utils.py 17.5 KB
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import itertools
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from dataclasses import dataclass, field
from typing import (Any, Dict, Iterable, List, Literal, Mapping, Optional,
                    Protocol, Tuple, Union, overload)
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import torch
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import torch.nn as nn
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from torch.func import functional_call
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from transformers import PretrainedConfig
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import vllm.envs as envs
from vllm.attention.selector import (_Backend, backend_name_to_enum,
                                     get_global_forced_attn_backend)
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from vllm.config import (CacheConfig, LoRAConfig, MultiModalConfig,
                         SchedulerConfig)
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from vllm.logger import init_logger
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from vllm.model_executor.layers.quantization import QuantizationConfig
from vllm.model_executor.model_loader.loader import build_model
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from vllm.model_executor.model_loader.weight_utils import default_weight_loader
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from vllm.model_executor.models import ModelRegistry
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from vllm.multimodal.base import NestedTensors
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from vllm.platforms import current_platform
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from vllm.sequence import IntermediateTensors
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from vllm.utils import is_pin_memory_available
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logger = init_logger(__name__)
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WeightsMapping = Mapping[str, Optional[str]]
"""If a key maps to a value of `None`, the corresponding weight is ignored."""
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@dataclass
class WeightsMapper:
    """Maps the name of each weight if they match the following patterns."""
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    orig_to_new_substr: WeightsMapping = field(default_factory=dict)
    orig_to_new_prefix: WeightsMapping = field(default_factory=dict)
    orig_to_new_suffix: WeightsMapping = field(default_factory=dict)
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    def _map_name(self, key: str) -> Optional[str]:
        for substr, new_key in self.orig_to_new_substr.items():
            if substr in key:
                if new_key is None:
                    return None
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                key = key.replace(substr, new_key, 1)

        for prefix, new_key in self.orig_to_new_prefix.items():
            if key.startswith(prefix):
                if new_key is None:
                    return None

                key = key.replace(prefix, new_key, 1)

        for suffix, new_key in self.orig_to_new_suffix.items():
            if key.endswith(suffix):
                if new_key is None:
                    return None

                key = new_key.join(key.rsplit(suffix, 1))

        return key
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    def apply(
        self, weights: Iterable[Tuple[str, torch.Tensor]]
    ) -> Iterable[Tuple[str, torch.Tensor]]:
        return ((out_name, data) for name, data in weights
                if (out_name := self._map_name(name)) is not None)
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class AutoWeightsLoader:
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    """
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    Helper class to load weights into a :class:`torch.nn.Module`. It is able
    to automatically detect child modules and parameters while iterating over
    the weights only once.

    The weight loading logic for individual modules can be overridden
    by defining a ``load_weights`` method.

    Similarly, the weight loading logic for individual parameters can be
    overridden by defining a ``weight_loader`` method.
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    """
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    def __init__(
        self,
        module: nn.Module,
        *,
        skip_prefixes: Optional[List[str]] = None,
        ignore_unexpected_prefixes: Optional[List[str]] = None,
    ) -> None:
        super().__init__()

        self.module = module
        self.skip_prefixes = skip_prefixes or []
        self.ignore_unexpected_prefixes = ignore_unexpected_prefixes or []

    def _groupby_prefix(
        self,
        weights: Iterable[Tuple[str, torch.Tensor]],
    ) -> Iterable[Tuple[str, Iterable[Tuple[str, torch.Tensor]]]]:
        weights_by_parts = ((weight_name.split(".", 1), weight_data)
                            for weight_name, weight_data in weights)

        for prefix, group in itertools.groupby(weights_by_parts,
                                               key=lambda x: x[0][0]):
            yield (
                prefix,
                # Because maxsplit=1 in weight_name.split(...),
                # the length of `parts` must either be 1 or 2
                (("" if len(parts) == 1 else parts[1], weights_data)
                 for parts, weights_data in group),
            )

    def _get_qualname(self, prefix: str, rest: str) -> str:
        if prefix == "":
            return rest
        if rest == "":
            return prefix

        return ".".join((prefix, rest))

    def _can_skip(self, qualname: str) -> bool:
        return any(qualname.startswith(p) for p in self.skip_prefixes)

    def _can_ignore_unexpected(self, qualname: str) -> bool:
        return any(
            qualname.startswith(p) for p in self.ignore_unexpected_prefixes)

