config.py 44.6 KB
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# SPDX-License-Identifier: Apache-2.0
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# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
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import os
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from collections.abc import Callable, Iterator
from contextlib import contextmanager
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from dataclasses import asdict
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from functools import cache, partial
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from importlib.metadata import version
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from pathlib import Path
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from typing import Any, Literal, TypeAlias
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import huggingface_hub
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import torch
from huggingface_hub import constants, get_safetensors_metadata
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from packaging.version import Version
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from safetensors.torch import _TYPES as _SAFETENSORS_TO_TORCH_DTYPE
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from transformers import GenerationConfig, PretrainedConfig
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from transformers.models.auto.image_processing_auto import get_image_processor_config
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from transformers.models.auto.modeling_auto import (
    MODEL_FOR_CAUSAL_LM_MAPPING_NAMES,
    MODEL_MAPPING_NAMES,
)
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from transformers.models.auto.tokenization_auto import get_tokenizer_config
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from transformers.utils import CONFIG_NAME as HF_CONFIG_NAME
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from vllm import envs
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from vllm.logger import init_logger
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from vllm.transformers_utils.repo_utils import is_mistral_model_repo
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from vllm.transformers_utils.utils import (
    parse_safetensors_file_metadata,
    without_trust_remote_code,
)
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from vllm.utils.torch_utils import common_broadcastable_dtype
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from .config_parser_base import ConfigParserBase
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from .gguf_utils import (
    check_gguf_file,
    is_gguf,
    is_remote_gguf,
    split_remote_gguf,
)
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from .repo_utils import (
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    file_or_path_exists,
    get_hf_file_to_dict,
    list_repo_files,
    try_get_local_file,
    with_retry,
)
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try:
    # Transformers v5
    from transformers.configuration_utils import ALLOWED_ATTENTION_LAYER_TYPES
except ImportError:
    # Transformers v4
    from transformers.configuration_utils import (
        ALLOWED_LAYER_TYPES as ALLOWED_ATTENTION_LAYER_TYPES,
    )

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if envs.VLLM_USE_MODELSCOPE:
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    from modelscope import AutoConfig
else:
    from transformers import AutoConfig
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MISTRAL_CONFIG_NAME = "params.json"

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logger = init_logger(__name__)

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class LazyConfigDict(dict):
    def __getitem__(self, key):
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        if isinstance(value := super().__getitem__(key), type):
            return value

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        import vllm.transformers_utils.configs as configs
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        return getattr(configs, value)
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_CONFIG_REGISTRY: dict[str, type[PretrainedConfig]] = LazyConfigDict(
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    afmoe="AfmoeConfig",
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    bagel="BagelConfig",
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    umm="CheersConfig",
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    chatglm="ChatGLMConfig",
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    modernvbert="ColModernVBertConfig",
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    colpali="ColPaliConfig",
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    colqwen3="ColQwen3Config",
    ops_colqwen3="OpsColQwen3Config",
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    qwen3_vl_nemotron_embed="Qwen3VLNemotronEmbedConfig",
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    deepseek_vl_v2="DeepseekVLV2Config",
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    deepseek_v32="DeepseekV3Config",
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    flex_olmo="FlexOlmoConfig",
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    fireredlid="FireRedLIDConfig",
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    funaudiochat="FunAudioChatConfig",
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    hunyuan_vl="HunYuanVLConfig",
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    isaac="IsaacConfig",
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    kimi_k2="DeepseekV3Config",  # Kimi K2 uses same architecture as DeepSeek V3
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    kimi_linear="KimiLinearConfig",
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    kimi_vl="KimiVLConfig",
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    kimi_k25="KimiK25Config",
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    RefinedWeb="RWConfig",  # For tiiuae/falcon-40b(-instruct)
    RefinedWebModel="RWConfig",  # For tiiuae/falcon-7b(-instruct)
    jais="JAISConfig",
    mlp_speculator="MLPSpeculatorConfig",
    medusa="MedusaConfig",
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    midashenglm="MiDashengLMConfig",
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    eagle="EAGLEConfig",
    speculators="SpeculatorsConfig",
    nemotron="NemotronConfig",
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    olmo_hybrid="OlmoHybridConfig",
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    ovis="OvisConfig",
    ultravox="UltravoxConfig",
    step3_vl="Step3VLConfig",
    step3_text="Step3TextConfig",
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    step3p5="Step3p5Config",
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    qwen3_asr="Qwen3ASRConfig",
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    qwen3_next="Qwen3NextConfig",
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    qwen3_5="Qwen3_5Config",
    qwen3_5_moe="Qwen3_5MoeConfig",
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    lfm2_moe="Lfm2MoeConfig",
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    tarsier2="Tarsier2Config",
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)
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_SPECULATIVE_DECODING_CONFIGS: set[str] = {"eagle", "speculators"}

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_CONFIG_ATTRS_MAPPING: dict[str, str] = {
    "llm_config": "text_config",
}

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_AUTO_CONFIG_KWARGS_OVERRIDES: dict[str, dict[str, Any]] = {
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    "internvl_chat": {"has_no_defaults_at_init": True},
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    "Llama_Nemotron_Nano_VL": {"attn_implementation": "eager"},
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    "NVLM_D": {"has_no_defaults_at_init": True},
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}

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def is_rope_parameters_nested(rope_parameters: dict[str, Any]) -> bool:
    """Check if rope_parameters is nested by layer types."""
    # Cannot be nested if rope_parameters is empty
    if not rope_parameters:
        return False
    return set(rope_parameters.keys()).issubset(ALLOWED_ATTENTION_LAYER_TYPES)


