph_max_bs = 256 else: self.cuda_graph_max_bs = 512 else: # B200, MI300 # (chunked_prefill_size 16k, cuda_graph_max_bs 512) if self.chunked_prefill_size is None: self.chunked_prefill_size = 16384 if self.cuda_graph_max_bs is None: self.cuda_graph_max_bs = 512 else: # Fallback defaults when gpu_mem is None if self.chunked_prefill_size is None: self.chunked_prefill_size = 4096 if self.cuda_graph_max_bs is None: self.cuda_graph_max_bs = 160 # Set cuda graph batch sizes if self.cuda_graph_bs is None: self.cuda_graph_bs = self._generate_cuda_graph_batch_sizes() else: self.cuda_graph_max_bs = max(self.cuda_graph_bs) if self.piecewise_cuda_graph_max_tokens is None: # Refer to pr #15927, by default we set the piecewise cuda graph max tokens to the chunked prefill size by default. # For MLA backend, the introduction of piecewise cuda graph will influence the kernel dispatch difference compared to the original mode. # To avoid the performance regression, we set the max tokens to 2048 by default. if not self.use_mla_backend(): self.piecewise_cuda_graph_max_tokens = self.chunked_prefill_size else: self.piecewise_cuda_graph_max_tokens = 2048 # If max_total_tokens is set, cap pcg tokens to not exceed max_total_tokens if self.max_total_tokens is not None: self.piecewise_cuda_graph_max_tokens = min( self.piecewise_cuda_graph_max_tokens, self.max_total_tokens ) # For Llama2 series models, the max tokens is limited to 4096 # TODO(yuwei): remove this after the issue is fixed if "llama-2" in self.model_path.lower(): self.piecewise_cuda_graph_max_tokens = min( self.piecewise_cuda_graph_max_tokens, 4096 ) if self.piecewise_cuda_graph_tokens is None: self.piecewise_cuda_graph_tokens = ( self._generate_piecewise_cuda_graph_tokens() ) if self.mem_fraction_static is None: # Constant meta data (e.g., from attention backend) reserved_mem = 512 # For activation during large prefill if self.chunked_prefill_size > 0: reserved_mem += max(self.chunked_prefill_size, 2048) * 1.5 else: reserved_mem += max(self.max_prefill_tokens, 2048) * 1.5 # For cuda graphs reserved_mem += self.cuda_graph_max_bs * 2 # Some adjustments for large parallel size reserved_mem += self.tp_size * self.pp_size / 8 * 1024 if self.enable_dp_attention: # DP attention needs more padding for some operations reserved_mem += self.cuda_graph_max_bs * self.dp_size * 3 # DP attention uses much more memory for large cuda graph max bs, # likely due to some inefficiencies in torch allocator or our implementation. # So we need to reserve more memory. if self.cuda_graph_max_bs > 300: reserved_mem += self.cuda_graph_max_bs * self.dp_size * 1.5 # For piecewise cuda graphs if not self.disable_piecewise_cuda_graph: if not self.use_mla_backend(): # Only calculate the memory overhead for Non-Torch Memory use since the Torch Memory can be reused with Cuda Graph Capture reserved_mem += len(self.piecewise_cuda_graph_tokens) * 8 else: # For MLA backend the memory overhead is much higher than expected with fa3 reserved_mem += 1.5 * 1024 if gpu_mem is not None and gpu_mem > 60 * 1024: reserved_mem = max(reserved_mem, 10 * 1024) if self.speculative_algorithm is not None: if self.speculative_algorithm == "STANDALONE": # standalonedraft model and cuda graphs reserved_mem += 6 * 1024 elif self.speculative_algorithm != "NGRAM": # eagle draft models and cuda graphs reserved_mem += 4 * 1024 self.mem_fraction_static = ( round((gpu_mem - reserved_mem) / gpu_mem, 3) if gpu_mem is not None else 0.88 ) # Multimodal models need more memory for the image processing, # so we adjust the mem_fraction_static accordingly. model_config = self.get_model_config() if model_config.is_multimodal and not self.language_only: self.adjust_mem_fraction_for_vlm(model_config) # If symm mem is enabled and prealloc size is not set, set it to 4GB if self.enable_symm_mem and not envs.SGLANG_SYMM_MEM_PREALLOC_GB_SIZE.is_set(): envs.SGLANG_SYMM_MEM_PREALLOC_GB_SIZE.set(4) logger.warning( "Symmetric memory is enabled, setting symmetric memory prealloc size to 4GB as default." "Use environment variable SGLANG_SYMM_MEM_PREALLOC_GB_SIZE to change the prealloc size." ) def _generate_cuda_graph_batch_sizes(self): """ Generate the list of batch sizes for CUDA graph capture based on cuda_graph_max_bs. This integrates the logic from cuda_graph_runner.py. """ # Handle disable_cuda_graph_padding as the first condition for both spec and non-spec if self.disable_cuda_graph_padding: capture_bs = list(range(1, self.cuda_graph_max_bs + 1)) elif self.speculative_algorithm is None: # Normal case: capture_bs = ( [1, 2, 4, 8, 12] + list(range(16, 257, 8)) + list(range(272, 512, 16)) + list(range(512, self.cuda_graph_max_bs + 1, 32)) ) else: # Spec decoding case: less padding for smaller batch sizes capture_bs = ( list(range(1, 9, 1)) + list(range(10, 33, 2)) + list(range(40, 65, 4)) + list(range(72, 257, 8)) + list(range(272, self.cuda_graph_max_bs + 1, 16)) ) capture_bs = [bs for bs in capture_bs if bs <= self.cuda_graph_max_bs] return capture_bs def _generate_piecewise_cuda_graph_tokens(self): """ Generate the list of batch sizes for piecewise CUDA graph capture based on piecewise_cuda_graph_max_tokens. """ capture_sizes = ( list(range(4, 33, 4)) + list(range(48, 257, 16)) + list(range(288, 513, 32)) + list(range(576, 1024 + 1, 64)) + list(range(1280, 4096 + 1, 256)) + list(range(4608, self.piecewise_cuda_graph_max_tokens + 1, 512)) ) capture_sizes = [ s for s in capture_sizes if s <= self.piecewise_cuda_graph_max_tokens ] return capture_sizes def _set_default_nsa_kv_cache_dtype(self, major: int) -> str: user_set_prefill = self.nsa_prefill_backend is not None user_set_decode = self.nsa_decode_backend is not None # If user specified a backend but didn't explicitly set kv_cache_dtype, # suggest them to be explicit about kv_cache_dtype to avoid surprises if (user_set_prefill or user_set_decode) and self.kv_cache_dtype == "auto": logger.warning( "When specifying --nsa-prefill-backend or --nsa-decode-backend, " "you should also explicitly set --kv-cache-dtype (e.g., 'fp8_e4m3' or 'bfloat16'). " "DeepSeek V3.2 defaults to FP8 KV cache which may not be compatible with all backends." ) if self.kv_cache_dtype == "auto": self.kv_cache_dtype = "fp8_e4m3" if major >= 10 else "bfloat16" logger.warning( f"Setting KV cache dtype to {self.kv_cache_dtype} for DeepSeek DSA on SM{major} device." ) if self.kv_cache_dtype == "bf16": self.kv_cache_dtype = "bfloat16" assert self.kv_cache_dtype in [ "bfloat16", "fp8_e4m3", ], "DeepSeek DSA only supports bf16/bfloat16 or fp8_e4m3 kv_cache_dtype" def _set_default_nsa_backends(self, kv_cache_dtype: str, major: int) -> str: user_set_prefill = self.nsa_prefill_backend is not None user_set_decode = self.nsa_decode_backend is not None if not user_set_prefill and not user_set_decode and is_hip(): self.nsa_prefill_backend = "tilelang" self.nsa_decode_backend = "tilelang" elif kv_cache_dtype == "fp8_e4m3": # flashmla_auto dispatches to flashmla_sparse/flashmla_kv based on hardware and heuristics if not user_set_prefill: self.nsa_prefill_backend = "flashmla_auto" if not user_set_decode: self.nsa_decode_backend = "flashmla_kv" else: # set prefill/decode backends based on hardware architecture. if major >= 10: if not user_set_prefill: self.nsa_prefill_backend = "flashmla_sparse" if not user_set_decode: self.nsa_decode_backend = "trtllm" else: # Hopper defaults for bfloat16 if not user_set_prefill: self.nsa_prefill_backend = "flashmla_sparse" if not user_set_decode: self.nsa_decode_backend = "fa3" logger.warning( f"Set NSA backends for {self.kv_cache_dtype} KV Cache: prefill={self.nsa_prefill_backend}, decode={self.nsa_decode_backend}." ) def _handle_model_specific_adjustments(self): from sglang.srt.configs.model_config import is_deepseek_nsa if parse_connector_type(self.model_path) == ConnectorType.INSTANCE: return hf_config = self.get_model_config().hf_config model_arch = hf_config.architectures[0] if model_arch in [ "MistralLarge3ForCausalLM", "PixtralForConditionalGeneration", ]: self.dtype = "bfloat16" if model_arch in [ "DeepseekV3ForCausalLM", "KimiK25ForConditionalGeneration", "MistralLarge3ForCausalLM", "PixtralForConditionalGeneration", "GlmMoeDsaForCausalLM", ]: # Set attention backend for DeepSeek if is_deepseek_nsa(hf_config): # DeepSeek 3.2, GlmMoeDsaForCausalLM if model_arch == "GlmMoeDsaForCausalLM" and is_blackwell_supported(): envs.SGLANG_NSA_FORCE_MLA.set(True) logger.warning( "Force NSA prefill to use MLA (i.e. disable MHA_ONE_SHOT) for GlmMoeDsaForCausalLM on Blackwell." ) if self.is_attention_backend_not_set(): self.attention_backend = "nsa" logger.info("Use nsa attention backend for DeepSeek with DSA.") if not is_npu(): # CUDA or ROCm GPU if self.enable_nsa_prefill_context_parallel: logger.warning( "Context parallel feature is still under experiment. It has only been verified on Hopper platform." ) if self.nsa_prefill_cp_mode == "in-seq-split": # TODO Supports moe_dense_tp_size != 1, kv cache dtype = "fp8",moe_a2a_backend non-deepep and cross-machine operation . self.enable_dp_attention = True self.moe_dense_tp_size = 1 self.moe_a2a_backend = "deepep" self.ep_size = self.tp_size logger.warning( "For in-seq split mode, we have the following restrictions: moe_dense_tp_size == 1, moe_a2a_backend == deepep, ep_size == tp_size, batch_size == 1" ) else: self.enable_dp_attention = True self.moe_dense_tp_size = 1 assert ( self.dp_size == 1 ), "For round-robin split mode, dp attention is not supported." assert ( self.tp_size == 8 ), "Current multi-machine CP support suffers from precision issues. So context parallel only support Single machine(tp_size == 8)" logger.warning( f"Enable Context Parallel opt for deeeseekv3.2-DSA, Setting dp_size == {self.dp_size} and moe_dense_tp_size == {self.moe_dense_tp_size}, ep_size == {self.ep_size}, tp_size == {self.tp_size}, kv_cache_dtype == {self.kv_cache_dtype}, moe_a2a_backend {self.moe_a2a_backend} " ) else: # Pure TP and partial DP Attention mode is active for NSA, logging a warning if self.dp_size < self.tp_size: logger.warning( f"DSA with TP mode is active, dp_size={self.dp_size}, tp_size={self.tp_size}, " f"attn_tp_size={self.tp_size}, attention weights will be sharded across {self.tp_size} ranks." ) if is_hip(): self.page_size = 1 logger.warning( "Setting page size to 1 for DeepSeek DSA on ROCm." ) else: # For CUDA GPU self.page_size = 64 logger.warning("Setting page size to 64 for DeepSeek DSA.") import torch major, _ = torch.cuda.get_device_capability() self._set_default_nsa_kv_cache_dtype(major) self._set_default_nsa_backends(self.kv_cache_dtype, major) if self.enable_nsa_prefill_context_parallel: assert ( self.disaggregation_mode != "decode" ), "CP is only supported for prefill when PD disaggregation, please remove --enable-nsa-prefill-context-parallel." else: # DeepSeek V3/R1/V3.1 if not self.disable_piecewise_cuda_graph: logger.info("Piecewise CUDA graph is enabled, use MLA for prefill.") if is_sm100_supported(): if ( self.attention_backend is None and self.prefill_attention_backend is None and self.decode_attention_backend is None ): self.attention_backend = "trtllm_mla" logger.info( "Use trtllm_mla as attention backend on sm100 for DeepseekV3ForCausalLM" ) # Set moe backend for DeepSeek if is_sm100_supported(): quant_method = get_quantization_config(hf_config) quant_cfg = getattr(hf_config, "quantization_config", None) or {} config_groups = quant_cfg.get("config_groups", {}) group0 = config_groups.get("group_0", {}) weights_cfg = group0.get("weights", {}) # this also apply to kimi k2.5 # since it follow the compressed tensor int4 recipe # but not kimi k2 instruct or 0905 instruct. is_kimi_k2_k25_thinking_int4 = ( quant_method == "compressed-tensors" and weights_cfg.get("num_bits") == 4 and weights_cfg.get("group_size") == 32 and weights_cfg.get("strategy") == "group" and weights_cfg.get("type") == "int" ) if self.quantization is None: # Default DeepSeek V3/R1 native FP8 when not explicitly set, # Because we need this condition for an assertion in # flashinfer_trtllm MoE runner backend. if quant_method is None and model_arch in ["DeepseekV3ForCausalLM"]: self.quantization = "fp8" logger.info( "Quantization not specified, default to fp8 for DeepSeek on sm100" ) else: self.quantization = quant_method if ( self.moe_a2a_backend == "none" and self.moe_runner_backend == "auto" and ( self.quantization in ["fp8", "modelopt_fp8", "modelopt_fp4"] or is_kimi_k2_k25_thinking_int4 ) ): self.moe_runner_backend = "flashinfer_trtllm" if is_kimi_k2_k25_thinking_int4: logger.info( "Use flashinfer_trtllm as MoE runner backend on Blackwell for Kimi K2 / K2.5 thinking int4" ) else: logger.info( "Use flashinfer_trtllm as MoE runner backend on sm100 for DeepseekV3ForCausalLM" ) elif is_hip(): if not self.enable_dp_attention and self.nnodes == 1: # TODO (Hubert): Put this back later # self.enable_aiter_allreduce_fusion = True logger.info( "Enable Aiter AllReduce Fusion for DeepseekV3ForCausalLM" ) if ( self.quantization == "modelopt_fp4" and self.speculative_algorithm == "EAGLE" and ( self.speculative_moe_runner_backend is None or self.speculative_moe_a2a_backend is None ) ): if envs.SGLANG_NVFP4_CKPT_FP8_NEXTN_MOE.get(): self.speculative_moe_runner_backend = "deep_gemm" self.speculative_moe_a2a_backend = "deepep" logger.info( "Use deep_gemm moe runner and deepep a2a backend for bf16 nextn layer in deepseek fp4 checkpoint." ) # Validate usage of ep if self.ep_size == 1: raise ValueError( "Invalid configuration: 'deep_gemm' speculative MoE runner backend with " "'deepep' a2a backend requires expert parallelism (ep_size > 1). " f"Current ep_size is {self.ep_size}. " "Please set --ep-size > 1 (e.g., --ep-size 8) to use this configuration, " "or change --speculative-moe-a2a-backend to 'none' if expert parallelism is not available." ) else: self.speculative_moe_runner_backend = "triton" self.speculative_moe_a2a_backend = "none" logger.info( "Use triton fused moe by default for bf16 nextn layer in deepseek fp4 checkpoint." ) elif model_arch in ["GptOssForCausalLM"]: # Set attention backend for GPT-OSS if self.is_attention_backend_not_set(): if is_sm100_supported(): self.attention_backend = "trtllm_mha" elif is_sm90_supported(): self.attention_backend = "fa3" else: self.attention_backend = "triton" supported_backends = [ "triton", "trtllm_mha", "fa3", "fa4", "ascend", "aiter", ] prefill_attn_backend, decode_attn_backend = self.get_attention_backends() assert ( prefill_attn_backend in supported_backends and decode_attn_backend in supported_backends ), ( f"GptOssForCausalLM requires one of {supported_backends} attention backend, but got the following backends\n" f"- Prefill: {prefill_attn_backend}\n" f"- Decode: {decode_attn_backend}\n" ) quant_method = get_quantization_config(hf_config) is_mxfp4_quant_format = quant_method == "mxfp4" if is_blackwell_supported(): # workaround for https://github.com/flashinfer-ai/flashinfer/issues/2006 if not self.enable_dp_attention and self.nnodes == 1: self.enable_flashinfer_allreduce_fusion = True logger.info( "Enable FlashInfer AllReduce Fusion on sm100 for GptOssForCausalLM" ) if not self.enable_dp_attention and self.nnodes == 1 and is_hip(): # TODO (Hubert): Put this back later # self.enable_aiter_allreduce_fusion = True logger.info("Enable Aiter AllReduce Fusion for GptOssForCausalLM") quantization_config = getattr(hf_config, "quantization_config", None) is_mxfp4_quant_format = ( quantization_config is not None and quantization_config.get("quant_method") == "mxfp4" ) if is_mxfp4_quant_format: # use bf16 for mxfp4 triton kernels self.dtype = "bfloat16" if self.moe_runner_backend == "auto": if is_sm100_supported() and is_mxfp4_quant_format: self.moe_runner_backend = "flashinfer_mxfp4" logger.warning( "Detected SM100 and MXFP4 quantization format for GPT-OSS model, enabling FlashInfer MXFP4 MOE kernel." ) elif is_sm120_supported() and is_mxfp4_quant_format: # trtllm-gen only supports SM100 self.moe_runner_backend = "triton_kernel" logger.warning( "Detected SM120 and MXFP4 quantization format for GPT-OSS model, enabling triton_kernel MOE kernel." ) elif ( is_hip() and get_bool_env_var("SGLANG_USE_AITER") ) and is_mxfp4_quant_format: self.moe_runner_backend = "auto" logger.warning( "Detected ROCm and MXFP4 quantization format for GPT-OSS model, enabling aiter MXFP4 MOE kernel." ) elif is_hip() and get_bool_env_var("SGLANG_USE_AITER"): # For GPT-OSS bf16 on ROCm with aiter, use triton backend # because aiter CK kernel doesn't support all GEMM dimensions self.moe_runner_backend = "triton" logger.warning( "Detected ROCm with SGLANG_USE_AITER for GPT-OSS bf16 model, using triton MOE kernel." ) elif ( self.ep_size == 1 and is_triton_kernels_available() and self.quantization is None ): self.moe_runner_backend = "triton_kernel" logger.warning( "Detected GPT-OSS model, enabling triton_kernels MOE kernel." ) if self.moe_runner_backend == "triton_kernel": assert ( self.ep_size == 1 ), "Triton kernel MoE is only supported when ep_size == 1" elif "MiMoV2FlashForCausalLM" in model_arch: if self.speculative_algorithm == "EAGLE": self.enable_multi_layer_eagle = True logger.info( "Enable multi-layer EAGLE speculative decoding for MiMoV2FlashForCausalLM model." ) if not envs.SGLANG_ENABLE_SPEC_V2.get(): envs.SGLANG_ENABLE_SPEC_V2.set(True) logger.warning( "Spec v2 is enabled for multi-layer EAGLE speculative decoding." ) if self.enable_hierarchical_cache: self.swa_full_tokens_ratio = 1.0 logger.warning( "Reset swa_full_tokens_ratio to 1.0 for MiMoV2FlashForCausalLM model with hierarchical cache" ) self.disable_hybrid_swa_memory = True logger.warning( "Disable hybrid SWA memory for MiMoV2FlashForCausalLM model with hierarchical cache" ) elif "Step3p5ForCausalLM" in model_arch: if self.speculative_algorithm == "EAGLE": self.enable_multi_layer_eagle = True logger.info( "Enable multi-layer EAGLE speculative decoding for Step3p5ForCausalLM model." ) if not envs.SGLANG_ENABLE_SPEC_V2.get(): envs.SGLANG_ENABLE_SPEC_V2.set(True) logger.warning( "Spec v2 is enabled for multi-layer EAGLE speculative decoding." ) if self.enable_hierarchical_cache: self.swa_full_tokens_ratio = 1.0 logger.warning( "Reset swa_full_tokens_ratio to 1.0 for Step3p5ForCausalLM model with hierarchical cache" ) self.disable_hybrid_swa_memory = True logger.warning( "Disable hybrid SWA memory for Step3p5ForCausalLM model with hierarchical cache" ) elif "Llama4" in model_arch and self.device != "cpu": # Auto-select attention backend for Llama4 if not specified if self.attention_backend is None: if is_sm100_supported(): self.attention_backend, platform = "trtllm_mha", "sm100" elif is_sm90_supported(): self.attention_backend, platform = "fa3", "sm90" elif is_hip(): self.attention_backend, platform = "aiter", "hip" elif self.device == "xpu": self.attention_backend, platform = "intel_xpu", "xpu" else: self.attention_backend, platform = "triton", "other platforms" logger.warning( f"Use {self.attention_backend} as attention backend on {platform} for Llama4 model" ) assert self.attention_backend in { "fa3", "aiter", "triton", "ascend", "trtllm_mha", "intel_xpu", }, f"fa3, aiter, triton, ascend, trtllm_mha or intel_xpu is required for Llama4 model but got {self.attention_backend}" if is_sm100_supported() and self.moe_runner_backend == "auto": if self.quantization in {"fp8", "modelopt_fp8"}: self.moe_runner_backend = "flashinfer_trtllm" logger.info( "Use flashinfer_trtllm as MoE runner backend on SM100 for Llama4" ) elif model_arch in [ "Gemma2ForCausalLM", "Gemma3ForCausalLM", "Gemma3ForConditionalGeneration", "Gemma3nForCausalLM", "Gemma3nForConditionalGeneration", ]: # FIXME: https://github.com/sgl-project/sglang/pull/7367 is not compatible with gemma2 model. # It failed at this test: https://github.com/sgl-project/sglang/actions/runs/16255155597/job/45890331952#step:4:736 logger.warning( f"Disable hybrid SWA memory for {model_arch} as it is not yet supported." ) self.disable_hybrid_swa_memory = True elif model_arch in ["Exaone4ForCausalLM", "ExaoneMoEForCausalLM"]: if hf_config.sliding_window_pattern is not None: logger.warning( f"Disabling hybrid SWA memory for {model_arch} as it is not yet supported." ) self.disable_hybrid_swa_memory = True # https://docs.sglang.ai/advanced_features/attention_backend.html accepted_backends = ["fa3", "triton", "trtllm_mha"] assert ( self.attention_backend in accepted_backends ), f"One of the attention backends in {accepted_backends} is required for {model_arch}, but got {self.attention_backend}" elif model_arch in ["Olmo2ForCausalLM"]: # FIXME: https://github.com/sgl-project/sglang/pull/7367 