    def _load_param(
        self,
        base_prefix: str,
        param: nn.Parameter,
        weights: Iterable[Tuple[str, torch.Tensor]],
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    ) -> Iterable[str]:
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        for weight_name, weight_data in weights:
            weight_qualname = self._get_qualname(base_prefix, weight_name)

            if self._can_skip(weight_qualname):
                continue

            if weight_name != "":
                if not self._can_ignore_unexpected(weight_qualname):
                    raise ValueError(
                        f"Attempted to load nested weight '{weight_qualname}' "
                        f"into a single parameter '{base_prefix}'")

                continue

            weight_loader = getattr(param, "weight_loader",
                                    default_weight_loader)
            weight_loader(param, weight_data)

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            yield weight_qualname

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    def _load_module(
        self,
        base_prefix: str,
        module: nn.Module,
        weights: Iterable[Tuple[str, torch.Tensor]],
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    ) -> Iterable[str]:
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        if isinstance(module, PPMissingLayer):
            return

        # Avoid infinite recursion since this function is typically
        # called inside load_weights of the module itself
        if module != self.module:
            module_load_weights = getattr(module, "load_weights", None)
            if callable(module_load_weights):
                module_load_weights(weights)
                return

        child_modules = dict(module.named_children())
        child_params = dict(module.named_parameters(recurse=False))

        for child_prefix, child_weights in self._groupby_prefix(weights):
            prefix = self._get_qualname(base_prefix, child_prefix)

            if self._can_skip(prefix):
                continue

            if child_prefix in child_modules:
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                yield from self._load_module(prefix,
                                             child_modules[child_prefix],
                                             child_weights)
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            elif child_prefix in child_params:
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                yield from self._load_param(prefix, child_params[child_prefix],
                                            child_weights)
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            else:
                if not self._can_ignore_unexpected(prefix):
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                    msg = (f"There is no module or parameter named '{prefix}' "
                           f"in {type(self.module).__name__}")
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                    raise ValueError(msg)

    def load_weights(
        self,
        weights: Iterable[Tuple[str, torch.Tensor]],
        *,
        mapper: Optional[WeightsMapper] = None,
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    ) -> List[str]:
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        if mapper is not None:
            weights = mapper.apply(weights)

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        autoloaded_weights = list(self._load_module("", self.module, weights))
        return autoloaded_weights
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def init_vllm_registered_model(
    hf_config: PretrainedConfig,
    cache_config: Optional[CacheConfig],
    quant_config: Optional[QuantizationConfig],
    *,
    lora_config: Optional[LoRAConfig] = None,
    multimodal_config: Optional[MultiModalConfig] = None,
    scheduler_config: Optional[SchedulerConfig] = None,
) -> nn.Module:
    """
    Helper function to initialize an inner model registered to vLLM,
    based on the arguments passed to the outer vLLM model.
    """
    model_class, _ = ModelRegistry.resolve_model_cls(hf_config.architectures)

    return build_model(
        model_class,
        hf_config,
        cache_config,
        quant_config,
        lora_config=lora_config,
        multimodal_config=multimodal_config,
        scheduler_config=scheduler_config,
    )


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@overload
def flatten_bn(x: torch.Tensor) -> torch.Tensor:
    ...


@overload
def flatten_bn(x: List[torch.Tensor]) -> List[torch.Tensor]:
    ...


@overload
def flatten_bn(
    x: Union[List[torch.Tensor], torch.Tensor],
    *,
    concat: Literal[True],
) -> torch.Tensor:
    ...


def flatten_bn(
    x: Union[List[torch.Tensor], torch.Tensor],
    *,
    concat: bool = False,
) -> Union[List[torch.Tensor], torch.Tensor]:
    """
    Flatten the ``B`` and ``N`` dimensions of batched multimodal inputs.