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@contextmanager
def _mistral_patch_hf_hub_constants() -> Iterator[None]:
    hf_safetensors_single_file = constants.SAFETENSORS_SINGLE_FILE
    hf_safetensors_index_file = constants.SAFETENSORS_INDEX_FILE
    constants.SAFETENSORS_SINGLE_FILE = "consolidated.safetensors"
    constants.SAFETENSORS_INDEX_FILE = "consolidated.safetensors.index.json"
    try:
        yield
    finally:
        constants.SAFETENSORS_SINGLE_FILE = hf_safetensors_single_file
        constants.SAFETENSORS_INDEX_FILE = hf_safetensors_index_file


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class HFConfigParser(ConfigParserBase):
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    def parse(
        self,
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        model: str | Path,
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        trust_remote_code: bool,
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        revision: str | None = None,
        code_revision: str | None = None,
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        **kwargs,
    ) -> tuple[dict, PretrainedConfig]:
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        kwargs["local_files_only"] = huggingface_hub.constants.HF_HUB_OFFLINE
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        trust_remote_code |= kwargs.get("trust_remote_code", False)
        kwargs = without_trust_remote_code(kwargs)
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        config_dict, _ = PretrainedConfig.get_config_dict(
            model,
            revision=revision,
            code_revision=code_revision,
            **kwargs,
        )
        # Use custom model class if it's in our registry
        model_type = config_dict.get("model_type")
        if model_type is None:
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            model_type = (
                "speculators"
                if config_dict.get("speculators_config") is not None
                else model_type
            )
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        # Allow hf_overrides to override model_type before checking _CONFIG_REGISTRY
        if (hf_overrides := kwargs.pop("hf_overrides", None)) is not None:
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            if isinstance(hf_overrides, dict) and "model_type" in hf_overrides:
                model_type = hf_overrides["model_type"]
            elif callable(hf_overrides):
                # If hf_overrides doesn't modify model_type, it will be passed straight
                # through and remain unchanged by this elif block
                dummy_model_type = f"dummy_{model_type}"
                dummy_kwargs = dict(architectures=[""], model_type=dummy_model_type)
                dummy_config = PretrainedConfig(**dummy_kwargs)
                dummy_model_type = hf_overrides(dummy_config).model_type
                model_type = dummy_model_type.removeprefix("dummy_")
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        if model_type in _SPECULATIVE_DECODING_CONFIGS:
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            config_class = _CONFIG_REGISTRY[model_type]
            config = config_class.from_pretrained(
                model,
                revision=revision,
                code_revision=code_revision,
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                trust_remote_code=trust_remote_code,
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                **kwargs,
            )
        else:
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            if model_type in _CONFIG_REGISTRY:
                # Register the config class to AutoConfig to ensure it's used in future
                # calls to `from_pretrained`
                config_class = _CONFIG_REGISTRY[model_type]
                config_class.model_type = model_type
                AutoConfig.register(model_type, config_class, exist_ok=True)
                # Now that it is registered, it is not considered remote code anymore
                trust_remote_code = False
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            try:
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                kwargs = _maybe_update_auto_config_kwargs(kwargs, model_type=model_type)
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                config = AutoConfig.from_pretrained(
                    model,
                    trust_remote_code=trust_remote_code,
                    revision=revision,
                    code_revision=code_revision,
                    **kwargs,
                )
            except ValueError as e:
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                if (
                    not trust_remote_code
                    and "requires you to execute the configuration file" in str(e)
                ):
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                    err_msg = (
                        "Failed to load the model config. If the model "
                        "is a custom model not yet available in the "
                        "HuggingFace transformers library, consider setting "
                        "`trust_remote_code=True` in LLM or using the "
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                        "`--trust-remote-code` flag in the CLI."
                    )
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                    raise RuntimeError(err_msg) from e
                else:
                    raise e
        config = _maybe_remap_hf_config_attrs(config)
        return config_dict, config


class MistralConfigParser(ConfigParserBase):
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    def parse(
        self,
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        model: str | Path,
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        trust_remote_code: bool,
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        revision: str | None = None,
        code_revision: str | None = None,
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        **kwargs,
    ) -> tuple[dict, PretrainedConfig]:
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        # This function loads a params.json config which
        # should be used when loading models in mistral format
        config_dict = _download_mistral_config_file(model, revision)
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        if (
            max_position_embeddings := config_dict.get("max_position_embeddings")
        ) is None:
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            max_position_embeddings = _maybe_retrieve_max_pos_from_hf(
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                model, revision, **kwargs
            )
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            config_dict["max_position_embeddings"] = max_position_embeddings

        from vllm.transformers_utils.configs.mistral import adapt_config_dict

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        # Get missing fields from HF config if available
        try:
            hf_config_dict, _ = PretrainedConfig.get_config_dict(
                model,
                revision=revision,
                code_revision=code_revision,
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                **without_trust_remote_code(kwargs),
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            )
        except OSError:  # Not found
            hf_config_dict = {}

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        if config_dict.get("dtype") is None:
            with _mistral_patch_hf_hub_constants():
                model_str = model if isinstance(model, str) else model.as_posix()
                param_mt = get_safetensors_params_metadata(model_str, revision=revision)
            if param_mt:
                param_dtypes: set[torch.dtype] = {
                    _SAFETENSORS_TO_TORCH_DTYPE[dtype]
                    for info in param_mt.values()
                    if (dtype := info.get("dtype", None))
                    and dtype in _SAFETENSORS_TO_TORCH_DTYPE
                }

                if param_dtypes:
                    config_dict["dtype"] = common_broadcastable_dtype(param_dtypes)
                    logger.info_once(
                        "Inferred from consolidated*.safetensors files "
                        f"{config_dict['dtype']} dtype."
                    )

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        config = adapt_config_dict(config_dict, defaults=hf_config_dict)
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        return config_dict, config


_CONFIG_FORMAT_TO_CONFIG_PARSER: dict[str, type[ConfigParserBase]] = {
    "hf": HFConfigParser,
    "mistral": MistralConfigParser,
}