is not compatible with Olmo3 model. logger.warning( f"Disabling hybrid SWA memory for {model_arch} as it is not yet supported." ) self.disable_hybrid_swa_memory = True if self.attention_backend is None: if is_cuda() and is_sm100_supported(): self.attention_backend = "trtllm_mha" elif is_cuda() and get_device_sm() >= 80: self.attention_backend = "fa3" else: self.attention_backend = "triton" # Flashinfer appears to degrade performance when sliding window attention # is used for the Olmo2 architecture. Olmo2 does not use sliding window attention # but Olmo3 does. assert ( self.attention_backend != "flashinfer" ), "FlashInfer backend can significantly degrade the performance of Olmo3 models." logger.info( f"Using {self.attention_backend} as attention backend for {model_arch}." ) elif model_arch in ["KimiLinearForCausalLM", "BailingMoeV2_5ForCausalLM"]: self._handle_mamba_radix_cache( model_arch=model_arch, support_mamba_cache=False, ) elif model_arch in ["NemotronHForCausalLM"]: model_config = self.get_model_config() if model_config.quantization in [ "modelopt", "modelopt_fp8", "modelopt_fp4", ]: assert model_config.hf_config.mlp_hidden_act == "relu2" if model_config.quantization == "modelopt": self.quantization = ( "modelopt_fp4" if model_config.hf_config.quantization_config["quant_algo"] == "NVFP4" else "modelopt_fp8" ) else: self.quantization = model_config.quantization self.moe_runner_backend = "flashinfer_cutlass" self._handle_mamba_radix_cache( model_arch=model_arch, support_mamba_cache=True, support_mamba_cache_extra_buffer=False, sm100_default_attention_backend="flashinfer", ) assert self.attention_backend != "triton", ( "NemotronHForCausalLM does not support triton attention backend," "as the first layer might not be an attention layer" ) elif model_arch in [ "Qwen3MoeForCausalLM", "Qwen3VLMoeForConditionalGeneration", "Qwen3NextForCausalLM", "Qwen3_5MoeForConditionalGeneration", "Qwen3_5ForConditionalGeneration", ]: if is_sm100_supported(): quant_method = get_quantization_config(hf_config) if self.quantization is None and quant_method is not None: self.quantization = quant_method if ( ( self.quantization in ("fp8", "modelopt_fp4") or self.quantization is None ) and self.moe_a2a_backend == "none" and self.moe_runner_backend == "auto" ): self.moe_runner_backend = "flashinfer_trtllm" logger.info( "Use flashinfer_trtllm as MoE runner backend on sm100 for " f"{model_arch}" ) if model_arch in [ "Qwen3NextForCausalLM", "Qwen3_5MoeForConditionalGeneration", "Qwen3_5ForConditionalGeneration", ]: sm100_default_attn_backend = "triton" if is_sm100_supported(): # trtllm_mha requires speculative_eagle_topk == 1 and page_size > 1. # _get_default_attn_backend handles the eagle_topk check. # There is only one case where page_size=1 is required, # which is when radix cache is enabled and both extra_buffer # and spec decoding are disabled. default_attn_backend = self._get_default_attn_backend( use_mla_backend=self.use_mla_backend(), model_config=self.get_model_config(), ) if default_attn_backend == "trtllm_mha" and not ( not self.enable_mamba_extra_buffer() and not self.disable_radix_cache and self.speculative_algorithm is None ): sm100_default_attn_backend = "trtllm_mha" self._handle_mamba_radix_cache( model_arch=model_arch, support_mamba_cache=True, support_mamba_cache_extra_buffer=True, sm100_default_attention_backend=sm100_default_attn_backend, ) elif model_arch in ["Glm4MoeForCausalLM"]: if is_sm100_supported(): quantization_config = getattr(hf_config, "quantization_config", None) quant_method = ( quantization_config.get("quant_method") if quantization_config is not None else None ) if self.quantization is None and quant_method is not None: self.quantization = quant_method if ( self.quantization == "modelopt_fp4" and self.moe_a2a_backend == "none" and self.moe_runner_backend == "auto" ): self.moe_runner_backend = "flashinfer_trtllm" logger.info( "Use flashinfer_trtllm as MoE runner backend on sm100 for Glm4MoeForCausalLM" ) elif model_arch in [ "FalconH1ForCausalLM", "JetNemotronForCausalLM", "JetVLMForConditionalGeneration", ]: self._handle_mamba_radix_cache( model_arch=model_arch, support_mamba_cache=True, support_mamba_cache_extra_buffer=False, sm100_default_attention_backend="triton", ) elif model_arch == "GraniteMoeHybridForCausalLM": hf_config = self.get_model_config().hf_config has_mamba = any( layer_type == "mamba" for layer_type in getattr(hf_config, "layer_types", []) ) if has_mamba: self._handle_mamba_radix_cache( model_arch=model_arch, support_mamba_cache_extra_buffer=False, sm100_default_attention_backend="triton", ) elif model_arch in ["Lfm2ForCausalLM"]: self._handle_mamba_radix_cache( model_arch=model_arch, support_mamba_cache=True, support_mamba_cache_extra_buffer=False, sm100_default_attention_backend="flashinfer", ) assert self.attention_backend != "triton", ( f"{model_arch} does not support triton attention backend, " "as the first layer might not be an attention layer" ) if envs.SGLANG_EMBEDDINGS_SPARSE_HEAD.is_set(): self.disable_overlap_schedule = True logger.warning( "Overlap scheduler is disabled when using sparse head for embedding model." ) # TRTLLM AllReduce Fusion supports SM90/100, enable it by default # for models with explicit support (DeepseekV3, GptOss, Glm4Moe, Qwen3Moe) # TODO: currently, it is only supported in the single node scenario. https://github.com/flashinfer-ai/flashinfer/issues/2006 # TODO: there is currently a bug on H20 device specifically, https://github.com/flashinfer-ai/flashinfer/issues/2204 device_name = get_device_name() is_h20_device = ( device_name and "H20" in device_name and "H200" not in device_name ) if ( not self.enable_flashinfer_allreduce_fusion and model_arch in [ "DeepseekV3ForCausalLM", "GptOssForCausalLM", "Glm4MoeForCausalLM", "Glm4MoeLiteForCausalLM", "Qwen3MoeForCausalLM", "KimiK25ForConditionalGeneration", ] and (is_sm90_supported() or is_sm100_supported()) and not self.enable_dp_attention and self.nnodes == 1 and not is_h20_device and self.moe_a2a_backend == "none" ): self.enable_flashinfer_allreduce_fusion = True def _handle_mamba_radix_cache( self, model_arch: str, support_mamba_cache: bool = True, support_mamba_cache_extra_buffer: bool = True, sm100_default_attention_backend: str = None, ): if ( is_sm100_supported() and self.attention_backend is None and sm100_default_attention_backend is not None ): self.attention_backend = sm100_default_attention_backend logger.info( f"Use {sm100_default_attention_backend} as attention backend on sm100 for {model_arch}" ) if not support_mamba_cache: logger.warning( f"Disabling Radix Cache for {model_arch} as it is not yet supported." ) self.disable_radix_cache = True return if not support_mamba_cache_extra_buffer: assert ( not self.enable_mamba_extra_buffer() ), f"mamba extra_buffer is not supported for {model_arch} model" if self.enable_mamba_extra_buffer(): # extra_buffer if self.disable_radix_cache: raise ValueError( "mamba extra_buffer is not compatible with --disable-radix-cache " "Overlap scheduling is already supported with no_buffer + disable_radix_cache. " "Please use --mamba-scheduler-strategy no_buffer instead." ) assert ( is_cuda() ), "Mamba extra_buffer is only supported on CUDA devices with FLA backend" if self.speculative_num_draft_tokens is not None: assert ( self.mamba_track_interval >= self.speculative_num_draft_tokens ), f"mamba_track_interval {self.mamba_track_interval} must be greater than or equal to speculative_num_draft_tokens {self.speculative_num_draft_tokens}" if self.page_size is not None: assert ( self.mamba_track_interval % self.page_size == 0 ), f"mamba_track_interval {self.mamba_track_interval} must be divisible by page_size {self.page_size}" assert ( max(FLA_CHUNK_SIZE, self.page_size) % min(FLA_CHUNK_SIZE, self.page_size) == 0 ), f"For SSM models with extra buffer, either FLA_CHUNK_SIZE or page_size must be divisible by the other, got {FLA_CHUNK_SIZE=}, {self.page_size=}" elif not self.disable_radix_cache: # no_buffer if self.speculative_algorithm is None: logger.warning( "Disabling overlap schedule since mamba no_buffer is not compatible with " "overlap schedule, try to use --disable-radix-cache if overlap schedule is necessary" ) self.disable_overlap_schedule = True if self.attention_backend == "trtllm_mha": logger.warning( "Disabling radix cache since trtllm_mha does not support page_size = 1, which is required by MambaRadixCache. " "Try to use --attention-backend triton if radix cache is necessary." ) self.disable_radix_cache = True self.disable_overlap_schedule = False else: if not self.disable_radix_cache: raise ValueError( f"Speculative decoding for {model_arch} is not compatible with radix cache when using --mamba-scheduler-strategy no_buffer." "To use radix cache with speculative decoding, please use --mamba-scheduler-strategy extra_buffer and set SGLANG_ENABLE_SPEC_V2=1." ) def _handle_sampling_backend(self): if self.sampling_backend is None: self.sampling_backend = ( "flashinfer" if is_flashinfer_available() else "pytorch" ) def _get_default_attn_backend(self, use_mla_backend: bool, model_config): """ Auto select the fastest attention backend. 1. Models with MHA Architecture (e.g: Llama, QWen) 1.1 We will turn on FA3 on hopper unless user use spec decode with topk > 1 or page_size > 1. 1.2 Use trtllm_mha for SM100/SM103 (Blackwell B200/GB200/B300) excluding spec with topk > 1. Note: trtllm_mha does not support SM120, which will fall back to flashinfer. 1.3 In other cases, we will use flashinfer if available, otherwise use triton. 2. Models with MLA Architecture and using FA3 2.1 We will use FA3 backend on hopper. 2.2 We will use Flashinfer backend on blackwell. 2.3 Otherwise, we will use triton backend. """ if not use_mla_backend: # MHA architecture if is_hopper_with_cuda_12_3() and is_no_spec_infer_or_topk_one(self): # Note: flashinfer 0.6.1 caused performance regression on Hopper attention kernel # Before the kernel is fixed, we choose fa3 as the default backend on Hopper MHA # ref: https://github.com/sgl-project/sglang/issues/17411 return "fa3" elif ( is_sm100_supported() and is_no_spec_infer_or_topk_one(self) and ( self.speculative_algorithm is None or self.speculative_eagle_topk is not None ) ): return "trtllm_mha" elif is_hip(): return "aiter" else: return "flashinfer" if is_flashinfer_available() else "triton" else: # MLA architecture if is_hopper_with_cuda_12_3(): return "fa3" elif is_sm100_supported(): return "flashinfer" elif is_hip(): head_num = model_config.get_num_kv_heads(self.tp_size) # TODO current aiter only support head number 16 or 128 head number if head_num == 128 or head_num == 16: return "aiter" else: return "triton" else: return "triton" def _handle_attention_backend_compatibility(self): model_config = self.get_model_config() use_mla_backend = self.use_mla_backend() if self.prefill_attention_backend is not None and ( self.prefill_attention_backend == self.decode_attention_backend ): # override the default attention backend self.attention_backend = self.prefill_attention_backend # Pick the default attention backend if not specified if self.attention_backend is None: self.attention_backend = self._get_default_attn_backend( use_mla_backend, model_config ) logger.info( f"Attention backend not specified. Use {self.attention_backend} backend by default." ) # Torch native and flex attention backends if self.attention_backend == "torch_native": logger.warning( "Cuda graph is disabled because of using torch native attention backend" ) self.disable_cuda_graph = True if self.attention_backend == "flex_attention": logger.warning( "Cuda graph is disabled because of using torch Flex Attention backend" ) self.disable_cuda_graph = True assert ( self.speculative_algorithm is None ), "Speculative decoding is currently not supported with Flex Attention backend" # Encoder-decoder models (e.g., Whisper) if model_config.is_encoder_decoder: logger.warning( "Cuda graph is disabled for encoder-decoder models (e.g., Whisper)" ) self.disable_cuda_graph = True # Major NVIDIA platforms backends if ( self.attention_backend == "flashmla" or self.decode_attention_backend == "flashmla" ): logger.warning( "FlashMLA only supports a page_size of 64, change page_size to 64." ) self.page_size = 64 if ( self.attention_backend == "cutlass_mla" or self.decode_attention_backend == "cutlass_mla" ): logger.warning( "Cutlass MLA only supports a page_size of 128, change page_size to 128." ) self.page_size = 128 if ( self.attention_backend == "trtllm_mla" or self.decode_attention_backend == "trtllm_mla" ): if not is_blackwell_supported(): raise ValueError( "TRTLLM MLA backend is only supported on Blackwell GPUs (SM100/SM12x). Please use a different backend." ) if self.page_size not in [32, 64]: logger.warning( f"TensorRT-LLM MLA only supports page_size of 32 or 64, changing page_size from {self.page_size} to 64." ) self.page_size = 64 if self.kv_cache_dtype not in ["fp8_e4m3", "fp4_e2m1", "bf16", "auto"]: raise ValueError( "TensorRT-LLM MLA backend only supports kv-cache-dtype of fp8_e4m3, fp4_e2m1, bf16, or auto." ) if ( self.attention_backend == "trtllm_mha" or self.decode_attention_backend == "trtllm_mha" or self.prefill_attention_backend == "trtllm_mha" ): # Check prefill backend prefill_backend = ( self.prefill_attention_backend if self.prefill_attention_backend is not None else self.attention_backend ) if prefill_backend == "trtllm_mha" and not is_sm100_supported(): raise ValueError( "TRTLLM MHA backend for prefill is only supported on Blackwell GPUs (SM100). Please use a different prefill backend." ) # Check decode backend decode_backend = ( self.decode_attention_backend if self.decode_attention_backend is not None else self.attention_backend ) if decode_backend == "trtllm_mha" and not ( is_sm90_supported() or is_sm100_supported() or is_sm120_supported() ): raise ValueError( "TRTLLM MHA backend for decode is only supported on Hopper (SM90), Blackwell (SM100) and (SM120) GPUs. Please use a different decode backend." ) if self.page_size not in [16, 32, 64]: logger.warning( f"TensorRT-LLM MHA only supports page_size of 16, 32 or 64, changing page_size from {self.page_size} to 64." ) self.page_size = 64 if self.attention_backend == "fa3" and self.kv_cache_dtype == "fp8_e5m2": logger.warning( "FlashAttention3 only supports fp8_e4m3 if using FP8; " "Setting attention backend to triton." ) self.attention_backend = "triton" if ( self.prefill_attention_backend == "fa4" and not self.use_mla_backend() and is_sm100_supported() ): logger.warning( f"FA4 backend only supports page size 128 for non-MLA model architectures, changing page_size from {self.page_size} to 128." ) self.page_size = 128 # AMD platforms backends if self.attention_backend == "aiter": if model_config.context_len > 8192: self.mem_fraction_static *= 0.85 # Other platforms backends if ( self.attention_backend == "intel_amx" and self.device == "cpu" and not cpu_has_amx_support() ): logger.warning( "The current platform does not support Intel AMX, will fallback to torch_native backend." ) self.attention_backend = "torch_native" if ( self.attention_backend == "intel_xpu" and self.device == "xpu" and not xpu_has_xmx_support() ): logger.warning( "The current platform does not support Intel XMX, will fallback to triton backend." ) self.attention_backend = "triton" if self.attention_backend == "intel_xpu": if self.page_size not in [32, 64, 128]: logger.warning( f"Intel XPU attention backend only supports page_size of 32, 64 or 128, changing page_size from {self.page_size} to 128." ) self.page_size = 128 # Dual chunk flash attention backend if ( getattr(model_config.hf_config, "dual_chunk_attention_config", None) is not None ): if self.attention_backend is None: self.attention_backend = "dual_chunk_flash_attn" logger.info("Dual chunk attention is turned on by default.") elif self.attention_backend != "dual_chunk_flash_attn": raise ValueError( "Dual chunk attention is enabled, but attention backend is set to " f"{self.attention_backend}. Please set it to 'dual_chunk_flash_attn'." ) if self.attention_backend == "dual_chunk_flash_attn": logger.warning( "Mixed chunk and radix cache are disabled when using dual-chunk flash attention backend" ) self.enable_mixed_chunk = False self.disable_radix_cache = True def _handle_kv4_compatibility(self): """Check FP4 KV cache compatibility with the attention backend""" if self.kv_cache_dtype != "fp4_e2m1": return use_mla_backend = self.use_mla_backend() # self.attention_backend didn't overwrite self.prefill/decode_attention_backend yet self.prefill_attention_backend_str, self.decode_attention_backend_str = ( self.get_attention_backends() ) if is_cuda(): if ( self.prefill_attention_backend_str != self.decode_attention_backend_str and self.prefill_attention_backend_str != "fa4" ): # Take care of prefill=fa4 later logger.warning( f"Attention: Using KV4 with PREFILL = {self.prefill_attention_backend_str} " f"and DECODE = {self.decode_attention_backend_str}. " f"Compatibility issues are unlikely, but may occur in rare edge cases." ) else: if self.prefill_attention_backend_str == "fa4": if use_mla_backend: # FA4 + MLA KV4_FA4_MLA_BACKEND_CHOICES = [ "cutlass_mla", "flashinfer", "trtllm_mla", ] assert ( self.decode_attention_backend_str in KV4_FA4_MLA_BACKEND_CHOICES ), ( f"KV4 FA4 MLA expects decode_attention_backend to be one of " f"{KV4_FA4_MLA_BACKEND_CHOICES}, but got {self.decode_attention_backend_str}" ) else: # FA4 + MHA KV4_FA4_MHA_BACKEND_CHOICES = [ "triton", "torch_native", "flex_attention", ] assert ( self.decode_attention_backend_str in KV4_FA4_MHA_BACKEND_CHOICES ), ( f"KV4 FA4 MHA expects decode_attention_backend to be one of " f"{KV4_FA4_MHA_BACKEND_CHOICES}, but got {self.decode_attention_backend_str}" ) else: if use_mla_backend: # !FA4 + MLA KV4_ATTENTION_MLA_BACKEND_CHOICES = [ "cutlass_mla", "flashinfer", "trtllm_mla", "flashmla", ] assert ( self.attention_backend in KV4_ATTENTION_MLA_BACKEND_CHOICES ), ( f"KV4 MLA expects attention_backend to be one of " f"{KV4_ATTENTION_MLA_BACKEND_CHOICES}, but got {self.attention_backend}" ) else: # !FA4 + MHA KV4_ATTENTION_MHA_BACKEND_CHOICES = [ "triton", "torch_native", "flex_attention", "trtllm_mha", ] assert ( self.attention_backend in KV4_ATTENTION_MHA_BACKEND_CHOICES ), ( f"KV4 MHA expects attention_backend to be one of " f"{KV4_ATTENTION_MHA_BACKEND_CHOICES}, but got {self.attention_backend}" ) else: raise RuntimeError("KV4 is not tested on non-CUDA platforms.") def _handle_page_size(self): if self.page_size is None: self.page_size = 1 def _handle_amd_specifics(self): if is_hip(): self.triton_attention_num_kv_splits = 16 def _handle_grammar_backend(self): if self.grammar_backend is None: self.grammar_backend = "xgrammar" def _handle_mamba_backend(self): if self.mamba_backend == "flashinfer": if is_flashinfer_available(): try: import flashinfer.mamba # noqa: F401 logger.info("Successfully imported FlashInfer mamba module") except (ImportError, AttributeError): raise ValueError( "FlashInfer mamba module not available, please check flashinfer installation." ) else: raise ValueError( "FlashInfer mamba module not available, please check flashinfer installation." ) def _handle_context_parallelism(self): if self.attn_cp_size > 1: # The tp_size is the world size, not the real tensor parallel size assert ( self.tp_size % self.attn_cp_size == 0 ), "tp_size must be divisible by attn_cp_size" assert ( self.tp_size % (self.dp_size * self.attn_cp_size) == 0 ), "tp_size must be divisible by dp_size * attn_cp_size" assert self.pp_size == 1, "PP is not supported with context parallelism" if self.moe_dp_size > 1: # The tp_size is the world size, not the real tensor parallel size assert ( self.tp_size % self.moe_dp_size == 0 ), "tp_size must be divisible by moe_dp_size" assert ( self.ep_size * self.moe_dp_size <= self.tp_size ), "ep_size * moe_dp_size must be less than or equal to tp_size" assert self.pp_size == 1, "PP is not supported with context parallelism" if self.ep_size > 1: assert ( self.ep_size * self.moe_dp_size == self.tp_size ), "ep_size * moe_dp_size must be equal to tp_size" def _handle_data_parallelism(self): if self.dp_size == 1: self.enable_dp_attention = False self.enable_dp_lm_head = False if self.enable_dp_attention: self.schedule_conservativeness = self.schedule_conservativeness * 0.3 assert self.tp_size % self.dp_size == 0 self.chunked_prefill_size = self.chunked_prefill_size // self.dp_size logger.warning( f"DP attention is enabled. The chunked prefill size is adjusted to {self.chunked_prefill_size} to avoid MoE kernel issues. " ) if