    The input tensor should have shape ``(B, N, ...)```.
    """
    if isinstance(x, torch.Tensor):
        return x.flatten(0, 1)

    if concat:
        return torch.cat(x)

    return [x_n for x_b in x for x_n in x_b]


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def _flatten_embeddings(embeddings: NestedTensors) -> torch.Tensor:
    """
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    Recursively flattens and concatenates NestedTensors on all but the last
    dimension.
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    """

    if isinstance(embeddings, torch.Tensor):
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        # Flatten all but the last dimension.
        return embeddings.flatten(0, -2)
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    return torch.cat(tuple(_flatten_embeddings(t) for t in embeddings))


def _embedding_count_expression(embeddings: NestedTensors) -> str:
    """
    Constructs a debugging representation of the number of embeddings in the
    NestedTensors.
    """

    if isinstance(embeddings, torch.Tensor):
        return " x ".join([str(dim) for dim in embeddings.shape[:-1]])

    return " + ".join(
        _embedding_count_expression(inner) for inner in embeddings)


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def merge_multimodal_embeddings(input_ids: torch.Tensor,
                                inputs_embeds: torch.Tensor,
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                                multimodal_embeddings: NestedTensors,
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                                placeholder_token_id: int) -> torch.Tensor:
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    """
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    Merge ``multimodal_embeddings`` into ``inputs_embeds`` by overwriting the
    positions in ``inputs_embeds`` corresponding to placeholder tokens in
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    ``input_ids``.
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    Note:
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        This updates ``inputs_embeds`` in place.
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    """
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    mask = (input_ids == placeholder_token_id)
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    num_expected_tokens = mask.sum().item()
    assert isinstance(num_expected_tokens, int)
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    flattened = _flatten_embeddings(multimodal_embeddings)
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    if flattened.shape[0] != num_expected_tokens:
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        expr = _embedding_count_expression(multimodal_embeddings)
        raise ValueError(
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            f"Attempted to assign {expr} = {flattened.shape[0]} "
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            f"multimodal tokens to {num_expected_tokens} placeholders")
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    inputs_embeds[mask] = flattened
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    return inputs_embeds
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class LayerFn(Protocol):

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    def __call__(self, prefix: str) -> torch.nn.Module:
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        ...


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class PPMissingLayer(torch.nn.Identity):
    """
    A placeholder layer for missing layers in a pipeline parallel model.
    """

    def __init__(self, *args, **kwargs):
        super().__init__()


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_CPU_OFFLOAD_BYTES = 0
_CPU_OFFLOAD_MAX_BYTES = 0


def set_cpu_offload_max_bytes(max_bytes: int) -> None:
    global _CPU_OFFLOAD_MAX_BYTES, _CPU_OFFLOAD_BYTES
    _CPU_OFFLOAD_BYTES = 0
    _CPU_OFFLOAD_MAX_BYTES = max_bytes


def maybe_offload_to_cpu(module: torch.nn.Module) -> torch.nn.Module:
    device = next(module.parameters()).device

    if device == torch.device("cpu"):
        return module

    global _CPU_OFFLOAD_MAX_BYTES, _CPU_OFFLOAD_BYTES
    if _CPU_OFFLOAD_BYTES >= _CPU_OFFLOAD_MAX_BYTES:
        return module

    pin_memory = is_pin_memory_available()

    # offload parameters to CPU
    # use pin_memory if possible, which helps cudagraph capture speed
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    offloaded_parameters = False
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    for p in module.parameters():
        if _CPU_OFFLOAD_BYTES >= _CPU_OFFLOAD_MAX_BYTES:
            # we use per-parameter offloading
            # one module might have some parameters offloaded and some not
            break

        # `torch.empty_like` does not support `pin_memory` argument
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        cpu_data = torch.empty_strided(size=p.data.size(),
                                       stride=p.data.stride(),
                                       dtype=p.data.dtype,
                                       layout=p.data.layout,
                                       device='cpu',
                                       pin_memory=pin_memory)
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        cpu_data.copy_(p.data)
        p.data = cpu_data
        _CPU_OFFLOAD_BYTES += p.data.numel() * p.data.element_size()
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        offloaded_parameters = True

    if offloaded_parameters:
        original_forward = module.forward

        def forward(*args, **kwargs):
            module.forward = original_forward
            device_state = {
                # here we blindly call `to(device)`
                # if the parameter is already on the device, it will be a no-op
                k: v.to(device, non_blocking=True)
                for k, v in module.state_dict().items()
            }
            output = functional_call(module,
                                     device_state,
                                     args=args,
                                     kwargs=kwargs)
            module.forward = forward
            return output
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        module.forward = forward