ConfigFormat = Literal[
    "auto",
    "hf",
    "mistral",
]


def get_config_parser(config_format: str) -> ConfigParserBase:
    """Get the config parser for a given config format."""
    if config_format not in _CONFIG_FORMAT_TO_CONFIG_PARSER:
        raise ValueError(f"Unknown config format `{config_format}`.")
    return _CONFIG_FORMAT_TO_CONFIG_PARSER[config_format]()


def register_config_parser(config_format: str):
    """Register a customized vllm config parser.
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     When a config format is not supported by vllm, you can register a customized
    config parser to support it.
     Args:
         config_format (str): The config parser format name.
     Examples:

         >>> from vllm.transformers_utils.config import (get_config_parser,
                                                         register_config_parser)
         >>> from vllm.transformers_utils.config_parser_base import ConfigParserBase
         >>>
         >>> @register_config_parser("custom_config_parser")
         ... class CustomConfigParser(ConfigParserBase):
         ...     def parse(
         ...         self,
         ...         model: Union[str, Path],
         ...         trust_remote_code: bool,
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         ...         revision: str | None = None,
         ...         code_revision: str | None = None,
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         ...         **kwargs,
         ...     ) -> tuple[dict, PretrainedConfig]:
         ...         raise NotImplementedError
         >>>
         >>> type(get_config_parser("custom_config_parser"))
         <class 'CustomConfigParser'>
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    """  # noqa: E501

    def _wrapper(config_parser_cls):
        if config_format in _CONFIG_FORMAT_TO_CONFIG_PARSER:
            logger.warning(
                "Config format `%s` is already registered, and will be "
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                "overwritten by the new parser class `%s`.",
                config_format,
                config_parser_cls,
            )
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        if not issubclass(config_parser_cls, ConfigParserBase):
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            raise ValueError(
                "The config parser must be a subclass of `ConfigParserBase`."
            )
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        _CONFIG_FORMAT_TO_CONFIG_PARSER[config_format] = config_parser_cls
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        logger.info(
            "Registered config parser `%s` with config format `%s`",
            config_parser_cls,
            config_format,
        )
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        return config_parser_cls

    return _wrapper
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def set_default_rope_theta(config: PretrainedConfig, default_theta: float) -> None:
    """Some models may have no rope_theta in their config but still use RoPE.
    This function sets a default rope_theta if it's missing."""
    if getattr(config, "rope_parameters", None) is None:
        config.rope_parameters = {"rope_type": "default"}
    if "rope_theta" not in config.rope_parameters:
        config.rope_parameters["rope_theta"] = default_theta


def patch_rope_parameters(config: PretrainedConfig) -> None:
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    """Provide backwards compatibility for RoPE."""
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    from vllm.config.utils import getattr_iter

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    # Older custom models may use non-standard field names
    # which need patching for both Transformers v4 and v5.
    names = ["rope_theta", "rotary_emb_base"]
    rope_theta = getattr_iter(config, names, None, warn=True)
    names = ["partial_rotary_factor", "rotary_pct", "rotary_emb_fraction"]
    partial_rotary_factor = getattr_iter(config, names, None, warn=True)
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    ompe = getattr(config, "original_max_position_embeddings", None)
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    if Version(version("transformers")) < Version("5.0.0"):
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        # Transformers v4 installed, legacy config fields may be present
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        if (rope_scaling := getattr(config, "rope_scaling", None)) is not None:
            config.rope_parameters = rope_scaling
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        if (
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            rope_theta is not None
            or partial_rotary_factor is not None
            or ompe is not None
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        ) and not getattr(config, "rope_parameters", None):
            config.rope_parameters = {"rope_type": "default"}
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        # Patch legacy fields into rope_parameters
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        if rope_theta is not None:
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            config.rope_parameters["rope_theta"] = rope_theta
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        if partial_rotary_factor is not None:
            config.rope_parameters["partial_rotary_factor"] = partial_rotary_factor
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        if ompe is not None:
            config.rope_parameters["original_max_position_embeddings"] = ompe
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    elif rope_theta is not None or getattr(config, "rope_parameters", None):
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        # Transformers v5 installed
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        # Patch these fields in case they used non-standard names
        if rope_theta is not None:
            config.rope_theta = rope_theta
        if partial_rotary_factor is not None:
            config.partial_rotary_factor = partial_rotary_factor
        # Standardize and validate RoPE parameters
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        config.standardize_rope_params()
        config.validate_rope()
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    # No RoPE parameters to patch
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    if getattr(config, "rope_parameters", None) is None:
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        return

    # Handle nested rope_parameters in interleaved sliding attention models
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    if is_rope_parameters_nested(config.rope_parameters):
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        for rope_parameters_layer_type in config.rope_parameters.values():
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            patch_rope_parameters_dict(rope_parameters_layer_type)
    else:
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        patch_rope_parameters_dict(config.rope_parameters)
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def patch_rope_parameters_dict(rope_parameters: dict[str, Any]) -> None:
    if "rope_type" in rope_parameters and "type" in rope_parameters:
        rope_type = rope_parameters["rope_type"]
        rope_type_legacy = rope_parameters["type"]
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        if (rope_type_legacy == "su" and rope_type == "longrope") or (
            rope_type_legacy == "mrope" and rope_type == "default"
        ):
            pass  # No action needed
        elif rope_type != rope_type_legacy:
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            raise ValueError(
                f"Found conflicts between 'rope_type={rope_type}' (modern "
                f"field) and 'type={rope_type_legacy}' (legacy field). "
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                "You should only specify one of them."
            )
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    if "rope_type" not in rope_parameters and "type" in rope_parameters:
        rope_parameters["rope_type"] = rope_parameters["type"]
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        logger.info("Replacing legacy 'type' key with 'rope_type'")