self.enable_dp_lm_head: assert ( self.enable_dp_attention ), "Please enable dp attention when setting enable_dp_lm_head. " def _handle_moe_kernel_config(self): if self.quantization == "mxfp8": if self.moe_runner_backend not in ["auto", "cutlass"]: logger.warning( "mxfp8 quantization forces --moe-runner-backend=cutlass. " f"Overriding {self.moe_runner_backend!r}." ) self.moe_runner_backend = "cutlass" if self.moe_runner_backend == "flashinfer_cutlass": assert self.quantization in [ "modelopt_fp4", "modelopt_fp8", None, ], f"Invalid quantization '{self.quantization}'. \nFlashInfer Cutlass MOE supports only: 'modelopt_fp4', 'modelopt_fp8', or bfloat16 (None)." assert self.ep_size in [ 1, self.tp_size, ], "The expert parallel size must be 1 or the same as the tensor parallel size" if self.moe_runner_backend == "flashinfer_trtllm": assert self.quantization in [ "modelopt_fp4", "fp8", "modelopt_fp8", "compressed-tensors", None, ], f"Invalid quantization '{self.quantization}'. \nFlashInfer TRTLLM MOE supports only: 'modelopt_fp4', 'fp8', 'modelopt_fp8', 'compressed-tensors', or bfloat16 (None)." self.disable_shared_experts_fusion = True logger.warning( "FlashInfer TRTLLM MoE is enabled. --disable-shared-experts-fusion is automatically set." ) if get_bool_env_var("SGLANG_CUTLASS_MOE"): logger.warning( "SGLANG_CUTLASS_MOE is deprecated, use --moe-runner-backend=cutlass and/or --speculative-moe-runner-backend=cutlass instead" ) assert self.quantization in [ "fp8", "mxfp8", ], "cutlass MoE is only supported with fp8/mxfp8 quantization" self.moe_runner_backend = "cutlass" if self.moe_runner_backend == "cutlass" and self.quantization in [ "fp8", "mxfp8", ]: assert ( self.ep_size == 1 ), "FP8/MXFP8 Cutlass MoE is only supported with ep_size == 1" # TODO(yuwei): Fix piecewise cuda graph support for bypassed topk MoE backends. # Exception: GptOssForCausalLM wraps the entire MoE block in its own # custom op (moe_impl), so bypassed topk is handled inside the op body. if ( not self.enforce_piecewise_cuda_graph and self.moe_runner_backend in ("flashinfer_trtllm", "flashinfer_mxfp4") and self.get_model_config().hf_config.architectures[0] != "GptOssForCausalLM" ): self.disable_piecewise_cuda_graph = True logger.info( f"Piecewise cuda graph is disabled for MoE runner backend " f"'{self.moe_runner_backend}' (bypassed topk is incompatible " f"with torch.compile)." ) def _handle_a2a_moe(self): if self.moe_a2a_backend == "deepep": if self.deepep_mode == "normal": logger.warning("Cuda graph is disabled because deepep_mode=`normal`") self.disable_cuda_graph = True self.ep_size = self.tp_size logger.warning( f"DeepEP MoE is enabled. The expert parallel size is adjusted to be the same as the tensor parallel size[{self.tp_size}]." ) if self.moe_a2a_backend == "mooncake": self.ep_size = self.tp_size logger.warning( f"Mooncake MoE is enabled. The expert parallel size is adjusted to be the same as the tensor parallel size[{self.tp_size}]." ) if self.moe_a2a_backend == "ascend_fuseep": self.ep_size = self.tp_size logger.warning( f"Ascend fused EP MoE is enabled. The expert parallel size is adjusted to be the same as the tensor parallel size[{self.tp_size}]." ) if self.moe_a2a_backend == "flashinfer": self.ep_size = self.tp_size logger.warning( f"Flashinfer MoE A2A is enabled. The expert parallel size is adjusted to be the same as the tensor parallel size[{self.tp_size}]." ) self.disable_shared_experts_fusion = True logger.warning( "Flashinfer MoE A2A is enabled. --disable-shared-experts-fusion is automatically set." ) if self.deepep_mode != "auto": logger.warning("--deepep-mode is ignored for Flashinfer MoE A2A") if os.environ.get("SGLANG_MOE_NVFP4_DISPATCH") is None: envs.SGLANG_MOE_NVFP4_DISPATCH.set(True) logger.warning( "SGLANG_MOE_NVFP4_DISPATCH is set to True for Flashinfer MoE A2A" ) assert self.moe_runner_backend in [ "flashinfer_cutlass" ], "Flashinfer MoE A2A is only supported with flashinfer_cutlass moe runner backend" if self.moe_a2a_backend == "mori": self.ep_size = self.tp_size if self.deepep_mode == "auto": self.deepep_mode = "normal" logger.warning("auto set deepep_mode=`normal` for MORI EP") logger.warning( f"MoRI MoE is enabled. The expert parallel size is adjusted to be the same as the tensor parallel size[{self.tp_size}]." ) # Check chunked prefill for mori # Skip validation if chunked prefill is disabled (i.e., size <= 0). # Skip validation if disaggregation mode is decode. if self.chunked_prefill_size > 0 and self.disaggregation_mode != "decode": assert (self.chunked_prefill_size) <= get_int_env_var( "SGLANG_MORI_NUM_MAX_DISPATCH_TOKENS_PER_RANK", 4096 ), "SGLANG_MORI_NUM_MAX_DISPATCH_TOKENS_PER_RANK (default 4096) must be larger or equal to chunked_prefill_size" def _handle_eplb_and_dispatch(self): if self.enable_eplb and (self.expert_distribution_recorder_mode is None): self.expert_distribution_recorder_mode = "stat" logger.warning( "EPLB is enabled. The expert_distribution_recorder_mode is automatically set." ) if (self.enable_eplb or (self.init_expert_location != "trivial")) and ( self.ep_dispatch_algorithm is None ): self.ep_dispatch_algorithm = "static" if self.enable_eplb: assert self.ep_size > 1 def _handle_elastic_ep(self): if self.elastic_ep_backend is not None: if self.enable_eplb: if self.eplb_algorithm == "auto": self.eplb_algorithm = "elasticity_aware" assert ( self.eplb_algorithm == "elasticity_aware" ), "Elastic EP requires eplb_algorithm to be set to 'auto' or 'elasticity_aware'." if self.elastic_ep_backend == "mooncake": self.mooncake_ib_device = self._validate_ib_devices( self.mooncake_ib_device ) def _handle_expert_distribution_metrics(self): if self.enable_expert_distribution_metrics and ( self.expert_distribution_recorder_mode is None ): self.expert_distribution_recorder_mode = "stat" if self.expert_distribution_recorder_buffer_size is None: if (x := self.eplb_rebalance_num_iterations) is not None: self.expert_distribution_recorder_buffer_size = x elif self.expert_distribution_recorder_mode is not None: self.expert_distribution_recorder_buffer_size = 1000 def _handle_pipeline_parallelism(self): if self.pp_size > 1: self.disable_overlap_schedule = True logger.warning( "Pipeline parallelism is incompatible with overlap schedule." ) def _handle_hicache(self): if ( self.hicache_mem_layout == "page_first_direct" and self.hicache_io_backend == "kernel" ): self.hicache_io_backend = "direct" logger.warning( "Kernel io backend does not support page first direct layout" ) if ( self.enable_hierarchical_cache or self.disaggregation_decode_enable_offload_kvcache ) and self.hicache_io_backend == "kernel": # fix for the compatibility issue with FlashAttention3 decoding and HiCache kernel backend # Only override when the *effective* decode backend would be FA3. # Otherwise, respect the user's chosen attention backend (e.g., aiter on ROCm). effective_decode_backend = ( self.decode_attention_backend if self.decode_attention_backend is not None else self.attention_backend ) if effective_decode_backend == "fa3": if self.decode_attention_backend is None: # If decode backend wasn't explicitly set, pick a safe default that works with HiCache kernel IO. if not self.use_mla_backend(): self.decode_attention_backend = ( "flashinfer" if is_flashinfer_available() else "triton" ) else: self.decode_attention_backend = ( "flashinfer" if is_sm100_supported() else "triton" ) else: # If user explicitly requested FA3 decode, fall back to direct IO. self.hicache_io_backend = "direct" logger.warning( "FlashAttention3 decode backend is not compatible with hierarchical cache. " "Setting hicache_io_backend to vanilla I/O, which may lead to suboptimal performance with small page sizes." ) if self.hicache_storage_backend == "mooncake": if self.hicache_mem_layout == "layer_first": if self.hicache_io_backend == "direct": self.hicache_mem_layout = "page_first_direct" elif self.hicache_io_backend == "kernel": self.hicache_mem_layout = "page_first" logger.warning( f"Mooncake storage backend does not support layer_first layout, " f"switching to {self.hicache_mem_layout} layout for {self.hicache_io_backend} io backend" ) def _handle_speculative_decoding(self): if ( self.speculative_draft_model_path is not None and self.speculative_draft_model_revision is None ): self.speculative_draft_model_revision = "main" # FlashInfer trtllm moe bf16 only support RenormalizeNaive routing method and Deepseek routing method # It is hard to tell the routing method in draft model, and the moe layer in draft model is not the bottleneck among # end to end, so we just avoid using trtllm_moe for speculative decoding. from sglang.srt.layers.moe.utils import MoeRunnerBackend if self.speculative_moe_runner_backend is None: self.speculative_moe_runner_backend = ( "auto" if self.moe_runner_backend == "flashinfer_trtllm" else self.moe_runner_backend ) else: assert not MoeRunnerBackend( self.speculative_moe_runner_backend ).is_flashinfer_trtllm(), "Currently speculative MoE runner backend doesn't support flashinfer_trtllm, please use triton or auto backend for speculative moe runner instead." if self.speculative_algorithm == "NEXTN": self.speculative_algorithm = "EAGLE" if self.speculative_algorithm in ("EAGLE", "EAGLE3", "STANDALONE"): if self.speculative_algorithm == "STANDALONE" and self.enable_dp_attention: # TODO: support dp attention for standalone speculative decoding raise ValueError( "Currently standalone speculative decoding does not support dp attention." ) if self.max_running_requests is None: self.max_running_requests = 48 logger.warning( "Max running requests is reset to 48 for speculative decoding. You can override this by explicitly setting --max-running-requests." ) if ( self.speculative_algorithm in ["EAGLE", "EAGLE3", "STANDALONE"] and envs.SGLANG_ENABLE_SPEC_V2.get() ): self.disable_overlap_schedule = False logger.warning( "Spec v2 is enabled for eagle/eagle3 speculative decoding and overlap schedule is turned on." ) if ( self.speculative_eagle_topk is not None and self.speculative_eagle_topk > 1 ): raise ValueError( "Spec v2 currently only supports topk = 1 for speculative decoding." ) else: self.disable_overlap_schedule = True logger.warning( "Overlap scheduler is disabled when spec v2 is off or using unsupported speculative algorithm. " "You can set env SGLANG_ENABLE_SPEC_V2=True to enable the experimental overlap scheduler. " ) if self.enable_mixed_chunk: self.enable_mixed_chunk = False logger.warning( "Mixed chunked prefill is disabled because of using " "eagle speculative decoding." ) model_arch = self.get_model_config().hf_config.architectures[0] if model_arch in [ "DeepseekV32ForCausalLM", "DeepseekV3ForCausalLM", "Glm4MoeForCausalLM", "Glm4MoeLiteForCausalLM", "GlmMoeDsaForCausalLM", "BailingMoeForCausalLM", "BailingMoeV2ForCausalLM", "BailingMoeV2_5ForCausalLM", "MistralLarge3ForCausalLM", "PixtralForConditionalGeneration", ]: if self.speculative_draft_model_path is None: self.speculative_draft_model_path = self.model_path self.speculative_draft_model_revision = self.revision else: if model_arch not in [ "MistralLarge3ForCausalLM", "PixtralForConditionalGeneration", ]: logger.warning( "DeepSeek MTP does not require setting speculative_draft_model_path." ) if self.speculative_num_steps is None: assert ( self.speculative_eagle_topk is None and self.speculative_num_draft_tokens is None ) ( self.speculative_num_steps, self.speculative_eagle_topk, self.speculative_num_draft_tokens, ) = auto_choose_speculative_params(self) if ( self.attention_backend == "trtllm_mha" or self.decode_attention_backend == "trtllm_mha" or self.prefill_attention_backend == "trtllm_mha" ): if self.speculative_eagle_topk > 1: raise ValueError( "trtllm_mha backend only supports topk = 1 for speculative decoding." ) if ( self.speculative_eagle_topk == 1 and self.speculative_num_draft_tokens != self.speculative_num_steps + 1 ): logger.warning( "speculative_num_draft_tokens is adjusted to speculative_num_steps + 1 when speculative_eagle_topk == 1" ) self.speculative_num_draft_tokens = self.speculative_num_steps + 1 if ( self.speculative_eagle_topk > 1 and self.page_size > 1 and self.attention_backend not in ["flashinfer", "fa3"] ): raise ValueError( "speculative_eagle_topk > 1 with page_size > 1 is unstable and produces incorrect results for paged attention backends. This combination is only supported for the 'flashinfer' backend." ) if self.speculative_algorithm == "NGRAM": if not self.device.startswith("cuda"): raise ValueError( "Ngram speculative decoding only supports CUDA device." ) if self.max_running_requests is None: self.max_running_requests = 48 logger.warning( "Max running requests is reset to 48 for speculative decoding. You can override this by explicitly setting --max-running-requests." ) self.disable_overlap_schedule = True self.enable_mixed_chunk = False self.speculative_eagle_topk = self.speculative_ngram_max_bfs_breadth if self.speculative_num_draft_tokens is None: self.speculative_num_draft_tokens = ( self.speculative_ngram_max_match_window_size ) logger.warning( "The overlap scheduler and mixed chunked prefill are disabled because of " "using ngram speculative decoding." ) if ( self.speculative_eagle_topk > 1 and self.page_size > 1 and self.attention_backend != "flashinfer" ): raise ValueError( f"speculative_eagle_topk({self.speculative_eagle_topk}) > 1 " f"with page_size({self.page_size}) > 1 is unstable " "and produces incorrect results for paged attention backends. " "This combination is only supported for the 'flashinfer' backend." ) if self.enable_dp_attention: # TODO: support dp attention for ngram speculative decoding raise ValueError( "Currently ngram speculative decoding does not support dp attention." ) def _handle_load_format(self): if ( self.load_format == "auto" or self.load_format == "gguf" ) and check_gguf_file(self.model_path): self.quantization = self.load_format = "gguf" if is_remote_url(self.model_path): self.load_format = "remote" if self.custom_weight_loader is None: self.custom_weight_loader = [] if self.load_format == "remote_instance": if ( self.remote_instance_weight_loader_seed_instance_ip is None or self.remote_instance_weight_loader_seed_instance_service_port is None ): logger.warning( "Fallback load_format to 'auto' due to incomplete remote instance weight loader settings." ) self.load_format = "auto" elif ( self.remote_instance_weight_loader_send_weights_group_ports is None and self.remote_instance_weight_loader_backend == "nccl" ): logger.warning( "Fallback load_format to 'auto' due to incomplete remote instance weight loader NCCL group ports settings." ) self.load_format = "auto" elif ( self.remote_instance_weight_loader_backend == "transfer_engine" and not self.validate_transfer_engine() ): logger.warning( "Fallback load_format to 'auto' due to 'transfer_engine' backend is not supported." ) self.load_format = "auto" # Check whether TransferEngine can be used when users want to start seed service that supports TransferEngine backend. if self.remote_instance_weight_loader_start_seed_via_transfer_engine: self.remote_instance_weight_loader_start_seed_via_transfer_engine = ( self.validate_transfer_engine() ) def _handle_pd_disaggregation(self): if self.disaggregation_mode == "decode": self.disable_radix_cache = True logger.warning("KV cache is forced as chunk cache for decode server") elif self.disaggregation_mode == "prefill": assert ( self.disaggregation_transfer_backend != "fake" ), "Prefill server does not support 'fake' as the transfer backend" if self.disable_piecewise_cuda_graph: self.disable_cuda_graph = True logger.warning( "Cuda graph is disabled for prefill server when piecewise cuda graph is not enabled." ) def _handle_encoder_disaggregation(self): if self.enable_prefix_mm_cache and not self.encoder_only: raise ValueError( "--enable-prefix-mm-cache requires --encoder-only to be enabled" ) if self.encoder_only and self.language_only: raise ValueError("Cannot set --encoder-only and --language-only together") if self.encoder_only and not self.disaggregation_mode == "null": raise ValueError( "Cannot set --encoder-only and --disaggregation-mode prefill/decode together" ) if self.language_only and len(self.encoder_urls) == 0: raise ValueError( "requires at least one encoder urls to be set via --encoder-urls" ) # Validate IB devices when mooncake backend is used if ( self.disaggregation_transfer_backend == "mooncake" and self.disaggregation_mode in ("prefill", "decode") ) or self.encoder_transfer_backend == "mooncake": self.disaggregation_ib_device = self._validate_ib_devices( self.disaggregation_ib_device ) def _validate_ib_devices(self, device_str: str) -> Optional[str]: """ Validate IB devices before passing to mooncake. Args: device_str: Comma-separated IB device names (e.g., "mlx5_0,mlx5_1") Returns: Normalized comma-separated string of validated device names, or None if input is None. """ if device_str is None: logger.warning( "No IB devices specified for Mooncake backend, falling back to auto discovery." ) return None # Strip whitespace from device names devices = [d.strip() for d in device_str.split(",") if d.strip()] if len(devices) == 0: raise ValueError("No valid IB devices specified") # Check for duplicates if len(devices) != len(set(devices)): raise ValueError(f"Duplicate IB devices specified: {device_str}") # Get available IB devices from sysfs ib_sysfs_path = "/sys/class/infiniband" if not os.path.isdir(ib_sysfs_path): raise RuntimeError( f"InfiniBand sysfs path not found: {ib_sysfs_path}. " "Please ensure InfiniBand drivers are installed." ) available_devices = set(os.listdir(ib_sysfs_path)) if len(available_devices) == 0: raise RuntimeError(f"No IB devices found in {ib_sysfs_path}") # Check for invalid devices invalid_devices = [d for d in devices if d not in available_devices] if len(invalid_devices) != 0: raise ValueError( f"Invalid IB devices specified: {invalid_devices}. " f"Available devices: {sorted(available_devices)}" ) return ",".join(devices) def _handle_tokenizer_batching(self): if self.enable_tokenizer_batch_encode and self.enable_dynamic_batch_tokenizer: raise ValueError( "Cannot enable both --enable-tokenizer-batch-encode and --enable-dynamic-batch-tokenizer. " "Please choose one tokenizer batching approach." ) if self.skip_tokenizer_init: if self.tokenizer_worker_num != 1: logger.warning( "skip_tokenizer_init=True disables tokenizer workers; forcing tokenizer_worker_num=1 " f"(requested {self.tokenizer_worker_num})." ) self.tokenizer_worker_num = 1 if self.enable_tokenizer_batch_encode: logger.warning( "skip_tokenizer_init=True ignores --enable-tokenizer-batch-encode; disabling it." ) self.enable_tokenizer_batch_encode = False if self.enable_dynamic_batch_tokenizer: logger.warning( "skip_tokenizer_init=True ignores --enable-dynamic-batch-tokenizer; disabling it." ) self.enable_dynamic_batch_tokenizer = False def _handle_environment_variables(self): envs.SGLANG_ENABLE_TORCH_COMPILE.set("1" if self.enable_torch_compile else "0") if self.mamba_ssm_dtype is not None: envs.SGLANG_MAMBA_SSM_DTYPE.set(self.mamba_ssm_dtype) envs.SGLANG_DISABLE_OUTLINES_DISK_CACHE.set( "1" if self.disable_outlines_disk_cache else "0" ) envs.SGLANG_ENABLE_DETERMINISTIC_INFERENCE.set( "1" if self.enable_deterministic_inference else "0" ) def _handle_cache_compatibility(self): if self.enable_hierarchical_cache and self.disable_radix_cache: raise ValueError( "The arguments enable-hierarchical-cache and disable-radix-cache are mutually exclusive " "and cannot be used at the same time. Please use only one of them." ) if self.disaggregation_decode_enable_offload_kvcache: if self.disaggregation_mode != "decode": raise ValueError( "The argument disaggregation-decode-enable-offload-kvcache is only supported for decode side." ) if not (0 < self.swa_full_tokens_ratio <= 1.0): raise ValueError("--swa-full-tokens-ratio should be in range (0, 1.0].") def _handle_deterministic_inference(self): if self.rl_on_policy_target is not None: logger.warning( "Enable deterministic inference because of rl_on_policy_target." ) self.enable_deterministic_inference = True # For VLM os.environ["SGLANG_VLM_CACHE_SIZE_MB"] = "0" # TODO remove this environment variable as a whole os.environ["SGLANG_ENABLE_DETERMINISTIC_INFERENCE"] = "1" if self.enable_deterministic_inference: if self.enable_aiter_allreduce_fusion: logger.warning( "Disable --enable-aiter-allreduce-fusion because deterministic inference is enabled." ) self.enable_aiter_allreduce_fusion = False # Check sampling backend self.sampling_backend = "pytorch" logger.warning( "Sampling backend is set to