    return module


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def make_layers(
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    num_hidden_layers: int,
    layer_fn: LayerFn,
    prefix: str,
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) -> Tuple[int, int, torch.nn.ModuleList]:
    """Make a list of layers with the given layer function, taking
    pipeline parallelism into account.
    """
    from vllm.distributed.parallel_state import get_pp_group
    from vllm.distributed.utils import get_pp_indices
    start_layer, end_layer = get_pp_indices(num_hidden_layers,
                                            get_pp_group().rank_in_group,
                                            get_pp_group().world_size)
    modules = torch.nn.ModuleList(
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        [PPMissingLayer() for _ in range(start_layer)] + [
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            maybe_offload_to_cpu(layer_fn(prefix=f"{prefix}.{idx}"))
            for idx in range(start_layer, end_layer)
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        ] + [PPMissingLayer() for _ in range(end_layer, num_hidden_layers)])
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    return start_layer, end_layer, modules


# NOTE: don't use lru_cache here because it can prevent garbage collection
_model_to_pp_missing_layer_names: Dict[int, List[str]] = {}


def get_pp_missing_layer_names(model: torch.nn.Module) -> List[str]:
    """Get the names of the missing layers in a pipeline parallel model."""
    model_id = id(model)
    if model_id in _model_to_pp_missing_layer_names:
        return _model_to_pp_missing_layer_names[model_id]

    missing_layer_names = []
    for name, module in model.named_modules():
        if isinstance(module, PPMissingLayer):
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            # NOTE: the trailing dot is used to match the prefix of the layer.
            # without the dot, we could match a layer that is not missing,
            # e.g., 'encoder.layer.1' would match 'encoder.layer.11'
            missing_layer_names.append(name + '.')
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    _model_to_pp_missing_layer_names[model_id] = missing_layer_names

    return missing_layer_names


def is_pp_missing_parameter(name: str, model: torch.nn.Module) -> bool:
    """Check if a parameter is missing in a pipeline parallel model."""
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    if isinstance(model, PPMissingLayer):
        return True

    return any(
        name.startswith(missing_layer_name)
        for missing_layer_name in get_pp_missing_layer_names(model))
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def make_empty_intermediate_tensors_factory(keys: List[str], hidden_size: int):

    def make_empty_intermediate_tensors(
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        batch_size: int,
        dtype: torch.dtype,
        device: torch.device,
    ) -> IntermediateTensors:
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        return IntermediateTensors({
            key: torch.zeros((batch_size, hidden_size),
                             dtype=dtype,
                             device=device)
            for key in keys
        })

    return make_empty_intermediate_tensors
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class LLMWrapper(nn.Module):
    """
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    To align with the key names of LoRA trained with PEFT, we need to add an
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    additional layer to the llm's implementation.
    """

    def __init__(self, llm: nn.Module, name: str) -> None:
        super().__init__()
        self.model_name = name
        setattr(self, name, llm)

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    def __getattr__(self, key: str):
        llm = super().__getattr__(self.model_name)
        if key == self.model_name:
            return llm
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        return getattr(llm, key)

    # We need to explicitly override this
    def __call__(self, *args: Any, **kwargs: Any) -> Any:
        llm = super().__getattr__(self.model_name)
        return llm(*args, **kwargs)
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def get_vit_attn_backend() -> _Backend:
    selected_backend: Optional[_Backend] = get_global_forced_attn_backend()
    if selected_backend is None:
        backend_by_env_var: Optional[str] = envs.VLLM_ATTENTION_BACKEND
        if backend_by_env_var is not None:
            selected_backend = backend_name_to_enum(backend_by_env_var)
    if selected_backend is None:
        # For Volta and Turing GPUs, use xformers instead.
        device_available = current_platform.has_device_capability(80)
        if device_available:
            from transformers.utils import is_flash_attn_2_available
            if is_flash_attn_2_available():
                selected_backend = _Backend.FLASH_ATTN
            else:
                logger.warning(
                    "Current `vllm-flash-attn` has a bug inside vision module, "
                    "so we use xformers backend instead. You can run "
                    "`pip install flash-attn` to use flash-attention backend.")
                selected_backend = _Backend.XFORMERS
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        elif current_platform.is_cpu():
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            selected_backend = _Backend.TORCH_SDPA
        else:
            selected_backend = _Backend.XFORMERS
    return selected_backend