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    if "rope_type" not in rope_parameters:
        raise ValueError("rope_parameters should have a 'rope_type' key")
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    if rope_parameters["rope_type"] == "su":
        rope_parameters["rope_type"] = "longrope"
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        logger.warning("Replacing legacy rope_type 'su' with 'longrope'")
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    elif rope_parameters["rope_type"] == "mrope":
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        if "mrope_section" not in rope_parameters:
            raise ValueError(
                "Legacy rope_type 'mrope' requires 'mrope_section' in rope_parameters"
            )
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        rope_parameters["rope_type"] = "default"
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        logger.warning("Replacing legacy rope_type 'mrope' with 'default'")


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def _uses_mrope(config: PretrainedConfig) -> bool:
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    rope_parameters = getattr(config, "rope_parameters", None)
    if rope_parameters is None:
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        return False

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    return "mrope_section" in rope_parameters
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def uses_mrope(config: PretrainedConfig) -> bool:
    """Detect if the model with this config uses M-ROPE."""
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    return (
        _uses_mrope(config)
        or _uses_mrope(config.get_text_config())
        or thinker_uses_mrope(config)
    )
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def thinker_uses_mrope(config: PretrainedConfig) -> bool:
    """Detect if the model contains a thinker config and it uses M-ROPE."""
    thinker_config = getattr(config, "thinker_config", None)
    if thinker_config is None:
        return False

    thinker_text_config = getattr(thinker_config, "text_config", None)
    if thinker_text_config is None:
        return False

    return uses_mrope(thinker_text_config)


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def uses_xdrope_dim(config: PretrainedConfig) -> int:
    """Detect if the model with this config uses XD-ROPE."""
    xdrope_section = getattr(config, "xdrope_section", None)
    if xdrope_section is not None and isinstance(xdrope_section, list):
        return len(xdrope_section)
    rope_scaling = getattr(config, "rope_scaling", None)
    if rope_scaling is None:
        return 0

    if isinstance(rope_scaling, dict) and "xdrope_section" in rope_scaling:
        xdrope_section = rope_scaling["xdrope_section"]
        if xdrope_section is not None and isinstance(xdrope_section, list):
            return len(xdrope_section)

    return 0


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def is_encoder_decoder(config: PretrainedConfig) -> bool:
    """Detect if the model with this config is used as an encoder/decoder."""

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    def _is_encoder_decoder(config: PretrainedConfig) -> bool:
        return getattr(config, "is_encoder_decoder", False)

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    return _is_encoder_decoder(config) or _is_encoder_decoder(config.get_text_config())
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def is_interleaved(config: PretrainedConfig) -> bool:
    """
    Detect if the model with this config is used with interleaved attention.
    """
    text_config = config.get_text_config()
    if layer_types := getattr(text_config, "layer_types", None):
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        return len(set(layer_types)) > 1
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    return False


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538
539
def _maybe_update_auto_config_kwargs(kwargs: dict[str, Any], model_type: str):
    """
    Update kwargs for AutoConfig initialization based on model_type
    """
    if model_type in _AUTO_CONFIG_KWARGS_OVERRIDES:
        kwargs.update(_AUTO_CONFIG_KWARGS_OVERRIDES[model_type])
    return kwargs


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544
545
def _maybe_remap_hf_config_attrs(config: PretrainedConfig) -> PretrainedConfig:
    """Remap config attributes to match the expected names."""
    for old_attr, new_attr in _CONFIG_ATTRS_MAPPING.items():
        if hasattr(config, old_attr):
            if not hasattr(config, new_attr):
                config.update({new_attr: getattr(config, old_attr)})
546
            logger.debug("Remapped config attribute '%s' to '%s'", old_attr, new_attr)
547
548
549
    return config


550
def maybe_override_with_speculators(
551
    model: str,
552
    tokenizer: str | None,
553
    trust_remote_code: bool,
554
555
    revision: str | None = None,
    vllm_speculative_config: dict[str, Any] | None = None,
556
    hf_token: bool | str | None = None,
557
    **kwargs,
558
) -> tuple[str, str | None, dict[str, Any] | None]:
559
    """
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570
    Resolve model configuration when speculators are detected.

    Checks if the provided model is a speculators model and if so, extracts
    the target model configuration and builds the speculative config.

    Args:
        model: Model name or path
        tokenizer: Tokenizer name or path
        trust_remote_code: Whether to trust remote code
        revision: Model revision
        vllm_speculative_config: Existing vLLM speculative config
571
        hf_token: HuggingFace token for authenticated model access
572
573
574

    Returns:
        Tuple of (resolved_model, resolved_tokenizer, speculative_config)
575
    """
576
    if check_gguf_file(model):
577
578
        kwargs["gguf_file"] = Path(model).name
        gguf_model_repo = Path(model).parent
579
580
581
    elif is_remote_gguf(model):
        repo_id, _ = split_remote_gguf(model)
        gguf_model_repo = Path(repo_id)
582
583
    else:
        gguf_model_repo = None
584
    kwargs["local_files_only"] = huggingface_hub.constants.HF_HUB_OFFLINE
585
    config_dict, _ = PretrainedConfig.get_config_dict(
586
        model if gguf_model_repo is None else gguf_model_repo,
587
        revision=revision,
588
        token=hf_token,
589
        **without_trust_remote_code(kwargs),
590
    )
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597
    speculators_config = config_dict.get("speculators_config")

    if speculators_config is None:
        # No speculators config found, return original values
        return model, tokenizer, vllm_speculative_config

    # Speculators format detected - process overrides
598
    from vllm.transformers_utils.configs.speculators.base import SpeculatorsConfig
599

600
    speculative_config = SpeculatorsConfig.extract_vllm_speculative_config(
601
602
        config_dict=config_dict
    )
603
604

    # Set the draft model to the speculators model
605
    speculative_config["model"] = model
606
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610