pytorch for deterministic inference." ) is_deepseek_model = False if parse_connector_type(self.model_path) != ConnectorType.INSTANCE: try: hf_config = self.get_model_config().hf_config model_arch = hf_config.architectures[0] is_deepseek_model = model_arch in [ "DeepseekV2ForCausalLM", "DeepseekV3ForCausalLM", "DeepseekV32ForCausalLM", "MistralLarge3ForCausalLM", "PixtralForConditionalGeneration", "GlmMoeDsaForCausalLM", ] except Exception: pass # Check attention backend if self.attention_backend is None: # User didn't specify attention backend, fallback based on GPU architecture if is_sm100_supported() or is_sm120_supported(): # Blackwell and newer architectures if is_deepseek_model: # fallback to triton for DeepSeek models because flashinfer doesn't support deterministic inference for DeepSeek models yet self.attention_backend = "triton" else: # fallback to flashinfer on Blackwell for non-DeepSeek models self.attention_backend = "flashinfer" else: # Hopper (SM90) and older architectures self.attention_backend = "fa3" logger.warning( f"Attention backend not specified. Falling back to '{self.attention_backend}' for deterministic inference. " f"You can explicitly set --attention-backend to one of {DETERMINISTIC_ATTENTION_BACKEND_CHOICES}." ) elif self.attention_backend not in DETERMINISTIC_ATTENTION_BACKEND_CHOICES: # User explicitly specified an incompatible attention backend raise ValueError( f"Currently only {DETERMINISTIC_ATTENTION_BACKEND_CHOICES} attention backends are supported for deterministic inference, " f"but you explicitly specified '{self.attention_backend}'." ) if is_deepseek_model: if self.attention_backend not in ["fa3", "triton"]: raise ValueError( f"Currently only {RADIX_SUPPORTED_DETERMINISTIC_ATTENTION_BACKEND} attention backends are supported for deterministic inference with DeepSeek models. But you're using {self.attention_backend}." ) if ( self.attention_backend not in RADIX_SUPPORTED_DETERMINISTIC_ATTENTION_BACKEND ): # Currently, only certain backends support radix cache. Support for other backends is in progress self.disable_radix_cache = True logger.warning( f"Currently radix cache is not compatible with {self.attention_backend} attention backend for deterministic inference. It will be supported in the future." ) # Check TP size if self.tp_size > 1: if is_hip(): # AMD: use 1-stage all-reduce kernel which is inherently deterministic # (each GPU reads all data from all GPUs, reduces locally in fixed order) logger.info( "AMD/ROCm: Using 1-stage all-reduce kernel (deterministic)" ) else: # CUDA: use NCCL tree algorithm os.environ["NCCL_ALGO"] = "allreduce:tree" self.disable_custom_all_reduce = True logger.warning( "NCCL_ALGO is set to 'allreduce:tree' and custom all reduce is disabled for deterministic inference when TP size > 1." ) def _handle_dllm_inference(self): if self.dllm_algorithm is None: return # On AMD/HIP, disable cuda graph for DLLM and use triton backend if is_hip(): if not self.disable_cuda_graph: logger.warning( "Cuda graph is disabled for diffusion LLM inference on AMD GPUs" ) self.disable_cuda_graph = True if self.attention_backend not in ["triton", "aiter"]: logger.warning( "Attention backend is set to triton for diffusion LLM inference on AMD GPUs" ) self.attention_backend = "triton" elif not self.disable_cuda_graph: if self.attention_backend != "flashinfer": logger.warning( "Attention backend is set to flashinfer because of enabling cuda graph in diffusion LLM inference" ) self.attention_backend = "flashinfer" if not self.disable_overlap_schedule: logger.warning( "Overlap schedule is disabled because of using diffusion LLM inference" ) self.disable_overlap_schedule = True if not self.disable_radix_cache: from sglang.srt.dllm.config import DllmConfig config = DllmConfig.from_server_args(self) if self.page_size % config.block_size != 0: logger.warning( f"Setting page size to {config.block_size} for diffusion LLM inference" ) self.page_size = config.block_size if self.enable_hierarchical_cache: logger.warning( "Hierarchical cache is disabled because of using diffusion LLM inference" ) self.enable_hierarchical_cache = False if self.enable_lmcache: logger.warning( "LMCache is disabled because of using diffusion LLM inference" ) self.enable_lmcache = False if not self.pp_size > 1: logger.warning( "Pipeline parallelism is disabled because of using diffusion LLM inference" ) self.pp_size = 1 if self.enable_lora: logger.warning( "Currently LoRA is not supported by diffusion LLM inference." ) self.enable_lora = False if self.disaggregation_mode != "null": logger.warning( "Currently disaggregation is not supported by diffusion LLM inference." ) self.disaggregation_mode = "null" if self.enable_mixed_chunk: logger.warning( "Mixed chunked prefill is disabled because of using diffusion LLM inference." ) self.enable_mixed_chunk = False def _handle_other_validations(self): # Handle model inference tensor dump. if self.debug_tensor_dump_output_folder is not None: logger.warning( "Cuda graph and server warmup are disabled because of using tensor dump mode" ) self.disable_cuda_graph = True self.skip_server_warmup = True # Validate limit_mm_per_prompt modalities if self.limit_mm_data_per_request: if isinstance(self.limit_mm_data_per_request, str): self.limit_mm_data_per_request = json.loads( self.limit_mm_data_per_request ) if isinstance(self.limit_mm_data_per_request, dict): allowed_modalities = {"image", "video", "audio"} for modality in self.limit_mm_data_per_request.keys(): if modality not in allowed_modalities: raise ValueError( f"Invalid modality '{modality}' in --limit-mm-data-per-request." f"Allowed modalities are: {list(allowed_modalities)}" ) # Validate preferred_sampling_params if self.preferred_sampling_params: if isinstance(self.preferred_sampling_params, str): self.preferred_sampling_params = json.loads( self.preferred_sampling_params ) def _handle_debug_utils(self): if is_in_ci() and self.soft_watchdog_timeout is None: logger.info("Set soft_watchdog_timeout since in CI") self.soft_watchdog_timeout = 300 @staticmethod def add_cli_args(parser: argparse.ArgumentParser): # Model and tokenizer parser.add_argument( "--model-path", "--model", type=str, help="The path of the model weights. This can be a local folder or a Hugging Face repo ID.", required=True, ) parser.add_argument( "--tokenizer-path", type=str, default=ServerArgs.tokenizer_path, help="The path of the tokenizer.", ) parser.add_argument( "--tokenizer-mode", type=str, default=ServerArgs.tokenizer_mode, choices=["auto", "slow"], help="Tokenizer mode. 'auto' will use the fast " "tokenizer if available, and 'slow' will " "always use the slow tokenizer.", ) parser.add_argument( "--tokenizer-worker-num", type=int, default=ServerArgs.tokenizer_worker_num, help="The worker num of the tokenizer manager.", ) parser.add_argument( "--skip-tokenizer-init", action="store_true", help="If set, skip init tokenizer and pass input_ids in generate request.", ) parser.add_argument( "--load-format", type=str, default=ServerArgs.load_format, choices=LOAD_FORMAT_CHOICES, help="The format of the model weights to load. " '"auto" will try to load the weights in the safetensors format ' "and fall back to the pytorch bin format if safetensors format " "is not available. " '"pt" will load the weights in the pytorch bin format. ' '"safetensors" will load the weights in the safetensors format. ' '"npcache" will load the weights in pytorch format and store ' "a numpy cache to speed up the loading. " '"dummy" will initialize the weights with random values, ' "which is mainly for profiling." '"gguf" will load the weights in the gguf format. ' '"bitsandbytes" will load the weights using bitsandbytes ' "quantization." '"layered" loads weights layer by layer so that one can quantize a ' "layer before loading another to make the peak memory envelope " "smaller.", ) parser.add_argument( "--model-loader-extra-config", type=str, help="Extra config for model loader. " "This will be passed to the model loader corresponding to the chosen load_format.", default=ServerArgs.model_loader_extra_config, ) parser.add_argument( "--trust-remote-code", action="store_true", help="Whether or not to allow for custom models defined on the Hub in their own modeling files.", ) parser.add_argument( "--context-length", type=int, default=ServerArgs.context_length, help="The model's maximum context length. Defaults to None (will use the value from the model's config.json instead).", ) parser.add_argument( "--is-embedding", action="store_true", help="Whether to use a CausalLM as an embedding model.", ) parser.add_argument( "--enable-multimodal", default=ServerArgs.enable_multimodal, action="store_true", help="Enable the multimodal functionality for the served model. If the model being served is not multimodal, nothing will happen", ) parser.add_argument( "--revision", type=str, default=None, help="The specific model version to use. It can be a branch " "name, a tag name, or a commit id. If unspecified, will use " "the default version.", ) parser.add_argument( "--model-impl", type=str, default=ServerArgs.model_impl, help="Which implementation of the model to use.\n\n" '* "auto" will try to use the SGLang implementation if it exists ' "and fall back to the Transformers implementation if no SGLang " "implementation is available.\n" '* "sglang" will use the SGLang model implementation.\n' '* "transformers" will use the Transformers model ' '* "mindspore" will use the MindSpore model ' "implementation.\n", ) # HTTP server parser.add_argument( "--host", type=str, default=ServerArgs.host, help="The host of the HTTP server.", ) parser.add_argument( "--port", type=int, default=ServerArgs.port, help="The port of the HTTP server.", ) parser.add_argument( "--fastapi-root-path", type=str, default=ServerArgs.fastapi_root_path, help="App is behind a path based routing proxy.", ) parser.add_argument( "--grpc-mode", action="store_true", help="If set, use gRPC server instead of HTTP server.", ) parser.add_argument( "--skip-server-warmup", action="store_true", help="If set, skip warmup.", ) parser.add_argument( "--warmups", type=str, required=False, help="Specify custom warmup functions (csv) to run before server starts eg. --warmups=warmup_name1,warmup_name2 " "will run the functions `warmup_name1` and `warmup_name2` specified in warmup.py before the server starts listening for requests", ) parser.add_argument( "--nccl-port", type=int, default=ServerArgs.nccl_port, help="The port for NCCL distributed environment setup. Defaults to a random port.", ) parser.add_argument( "--checkpoint-engine-wait-weights-before-ready", action="store_true", help="If set, the server will wait for initial weights to be loaded via checkpoint-engine or other update methods " "before serving inference requests.", ) # SSL/TLS parser.add_argument( "--ssl-keyfile", type=str, default=ServerArgs.ssl_keyfile, help="The file path to the SSL key file.", ) parser.add_argument( "--ssl-certfile", type=str, default=ServerArgs.ssl_certfile, help="The file path to the SSL certificate file.", ) parser.add_argument( "--ssl-ca-certs", type=str, default=ServerArgs.ssl_ca_certs, help="The CA certificates file.", ) parser.add_argument( "--ssl-keyfile-password", type=str, default=ServerArgs.ssl_keyfile_password, help="The password to decrypt the SSL keyfile.", ) parser.add_argument( "--enable-ssl-refresh", action="store_true", default=ServerArgs.enable_ssl_refresh, help="Enable automatic SSL certificate hot-reloading when cert/key " "files change on disk. Requires --ssl-certfile and --ssl-keyfile.", ) # Quantization and data type parser.add_argument( "--dtype", type=str, default=ServerArgs.dtype, choices=["auto", "half", "float16", "bfloat16", "float", "float32"], help="Data type for model weights and activations.\n\n" '* "auto" will use FP16 precision for FP32 and FP16 models, and ' "BF16 precision for BF16 models.\n" '* "half" for FP16. Recommended for AWQ quantization.\n' '* "float16" is the same as "half".\n' '* "bfloat16" for a balance between precision and range.\n' '* "float" is shorthand for FP32 precision.\n' '* "float32" for FP32 precision.', ) parser.add_argument( "--quantization", type=str, default=ServerArgs.quantization, choices=QUANTIZATION_CHOICES, help="The quantization method.", ) parser.add_argument( "--quantization-param-path", type=nullable_str, default=None, help="Path to the JSON file containing the KV cache " "scaling factors. This should generally be supplied, when " "KV cache dtype is FP8. Otherwise, KV cache scaling factors " "default to 1.0, which may cause accuracy issues. ", ) parser.add_argument( "--kv-cache-dtype", type=str, default=ServerArgs.kv_cache_dtype, choices=["auto", "fp8_e5m2", "fp8_e4m3", "bf16", "bfloat16", "fp4_e2m1"], help='Data type for kv cache storage. "auto" will use model data type. "bf16" or "bfloat16" for BF16 KV cache. "fp8_e5m2" and "fp8_e4m3" are supported for CUDA 11.8+. "fp4_e2m1" (only mxfp4) is supported for CUDA 12.8+ and PyTorch 2.8.0+', ) parser.add_argument( "--enable-fp32-lm-head", action="store_true", help="If set, the LM head outputs (logits) are in FP32.", ) parser.add_argument( "--modelopt-quant", type=str, default=ServerArgs.modelopt_quant, help="The ModelOpt quantization configuration. " "Supported values: 'fp8', 'int4_awq', 'w4a8_awq', 'nvfp4', 'nvfp4_awq'. " "This requires the NVIDIA Model Optimizer library to be installed: pip install nvidia-modelopt", ) parser.add_argument( "--modelopt-checkpoint-restore-path", type=str, default=ServerArgs.modelopt_checkpoint_restore_path, help="Path to restore a previously saved ModelOpt quantized checkpoint. " "If provided, the quantization process will be skipped and the model " "will be loaded from this checkpoint.", ) parser.add_argument( "--modelopt-checkpoint-save-path", type=str, default=ServerArgs.modelopt_checkpoint_save_path, help="Path to save the ModelOpt quantized checkpoint after quantization. " "This allows reusing the quantized model in future runs.", ) parser.add_argument( "--modelopt-export-path", type=str, default=ServerArgs.modelopt_export_path, help="Path to export the quantized model in HuggingFace format after ModelOpt quantization. " "The exported model can then be used directly with SGLang for inference. " "If not provided, the model will not be exported.", ) parser.add_argument( "--quantize-and-serve", action="store_true", default=ServerArgs.quantize_and_serve, help="Quantize the model with ModelOpt and immediately serve it without exporting. " "This is useful for development and prototyping. For production, it's recommended " "to use separate quantization and deployment steps.", ) parser.add_argument( "--rl-quant-profile", type=str, default=ServerArgs.rl_quant_profile, help="Path to the FlashRL quantization profile. Required when using --load-format flash_rl.", ) # Memory and scheduling parser.add_argument( "--mem-fraction-static", type=float, default=ServerArgs.mem_fraction_static, help="The fraction of the memory used for static allocation (model weights and KV cache memory pool). Use a smaller value if you see out-of-memory errors.", ) parser.add_argument( "--max-running-requests", type=int, default=ServerArgs.max_running_requests, help="The maximum number of running requests.", ) parser.add_argument( "--max-queued-requests", type=int, default=ServerArgs.max_queued_requests, help="The maximum number of queued requests. This option is ignored when using disaggregation-mode.", ) parser.add_argument( "--max-total-tokens", type=int, default=ServerArgs.max_total_tokens, help="The maximum number of tokens in the memory pool. If not specified, it will be automatically calculated based on the memory usage fraction. " "This option is typically used for development and debugging purposes.", ) parser.add_argument( "--chunked-prefill-size", type=int, default=ServerArgs.chunked_prefill_size, help="The maximum number of tokens in a chunk for the chunked prefill. Setting this to -1 means disabling chunked prefill.", ) parser.add_argument( "--prefill-max-requests", type=int, default=ServerArgs.prefill_max_requests, help="The maximum number of requests in a prefill batch. If not specified, there is no limit.", ) parser.add_argument( "--enable-dynamic-chunking", action="store_true", default=ServerArgs.enable_dynamic_chunking, help="Enable dynamic chunk size adjustment for pipeline parallelism. When enabled, chunk sizes are dynamically calculated based on fitted function to maintain consistent execution time across chunks.", ) parser.add_argument( "--max-prefill-tokens", type=int, default=ServerArgs.max_prefill_tokens, help="The maximum number of tokens in a prefill batch. The real bound will be the maximum of this value and the model's maximum context length.", ) parser.add_argument( "--schedule-policy", type=str, default=ServerArgs.schedule_policy, choices=[ "lpm", "random", "fcfs", "dfs-weight", "lof", "priority", "routing-key", ], help="The scheduling policy of the requests.", ) parser.add_argument( "--enable-priority-scheduling", action="store_true", default=ServerArgs.enable_priority_scheduling, help="Enable priority scheduling. Requests with higher priority integer values will be scheduled first by default.", ) parser.add_argument( "--disable-priority-preemption", action="store_true", default=ServerArgs.disable_priority_preemption, help="Disable priority scheduling preemption.", ) parser.add_argument( "--default-priority-value", type=int, default=ServerArgs.default_priority_value, help="Default priority for requests without explicit priority.", ) parser.add_argument( "--abort-on-priority-when-disabled", action="store_true", default=ServerArgs.abort_on_priority_when_disabled, help="If set, abort requests that specify a priority when priority scheduling is disabled.", ) parser.add_argument( "--schedule-low-priority-values-first", action="store_true", default=ServerArgs.schedule_low_priority_values_first, help="If specified with --enable-priority-scheduling, the scheduler will schedule requests with lower priority integer values first.", ) parser.add_argument( "--priority-scheduling-preemption-threshold", type=int, default=ServerArgs.priority_scheduling_preemption_threshold, help="Minimum difference in priorities for an incoming request to have to preempt running request(s).", ) parser.add_argument( "--schedule-conservativeness", type=float, default=ServerArgs.schedule_conservativeness, help="How conservative the schedule policy is. A larger value means more conservative scheduling. Use a larger value if you see requests being retracted frequently.", ) parser.add_argument( "--page-size", type=int, default=ServerArgs.page_size, help="The number of tokens in a page.", ) parser.add_argument( "--hybrid-kvcache-ratio", action=DeprecatedAction, help="Note: --hybrid-kvcache-ratio is deprecated now. Please use --swa-full-tokens-ratio instead.", ) parser.add_argument( "--swa-full-tokens-ratio", type=float, default=ServerArgs.swa_full_tokens_ratio, help="The ratio of SWA layer KV tokens / full layer KV tokens, regardless of the number of swa:full layers. It should be between 0 and 1. " "E.g. 0.5 means if each swa layer has 50 tokens, then each full layer has 100 tokens.", ) parser.add_argument( "--disable-hybrid-swa-memory", action="store_true", help="Disable the hybrid SWA memory pool.", ) parser.add_argument( "--radix-eviction-policy", type=str, choices=RADIX_EVICTION_POLICY_CHOICES, default=ServerArgs.radix_eviction_policy, help="The eviction policy of radix trees. 'lru' stands for Least Recently Used, 'lfu' stands for Least Frequently Used.", ) parser.add_argument( "--enable-prefill-delayer", action="store_true", help="Enable prefill delayer for DP attention to reduce idle time.", ) parser.add_argument( "--prefill-delayer-max-delay-passes", type=int, default=ServerArgs.prefill_delayer_max_delay_passes, help="Maximum forward passes to delay prefill.", ) parser.add_argument( "--prefill-delayer-token-usage-low-watermark", type=float, default=None, help="Token usage low watermark for prefill delayer.", ) parser.add_argument( "--prefill-delayer-forward-passes-buckets", type=float, nargs="+", default=None, help="Custom buckets for prefill delayer forward passes histogram. 0 and max_delay_passes-1 will be auto-added.", ) parser.add_argument( "--prefill-delayer-wait-seconds-buckets", type=float, nargs="+", default=None, help="Custom buckets for prefill delayer wait seconds histogram. 