compiler_interface.py 29.5 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 contextlib
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import copy
import os
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from collections.abc import Callable
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from contextlib import ExitStack
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from typing import Any, Literal
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from unittest.mock import patch

import torch
import torch._inductor.compile_fx
import torch.fx as fx

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import vllm.envs as envs
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from vllm.compilation.counter import compilation_counter
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from vllm.config import VllmConfig
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from vllm.config.utils import Range
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from vllm.logger import init_logger
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from vllm.utils.hashing import safe_hash
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from vllm.utils.torch_utils import is_torch_equal_or_newer
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logger = init_logger(__name__)

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class CompilerInterface:
    """
    The interface for a compiler that can be used by vLLM.
    """
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    # The name of the compiler, e.g. inductor.
    # This is a class-level attribute.
    name: str

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    def initialize_cache(
        self, cache_dir: str, disable_cache: bool = False, prefix: str = ""
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    ) -> None:
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        """
        when the vLLM process uses `cache_dir` as the cache directory,
        the compiler should initialize itself with the cache directory,
        e.g. by re-directing its own cache directory to a sub-directory.
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        prefix can be used in combination with cache_dir to figure out the base
        cache directory, e.g. there're multiple parts of model being compiled,
        but we want to share the same cache directory for all of them.

        e.g.
        cache_dir = "/path/to/dir/backbone", prefix = "backbone"
        cache_dir = "/path/to/dir/eagle_head", prefix = "eagle_head"
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        """
        pass

    def compute_hash(self, vllm_config: VllmConfig) -> str:
        """
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        Gather all the relevant information from the vLLM config,
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        to compute a hash so that we can cache the compiled model.

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        See [`VllmConfig.compute_hash`][vllm.config.VllmConfig.compute_hash]
        to check what information
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        is already considered by default. This function should only
        consider the information that is specific to the compiler.
        """
        return ""

    def compile(
        self,
        graph: fx.GraphModule,
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        example_inputs: list[Any],
        compiler_config: dict[str, Any],
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        compile_range: Range,
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        key: str | None = None,
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    ) -> tuple[Callable[..., Any] | None, Any | None]:
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        """
        Compile the graph with the given example inputs and compiler config,
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        with a range. The `compile_range` specifies the range of the inputs,
        it could be concrete size (if compile_sizes is provided), e.g. [4, 4]
        or a range [5, 8].
        Right now we only support one variable in ranges for all inputs,
         which is the batchsize (number of tokens) during inference.
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        Dynamo will make sure `graph(*example_inputs)` is valid.

        The function should return a compiled callable function, as well as
        a handle that can be used to directly load the compiled function.

        The handle should be a plain Python object, preferably a string or a
        file path for readability.

        If the compiler doesn't support caching, it should return None for the
        handle. If the compiler fails to compile the graph, it should return
        None for the compiled function as well.
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        `key` is required for StandaloneInductorAdapter, it specifies where to
        save the compiled artifact. The compiled artifact gets saved to
        `cache_dir/key`.
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        """
        return None, None

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    def load(
        self,
        handle: Any,
        graph: fx.GraphModule,
        example_inputs: list[Any],
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        graph_index: int,
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        compile_range: Range,
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    ) -> Callable[..., Any]:
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        """
        Load the compiled function from the handle.
        Raises an error if the handle is invalid.

        The handle is the second return value of the `compile` function.
        """
        raise NotImplementedError("caching is not supported")


class AlwaysHitShapeEnv:
    """
    Why do we need this class:

    For normal `torch.compile` usage, every compilation will have
    one Dynamo bytecode compilation and one Inductor compilation.
    The Inductor compilation happens under the context of the
    Dynamo bytecode compilation, and that context is used to
    determine the dynamic shape information, etc.

    For our use case, we only run Dynamo bytecode compilation once,
    and run Inductor compilation multiple times with different shapes
    plus a general shape. The compilation for specific shapes happens
    outside of the context of the Dynamo bytecode compilation. At that
    time, we don't have shape environment to provide to Inductor, and
    it will fail the Inductor code cache lookup.

    By providing a dummy shape environment that always hits, we can
    make the Inductor code cache lookup always hit, and we can
    compile the graph for different shapes as needed.