    # Override model and tokenizer with the verifier model from config
    verifier_model = speculators_config["verifier"]["name_or_path"]
    model = tokenizer = verifier_model

611
    return model, tokenizer, speculative_config
612
613


614
def get_config(
615
    model: str | Path,
616
    trust_remote_code: bool,
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619
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621
    revision: str | None = None,
    code_revision: str | None = None,
    config_format: str | ConfigFormat = "auto",
    hf_overrides_kw: dict[str, Any] | None = None,
    hf_overrides_fn: Callable[[PretrainedConfig], PretrainedConfig] | None = None,
622
623
624
    **kwargs,
) -> PretrainedConfig:
    # Separate model folder from file path for GGUF models
625

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637
    _is_gguf = is_gguf(model)
    _is_remote_gguf = is_remote_gguf(model)
    if _is_gguf:
        if check_gguf_file(model):
            # Local GGUF file
            kwargs["gguf_file"] = Path(model).name
            model = Path(model).parent
        elif _is_remote_gguf:
            # Remote GGUF - extract repo_id from repo_id:quant_type format
            # The actual GGUF file will be downloaded later by GGUFModelLoader
            # Keep model as repo_id:quant_type for download, but use repo_id for config
            model, _ = split_remote_gguf(model)
638

639
    if config_format == "auto":
640
        try:
641
642
            # First check for Mistral to avoid defaulting to
            # Transformers implementation.
643
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646
647
            if is_mistral_model_repo(
                model_name_or_path=str(model), revision=revision
            ) and file_or_path_exists(
                model=model, config_name=MISTRAL_CONFIG_NAME, revision=revision
            ):
648
                config_format = "mistral"
649
            elif (_is_gguf and not _is_remote_gguf) or file_or_path_exists(
650
651
652
                model, HF_CONFIG_NAME, revision=revision
            ):
                config_format = "hf"
653
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667
            # Remote GGUF models must have config.json in repo,
            # otherwise the config can't be parsed correctly.
            # FIXME(Isotr0py): Support remote GGUF repos without config.json
            elif _is_remote_gguf and not file_or_path_exists(
                model, HF_CONFIG_NAME, revision=revision
            ):
                err_msg = (
                    "Could not find config.json for remote GGUF model repo. "
                    "To load remote GGUF model through `<repo_id>:<quant_type>`, "
                    "ensure your model has config.json (HF format) file. "
                    "Otherwise please specify --hf-config-path <original_repo> "
                    "in engine args to fetch config from unquantized hf model."
                )
                logger.error(err_msg)
                raise ValueError(err_msg)
668
669
670
            else:
                raise ValueError(
                    "Could not detect config format for no config file found. "
671
672
673
                    "With config_format 'auto', ensure your model has either "
                    "config.json (HF format) or params.json (Mistral format). "
                    "Otherwise please specify your_custom_config_format "
674
675
                    "in engine args for customized config parser."
                )
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681
682
683
684
685
686

        except Exception as e:
            error_message = (
                "Invalid repository ID or local directory specified:"
                " '{model}'.\nPlease verify the following requirements:\n"
                "1. Provide a valid Hugging Face repository ID.\n"
                "2. Specify a local directory that contains a recognized "
                "configuration file.\n"
                "   - For Hugging Face models: ensure the presence of a "
                "'config.json'.\n"
                "   - For Mistral models: ensure the presence of a "
687
                "'params.json'.\n"
688
            ).format(model=model)
689
690

            raise ValueError(error_message) from e
691

692
693
694
695
696
697
    config_parser = get_config_parser(config_format)
    config_dict, config = config_parser.parse(
        model,
        trust_remote_code=trust_remote_code,
        revision=revision,
        code_revision=code_revision,
698
        hf_overrides=hf_overrides_kw or hf_overrides_fn,
699
700
        **kwargs,
    )
701
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714
715
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717
718
719
720
721
722

    # Patching defaults for GGUF models
    if _is_gguf:
        # Some models have different default values between GGUF and HF.
        def apply_gguf_default(key: str, gguf_default: Any):
            """
            Apply GGUF defaults unless explicitly configured.

            This function reads/writes external `config` and `config_dict`.
            If the specified `key` is not in `config_dict` (i.e. not explicitly
            configured and the default HF value is used), it updates the
            corresponding `config` value to `gguf_default`.
            """
            if key not in config_dict:
                config.update({key: gguf_default})

        # Apply architecture-specific GGUF defaults.
        if config.model_type in {"qwen3_moe"}:
            # Qwen3 MoE: norm_topk_prob is always true.
            # Note that, this parameter is always false (HF default) on Qwen2 MoE.
            apply_gguf_default("norm_topk_prob", True)

723
    # Special architecture mapping check for GGUF models
724
    if _is_gguf:
725
        if config.model_type not in MODEL_FOR_CAUSAL_LM_MAPPING_NAMES:
726
            raise RuntimeError(f"Can't get gguf config for {config.model_type}.")
727
728
729
        model_type = MODEL_FOR_CAUSAL_LM_MAPPING_NAMES[config.model_type]
        config.update({"architectures": [model_type]})

730
731
732
    # Architecture mapping for models without explicit architectures field
    if not config.architectures:
        if config.model_type not in MODEL_MAPPING_NAMES:
733
734
735
736
737
738
739
740
            logger.warning(
                "Model config does not have a top-level 'architectures' field: "
                "expecting `hf_overrides={'architectures': ['...']}` to be passed "
                "in engine args."
            )
        else:
            model_type = MODEL_MAPPING_NAMES[config.model_type]
            config.update({"architectures": [model_type]})
741

742
743
744
745
746
747
    # ModelOpt 0.31.0 and after saves the quantization config in the model
    # config file.
    quantization_config = config_dict.get("quantization_config", None)