0 will be auto-added.", ) # Runtime options parser.add_argument( "--device", type=str, default=ServerArgs.device, help="The device to use ('cuda', 'xpu', 'hpu', 'npu', 'cpu'). Defaults to auto-detection if not specified.", ) parser.add_argument( "--tensor-parallel-size", "--tp-size", type=int, default=ServerArgs.tp_size, help="The tensor parallelism size.", ) parser.add_argument( "--attention-context-parallel-size", "--attn-cp-size", type=int, default=ServerArgs.attn_cp_size, help="The attention context parallelism size.", ) parser.add_argument( "--moe-data-parallel-size", "--moe-dp-size", type=int, default=ServerArgs.moe_dp_size, help="The moe data parallelism size.", ) parser.add_argument( "--pipeline-parallel-size", "--pp-size", type=int, default=ServerArgs.pp_size, help="The pipeline parallelism size.", ) parser.add_argument( "--pp-max-micro-batch-size", type=int, default=ServerArgs.pp_max_micro_batch_size, help="The maximum micro batch size in pipeline parallelism.", ) parser.add_argument( "--pp-async-batch-depth", type=int, default=ServerArgs.pp_async_batch_depth, help="The async batch depth of pipeline parallelism.", ) parser.add_argument( "--stream-interval", type=int, default=ServerArgs.stream_interval, help="The interval (or buffer size) for streaming in terms of the token length. A smaller value makes streaming smoother, while a larger value makes the throughput higher", ) parser.add_argument( "--stream-output", action="store_true", help="Whether to output as a sequence of disjoint segments.", ) parser.add_argument( "--enable-streaming-session", action="store_true", default=ServerArgs.enable_streaming_session, help="Enable streaming session mode and SessionAwareCache wrapper.", ) parser.add_argument( "--random-seed", type=int, default=ServerArgs.random_seed, help="The random seed.", ) parser.add_argument( "--constrained-json-whitespace-pattern", type=str, default=ServerArgs.constrained_json_whitespace_pattern, help="(outlines and llguidance backends only) Regex pattern for syntactic whitespaces allowed in JSON constrained output. For example, to allow the model generate consecutive whitespaces, set the pattern to [\n\t ]*", ) parser.add_argument( "--constrained-json-disable-any-whitespace", action="store_true", help="(xgrammar and llguidance backends only) Enforce compact representation in JSON constrained output.", ) parser.add_argument( "--watchdog-timeout", type=float, default=ServerArgs.watchdog_timeout, help="Set watchdog timeout in seconds. If a forward batch takes longer than this, the server will crash to prevent hanging.", ) parser.add_argument( "--soft-watchdog-timeout", type=float, default=ServerArgs.soft_watchdog_timeout, help="Set soft watchdog timeout in seconds. If a forward batch takes longer than this, the server will dump information for debugging.", ) parser.add_argument( "--dist-timeout", type=int, default=ServerArgs.dist_timeout, help="Set timeout for torch.distributed initialization.", ) parser.add_argument( "--download-dir", type=str, default=ServerArgs.download_dir, help="Model download directory for huggingface.", ) parser.add_argument( "--model-checksum", type=str, nargs="?", const="", default=None, help="Model file integrity verification. If provided without value, uses model-path as HF repo ID. Otherwise, provide checksums JSON file path or HuggingFace repo ID.", ) parser.add_argument( "--base-gpu-id", type=int, default=ServerArgs.base_gpu_id, help="The base GPU ID to start allocating GPUs from. Useful when running multiple instances on the same machine.", ) parser.add_argument( "--gpu-id-step", type=int, default=ServerArgs.gpu_id_step, help="The delta between consecutive GPU IDs that are used. For example, setting it to 2 will use GPU 0,2,4,...", ) parser.add_argument( "--sleep-on-idle", action="store_true", help="Reduce CPU usage when sglang is idle.", ) parser.add_argument( "--custom-sigquit-handler", help="Register a custom sigquit handler so you can do additional cleanup after the server is shutdown. This is only available for Engine, not for CLI.", ) # Logging parser.add_argument( "--log-level", type=str, default=ServerArgs.log_level, help="The logging level of all loggers.", ) parser.add_argument( "--log-level-http", type=str, default=ServerArgs.log_level_http, help="The logging level of HTTP server. If not set, reuse --log-level by default.", ) parser.add_argument( "--log-requests", action="store_true", help="Log metadata, inputs, outputs of all requests. The verbosity is decided by --log-requests-level", ) parser.add_argument( "--log-requests-level", type=int, default=ServerArgs.log_requests_level, help="0: Log metadata (no sampling parameters). 1: Log metadata and sampling parameters. 2: Log metadata, sampling parameters and partial input/output. 3: Log every input/output.", choices=[0, 1, 2, 3], ) parser.add_argument( "--log-requests-format", type=str, default=ServerArgs.log_requests_format, choices=["text", "json"], help="Format for request logging: 'text' (human-readable) or 'json' (structured)", ) parser.add_argument( "--log-requests-target", type=str, nargs="+", default=ServerArgs.log_requests_target, help="Target(s) for request logging: 'stdout' and/or directory path(s) for file output. " "Can specify multiple targets, e.g., '--log-requests-target stdout /my/path'. ", ) parser.add_argument( "--uvicorn-access-log-exclude-prefixes", type=str, nargs="*", default=list(DEFAULT_UVICORN_ACCESS_LOG_EXCLUDE_PREFIXES), help="Exclude uvicorn access logs whose request path starts with any of these prefixes. " "Defaults to empty (disabled). " "Example: --uvicorn-access-log-exclude-prefixes /metrics /health", ) parser.add_argument( "--crash-dump-folder", type=str, default=ServerArgs.crash_dump_folder, help="Folder path to dump requests from the last 5 min before a crash (if any). If not specified, crash dumping is disabled.", ) parser.add_argument( "--show-time-cost", action="store_true", help="Show time cost of custom marks.", ) parser.add_argument( "--enable-metrics", action="store_true", help="Enable log prometheus metrics.", ) parser.add_argument( "--enable-metrics-for-all-schedulers", action="store_true", help="Enable --enable-metrics-for-all-schedulers when you want schedulers on all TP ranks (not just TP 0) " "to record request metrics separately. This is especially useful when dp_attention is enabled, as " "otherwise all metrics appear to come from TP 0.", ) parser.add_argument( "--tokenizer-metrics-custom-labels-header", type=str, default=ServerArgs.tokenizer_metrics_custom_labels_header, help="Specify the HTTP header for passing custom labels for tokenizer metrics.", ) parser.add_argument( "--tokenizer-metrics-allowed-custom-labels", type=str, nargs="+", default=ServerArgs.tokenizer_metrics_allowed_custom_labels, help="The custom labels allowed for tokenizer metrics. The labels are specified via a dict in " "'--tokenizer-metrics-custom-labels-header' field in HTTP requests, e.g., {'label1': 'value1', 'label2': " "'value2'} is allowed if '--tokenizer-metrics-allowed-custom-labels label1 label2' is set.", ) parser.add_argument( "--extra-metric-labels", type=json.loads, default=ServerArgs.extra_metric_labels, help="The custom labels for metrics. " 'e.g. \'{"label1": "value1", "label2": "value2"}\'', ) parser.add_argument( "--bucket-time-to-first-token", type=float, nargs="+", default=ServerArgs.bucket_time_to_first_token, help="The buckets of time to first token, specified as a list of floats.", ) parser.add_argument( "--bucket-inter-token-latency", type=float, nargs="+", default=ServerArgs.bucket_inter_token_latency, help="The buckets of inter-token latency, specified as a list of floats.", ) parser.add_argument( "--bucket-e2e-request-latency", type=float, nargs="+", default=ServerArgs.bucket_e2e_request_latency, help="The buckets of end-to-end request latency, specified as a list of floats.", ) parser.add_argument( "--collect-tokens-histogram", action="store_true", default=ServerArgs.collect_tokens_histogram, help="Collect prompt/generation tokens histogram.", ) bucket_rule = ( "Supports 3 rule types: 'default' uses predefined buckets; 'tse ' " "generates two sides exponential distributed buckets (e.g., 'tse 1000 2 8' generates buckets " "[984.0, 992.0, 996.0, 998.0, 1000.0, 1002.0, 1004.0, 1008.0, 1016.0]).); 'custom " " ...' uses custom bucket values (e.g., 'custom 10 50 100 500')." ) parser.add_argument( "--prompt-tokens-buckets", type=str, nargs="+", default=ServerArgs.prompt_tokens_buckets, help=f"The buckets rule of prompt tokens. {bucket_rule}", ) parser.add_argument( "--generation-tokens-buckets", type=str, nargs="+", default=ServerArgs.generation_tokens_buckets, help=f"The buckets rule for generation tokens histogram. {bucket_rule}", ) parser.add_argument( "--gc-warning-threshold-secs", type=float, default=ServerArgs.gc_warning_threshold_secs, help="The threshold for long GC warning. If a GC takes longer than this, a warning will be logged. Set to 0 to disable.", ) parser.add_argument( "--decode-log-interval", type=int, default=ServerArgs.decode_log_interval, help="The log interval of decode batch.", ) parser.add_argument( "--enable-request-time-stats-logging", action="store_true", default=ServerArgs.enable_request_time_stats_logging, help="Enable per request time stats logging", ) parser.add_argument( "--kv-events-config", type=str, default=None, help="Config in json format for NVIDIA dynamo KV event publishing. Publishing will be enabled if this flag is used.", ) parser.add_argument( "--enable-trace", action="store_true", help="Enable opentelemetry trace", ) parser.add_argument( "--otlp-traces-endpoint", type=str, default="localhost:4317", help="Config opentelemetry collector endpoint if --enable-trace is set. format: :", ) # RequestMetricsExporter configuration parser.add_argument( "--export-metrics-to-file", action="store_true", help="Export performance metrics for each request to local file (e.g. for forwarding to external systems).", ) parser.add_argument( "--export-metrics-to-file-dir", type=str, default=ServerArgs.export_metrics_to_file_dir, help="Directory path for writing performance metrics files (required when --export-metrics-to-file is enabled).", ) # API related parser.add_argument( "--api-key", type=str, default=ServerArgs.api_key, help="Set API key of the server. It is also used in the OpenAI API compatible server.", ) parser.add_argument( "--admin-api-key", type=str, default=ServerArgs.admin_api_key, help=( "Set admin API key for sensitive management endpoints (e.g. /clear_hicache_storage_backend). " "When set, admin endpoints require this key and do NOT accept --api-key." ), ) parser.add_argument( "--served-model-name", type=str, default=ServerArgs.served_model_name, help="Override the model name returned by the v1/models endpoint in OpenAI API server.", ) parser.add_argument( "--weight-version", type=str, default=ServerArgs.weight_version, help="Version identifier for the model weights. Defaults to 'default' if not specified.", ) parser.add_argument( "--chat-template", type=str, default=ServerArgs.chat_template, help="The buliltin chat template name or the path of the chat template file. This is only used for OpenAI-compatible API server.", ) parser.add_argument( "--hf-chat-template-name", type=str, default=ServerArgs.hf_chat_template_name, help="When the HuggingFace tokenizer has multiple chat templates (e.g., 'default', 'tool_use', 'rag'), " "specify which named template to use. If not set, the first available template is used.", ) parser.add_argument( "--completion-template", type=str, default=ServerArgs.completion_template, help="The buliltin completion template name or the path of the completion template file. This is only used for OpenAI-compatible API server. only for code completion currently.", ) parser.add_argument( "--file-storage-path", type=str, default=ServerArgs.file_storage_path, help="The path of the file storage in backend.", ) parser.add_argument( "--enable-cache-report", action="store_true", help="Return number of cached tokens in usage.prompt_tokens_details for each openai request.", ) parser.add_argument( "--reasoning-parser", type=str, choices=list(ReasoningParser.DetectorMap.keys()), default=ServerArgs.reasoning_parser, help=f"Specify the parser for reasoning models, supported parsers are: {list(ReasoningParser.DetectorMap.keys())}.", ) tool_call_parser_choices = list(FunctionCallParser.ToolCallParserEnum.keys()) parser.add_argument( "--tool-call-parser", type=str, choices=tool_call_parser_choices, default=ServerArgs.tool_call_parser, help=f"Specify the parser for handling tool-call interactions. Options include: {tool_call_parser_choices}.", ) parser.add_argument( "--tool-server", type=str, default=None, help="Either 'demo' or a comma-separated list of tool server urls to use for the model. If not specified, no tool server will be used.", ) parser.add_argument( "--sampling-defaults", type=str, choices=["openai", "model"], default=ServerArgs.sampling_defaults, help="Where to get default sampling parameters. " "'openai' uses SGLang/OpenAI defaults (temperature=1.0, top_p=1.0, etc.). " "'model' uses the model's generation_config.json to get the recommended " "sampling parameters if available. Default is 'model'.", ) # Data parallelism parser.add_argument( "--data-parallel-size", "--dp-size", type=int, default=ServerArgs.dp_size, help="The data parallelism size.", ) parser.add_argument( "--load-balance-method", type=str, default=ServerArgs.load_balance_method, help="The load balancing strategy for data parallelism.", choices=[ "auto", "round_robin", "follow_bootstrap_room", "total_requests", "total_tokens", ], ) parser.add_argument( "--prefill-round-robin-balance", action=DeprecatedAction, help="Note: --prefill-round-robin-balance is deprecated now.", ) # Multi-node distributed serving parser.add_argument( "--dist-init-addr", "--nccl-init-addr", # For backward compatibility. This will be removed in the future. type=str, help="The host address for initializing distributed backend (e.g., `192.168.0.2:25000`).", ) parser.add_argument( "--nnodes", type=int, default=ServerArgs.nnodes, help="The number of nodes." ) parser.add_argument( "--node-rank", type=int, default=ServerArgs.node_rank, help="The node rank." ) # Model override args parser.add_argument( "--json-model-override-args", type=str, help="A dictionary in JSON string format used to override default model configurations.", default=ServerArgs.json_model_override_args, ) parser.add_argument( "--preferred-sampling-params", type=json.loads, help="json-formatted sampling settings that will be returned in /get_model_info", ) # LoRA parser.add_argument( "--enable-lora", default=ServerArgs.enable_lora, action="store_true", help="Enable LoRA support for the model. This argument is automatically set to True if `--lora-paths` is provided for backward compatibility.", ) parser.add_argument( "--enable-lora-overlap-loading", default=ServerArgs.enable_lora_overlap_loading, action="store_true", help="Enable asynchronous LoRA weight loading in order to overlap H2D transfers with GPU compute. This should be enabled if you find that your LoRA workloads are bottlenecked by adapter weight loading, for example when frequently loading large LoRA adapters.", ) parser.add_argument( "--max-lora-rank", default=ServerArgs.max_lora_rank, type=int, help="The maximum rank of LoRA adapters. If not specified, it will be automatically inferred from the adapters provided in --lora-paths.", ) parser.add_argument( "--lora-target-modules", type=str, choices=SUPPORTED_LORA_TARGET_MODULES + [LORA_TARGET_ALL_MODULES], nargs="*", default=None, help="The union set of all target modules where LoRA should be applied. If not specified, " "it will be automatically inferred from the adapters provided in --lora-paths. If 'all' is specified, " "all supported modules will be targeted.", ) parser.add_argument( "--lora-paths", type=str, nargs="*", default=None, action=LoRAPathAction, help='The list of LoRA adapters to load. Each adapter must be specified in one of the following formats: | = | JSON with schema {"lora_name":str,"lora_path":str,"pinned":bool}', ) parser.add_argument( "--max-loras-per-batch", type=int, default=8, help="Maximum number of adapters for a running batch, include base-only request.", ) parser.add_argument( "--max-loaded-loras", type=int, default=ServerArgs.max_loaded_loras, help="If specified, it limits the maximum number of LoRA adapters loaded in CPU memory at a time. The value must be greater than or equal to `--max-loras-per-batch`.", ) parser.add_argument( "--lora-eviction-policy", type=str, default=ServerArgs.lora_eviction_policy, choices=["lru", "fifo"], help="LoRA adapter eviction policy when memory pool is full. 'lru': Least Recently Used (default, better cache efficiency). 'fifo': First-In-First-Out.", ) parser.add_argument( "--lora-backend", type=str, choices=LORA_BACKEND_CHOICES, default=ServerArgs.lora_backend, help="Choose the kernel backend for multi-LoRA serving.", ) parser.add_argument( "--max-lora-chunk-size", type=int, default=ServerArgs.max_lora_chunk_size, choices=[16, 32, 64, 128], help="Maximum chunk size for the ChunkedSGMV LoRA backend. Only used when --lora-backend is 'csgmv'. Choosing a larger value might improve performance.", ) # Kernel backend parser.add_argument( "--attention-backend", type=str, choices=ATTENTION_BACKEND_CHOICES, default=ServerArgs.attention_backend, help="Choose the kernels for attention layers.", ) parser.add_argument( "--prefill-attention-backend", type=str, choices=ATTENTION_BACKEND_CHOICES, default=ServerArgs.prefill_attention_backend, help="Choose the kernels for prefill attention layers (have priority over --attention-backend).", ) parser.add_argument( "--decode-attention-backend", type=str, choices=ATTENTION_BACKEND_CHOICES, default=ServerArgs.decode_attention_backend, help="Choose the kernels for decode attention layers (have priority over --attention-backend).", ) parser.add_argument( "--sampling-backend", type=str, choices=SAMPLING_BACKEND_CHOICES, default=ServerArgs.sampling_backend, help="Choose the kernels for sampling layers.", ) parser.add_argument( "--grammar-backend", type=str, choices=GRAMMAR_BACKEND_CHOICES, default=ServerArgs.grammar_backend, help="Choose the backend for grammar-guided decoding.", ) parser.add_argument( "--mm-attention-backend", type=str, choices=[ "sdpa", "fa3", "fa4", "triton_attn", "ascend_attn", "aiter_attn", "flashinfer_cudnn", ], default=ServerArgs.mm_attention_backend, help="Set multimodal attention backend.", ) parser.add_argument( "--nsa-prefill-backend", default=ServerArgs.nsa_prefill_backend, type=str, choices=NSA_CHOICES, help="NSA prefill backend. If not specified, auto-detects based on hardware and kv_cache_dtype.", ) parser.add_argument( "--nsa-decode-backend", default=ServerArgs.nsa_decode_backend, type=str, choices=NSA_CHOICES, help="NSA decode backend. If not specified, auto-detects based on hardware and kv_cache_dtype.", ) parser.add_argument( "--fp8-gemm-backend", type=str, choices=FP8_GEMM_RUNNER_BACKEND_CHOICES, default=ServerArgs.fp8_gemm_runner_backend, dest="fp8_gemm_runner_backend", help="Choose the runner backend for Blockwise FP8 GEMM operations. " "Options: 'auto' (default, auto-selects based on hardware), " "'deep_gemm' (JIT-compiled; enabled by default on NVIDIA Hopper (SM90) and Blackwell (SM100) when DeepGEMM is installed), " "'flashinfer_trtllm' (optimal for Blackwell and low-latency), " "'flashinfer_cutlass' (FlashInfer CUTLASS groupwise FP8 GEMM), " "'flashinfer_deepgemm' (Hopper SM90 only; uses swapAB optimization for small M dimensions in decoding), " "'cutlass' (optimal for Hopper/Blackwell GPUs and high-throughput), " "'triton' (fallback, widely compatible), " "'aiter' (ROCm only). " "NOTE: This replaces the deprecated environment variables " "SGLANG_ENABLE_FLASHINFER_FP8_GEMM and SGLANG_SUPPORT_CUTLASS_BLOCK_FP8.", ) parser.add_argument( "--fp4-gemm-backend", type=str, choices=FP4_GEMM_RUNNER_BACKEND_CHOICES, default=ServerArgs.fp4_gemm_runner_backend, dest="fp4_gemm_runner_backend", help="Choose the runner backend for NVFP4 GEMM operations. " "Options: 'flashinfer_cutlass' (default), " "'auto' (auto-selects between flashinfer_cudnn/flashinfer_cutlass based on CUDA/cuDNN version), " "'flashinfer_cudnn' (FlashInfer cuDNN backend, optimal on CUDA 13+ with cuDNN 9.15+), " "'flashinfer_trtllm' (FlashInfer TensorRT-LLM backend, requires different weight preparation with shuffling). " "NOTE: This replaces the deprecated environment variable " "SGLANG_FLASHINFER_FP4_GEMM_BACKEND.", ) parser.add_argument( "--disable-flashinfer-autotune", default=ServerArgs.disable_flashinfer_autotune, action="store_true", help="Disable