    The following dummy methods are obtained by trial-and-error
    until it works.
    """

    def __init__(self) -> None:
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        self.guards: list[Any] = []
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    def evaluate_guards_expression(self, *args: Any, **kwargs: Any) -> Literal[True]:
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        return True

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    def get_pruned_guards(self, *args: Any, **kwargs: Any) -> list[Any]:
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        return []

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    def produce_guards_expression(self, *args: Any, **kwargs: Any) -> Literal[""]:
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        return ""


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def get_inductor_factors() -> list[Any]:
    factors: list[Any] = []
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    # summarize system state
    from torch._inductor.codecache import CacheBase
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    system_factors = CacheBase.get_system()
    factors.append(system_factors)

    # summarize pytorch state
    from torch._inductor.codecache import torch_key
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    torch_factors = torch_key()
    factors.append(torch_factors)
    return factors


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def is_compile_cache_enabled(
    vllm_additional_inductor_config: dict[str, Any],
) -> bool:
    vllm_inductor_config_disable_cache = vllm_additional_inductor_config.get(
        "force_disable_caches", False
    )

    # TODO(gmagogsfm): Replace torch._inductor.config.force_disable_caches
    # with torch.compiler.config.force_disable_caches when minimum PyTorch
    # version reaches 2.10
    return (
        not envs.VLLM_DISABLE_COMPILE_CACHE
        and not torch._inductor.config.force_disable_caches
        and not vllm_inductor_config_disable_cache
    )


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def _patch_standalone_compile_atomic_save() -> None:
    """Backport of pytorch/pytorch#162432 for torch < 2.10.0.

    Patches CompiledArtifact.save() to use write_atomic for binary format,
    preventing corrupt cache files when multiple processes compile
    concurrently.
    """
    from torch._inductor.codecache import write_atomic
    from torch._inductor.standalone_compile import CompiledArtifact as cls

    if getattr(cls.save, "_vllm_patched", False):
        return

    original_save = cls.save

    def _save(
        self: Any, *, path: str, format: Literal["binary", "unpacked"] = "binary"
    ) -> None:
        if format != "binary":
            return original_save(self, path=path, format=format)
        from torch._dynamo.utils import dynamo_timed
        from torch._inductor.codecache import torch_key
        from torch.utils._appending_byte_serializer import BytesWriter

        with dynamo_timed("CompiledArtifact.save"):
            assert self._artifacts is not None
            artifact_bytes, cache_info = self._artifacts
            assert len(cache_info.aot_autograd_artifacts) == 1, cache_info
            key = cache_info.aot_autograd_artifacts[0]
            assert not os.path.isdir(path)
            writer = BytesWriter()
            writer.write_bytes(torch_key())
            writer.write_str(key)
            writer.write_bytes(artifact_bytes)
            write_atomic(path, writer.to_bytes())

    _save._vllm_patched = True  # type: ignore[attr-defined]
    cls.save = _save  # type: ignore[assignment]
    logger.debug("Patched %s.save for atomic writes (torch < 2.10)", cls.__name__)


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def _patch_constrain_to_fx_strides() -> contextlib.AbstractContextManager:
    """Context manager that patches inductor's ``constrain_to_fx_strides``
    to handle opaque (non-tensor) arguments.

    The original calls ``.stride()`` on every FX arg's meta value, which
    crashes on ``FakeScriptObject`` (the compile-time proxy for hoisted
    opaque types).  The patched version skips args whose meta value is
    not a ``torch.Tensor``.

    Returns ``nullcontext`` on torch < 2.11.
    Upstream issue: https://github.com/pytorch/pytorch/issues/175973
    """
    if not is_torch_equal_or_newer("2.11.0.dev"):
        return contextlib.nullcontext()

    import torch._inductor.ir as _ir
    import torch._inductor.lowering as _lowering
    from torch._inductor.virtualized import V as _V

    def _patched(fx_node, *args, **kwargs):
        def apply_constraint(arg, fx_arg):
            if isinstance(arg, _ir.IRNode):
                meta_val = fx_arg.meta.get("val")
                if isinstance(meta_val, torch.Tensor):
                    stride_order = _ir.get_stride_order(
                        meta_val.stride(), _V.graph.sizevars.shape_env
                    )
                    return _ir.ExternKernel.require_stride_order(arg, stride_order)
                return arg
            if isinstance(arg, dict):
                return {key: apply_constraint(arg[key], fx_arg[key]) for key in arg}
            return arg

        args = tuple(
            apply_constraint(arg, fx_arg) for arg, fx_arg in zip(args, fx_node.args)
        )
        kwargs = {k: apply_constraint(v, fx_node.kwargs[k]) for k, v in kwargs.items()}
        return args, kwargs

    return patch.object(_lowering, "constrain_to_fx_strides", _patched)


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class InductorStandaloneAdaptor(CompilerInterface):
    """
    The adaptor for the Inductor compiler.
    Requires PyTorch 2.8+.
    This is not on by default yet, but we plan to turn it on by default for
    PyTorch 2.8.