    # ModelOpt 0.29.0 and before saves the quantization config in a separate
    # "hf_quant_config.json" in the same directory as the model config file.
748
749
750
751
752
753
    if quantization_config is None and file_or_path_exists(
        model, "hf_quant_config.json", revision
    ):
        quantization_config = get_hf_file_to_dict(
            "hf_quant_config.json", model, revision
        )
754
755
756

    if quantization_config is not None:
        config.quantization_config = quantization_config
757
        # auto-enable DeepGEMM UE8M0 if model config requests it
758
        scale_fmt = quantization_config.get("scale_fmt", None)
759
        if scale_fmt in ("ue8m0",):
760
761
            if not envs.is_set("VLLM_USE_DEEP_GEMM_E8M0"):
                os.environ["VLLM_USE_DEEP_GEMM_E8M0"] = "1"
762
                logger.info_once(
763
764
                    (
                        "Detected quantization_config.scale_fmt=%s; "
765
                        "enabling UE8M0 for DeepGEMM."
766
                    ),
767
768
                    scale_fmt,
                )
769
            elif not envs.VLLM_USE_DEEP_GEMM_E8M0:
770
                logger.warning_once(
771
772
773
                    (
                        "Model config requests UE8M0 "
                        "(quantization_config.scale_fmt=%s), but "
774
775
                        "VLLM_USE_DEEP_GEMM_E8M0=0 is set; "
                        "UE8M0 for DeepGEMM disabled."
776
                    ),
777
778
                    scale_fmt,
                )
779

780
781
782
783
784
785
786
    if hf_overrides_kw:
        logger.debug("Overriding HF config with %s", hf_overrides_kw)
        config.update(hf_overrides_kw)
    if hf_overrides_fn:
        logger.debug("Overriding HF config with %s", hf_overrides_fn)
        config = hf_overrides_fn(config)

787
788
789
790
791
792
793
794
    # Exhaustively patch RoPE parameters everywhere they might be
    patch_rope_parameters(config)
    patch_rope_parameters(config.get_text_config())
    SubConfigs: TypeAlias = dict[str, PretrainedConfig]
    sub_configs: SubConfigs | None = getattr(config, "sub_configs", None)
    if sub_configs:
        for sub_config in sub_configs:
            patch_rope_parameters(getattr(config, sub_config))
795

796
797
798
    if trust_remote_code:
        maybe_register_config_serialize_by_value()

799
    return config
800
801


802
@cache
803
804
805
806
def get_pooling_config(
    model: str,
    revision: str | None = "main",
) -> dict[str, Any] | None:
807
    """
808
809
810
    This function gets the pooling and normalize
    config from the model - only applies to
    sentence-transformers models.
811
812

    Args:
813
        model: The name of the Hugging Face model.
814
        revision: The specific version of the model to use.
815
            Defaults to 'main'.
816
817

    Returns:
818
        A dictionary containing the pooling type and whether
819
            normalization is used, or None if no pooling configuration is found.
820
    """
821
822
    if is_remote_gguf(model):
        model, _ = split_remote_gguf(model)
823
824

    modules_file_name = "modules.json"
825
826

    modules_dict = None
827
828
829
    if file_or_path_exists(
        model=model, config_name=modules_file_name, revision=revision
    ):
830
        modules_dict = get_hf_file_to_dict(modules_file_name, model, revision)
831
832
833
834

    if modules_dict is None:
        return None

835
836
    logger.info("Found sentence-transformers modules configuration.")

837
838
839
840
841
842
843
844
    pooling = next(
        (
            item
            for item in modules_dict
            if item["type"] == "sentence_transformers.models.Pooling"
        ),
        None,
    )
845
    normalize = bool(
846
847
848
849
850
851
852
853
854
        next(
            (
                item
                for item in modules_dict
                if item["type"] == "sentence_transformers.models.Normalize"
            ),
            False,
        )
    )
855
856

    if pooling:
857
        from vllm.config.pooler import SEQ_POOLING_TYPES, TOK_POOLING_TYPES
858

859
860
        pooling_file_name = "{}/config.json".format(pooling["path"])
        pooling_dict = get_hf_file_to_dict(pooling_file_name, model, revision) or {}
861

862
        logger.info("Found pooling configuration.")
863

864
        config: dict[str, Any] = {"use_activation": normalize}
865
866
867
868
869
870
871
872
873
874
875
        for key, val in pooling_dict.items():
            if val is True:
                pooling_type = parse_pooling_type(key)
                if pooling_type in SEQ_POOLING_TYPES:
                    config["seq_pooling_type"] = pooling_type
                elif pooling_type in TOK_POOLING_TYPES:
                    config["tok_pooling_type"] = pooling_type
                else:
                    logger.debug("Skipping unrelated field: %r=%r", key, val)

        return config
876
877
878
879

    return None


880
def parse_pooling_type(pooling_name: str):
881
882
883
884
    if "pooling_mode_" in pooling_name:
        pooling_name = pooling_name.replace("pooling_mode_", "")

    if "_" in pooling_name:
885
        pooling_name = pooling_name.split("_", 1)[0]
886
887
888
889

    if "lasttoken" in pooling_name:
        pooling_name = "last"

890
    return pooling_name.upper()
891
892


893
@cache
894
def get_sentence_transformer_tokenizer_config(
895
    model: str | Path, revision: str | None = "main"
896
) -> dict[str, Any] | None:
897
    """
898
    Returns the tokenization configuration dictionary for a
899
900
901
    given Sentence Transformer BERT model.

    Parameters:
902
    - model (str|Path): The name of the Sentence Transformer
903
904
905
906
907
    BERT model.
    - revision (str, optional): The revision of the m
    odel to use. Defaults to 'main'.