FlashInfer autotuning.", ) # Speculative decoding parser.add_argument( "--speculative-algorithm", type=str, choices=["EAGLE", "EAGLE3", "NEXTN", "STANDALONE", "NGRAM"], help="Speculative algorithm.", ) parser.add_argument( "--speculative-draft-model-path", "--speculative-draft-model", type=str, help="The path of the draft model weights. This can be a local folder or a Hugging Face repo ID.", ) parser.add_argument( "--speculative-draft-model-revision", type=str, default=None, help="The specific draft model version to use. It can be a branch " "name, a tag name, or a commit id. If unspecified, will use " "the default version.", ) parser.add_argument( "--speculative-draft-load-format", type=str, default=ServerArgs.speculative_draft_load_format, choices=LOAD_FORMAT_CHOICES, help="The format of the draft model weights to load. " "If not specified, will use the same format as --load-format. " "Use 'dummy' to initialize draft model weights with random values for profiling.", ) parser.add_argument( "--speculative-num-steps", type=int, help="The number of steps sampled from draft model in Speculative Decoding.", default=ServerArgs.speculative_num_steps, ) parser.add_argument( "--speculative-eagle-topk", type=int, help="The number of tokens sampled from the draft model in eagle2 each step.", default=ServerArgs.speculative_eagle_topk, ) parser.add_argument( "--speculative-num-draft-tokens", type=int, help="The number of tokens sampled from the draft model in Speculative Decoding.", default=ServerArgs.speculative_num_draft_tokens, ) parser.add_argument( "--speculative-accept-threshold-single", type=float, help="Accept a draft token if its probability in the target model is greater than this threshold.", default=ServerArgs.speculative_accept_threshold_single, ) parser.add_argument( "--speculative-accept-threshold-acc", type=float, help="The accept probability of a draft token is raised from its target probability p to min(1, p / threshold_acc).", default=ServerArgs.speculative_accept_threshold_acc, ) parser.add_argument( "--speculative-token-map", type=str, help="The path of the draft model's small vocab table.", default=ServerArgs.speculative_token_map, ) parser.add_argument( "--speculative-attention-mode", type=str, choices=["prefill", "decode"], help="Attention backend for speculative decoding operations (both target verify and draft extend). Can be one of 'prefill' (default) or 'decode'.", default=ServerArgs.speculative_attention_mode, ) parser.add_argument( "--speculative-draft-attention-backend", type=str, help="Attention backend for speculative decoding drafting.", default=ServerArgs.speculative_draft_attention_backend, ) parser.add_argument( "--speculative-moe-runner-backend", type=str, choices=MOE_RUNNER_BACKEND_CHOICES, default=ServerArgs.speculative_moe_runner_backend, help="Choose the runner backend for MoE in speculative decoding.", ) parser.add_argument( "--speculative-moe-a2a-backend", type=str, choices=MOE_A2A_BACKEND_CHOICES, default=ServerArgs.speculative_moe_a2a_backend, help="Choose the backend for MoE A2A in speculative decoding", ) parser.add_argument( "--speculative-draft-model-quantization", type=str, choices=SPECULATIVE_DRAFT_MODEL_QUANTIZATION_CHOICES, default=ServerArgs.speculative_draft_model_quantization, help="The quantization method for speculative model.", ) # Speculative decoding (ngram) parser.add_argument( "--speculative-ngram-min-match-window-size", type=int, default=ServerArgs.speculative_ngram_min_match_window_size, help="The minimum window size for pattern matching in ngram speculative decoding.", ) parser.add_argument( "--speculative-ngram-max-match-window-size", type=int, default=ServerArgs.speculative_ngram_max_match_window_size, help="The maximum window size for pattern matching in ngram speculative decoding.", ) parser.add_argument( "--speculative-ngram-min-bfs-breadth", type=int, default=ServerArgs.speculative_ngram_min_bfs_breadth, help="The minimum breadth for BFS (Breadth-First Search) in ngram speculative decoding.", ) parser.add_argument( "--speculative-ngram-max-bfs-breadth", type=int, default=ServerArgs.speculative_ngram_max_bfs_breadth, help="The maximum breadth for BFS (Breadth-First Search) in ngram speculative decoding.", ) parser.add_argument( "--speculative-ngram-match-type", type=str, choices=["BFS", "PROB"], default=ServerArgs.speculative_ngram_match_type, help="The match type for cache tree.", ) parser.add_argument( "--speculative-ngram-branch-length", type=int, default=ServerArgs.speculative_ngram_branch_length, help="The branch length for ngram speculative decoding.", ) parser.add_argument( "--speculative-ngram-capacity", type=int, default=ServerArgs.speculative_ngram_capacity, help="The cache capacity for ngram speculative decoding.", ) # Multi-layer Eagle speculative decoding parser.add_argument( "--enable-multi-layer-eagle", action="store_true", help="Enable multi-layer Eagle speculative decoding.", ) # Expert parallelism parser.add_argument( "--expert-parallel-size", "--ep-size", "--ep", type=int, default=ServerArgs.ep_size, help="The expert parallelism size.", ) parser.add_argument( "--moe-a2a-backend", type=str, choices=MOE_A2A_BACKEND_CHOICES, default=ServerArgs.moe_a2a_backend, help="Choose the backend for MoE A2A.", ) parser.add_argument( "--moe-runner-backend", type=str, choices=MOE_RUNNER_BACKEND_CHOICES, default=ServerArgs.moe_runner_backend, help="Choose the runner backend for MoE.", ) parser.add_argument( "--flashinfer-mxfp4-moe-precision", type=str, choices=["default", "bf16"], default=ServerArgs.flashinfer_mxfp4_moe_precision, help="Choose the computation precision of flashinfer mxfp4 moe", ) parser.add_argument( "--enable-flashinfer-allreduce-fusion", action="store_true", help="Enable FlashInfer allreduce fusion with Residual RMSNorm.", ) parser.add_argument( "--enable-aiter-allreduce-fusion", action="store_true", help="Enable Aiter AllReduce Fusion.", ) parser.add_argument( "--deepep-mode", type=str, choices=["normal", "low_latency", "auto"], default="auto", help="Select the mode when enable DeepEP MoE, could be `normal`, `low_latency` or `auto`. Default is `auto`, which means `low_latency` for decode batch and `normal` for prefill batch.", ) parser.add_argument( "--ep-num-redundant-experts", type=int, default=ServerArgs.ep_num_redundant_experts, help="Allocate this number of redundant experts in expert parallel.", ) parser.add_argument( "--ep-dispatch-algorithm", type=str, default=ServerArgs.ep_dispatch_algorithm, help="The algorithm to choose ranks for redundant experts in expert parallel.", ) parser.add_argument( "--init-expert-location", type=str, default=ServerArgs.init_expert_location, help="Initial location of EP experts.", ) parser.add_argument( "--enable-eplb", action="store_true", help="Enable EPLB algorithm", ) parser.add_argument( "--eplb-algorithm", type=str, default=ServerArgs.eplb_algorithm, help="Chosen EPLB algorithm", ) parser.add_argument( "--eplb-rebalance-num-iterations", type=int, default=ServerArgs.eplb_rebalance_num_iterations, help="Number of iterations to automatically trigger a EPLB re-balance.", ) parser.add_argument( "--eplb-rebalance-layers-per-chunk", type=int, default=ServerArgs.eplb_rebalance_layers_per_chunk, help="Number of layers to rebalance per forward pass.", ) parser.add_argument( "--eplb-min-rebalancing-utilization-threshold", type=float, default=ServerArgs.eplb_min_rebalancing_utilization_threshold, help="Minimum threshold for GPU average utilization to trigger EPLB rebalancing. Must be in the range [0.0, 1.0].", ) parser.add_argument( "--expert-distribution-recorder-mode", type=str, default=ServerArgs.expert_distribution_recorder_mode, help="Mode of expert distribution recorder.", ) parser.add_argument( "--expert-distribution-recorder-buffer-size", type=int, default=ServerArgs.expert_distribution_recorder_buffer_size, help="Circular buffer size of expert distribution recorder. Set to -1 to denote infinite buffer.", ) parser.add_argument( "--enable-expert-distribution-metrics", action="store_true", help="Enable logging metrics for expert balancedness", ) parser.add_argument( "--deepep-config", type=str, default=ServerArgs.deepep_config, help="Tuned DeepEP config suitable for your own cluster. It can be either a string with JSON content or a file path.", ) parser.add_argument( "--moe-dense-tp-size", type=int, default=ServerArgs.moe_dense_tp_size, help="TP size for MoE dense MLP layers. This flag is useful when, with large TP size, there are errors caused by weights in MLP layers having dimension smaller than the min dimension GEMM supports.", ) parser.add_argument( "--elastic-ep-backend", type=str, default=ServerArgs.elastic_ep_backend, choices=["none", "mooncake"], help="Specify the collective communication backend for elastic EP. Currently supports 'mooncake'.", ) parser.add_argument( "--enable-elastic-expert-backup", action="store_true", default=ServerArgs.enable_elastic_expert_backup, help="Enable elastic expert backup feature.", ) parser.add_argument( "--mooncake-ib-device", type=str, default=ServerArgs.mooncake_ib_device, help="The InfiniBand devices for Mooncake Backend transfer, accepts multiple comma-separated devices " "(e.g., --mooncake-ib-device mlx5_0,mlx5_1). " "Default is None, which triggers automatic device detection when Mooncake Backend is enabled.", ) # Mamba Cache parser.add_argument( "--max-mamba-cache-size", type=int, default=ServerArgs.max_mamba_cache_size, help="The maximum size of the mamba cache.", ) parser.add_argument( "--mamba-ssm-dtype", type=str, default=None, choices=MAMBA_SSM_DTYPE_CHOICES, help="The data type of the SSM states in mamba cache. " "If not set, will be read from model config (mamba_ssm_dtype).", ) parser.add_argument( "--mamba-full-memory-ratio", type=float, default=ServerArgs.mamba_full_memory_ratio, help="The ratio of mamba state memory to full kv cache memory.", ) parser.add_argument( "--mamba-scheduler-strategy", type=str, choices=MAMBA_SCHEDULER_STRATEGY_CHOICES, default=ServerArgs.mamba_scheduler_strategy, help="The strategy to use for mamba radix cache.", ) parser.add_argument( "--mamba-track-interval", type=int, default=ServerArgs.mamba_track_interval, help="The interval to track the mamba state during decode.", ) parser.add_argument( "--mamba-backend", type=str, choices=MAMBA_BACKEND_CHOICES, default=ServerArgs.mamba_backend, help="Choose the kernel backend for Mamba SSM operations. Default is 'triton'. " "Options: 'triton' (default), 'flashinfer' (requires FlashInfer with Mamba support).", ) parser.add_argument( "--linear-attn-backend", type=str, choices=LINEAR_ATTN_KERNEL_BACKEND_CHOICES, default=ServerArgs.linear_attn_backend, help="The default kernel backend for linear attention (GDN/KDA). " "Can be overridden per-mode by --linear-attn-decode-backend " "and --linear-attn-prefill-backend.", ) parser.add_argument( "--linear-attn-decode-backend", type=str, choices=LINEAR_ATTN_KERNEL_BACKEND_CHOICES, default=ServerArgs.linear_attn_decode_backend, help="Override the kernel backend for linear attention decode. " "If not set, uses --linear-attn-backend.", ) parser.add_argument( "--linear-attn-prefill-backend", type=str, choices=LINEAR_ATTN_KERNEL_BACKEND_CHOICES, default=ServerArgs.linear_attn_prefill_backend, help="Override the kernel backend for linear attention prefill/extend. " "If not set, uses --linear-attn-backend.", ) # Hierarchical cache parser.add_argument( "--enable-hierarchical-cache", action="store_true", help="Enable hierarchical cache", ) parser.add_argument( "--hicache-ratio", type=float, default=ServerArgs.hicache_ratio, help="The ratio of the size of host KV cache memory pool to the size of device pool.", ) parser.add_argument( "--hicache-size", type=int, default=ServerArgs.hicache_size, help="The size of host KV cache memory pool in gigabytes, which will override the hicache_ratio if set.", ) parser.add_argument( "--hicache-write-policy", type=str, choices=["write_back", "write_through", "write_through_selective"], default=ServerArgs.hicache_write_policy, help="The write policy of hierarchical cache.", ) parser.add_argument( "--hicache-io-backend", type=str, choices=["direct", "kernel", "kernel_ascend"], default=ServerArgs.hicache_io_backend, help="The IO backend for KV cache transfer between CPU and GPU", ) parser.add_argument( "--hicache-mem-layout", type=str, choices=[ "layer_first", "page_first", "page_first_direct", "page_first_kv_split", "page_head", ], default=ServerArgs.hicache_mem_layout, help="The layout of host memory pool for hierarchical cache.", ) parser.add_argument( "--disable-hicache-numa-detect", action="store_true", help="Disable binding the process to the NUMA node closest to the active CUDA device when hierarchical cache is enabled.", ) parser.add_argument( "--hicache-storage-backend", type=str, choices=["file", "mooncake", "hf3fs", "nixl", "aibrix", "dynamic", "eic"], default=ServerArgs.hicache_storage_backend, help="The storage backend for hierarchical KV cache. " "Built-in backends: file, mooncake, hf3fs, nixl, aibrix. " "For dynamic backend, use --hicache-storage-backend-extra-config to specify: " "backend_name (custom name), module_path (Python module path), class_name (backend class name).", ) parser.add_argument( "--hicache-storage-prefetch-policy", type=str, choices=["best_effort", "wait_complete", "timeout"], default=ServerArgs.hicache_storage_prefetch_policy, help="Control when prefetching from the storage backend should stop.", ) parser.add_argument( "--hicache-storage-backend-extra-config", type=str, default=ServerArgs.hicache_storage_backend_extra_config, help="A dictionary in JSON string format, or a string starting with a leading '@' and a config file in JSON/YAML/TOML format, containing extra configuration for the storage backend.", ) # Hierarchical sparse attention parser.add_argument( "--hierarchical-sparse-attention-extra-config", type=str, default=ServerArgs.hierarchical_sparse_attention_extra_config, help="A dictionary in JSON string format for hierarchical sparse attention configuration. " "Required fields: algorithm (str), backend (str). " "All other fields are algorithm-specific and passed to the algorithm constructor. " 'Example: \'{"algorithm": "quest", "backend": "flashattention", "sparsity_ratio": 0.7, "min_sparse_prompt_len": 2048}\'', ) # LMCache parser.add_argument( "--enable-lmcache", action="store_true", help="Using LMCache as an alternative hierarchical cache solution", ) # Ktransformer server args parser.add_argument( "--kt-weight-path", type=str, help="[ktransformers parameter] The path of the quantized expert weights for amx kernel. A local folder.", ) parser.add_argument( "--kt-method", type=str, default="AMXINT4", help="[ktransformers parameter] Quantization formats for CPU execution.", ) parser.add_argument( "--kt-cpuinfer", type=int, help="[ktransformers parameter] The number of CPUInfer threads.", ) parser.add_argument( "--kt-threadpool-count", type=int, default=2, help="[ktransformers parameter] One-to-one with the number of NUMA nodes (one thread pool per NUMA).", ) parser.add_argument( "--kt-num-gpu-experts", type=int, help="[ktransformers parameter] The number of GPU experts.", ) parser.add_argument( "--kt-max-deferred-experts-per-token", type=int, default=ServerArgs.kt_max_deferred_experts_per_token, help="[ktransformers parameter] Maximum number of experts deferred to CPU per token. All MoE layers except the final one use this value; the final layer always uses 0.", ) # Diffusion LLM parser.add_argument( "--dllm-algorithm", type=str, default=ServerArgs.dllm_algorithm, help="The diffusion LLM algorithm, such as LowConfidence.", ) parser.add_argument( "--dllm-algorithm-config", type=str, default=ServerArgs.dllm_algorithm_config, help="The diffusion LLM algorithm configurations. Must be a YAML file.", ) # Double Sparsity parser.add_argument( "--enable-double-sparsity", action="store_true", help="Enable double sparsity attention", ) parser.add_argument( "--ds-channel-config-path", type=str, default=ServerArgs.ds_channel_config_path, help="The path of the double sparsity channel config", ) parser.add_argument( "--ds-heavy-channel-num", type=int, default=ServerArgs.ds_heavy_channel_num, help="The number of heavy channels in double sparsity attention", ) parser.add_argument( "--ds-heavy-token-num", type=int, default=ServerArgs.ds_heavy_token_num, help="The number of heavy tokens in double sparsity attention", ) parser.add_argument( "--ds-heavy-channel-type", type=str, default=ServerArgs.ds_heavy_channel_type, help="The type of heavy channels in double sparsity attention", ) parser.add_argument( "--ds-sparse-decode-threshold", type=int, default=ServerArgs.ds_sparse_decode_threshold, help="The minimum decode sequence length required before the double-sparsity backend switches from the dense fallback to the sparse decode kernel.", ) # Offloading parser.add_argument( "--cpu-offload-gb", type=int, default=ServerArgs.cpu_offload_gb, help="How many GBs of RAM to reserve for CPU offloading.", ) parser.add_argument( "--offload-group-size", type=int, default=ServerArgs.offload_group_size, help="Number of layers per group in offloading.", ) parser.add_argument( "--offload-num-in-group", type=int, default=ServerArgs.offload_num_in_group, help="Number of layers to be offloaded within a group.", ) parser.add_argument( "--offload-prefetch-step", type=int, default=ServerArgs.offload_prefetch_step, help="Steps to prefetch in offloading.", ) parser.add_argument( "--offload-mode", type=str, default=ServerArgs.offload_mode, help="Mode of offloading.", ) # Args for multi-item-scoring parser.add_argument( "--multi-item-scoring-delimiter", type=int, default=ServerArgs.multi_item_scoring_delimiter, help="Delimiter token ID for multi-item scoring. Used to combine Query and Items into a single sequence: QueryItem1Item2... This enables efficient batch processing of multiple items against a single query.", ) # Optimization/debug options parser.add_argument( "--disable-radix-cache", action="store_true", help="Disable RadixAttention for prefix caching.", ) parser.add_argument( "--cuda-graph-max-bs", type=int, default=ServerArgs.cuda_graph_max_bs, help="Set the maximum batch size for cuda graph. It will extend the cuda graph capture batch size to this value.", ) parser.add_argument( "--cuda-graph-bs", type=int, nargs="+", help="Set the list of batch sizes for cuda graph.", ) parser.add_argument( "--disable-cuda-graph", action="store_true", help="Disable cuda graph.", ) parser.add_argument( "--disable-cuda-graph-padding", action="store_true", help="Disable cuda graph when padding is needed. Still uses cuda graph when padding is not needed.", ) parser.add_argument( "--enable-profile-cuda-graph", action="store_true", help="Enable profiling of cuda graph capture.", ) parser.add_argument( "--enable-cudagraph-gc", action="store_true", help="Enable garbage collection during CUDA graph capture. If disabled (default), GC is frozen during capture to speed up the process.", ) parser.add_argument( "--enable-layerwise-nvtx-marker", action="store_true", help="Enable layerwise NVTX profiling annotations for the model.", ) parser.add_argument( "--enable-nccl-nvls", action="store_true", help="Enable NCCL NVLS for prefill heavy requests when available.", ) parser.add_argument( "--enable-symm-mem", action="store_true", help="Enable NCCL symmetric memory for fast collectives.", ) parser.add_argument( "--disable-flashinfer-cutlass-moe-fp4-allgather", action="store_true", help="Disables quantize before all-gather for flashinfer cutlass moe.", ) parser.add_argument( "--enable-tokenizer-batch-encode", action="store_true", help="Enable batch tokenization for improved performance when processing multiple text inputs. Do not use with image inputs, pre-tokenized input_ids, or input_embeds.", ) parser.add_argument( "--disable-tokenizer-batch-decode", action="store_true", help="Disable batch decoding when decoding multiple completions.", ) parser.add_argument( "--disable-outlines-disk-cache", action="store_true", help="Disable disk cache of outlines to avoid possible crashes related to file system or high concurrency.", ) parser.add_argument( "--disable-custom-all-reduce", action="store_true", help="Disable the custom all-reduce kernel and fall back to NCCL.", ) parser.add_argument( "--enable-mscclpp", action="store_true", help="Enable using mscclpp for small messages for all-reduce kernel and fall back to NCCL.", ) parser.add_argument( "--enable-torch-symm-mem", action="store_true", help="Enable using torch symm mem