utils.py 3.4 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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"""Utils for model executor."""
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import copy
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from typing import Any
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import torch

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from vllm.utils.torch_utils import is_torch_equal_or_newer
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def set_random_seed(seed: int) -> None:
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    from vllm.platforms import current_platform
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    current_platform.seed_everything(seed)
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def set_weight_attrs(
    weight: torch.Tensor,
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    weight_attrs: dict[str, Any] | None,
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):
    """Set attributes on a weight tensor.

    This method is used to set attributes on a weight tensor. This method
    will not overwrite existing attributes.

    Args:
        weight: The weight tensor.
        weight_attrs: A dictionary of attributes to set on the weight tensor.
    """
    if weight_attrs is None:
        return
    for key, value in weight_attrs.items():
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        assert not hasattr(weight, key), f"Overwriting existing tensor attribute: {key}"
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        # NOTE(woosuk): During weight loading, we often do something like:
        # narrowed_tensor = param.data.narrow(0, offset, len)
        # narrowed_tensor.copy_(real_weight)
        # expecting narrowed_tensor and param.data to share the same storage.
        # However, on TPUs, narrowed_tensor will lazily propagate to the base
        # tensor, which is param.data, leading to the redundant memory usage.
        # This sometimes causes OOM errors during model loading. To avoid this,
        # we sync the param tensor after its weight loader is called.
        # TODO(woosuk): Remove this hack once we have a better solution.
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        from vllm.platforms import current_platform
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        if current_platform.use_sync_weight_loader() and key == "weight_loader":
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            value = current_platform.make_synced_weight_loader(value)
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        setattr(weight, key, value)
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def get_packed_modules_mapping(model: torch.nn.Module) -> dict[str, list[str]]:
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    parent_map = getattr(model, "packed_modules_mapping", None)
    parent_map = copy.deepcopy(parent_map) if parent_map is not None else {}
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    # don't infer mapping if the model has defined it explicitly.
    if parent_map:
        return parent_map

    # We only check main components instead of whole model submodules
    for child in model.children():
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        child_map = getattr(child, "packed_modules_mapping", None)
        child_map = copy.deepcopy(child_map) if child_map is not None else {}

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        if any((k in parent_map and parent_map[k] != v) for k, v in child_map.items()):
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            raise ValueError(
                f"Can't update {type(model).__name__}'s packed_modules_mapping "
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                f"safely because of conflicts from {type(child).__name__}."
            )
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        else:
            parent_map.update(child_map)
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    return parent_map


def get_moe_expert_mapping(
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    model: torch.nn.Module,
) -> list[tuple[str, str, int, str]]:
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    if parent_map := getattr(model, "get_expert_mapping", None):
        return parent_map()
    else:
        # We only check main components instead of whole model submodules
        for child in model.children():
            child_map = getattr(child, "get_expert_mapping", None)
            if child_map is not None:
                return child_map()
        return []
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def maybe_disable_graph_partition(current_backend: str) -> dict[str, bool]:
    if current_backend == "inductor" and is_torch_equal_or_newer("2.9.0.dev"):
        return {"graph_partition": False}
    else:
        return {}