    Returns:
908
    - dict: A dictionary containing the configuration parameters
909
910
    for the Sentence Transformer BERT model.
    """
911
912
913
914
915
916
917
918
919
920
    sentence_transformer_config_files = [
        "sentence_bert_config.json",
        "sentence_roberta_config.json",
        "sentence_distilbert_config.json",
        "sentence_camembert_config.json",
        "sentence_albert_config.json",
        "sentence_xlm-roberta_config.json",
        "sentence_xlnet_config.json",
    ]
    encoder_dict = None
921
922

    for config_file in sentence_transformer_config_files:
923
924
925
926
        if (
            try_get_local_file(model=model, file_name=config_file, revision=revision)
            is not None
        ):
927
            encoder_dict = get_hf_file_to_dict(config_file, model, revision)
928
929
            if encoder_dict:
                break
930

931
    if not encoder_dict and not Path(model).is_absolute():
932
933
        try:
            # If model is on HuggingfaceHub, get the repo files
934
            repo_files = list_repo_files(model, revision=revision)
935
        except Exception:
936
937
938
939
            repo_files = []

        for config_name in sentence_transformer_config_files:
            if config_name in repo_files:
940
                encoder_dict = get_hf_file_to_dict(config_name, model, revision)
941
942
943
                if encoder_dict:
                    break

944
945
946
    if not encoder_dict:
        return None

947
948
    logger.info("Found sentence-transformers tokenize configuration.")

949
950
951
952
953
    if all(k in encoder_dict for k in ("max_seq_length", "do_lower_case")):
        return encoder_dict
    return None


954
def maybe_register_config_serialize_by_value() -> None:
955
956
    """Try to register HF model configuration class to serialize by value

957
958
959
    If trust_remote_code is set, and the model's config file specifies an
    `AutoConfig` class, then the config class is typically an instance of
    a custom class imported from the HF modules cache.
960

961
    Examples:
962

963
964
965
966
967
968
969
970
971
972
973
974
975
976
977
978
979
980
981
982
983
984
985
986
    >>> from transformers import AutoConfig
    >>> klass = AutoConfig.from_pretrained(
    ...     "meta-llama/Meta-Llama-3-8B", trust_remote_code=True
    ... )
    >>> klass.__class__  # transformers.models.llama.configuration_llama.LlamaConfig
    >>> import transformers_modules  # error, not initialized
    >>> klass = AutoConfig.from_pretrained(
    ...     "deepseek-ai/DeepSeek-V2.5", trust_remote_code=True
    ... )
    >>> import transformers_modules  # success, initialized
    >>> klass.__class__  # transformers_modules.deepseek-ai.DeepSeek-V2.5.98b11844770b2c3ffc18b175c758a803640f4e77.configuration_deepseek.DeepseekV2Config

    In the DeepSeek example, the config class is an instance of a custom
    class that is not serializable by default. This class will not be
    importable in spawned workers, and won't exist at all on
    other nodes, which breaks serialization of the config.

    In this function we tell the cloudpickle serialization library to pass
    instances of these generated classes by value instead of by reference,
    i.e. the class definition is serialized along with its data so that the
    class module does not need to be importable on the receiving end.

    See: https://github.com/cloudpipe/cloudpickle?tab=readme-ov-file#overriding-pickles-serialization-mechanism-for-importable-constructs
    """  # noqa
987
988
    try:
        import transformers_modules
989

990
        transformers_modules_available = True
991
    except ImportError:
992
        transformers_modules_available = False
993
994
995
996
997

    try:
        import multiprocessing
        import pickle

998
999
        import cloudpickle

1000
        from vllm.config import VllmConfig
1001

1002
1003
1004
        # Register multiprocessing reducers to handle cross-process
        # serialization of VllmConfig objects that may contain custom configs
        # from transformers_modules
1005
        def _reduce_config(config: VllmConfig):
1006
            return (pickle.loads, (cloudpickle.dumps(config),))
1007

1008
        multiprocessing.reducer.register(VllmConfig, _reduce_config)
1009

1010
1011
1012
1013
1014
        # Register transformers_modules with cloudpickle if available
        if transformers_modules_available:
            cloudpickle.register_pickle_by_value(transformers_modules)

            # ray vendors its own version of cloudpickle
1015
            from vllm.v1.executor.ray_utils import ray
1016

1017
1018
1019
            if ray:
                ray.cloudpickle.register_pickle_by_value(transformers_modules)

1020
1021
1022
1023
1024
1025
    except Exception as e:
        logger.warning(
            "Unable to register remote classes used by"
            " trust_remote_code with by-value serialization. This may"
            " lead to a later error. If remote code is not needed"
            " remove `--trust-remote-code`",
1026
1027
            exc_info=e,
        )
1028
1029


1030
def get_hf_image_processor_config(
1031
1032
1033
    model: str | Path,
    hf_token: bool | str | None = None,
    revision: str | None = None,
1034
    **kwargs,
1035
) -> dict[str, Any]:
1036
    # ModelScope does not provide an interface for image_processor
1037
    if envs.VLLM_USE_MODELSCOPE:
1038
        return dict()
1039
    # Separate model folder from file path for GGUF models
1040
    if check_gguf_file(model):
1041
        model = Path(model).parent
1042
1043
    elif is_remote_gguf(model):
        model, _ = split_remote_gguf(model)
1044
1045
1046
    return get_image_processor_config(
        model, token=hf_token, revision=revision, **kwargs
    )
1047
1048


1049
1050
def get_hf_text_config(config: PretrainedConfig):
    """Get the "sub" config relevant to llm for multi modal models.
1051
    No op for pure text models.
1052
    """
1053
1054
    text_config = config.get_text_config()