for all-reduce kernel and fall back to NCCL. Only supports CUDA device SM90 and above. SM90 supports world size 4, 6, 8. SM100 supports world size 6, 8.", ) parser.add_argument( "--disable-overlap-schedule", action="store_true", help="Disable the overlap scheduler, which overlaps the CPU scheduler with GPU model worker.", ) parser.add_argument( "--enable-mixed-chunk", action="store_true", help="Enabling mixing prefill and decode in a batch when using chunked prefill.", ) parser.add_argument( "--enable-dp-attention", action="store_true", help="Enabling data parallelism for attention and tensor parallelism for FFN. The dp size should be equal to the tp size. Currently DeepSeek-V2 and Qwen 2/3 MoE models are supported.", ) parser.add_argument( "--enable-dp-lm-head", action="store_true", help="Enable vocabulary parallel across the attention TP group to avoid all-gather across DP groups, optimizing performance under DP attention.", ) parser.add_argument( "--enable-two-batch-overlap", action="store_true", help="Enabling two micro batches to overlap.", ) parser.add_argument( "--enable-single-batch-overlap", action="store_true", help="Let computation and communication overlap within one micro batch.", ) parser.add_argument( "--tbo-token-distribution-threshold", type=float, default=ServerArgs.tbo_token_distribution_threshold, help="The threshold of token distribution between two batches in micro-batch-overlap, determines whether to two-batch-overlap or two-chunk-overlap. Set to 0 denote disable two-chunk-overlap.", ) parser.add_argument( "--enable-torch-compile", action="store_true", help="Optimize the model with torch.compile. Experimental feature.", ) parser.add_argument( "--enable-torch-compile-debug-mode", action="store_true", help="Enable debug mode for torch compile", ) parser.add_argument( "--disable-piecewise-cuda-graph", action="store_true", help="Disable piecewise cuda graph for extend/prefill.", ) parser.add_argument( "--enable-piecewise-cuda-graph", action=DeprecatedAction, help="Deprecated: Piecewise cuda graph is enabled by default. Use --enforce-piecewise-cuda-graph to skip auto-disable conditions.", ) parser.add_argument( "--enforce-piecewise-cuda-graph", action="store_true", help="Enforce piecewise cuda graph, skipping all auto-disable conditions. Used for testing.", ) parser.add_argument( "--piecewise-cuda-graph-tokens", type=int, nargs="+", help="Set the list of token lengths for piecewise cuda graph capture.", ) parser.add_argument( "--piecewise-cuda-graph-compiler", type=str, default=ServerArgs.piecewise_cuda_graph_compiler, help="Set the compiler for piecewise cuda graph. Choices are: eager, inductor.", choices=["eager", "inductor"], ) parser.add_argument( "--torch-compile-max-bs", type=int, default=ServerArgs.torch_compile_max_bs, help="Set the maximum batch size when using torch compile.", ) parser.add_argument( "--piecewise-cuda-graph-max-tokens", type=int, default=ServerArgs.piecewise_cuda_graph_max_tokens, help="Set the maximum tokens when using piecewise cuda graph.", ) parser.add_argument( "--torchao-config", type=str, default=ServerArgs.torchao_config, help="Optimize the model with torchao. Experimental feature. Current choices are: int8dq, int8wo, int4wo-, fp8wo, fp8dq-per_tensor, fp8dq-per_row", ) parser.add_argument( "--enable-nan-detection", action="store_true", help="Enable the NaN detection for debugging purposes.", ) parser.add_argument( "--enable-p2p-check", action="store_true", help="Enable P2P check for GPU access, otherwise the p2p access is allowed by default.", ) parser.add_argument( "--triton-attention-reduce-in-fp32", action="store_true", help="Cast the intermediate attention results to fp32 to avoid possible crashes related to fp16." "This only affects Triton attention kernels.", ) parser.add_argument( "--triton-attention-num-kv-splits", type=int, default=ServerArgs.triton_attention_num_kv_splits, help="The number of KV splits in flash decoding Triton kernel. Larger value is better in longer context scenarios. The default value is 8.", ) parser.add_argument( "--triton-attention-split-tile-size", type=int, default=ServerArgs.triton_attention_split_tile_size, help="The size of split KV tile in flash decoding Triton kernel. Used for deterministic inference.", ) parser.add_argument( "--num-continuous-decode-steps", type=int, default=ServerArgs.num_continuous_decode_steps, help="Run multiple continuous decoding steps to reduce scheduling overhead. " "This can potentially increase throughput but may also increase time-to-first-token latency. " "The default value is 1, meaning only run one decoding step at a time.", ) parser.add_argument( "--delete-ckpt-after-loading", action="store_true", help="Delete the model checkpoint after loading the model.", ) parser.add_argument( "--enable-memory-saver", action="store_true", help="Allow saving memory using release_memory_occupation and resume_memory_occupation", ) parser.add_argument( "--enable-weights-cpu-backup", action="store_true", help="Save model weights (both main model and draft model, if any) to CPU memory during release_weights_occupation and resume_weights_occupation", ) parser.add_argument( "--enable-draft-weights-cpu-backup", action="store_true", help="Save draft model weights to CPU memory during release_weights_occupation and resume_weights_occupation", ) parser.add_argument( "--allow-auto-truncate", action="store_true", help="Allow automatically truncating requests that exceed the maximum input length instead of returning an error.", ) parser.add_argument( "--enable-custom-logit-processor", action="store_true", help="Enable users to pass custom logit processors to the server (disabled by default for security)", ) parser.add_argument( "--flashinfer-mla-disable-ragged", action="store_true", help="Not using ragged prefill wrapper when running flashinfer mla", ) parser.add_argument( "--disable-shared-experts-fusion", action="store_true", help="Disable shared experts fusion optimization for deepseek v3/r1.", ) parser.add_argument( "--disable-chunked-prefix-cache", action="store_true", help="Disable chunked prefix cache feature for deepseek, which should save overhead for short sequences.", ) parser.add_argument( "--disable-fast-image-processor", action="store_true", help="Adopt base image processor instead of fast image processor.", ) parser.add_argument( "--keep-mm-feature-on-device", action="store_true", help="Keep multimodal feature tensors on device after processing to save D2H copy.", ) parser.add_argument( "--enable-return-hidden-states", action="store_true", help="Enable returning hidden states with responses.", ) parser.add_argument( "--enable-return-routed-experts", action="store_true", help="Enable returning routed experts of each layer with responses.", ) parser.add_argument( "--scheduler-recv-interval", type=int, default=ServerArgs.scheduler_recv_interval, help="The interval to poll requests in scheduler. Can be set to >1 to reduce the overhead of this.", ) parser.add_argument( "--numa-node", type=int, nargs="+", help="Sets the numa node for the subprocesses. i-th element corresponds to i-th subprocess.", ) parser.add_argument( "--enable-deterministic-inference", action="store_true", help="Enable deterministic inference mode with batch invariant ops.", ) parser.add_argument( "--rl-on-policy-target", type=str, default=ServerArgs.rl_on_policy_target, choices=RL_ON_POLICY_TARGET_CHOICES, help="The training system that SGLang needs to match for true on-policy.", ) parser.add_argument( "--enable-attn-tp-input-scattered", action="store_true", help="Allow input of attention to be scattered when only using tensor parallelism, to reduce the computational load of operations such as qkv latent.", ) parser.add_argument( "--enable-nsa-prefill-context-parallel", action="store_true", help="Enable context parallelism used in the long sequence prefill phase of DeepSeek v3.2.", ) parser.add_argument( "--nsa-prefill-cp-mode", type=str, default=ServerArgs.nsa_prefill_cp_mode, choices=NSA_PREFILL_CP_SPLIT_CHOICES, help="Token splitting mode for the prefill phase of DeepSeek v3.2 under context parallelism. Optional values: 'round-robin-split'(default), 'in-seq-split' " "'round-robin-split' distributes tokens across ranks based on token_idx %% cp_size. It supports multi-batch prefill, fused MoE, and FP8 KV cache.", ) parser.add_argument( "--enable-fused-qk-norm-rope", action="store_true", help="Enable fused qk normalization and rope rotary embedding.", ) parser.add_argument( "--enable-precise-embedding-interpolation", action="store_true", help="Enable corner alignment for resize of embeddings grid to ensure more accurate(but slower) evaluation of interpolated embedding values.", ) parser.add_argument( "--enable-fused-moe-sum-all-reduce", action="store_true", help="Enable fused moe triton and sum all reduce.", ) # Dynamic batch tokenizer parser.add_argument( "--enable-dynamic-batch-tokenizer", action="store_true", help="Enable async dynamic batch tokenizer for improved performance when multiple requests arrive concurrently.", ) parser.add_argument( "--dynamic-batch-tokenizer-batch-size", type=int, default=ServerArgs.dynamic_batch_tokenizer_batch_size, help="[Only used if --enable-dynamic-batch-tokenizer is set] Maximum batch size for dynamic batch tokenizer.", ) parser.add_argument( "--dynamic-batch-tokenizer-batch-timeout", type=float, default=ServerArgs.dynamic_batch_tokenizer_batch_timeout, help="[Only used if --enable-dynamic-batch-tokenizer is set] Timeout in seconds for batching tokenization requests.", ) # Debug tensor dumps parser.add_argument( "--debug-tensor-dump-output-folder", type=str, default=ServerArgs.debug_tensor_dump_output_folder, help="The output folder for dumping tensors.", ) parser.add_argument( "--debug-tensor-dump-layers", type=int, nargs="+", help="The layer ids to dump. Dump all layers if not specified.", ) parser.add_argument( "--debug-tensor-dump-input-file", type=str, default=ServerArgs.debug_tensor_dump_input_file, help="The input filename for dumping tensors", ) parser.add_argument( "--debug-tensor-dump-inject", type=str, default=ServerArgs.debug_tensor_dump_inject, help="Inject the outputs from jax as the input of every layer.", ) # PD disaggregation parser.add_argument( "--disaggregation-mode", type=str, default=ServerArgs.disaggregation_mode, choices=["null", "prefill", "decode"], help='Only used for PD disaggregation. "prefill" for prefill-only server, and "decode" for decode-only server. If not specified, it is not PD disaggregated', ) parser.add_argument( "--disaggregation-transfer-backend", type=str, default=ServerArgs.disaggregation_transfer_backend, choices=DISAGG_TRANSFER_BACKEND_CHOICES, help="The backend for disaggregation transfer. Default is mooncake.", ) parser.add_argument( "--disaggregation-bootstrap-port", type=int, default=ServerArgs.disaggregation_bootstrap_port, help="Bootstrap server port on the prefill server. Default is 8998.", ) parser.add_argument( "--disaggregation-ib-device", type=str, default=ServerArgs.disaggregation_ib_device, help="The InfiniBand devices for disaggregation transfer, accepts single device (e.g., --disaggregation-ib-device mlx5_0) " "or multiple comma-separated devices (e.g., --disaggregation-ib-device mlx5_0,mlx5_1). " "Default is None, which triggers automatic device detection when mooncake backend is enabled.", ) parser.add_argument( "--disaggregation-decode-enable-offload-kvcache", action="store_true", help="Enable async KV cache offloading on decode server (PD mode).", ) parser.add_argument( "--num-reserved-decode-tokens", type=int, default=ServerArgs.num_reserved_decode_tokens, help="Number of decode tokens that will have memory reserved when adding new request to the running batch.", ) parser.add_argument( "--disaggregation-decode-polling-interval", type=int, default=ServerArgs.disaggregation_decode_polling_interval, help="The interval to poll requests in decode server. Can be set to >1 to reduce the overhead of this.", ) # Encode prefill disaggregation parser.add_argument( "--encoder-only", action="store_true", help="For MLLM with an encoder, launch an encoder-only server", ) parser.add_argument( "--language-only", action="store_true", help="For VLM, load weights for the language model only.", ) parser.add_argument( "--encoder-transfer-backend", type=str, default=ServerArgs.encoder_transfer_backend, choices=ENCODER_TRANSFER_BACKEND_CHOICES, help="The backend for encoder disaggregation transfer. Default is zmq_to_scheduler.", ) parser.add_argument( "--encoder-urls", nargs="+", type=str, default=[], help="List of encoder server urls.", ) # Custom weight loader parser.add_argument( "--custom-weight-loader", type=str, nargs="*", default=None, help="The custom dataloader which used to update the model. Should be set with a valid import path, such as my_package.weight_load_func", ) parser.add_argument( "--weight-loader-disable-mmap", action="store_true", help="Disable mmap while loading weight using safetensors.", ) parser.add_argument( "--remote-instance-weight-loader-seed-instance-ip", type=str, default=ServerArgs.remote_instance_weight_loader_seed_instance_ip, help="The ip of the seed instance for loading weights from remote instance.", ) parser.add_argument( "--remote-instance-weight-loader-seed-instance-service-port", type=int, default=ServerArgs.remote_instance_weight_loader_seed_instance_service_port, help="The service port of the seed instance for loading weights from remote instance.", ) parser.add_argument( "--remote-instance-weight-loader-send-weights-group-ports", type=json_list_type, default=ServerArgs.remote_instance_weight_loader_send_weights_group_ports, help="The communication group ports for loading weights from remote instance.", ) parser.add_argument( "--remote-instance-weight-loader-backend", type=str, choices=["transfer_engine", "nccl"], default=ServerArgs.remote_instance_weight_loader_backend, help="The backend for loading weights from remote instance. Can be 'transfer_engine' or 'nccl'. Default is 'nccl'.", ) parser.add_argument( "--remote-instance-weight-loader-start-seed-via-transfer-engine", action="store_true", help="Start seed server via transfer engine backend for remote instance weight loader.", ) # For PD-Multiplexing parser.add_argument( "--enable-pdmux", action="store_true", help="Enable PD-Multiplexing, PD running on greenctx stream.", ) parser.add_argument( "--pdmux-config-path", type=str, default=None, help="The path of the PD-Multiplexing config file.", ) parser.add_argument( "--sm-group-num", type=int, default=ServerArgs.sm_group_num, help="Number of sm partition groups.", ) # Configuration file support parser.add_argument( "--config", type=str, help="Read CLI options from a config file. Must be a YAML file with configuration options.", ) # For Multi-Modal parser.add_argument( "--mm-max-concurrent-calls", type=int, default=ServerArgs.mm_max_concurrent_calls, help="The max concurrent calls for async mm data processing.", ) parser.add_argument( "--mm-per-request-timeout", type=int, default=ServerArgs.mm_per_request_timeout, help="The timeout for each multi-modal request in seconds.", ) parser.add_argument( "--enable-broadcast-mm-inputs-process", action="store_true", default=ServerArgs.enable_broadcast_mm_inputs_process, help="Enable broadcast mm-inputs process in scheduler.", ) parser.add_argument( "--mm-process-config", type=json.loads, default=ServerArgs.mm_process_config, help="Multimodal preprocessing config, a json config contains keys: `image`, `video`, `audio`", ) parser.add_argument( "--mm-enable-dp-encoder", action="store_true", default=ServerArgs.mm_enable_dp_encoder, help="Enabling data parallelism for mm encoder. The dp size will be set to the tp size automatically.", ) parser.add_argument( "--limit-mm-data-per-request", type=json.loads, default=ServerArgs.limit_mm_data_per_request, help="Limit the number of multimodal inputs per request. " 'e.g. \'{"image": 1, "video": 1, "audio": 1}\'', ) # For checkpoint decryption parser.add_argument( "--decrypted-config-file", type=str, default=ServerArgs.decrypted_config_file, help="The path of the decrypted config file.", ) parser.add_argument( "--decrypted-draft-config-file", type=str, default=ServerArgs.decrypted_draft_config_file, help="The path of the decrypted draft config file.", ) parser.add_argument( "--enable-prefix-mm-cache", action="store_true", default=ServerArgs.enable_prefix_mm_cache, help="Enable prefix multimodal cache. Currently only supports mm-only.", ) parser.add_argument( "--enable-mm-global-cache", action="store_true", default=ServerArgs.enable_mm_global_cache, help="Enable global multimodal embedding cache to skip redundant ViT inference.", ) # For registering hooks parser.add_argument( "--forward-hooks", type=json_list_type, default=ServerArgs.forward_hooks, help="JSON-formatted forward hook specifications to attach to the model.", ) @classmethod def from_cli_args(cls, args: argparse.Namespace): args.tp_size = args.tensor_parallel_size args.pp_size = args.pipeline_parallel_size args.attn_cp_size = args.attention_context_parallel_size args.moe_dp_size = args.moe_data_parallel_size args.dp_size = args.data_parallel_size args.ep_size = args.expert_parallel_size attrs = [attr.name for attr in dataclasses.fields(cls)] return cls(**{attr: getattr(args, attr) for attr in attrs}) def url(self): scheme = "https" if self.ssl_certfile else "http" # When binding to all interfaces, use loopback for internal requests. host = self.host if not host or host == "0.0.0.0": host = "127.0.0.1" elif host == "::": host = "::1" if is_valid_ipv6_address(host): return f"{scheme}://[{host}]:{self.port}" else: return f"{scheme}://{host}:{self.port}" def ssl_verify(self): """Return the value for the requests library's ``verify=`` parameter. When SSL is configured: - If a CA certificate file is provided, return its path so requests validates the server certificate against that CA. - Otherwise, return False to disable certificate verification (suitable for self-signed certificates in development/testing). A warning is logged once when this happens. When SSL is not configured, return True to use the system's default CA bundle. """ if self.ssl_ca_certs: return self.ssl_ca_certs if self.ssl_certfile: if not getattr(self, "_ssl_verify_warned", False): logger.warning( "SSL is enabled but --ssl-ca-certs was not provided. " "Certificate verification is DISABLED for internal " "health checks. For production deployments, provide " "--ssl-ca-certs or use CA-signed certificates." ) self._ssl_verify_warned = True return False return True def get_model_config(self): # Lazy init to avoid circular import from sglang.srt.configs.model_config import ModelConfig if hasattr(self, "model_config"): return self.model_config self.model_config = ModelConfig.from_server_args(self) return self.model_config def get_attention_backends(self): prefill_attention_backend_str = ( self.prefill_attention_backend if self.prefill_attention_backend else self.attention_backend ) decode_attention_backend_str = ( self.decode_attention_backend if self.decode_attention_backend else self.attention_backend ) return prefill_attention_backend_str, decode_attention_backend_str def use_mla_backend(self): from sglang.srt.configs.model_config import AttentionArch model_config = self.get_model_config() return model_config.attention_arch == AttentionArch.MLA def is_attention_backend_not_set(self): return ( self.attention_backend is None and self.prefill_attention_backend is None and self.decode_attention_backend is None ) def enable_mamba_extra_buffer(self) -> bool: return self.mamba_scheduler_strategy == "extra_buffer" @property def mamba_cache_chunk_size(self) -> int: # For mamba cache with extra buffer, the chunk size is the max of FLA_CHUNK_SIZE and page_size. # It is used to determine the caching point in a sequence during prefill. return max(FLA_CHUNK_SIZE, self.page_size) def check_server_args(self): # Check parallel size constraints assert ( self.tp_size * self.pp_size ) % self.nnodes == 0, "tp_size must be divisible by number of nodes" if self.pp_size > 1: assert ( self.disable_overlap_schedule and self.speculative_algorithm is None and not self.enable_mixed_chunk ), "Pipeline parallelism is not compatible with overlap schedule, speculative decoding, mixed chunked prefill." assert not ( self.dp_size > 1 and self.nnodes != 1 and not self.enable_dp_attention ), "multi-node data parallel is not supported unless dp attention!" assert self.base_gpu_id >= 0, "base_gpu_id must be non-negative" assert self.gpu_id_step >= 1, "gpu_id_step must be positive" assert self.moe_dense_tp_size in { 1, None, }, "moe_dense_tp_size only support 1 and None currently" # Check served model name to not have colon as it is reserved for LoRA adapter syntax assert ":" not in self.served_model_name, ( "served_model_name cannot contain a colon (':') character. " "The colon is reserved for the 'model:adapter' syntax used in LoRA adapter specification. " f"Invalid value: '{self.served_model_name}'" ) # Check LoRA self.check_lora_server_args() # torch 2.9.1 has compatibility issues with cuDNN 9.14 and below, # causing extremely slow nn.Conv3d performance. # TODO(yhyang201): Remove this check when sglang no longer uses torch 2.9.1. self.check_torch_2_9_1_cudnn_compatibility() # Check speculative decoding if self.speculative_algorithm is not None: assert ( not self.enable_mixed_chunk ), "enable_mixed_chunk is required for speculative decoding" # Check chunked prefill # Skip validation if chunked prefill is disabled (i.e., size <= 0). # Skip validation if disaggregation mode is decode. if self.chunked_prefill_size > 0 and self.disaggregation_mode != "decode": assert ( self.chunked_prefill_size % self.page_size == 0 ), "chunked_prefill_size must be divisible by page_size" # Check pdmux if self.enable_pdmux: assert ( self.pp_size == 1 ), "PD-Multiplexing is only supported with pipeline parallelism disabled (pp_size=1)." assert ( self.chunked_prefill_size == -1 ), "PD-Multiplexing is not compatible with chunked prefill." assert ( self.disaggregation_mode == "null" ), "PD-Multiplexing is not compatible with disaggregation mode." assert ( self.disable_overlap_schedule ), "PD-Multiplexing is not compatible with overlap schedule." # NOTE: CUDA Green Context may encounter potential issues with CudaGraph on torch 2.7.x – 2.8.x, leading to performance degradation. import torch if torch_release >= (2, 7): logger.warning( "WARNING: PD-Multiplexing may experience performance degradation with torch versions > 2.6.x.\n" f" Current torch version is {torch.__version__}.\n" " Please manually install torch 2.6.x." ) assert self.tokenizer_worker_num > 0, "Tokenizer worker num must >= 1" self.validate_buckets_rule( "--prompt-tokens-buckets", self.prompt_tokens_buckets ) self.validate_buckets_rule( "--generation-tokens-buckets", self.generation_tokens_buckets ) # Check scheduling policy if self.enable_priority_scheduling: assert self.schedule_policy in [ "fcfs", "lof", ], f"To use priority scheduling, schedule_policy must be 'fcfs' or 'lof'. '{self.schedule_policy}' is not supported." # Check multi-item scoring if self.multi_item_scoring_delimiter is not None: assert self.disable_radix_cache, ( "Multi-item scoring requires radix cache to be disabled. " "Please set --disable-radix-cache when using --multi-item-scoring-delimiter." ) assert self.chunked_prefill_size == -1, ( "Multi-item scoring requires chunked prefill to be disabled. " "Please set --chunked-prefill-size -1 when using --multi-item-scoring-delimiter." ) assert ( self.schedule_conservativeness >= 0 ), "schedule_conservativeness must be non-negative" if self.model_impl == "mindspore": assert is_npu(), "MindSpore model impl is only supported on Ascend npu." # Check metrics labels if ( not self.tokenizer_metrics_custom_labels_header and self.tokenizer_metrics_allowed_custom_labels ): raise ValueError( "Please set --tokenizer-metrics-custom-labels-header when setting --tokenizer-metrics-allowed-custom-labels." ) # Check metrics exporters if self.export_metrics_to_file and self.export_metrics_to_file_dir is None: raise ValueError( "--export-metrics-to-file-dir is required when --export-metrics-to-file is enabled" ) # Check two batch overlap if self.enable_two_batch_overlap and self.moe_a2a_backend == "none": raise ValueError( "When enabling two batch overlap, moe_a2a_backend cannot be 'none'." ) def check_torch_2_9_1_cudnn_compatibility(self): if get_bool_env_var("SGLANG_DISABLE_CUDNN_CHECK"): return if self.get_model_config().is_multimodal: import torch if torch_release[:3] == (2, 9, 1): cudnn_version = None try: cudnn_version = torch.backends.cudnn.version() except Exception: cudnn_version = None if cudnn_version is not None: version_float = float(str(cudnn_version)[:3]) / 100 if version_float < 9.15: RED = "\033[91m" BOLD = "\033[1m" RESET = "\033[0m" msg = ( f"{RED}{BOLD}" "CRITICAL WARNING: PyTorch 2.9.1 & CuDNN Compatibility Issue Detected\n" "--------------------------------------------------------------------------------\n" f"Current Environment: PyTorch {torch.__version__} | CuDNN {version_float:.2f}\n\n" "Issue: There is a KNOWN BUG in PyTorch 2.9.1's `nn.Conv3d` implementation\n" " when used with CuDNN versions older than 9.15. This can cause\n" " SEVERE PERFORMANCE DEGRADATION and EXCESSIVE MEMORY USAGE.\n\n" "Reference: https://github.com/pytorch/pytorch/issues/168167\n\n" "Solution: You MUST upgrade CuDNN to version 9.15+ to ensure correctness.\n\n" "Run the following command immediately to fix:\n" " pip install nvidia-cudnn-cu12==9.16.0.29\n\n" "Or you can disable this check by setting env var SGLANG_DISABLE_CUDNN_CHECK=1\n" "--------------------------------------------------------------------------------\n" f"{RESET}" ) raise RuntimeError(msg) else: RED = "\033[91m" RESET = "\033[0m" logger.warning( f"{RED}WARNING: Could not determine CuDNN version for torch==2.9.1. Please ensure CuDNN >= 9.15 to avoid nn.Conv3d bugs.{RESET}" ) def check_lora_server_args(self): assert self.max_loras_per_batch > 0, "max_loras_per_batch must be positive" # Enable LoRA if any LoRA paths are provided for backward compatibility. if self.lora_paths: if self.enable_lora is None: self.enable_lora = True logger.warning( "--enable-lora is set to True because --lora-paths is provided." ) elif self.enable_lora is False: logger.warning( "--enable-lora is set to False, any provided lora_paths will be ignored." ) if self.enable_lora: if self.enable_lora_overlap_loading is None: self.enable_lora_overlap_loading = False if self.enable_lora_overlap_loading: # TODO (glenliu21): use some sort of buffer with eviction instead of enforcing a limit max_loaded_loras_limit = self.max_loras_per_batch * 2 assert ( self.max_loaded_loras is not None and self.max_loaded_loras <= max_loaded_loras_limit ), ( "Enabling LoRA overlap loading requires pinning LoRA adapter weights in CPU memory, " f"so --max-loaded-loras must be less than or equal to double --max-loras-per-batch: {max_loaded_loras_limit}" ) # Validate compatibility with speculative decoding if self.speculative_algorithm not in ["NGRAM", None]: raise ValueError( "Currently LoRA is only compatible with NGRAM speculative decoding." ) # Parse lora_paths if isinstance(self.lora_paths, list): lora_paths = self.lora_paths self.lora_paths = [] for lora_path in lora_paths: if isinstance(lora_path, str): if "=" in lora_path: name, path = lora_path.split("=", 1) lora_ref = LoRARef( lora_name=name, lora_path=path, pinned=False ) else: lora_ref = LoRARef( lora_name=lora_path, lora_path=lora_path, pinned=False ) elif isinstance(lora_path, dict): assert ( "lora_name" in lora_path and "lora_path" in lora_path ), f"When providing LoRA paths as a list of dict, each dict should contain 'lora_name' and 'lora_path' keys. Got: {lora_path}" lora_ref = LoRARef( lora_name=lora_path["lora_name"], lora_path=lora_path["lora_path"], pinned=lora_path.get("pinned", False), ) else: raise ValueError( f"Invalid type for item in --lora-paths list: {type(lora_path)}. " "Expected a string or a dictionary." ) self.lora_paths.append(lora_ref) elif isinstance(self.lora_paths, dict): self.lora_paths = [ LoRARef(lora_name=k, lora_path=v, pinned=False) for k, v in self.lora_paths.items() ] elif self.lora_paths is None: self.lora_paths = [] else: raise ValueError( f"Invalid type for --lora-paths: {type(self.lora_paths)}. " "Expected a list or a dictionary." ) # Expand target modules if self.lora_target_modules: self.lora_target_modules = set(self.lora_target_modules) if "all" in self.lora_target_modules: assert ( len(self.lora_target_modules) == 1 ), "If 'all' is specified in --lora-target-modules, it should be the only module specified." self.lora_target_modules = set(SUPPORTED_LORA_TARGET_MODULES) # When using the chunked SGMV backend, skip embedding / lm_head layers for now, # since it does not support these yet (TODO: implement embedding / lm_head support) if self.lora_backend == "csgmv": logger.warning( "LoRA backend 'csgmv' does not yet support embedding or lm_head layers; " "dropping 'embed_tokens' and 'lm_head' from --lora-target-modules=all. " "To apply LoRA to these, use --lora-backend triton." ) self.lora_target_modules.discard("embed_tokens") self.lora_target_modules.discard("lm_head") # Ensure sufficient information is provided for LoRA initialization. assert self.lora_paths or ( self.max_lora_rank and self.lora_target_modules ), "When no initial --lora-paths is provided, you need to specify both --max-lora-rank and --lora-target-modules for LoRA initialization." # Validate max_loaded_loras if self.max_loaded_loras is not None: assert self.max_loaded_loras >= self.max_loras_per_batch, ( "max_loaded_loras should be greater than or equal to max_loras_per_batch. " f"max_loaded_loras={self.max_loaded_loras}, max_loras_per_batch={self.max_loras_per_batch}" ) assert len(self.lora_paths) <= self.max_loaded_loras, ( "The number of LoRA paths should not exceed max_loaded_loras. " f"max_loaded_loras={self.max_loaded_loras}, lora_paths={len(self.lora_paths)}" ) if self.max_lora_chunk_size is not None: assert ( 16 <= self.max_lora_chunk_size <= 128 and (self.max_lora_chunk_size & (self.max_lora_chunk_size - 1)) == 0 ), "--max-lora-chunk-size must be a power of 2 between 16 and 128." def validate_buckets_rule(self, arg_name: str, buckets_rule: List[str]): if not buckets_rule: return assert len(buckets_rule) > 0, f"{arg_name} cannot be empty list" rule = buckets_rule[0] assert rule in [ "tse", "default", "custom", ], f"Unsupported {arg_name} rule type: '{rule}'. Must be one of: 'tse', 'default', 'custom'" if rule == "tse": assert ( len(buckets_rule) == 4 ), f"{arg_name} TSE rule requires exactly 4 parameters: ['tse', middle, base, count], got {len(buckets_rule)}" try: middle = float(buckets_rule[1]) base = float(buckets_rule[2]) count = int(buckets_rule[3]) except (ValueError, IndexError): assert ( False ), f"{arg_name} TSE rule parameters must be: ['tse', , , ]" assert base > 1, f"{arg_name} TSE base must be larger than 1, got: {base}" assert count > 0, f"{arg_name} TSE count must be positive, got: {count}" assert middle > 0, f"{arg_name} TSE middle must be positive, got: {middle}" elif rule == "default": assert ( len(buckets_rule) == 1 ), f"{arg_name} default rule should only have one parameter: ['default'], got {len(buckets_rule)}" elif rule == "custom": assert ( len(buckets_rule) >= 2 ), f"{arg_name} custom rule requires at least one bucket value: ['custom', value1, ...]" try: bucket_values = [float(x) for x in buckets_rule[1:]] except ValueError: assert False, f"{arg_name} custom rule bucket values must be numeric" assert len(set(bucket_values)) == len( bucket_values ), f"{arg_name} custom rule bucket values should not contain duplicates" assert all( val >= 0 for val in bucket_values ), f"{arg_name} custom rule bucket values should be non-negative" def adjust_mem_fraction_for_vlm(self, model_config): vision_config = getattr(model_config.hf_config, "vision_config", None) if vision_config is None: return # roughly reduce the mem_fraction_static base on params of Vit original_server_arg_mem_fraction = self.mem_fraction_static # a base mem_fraction_static factor for regular Vit base_mem_fraction_reduction_ratio = 0.95 vit_num_layers = getattr(vision_config, "num_hidden_layers", 24) vit_hidden_size = getattr(vision_config, "hidden_size", 1024) # baseline ViT params (ViT-L/14) baseline_vit_layers = 24 baseline_vit_hidden_size = 1024 # weight params count current_complexity_score = vit_num_layers * (vit_hidden_size**2) baseline_complexity_score = baseline_vit_layers * (baseline_vit_hidden_size**2) complexity_ratio = ( current_complexity_score / baseline_complexity_score if baseline_complexity_score > 0 else 1.0 ) # every time the complexity grows 100%, adjust final factor for 10% sensitivity_scale = 0.1 dynamic_adjustment_factor = 1.0 - sensitivity_scale * (complexity_ratio - 1.0) dynamic_adjustment_factor = max(0.8, min(1.05, dynamic_adjustment_factor)) final_overall_factor = ( base_mem_fraction_reduction_ratio * dynamic_adjustment_factor ) self.mem_fraction_static = ( original_server_arg_mem_fraction * final_overall_factor ) def validate_transfer_engine(self): if importlib.util.find_spec("mooncake.engine") is None: logger.warning( "Failed to import mooncake.engine. Does not support using TransferEngine as remote instance weight loader backend." ) return False elif self.enable_memory_saver: logger.warning( "Memory saver is enabled, which is not compatible with TransferEngine. Does not support using TransferEngine as remote instance weight loader backend." ) return False else: return True def remote_instance_weight_loader_use_transfer_engine(self): # Use TransferEngine as seed backend. if self.remote_instance_weight_loader_start_seed_via_transfer_engine: return True # Use TransferEngine as client backend. elif ( self.load_format == "remote_instance" and self.remote_instance_weight_loader_backend == "transfer_engine" ): return True else: return False # NOTE: This is a global variable to hold the server args for scheduler. _global_server_args: Optional[ServerArgs] = None def set_global_server_args_for_scheduler(server_args: ServerArgs): global _global_server_args _global_server_args = server_args set_global_server_args_for_tokenizer = set_global_server_args_for_scheduler def get_global_server_args() -> ServerArgs: if _global_server_args is None: raise ValueError("Global server args is not set yet!") return _global_server_args def prepare_server_args(argv: List[str]) -> ServerArgs: """ Prepare the server arguments from the command line arguments. Args: args: The command line arguments. Typically, it should be `sys.argv[1:]` to ensure compatibility with `parse_args` when no arguments are passed. Returns: The server arguments. """ parser = argparse.ArgumentParser() ServerArgs.add_cli_args(parser) # Check for config file and merge arguments if present if "--config" in argv: # Import here to avoid circular imports from sglang.srt.server_args_config_parser import ConfigArgumentMerger # Extract boolean actions from the parser to handle them correctly config_merger = ConfigArgumentMerger(parser) argv = config_merger.merge_config_with_args(argv) raw_args = parser.parse_args(argv) return ServerArgs.from_cli_args(raw_args) ZMQ_TCP_PORT_DELTA = 233 DP_ATTENTION_HANDSHAKE_PORT_DELTA = 13 @dataclasses.dataclass class PortArgs: # The ipc filename for tokenizer to receive inputs from detokenizer (zmq) tokenizer_ipc_name: str # The ipc filename for scheduler (rank 0) to receive inputs from tokenizer (zmq) scheduler_input_ipc_name: str # The ipc filename for detokenizer to receive inputs from scheduler (zmq) detokenizer_ipc_name: str # The port for nccl initialization (torch.dist) nccl_port: int # The ipc filename for rpc call between Engine and Scheduler rpc_ipc_name: str # The ipc filename for Scheduler to send metrics metrics_ipc_name: str # The ipc filename for Tokenizer and worker tokenizer tokenizer_worker_ipc_name: Optional[str] @staticmethod def init_new( server_args: ServerArgs, dp_rank: Optional[int] = None, worker_ports: Optional[List[int]] = None, ) -> PortArgs: if server_args.nccl_port is None: nccl_port = get_free_port() else: nccl_port = server_args.nccl_port if server_args.tokenizer_worker_num == 1: tokenizer_worker_ipc_name = None else: tokenizer_worker_ipc_name = ( f"ipc://{tempfile.NamedTemporaryFile(delete=False).name}" ) if not server_args.enable_dp_attention: # Normal case, use IPC within a single node return PortArgs( tokenizer_ipc_name=f"ipc://{tempfile.NamedTemporaryFile(delete=False).name}", scheduler_input_ipc_name=f"ipc://{tempfile.NamedTemporaryFile(delete=False).name}", detokenizer_ipc_name=f"ipc://{tempfile.NamedTemporaryFile(delete=False).name}", nccl_port=nccl_port, rpc_ipc_name=f"ipc://{tempfile.NamedTemporaryFile(delete=False).name}", metrics_ipc_name=f"ipc://{tempfile.NamedTemporaryFile(delete=False).name}", tokenizer_worker_ipc_name=tokenizer_worker_ipc_name, ) else: # DP attention. Use TCP + port to handle both single-node and multi-node. if server_args.nnodes == 1 and server_args.dist_init_addr is None: dist_init_addr = ("127.0.0.1", server_args.port + ZMQ_TCP_PORT_DELTA) elif server_args.dist_init_addr.startswith("["): # ipv6 address port_num, host = configure_ipv6(server_args.dist_init_addr) dist_init_addr = (host, str(port_num)) else: dist_init_addr = server_args.dist_init_addr.split(":") assert ( len(dist_init_addr) == 2 ), "please provide --dist-init-addr as host:port of head node" dist_init_host, dist_init_port = dist_init_addr dist_init_port = int(dist_init_port) port_base = dist_init_port + 1 detokenizer_port = port_base + 1 rpc_port = port_base + 2 metrics_ipc_name = port_base + 3 if dp_rank is None: # TokenizerManager to DataParallelController scheduler_input_port = port_base + 4 else: assert worker_ports is not None scheduler_input_port = worker_ports[dp_rank] try: if dp_rank is None: wait_port_available(dist_init_port, "dist_init_port") wait_port_available(port_base, "port_base") wait_port_available(detokenizer_port, "detokenizer_port") wait_port_available(nccl_port, "nccl_port") wait_port_available(rpc_port, "rpc_port") wait_port_available(metrics_ipc_name, "metrics_ipc_name") # Check scheduler_input_port only for dp. # Skip check when using worker_ports since the port is already bound by our ZMQ socket if dp_rank is None or worker_ports is None: wait_port_available(scheduler_input_port, "scheduler_input_port") except ValueError: logger.exception( f"Port is already in use. {dist_init_port=} {port_base=} {detokenizer_port=} {nccl_port=} {scheduler_input_port=}" ) raise return PortArgs( tokenizer_ipc_name=f"tcp://{dist_init_host}:{port_base}", scheduler_input_ipc_name=f"tcp://{dist_init_host}:{scheduler_input_port}", detokenizer_ipc_name=f"tcp://{dist_init_host}:{detokenizer_port}", nccl_port=nccl_port, rpc_ipc_name=f"tcp://{dist_init_host}:{rpc_port}", metrics_ipc_name=f"tcp://{dist_init_host}:{metrics_ipc_name}", tokenizer_worker_ipc_name=tokenizer_worker_ipc_name, ) class LoRAPathAction(argparse.Action): def __call__(self, parser, namespace, values, option_string=None): lora_paths = [] if values: assert isinstance(values, list), "Expected a list of LoRA paths." for lora_path in values: lora_path = lora_path.strip() if lora_path.startswith("{") and lora_path.endswith("}"): obj = json.loads(lora_path) assert "lora_path" in obj and "lora_name" in obj, ( f"{repr(lora_path)} looks like a JSON str, " "but it does not contain 'lora_name' and 'lora_path' keys." ) lora_paths.append(obj) else: lora_paths.append(lora_path) setattr(namespace, self.dest, lora_paths) def print_deprecated_warning(message: str): logger.warning(f"\033[1;33m{message}\033[0m") class DeprecatedAction(argparse.Action): def __init__(self, option_strings, dest, nargs=0, **kwargs): super(DeprecatedAction, self).__init__( option_strings, dest, nargs=nargs, **kwargs ) def __call__(self, parser, namespace, values, option_string=None): print_deprecated_warning( f"The command line argument '{option_string}' is deprecated and will be removed in future versions." ) def auto_choose_speculative_params(self: ServerArgs): """ Automatically choose the parameters for speculative decoding. You can tune them on your own models and prompts with scripts/playground/bench_speculative.py """ hf_config = self.get_model_config().hf_config arch = hf_config.architectures[0] if self.speculative_algorithm == "STANDALONE": # The default value for standalone speculative decoding return (3, 1, 4) if arch in ["LlamaForCausalLM"]: # The default value for llama return (5, 4, 8) elif arch in [ "DeepseekV32ForCausalLM", "DeepseekV3ForCausalLM", "DeepseekV2ForCausalLM", "GptOssForCausalLM", "Glm4MoeForCausalLM", "Glm4MoeLiteForCausalLM", "GlmMoeDsaForCausalLM", "BailingMoeForCausalLM", "BailingMoeV2ForCausalLM", "BailingMoeV2_5ForCausalLM", "MistralLarge3ForCausalLM", "PixtralForConditionalGeneration", "MiMoV2FlashForCausalLM", ]: return (3, 1, 4) elif arch in ["Grok1ForCausalLM", "Grok1VForCausalLM"]: return (5, 4, 8) else: # The default value for all other models return (3, 1, 4)