1055
1056
1057
1058
1059
1060
1061
    if text_config is not config and not hasattr(text_config, "num_attention_heads"):
        raise ValueError(
            "The text_config extracted from the model config does not have "
            "`num_attention_heads` attribute. This indicates a mismatch "
            "between the model config and vLLM's expectations. Please "
            "ensure that the model config is compatible with vLLM."
        )
1062
1063

    return text_config
1064
1065
1066
1067
1068


def try_get_generation_config(
    model: str,
    trust_remote_code: bool,
1069
1070
    revision: str | None = None,
    config_format: str | ConfigFormat = "auto",
1071
    hf_token: bool | str | None = None,
1072
) -> GenerationConfig | None:
1073
1074
1075
1076
1077
1078
1079
    # GGUF files don't have generation_config.json - their config is embedded
    # in the file header. Skip all filesystem lookups to avoid re-reading the
    # memory-mapped file, which can hang in multi-process scenarios when the
    # EngineCore process already has the file mapped.
    if is_gguf(model):
        return None

1080
1081
1082
1083
    try:
        return GenerationConfig.from_pretrained(
            model,
            revision=revision,
1084
            token=hf_token,
1085
1086
1087
1088
1089
1090
1091
        )
    except OSError:  # Not found
        try:
            config = get_config(
                model,
                trust_remote_code=trust_remote_code,
                revision=revision,
1092
                config_format=config_format,
1093
                token=hf_token,
1094
1095
1096
1097
            )
            return GenerationConfig.from_model_config(config)
        except OSError:  # Not found
            return None
1098
1099


1100
1101
1102
def try_get_safetensors_metadata(
    model: str,
    *,
1103
    revision: str | None = None,
1104
1105
):
    get_safetensors_metadata_partial = partial(
1106
        get_safetensors_metadata, model, revision=revision
1107
1108
1109
    )

    try:
1110
1111
1112
        return with_retry(
            get_safetensors_metadata_partial, "Error retrieving safetensors"
        )
1113
1114
    except Exception:
        return None
1115
1116
1117


def try_get_tokenizer_config(
1118
    pretrained_model_name_or_path: str | os.PathLike,
1119
    trust_remote_code: bool,
1120
1121
    revision: str | None = None,
) -> dict[str, Any] | None:
1122
1123
1124
1125
1126
1127
1128
1129
    try:
        return get_tokenizer_config(
            pretrained_model_name_or_path,
            trust_remote_code=trust_remote_code,
            revision=revision,
        )
    except Exception:
        return None
1130
1131


1132
1133
1134
1135
1136
1137
1138
1139
1140
1141
1142
1143
1144
@cache
def try_get_dense_modules(
    model: str | Path,
    revision: str | None = None,
) -> list[dict[str, Any]] | None:
    try:
        modules = get_hf_file_to_dict("modules.json", model, revision)
        if not modules:
            return None

        if isinstance(modules, dict):
            modules = modules.get("modules", [])

1145
1146
1147
1148
1149
        _DENSE_MODULE_TYPES = {
            "sentence_transformers.models.Dense",
            "pylate.models.Dense.Dense",
        }
        dense_modules = [m for m in modules if m.get("type") in _DENSE_MODULE_TYPES]
1150
1151
1152
1153
1154
1155
1156
1157
1158
1159
1160
1161
1162
1163
1164
1165
1166
1167
        if not dense_modules:
            return None

        layer_configs = []
        for module in dense_modules:
            folder = module.get("path", "")

            config_path = f"{folder}/config.json" if folder else "config.json"
            layer_config = get_hf_file_to_dict(config_path, model, revision)
            if not layer_config:
                continue
            layer_config["folder"] = folder
            layer_configs.append(layer_config)
        return layer_configs
    except Exception:
        return None


1168
1169
1170
def get_safetensors_params_metadata(
    model: str,
    *,
1171
    revision: str | None = None,
1172
1173
) -> dict[str, Any]:
    """
1174
    Get the safetensors parameters metadata for remote/local model repository.
1175
1176
1177
1178
1179
1180
    """
    full_metadata = {}
    if (model_path := Path(model)).exists():
        safetensors_to_check = model_path.glob("*.safetensors")
        full_metadata = {
            param_name: info
1181
1182
1183
            for file_path in safetensors_to_check
            if file_path.is_file()
            for param_name, info in parse_safetensors_file_metadata(file_path).items()
1184
1185
1186
1187
1188
1189
1190
1191
1192
1193
1194
1195
        }
    else:
        repo_mt = try_get_safetensors_metadata(model, revision=revision)
        if repo_mt and (files_mt := repo_mt.files_metadata):
            full_metadata = {
                param_name: asdict(info)
                for file_mt in files_mt.values()
                for param_name, info in file_mt.tensors.items()
            }
    return full_metadata


1196
1197
1198
1199
1200
1201
1202
def _download_mistral_config_file(model, revision) -> dict:
    config_file_name = "params.json"
    config_dict = get_hf_file_to_dict(config_file_name, model, revision)
    if config_dict is None:
        raise ValueError(
            f"Failed to load mistral '{config_file_name}' config for model "
            f"{model}. Please check if the model is a mistral-format model "
1203
1204
            f"and if the config file exists."
        )
1205
1206
1207
1208
1209
1210
1211
1212
    assert isinstance(config_dict, dict)
    return config_dict


def _maybe_retrieve_max_pos_from_hf(model, revision, **kwargs) -> int:
    max_position_embeddings = 128_000
    try:
        trust_remote_code_val = kwargs.get("trust_remote_code", False)
1213
1214
1215
1216
1217
1218
        hf_config = get_config(
            model=model,
            trust_remote_code=trust_remote_code_val,
            revision=revision,
            config_format="hf",
        )
1219
1220
1221
1222
1223
1224
1225
        if hf_value := hf_config.get_text_config().max_position_embeddings:
            max_position_embeddings = hf_value
    except Exception as e:
        logger.warning(
            "The params.json file is missing 'max_position_embeddings'"
            " and could not get a value from the HF config."
            " Defaulting to 128000",
1226
1227
            exc_info=e,
        )
1228
1229

    return max_position_embeddings