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    Use VLLM_USE_STANDALONE_COMPILE to toggle this on or off.
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    """
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    name = "inductor_standalone"

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    def __init__(self, save_format: Literal["binary", "unpacked"]) -> None:
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        if not is_torch_equal_or_newer("2.10.0"):
            _patch_standalone_compile_atomic_save()
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        self.save_format = save_format

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    def compute_hash(self, vllm_config: VllmConfig) -> str:
        factors = get_inductor_factors()
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        hash_str: str = safe_hash(
            str(factors).encode(), usedforsecurity=False
        ).hexdigest()[:10]
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        return hash_str

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    def initialize_cache(
        self, cache_dir: str, disable_cache: bool = False, prefix: str = ""
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    ) -> None:
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        self.cache_dir = cache_dir

    def compile(
        self,
        graph: fx.GraphModule,
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        example_inputs: list[Any],
        compiler_config: dict[str, Any],
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        compile_range: Range,
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        key: str | None = None,
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    ) -> tuple[Callable[..., Any] | None, Any | None]:
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        compilation_counter.num_inductor_compiles += 1
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        current_config = {}
        if compiler_config is not None:
            current_config.update(compiler_config)
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        set_inductor_config(current_config, compile_range)
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        set_functorch_config()
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        if compile_range.is_single_size():
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            dynamic_shapes = "from_example_inputs"
        else:
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            dynamic_shapes = "from_graph"
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        from torch._inductor import standalone_compile
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        supports_aot = is_torch_equal_or_newer("2.10.0")
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        if not supports_aot and envs.VLLM_USE_MEGA_AOT_ARTIFACT:
            logger.error(
                "CRITICAL: VLLM_USE_MEGA_AOT_ARTIFACT "
                "is enabled but PyTorch version does not support 'aot' "
                "parameter in standalone_compile. This requires PyTorch "
                "2.10.0+. Falling back to non-AOT mode."
            )

        compile_kwargs = {
            "dynamic_shapes": dynamic_shapes,
            "options": {
                "config_patches": current_config,
            },
        }

        use_aot: bool = supports_aot and envs.VLLM_USE_MEGA_AOT_ARTIFACT
        # only add 'aot' parameter if both supported and enabled...
        # this will set bundled_autograd_cache
        # https://github.com/pytorch/pytorch/blob/9bbc5b2905c260adf41bc866a732f9c121a2828a/torch/_inductor/standalone_compile.py#L359 # noqa
        if use_aot:
            compile_kwargs["aot"] = True  # type: ignore[assignment]

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        # Inductor's pre-grad passes don't do anything for vLLM.
        # The pre-grad passes get run even on cache-hit and negatively impact
        # vllm cold compile times by O(1s)
        # Can remove this after the following issue gets fixed
        # https://github.com/pytorch/pytorch/issues/174502
        if envs.VLLM_ENABLE_PREGRAD_PASSES:
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            pregrad_ctx: Any = contextlib.nullcontext()
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        else:
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            pregrad_ctx = patch(
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                "torch._inductor.compile_fx._recursive_pre_grad_passes",
                lambda gm, _: gm,
            )
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        # When inputs are FakeTensors (from create_concrete_args),
        # standalone_compile("from_example_inputs") would normally create
        # a fresh FakeTensorMode, causing a mode mismatch assertion.
        # Patch FakeTensorMode in standalone_compile so it reuses the
        # mode already attached to our FakeTensors. This gives us both
        # ignore_shape_env=True (from "from_example_inputs") and mode
        # consistency (from reusing our mode).
        # Can remove this after the following issue gets fixed:
        # https://github.com/pytorch/pytorch/issues/176562
        from torch._subclasses.fake_tensor import FakeTensor

        input_fake_mode = None
        for x in example_inputs:
            if isinstance(x, FakeTensor):
                input_fake_mode = x.fake_mode
                break

        if input_fake_mode is not None:
            fake_mode_ctx: Any = patch(
                "torch._inductor.standalone_compile.FakeTensorMode",
                lambda *a, **kw: input_fake_mode,
            )
        else:
            fake_mode_ctx = contextlib.nullcontext()

        with pregrad_ctx, fake_mode_ctx, _patch_constrain_to_fx_strides():
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            compiled_graph = standalone_compile(graph, example_inputs, **compile_kwargs)
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        if use_aot:
            from torch._inductor.standalone_compile import AOTCompiledArtifact

            assert isinstance(compiled_graph, AOTCompiledArtifact)
            assert hasattr(compiled_graph, "serialize")
            # just return the compiled graph and a key
            # since we can serialize the bytes using to_bytes
            # and reload it using the key when reading
            return compiled_graph, None

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        # Save the compiled artifact to disk in the specified path
        assert key is not None
        path = os.path.join(self.cache_dir, key)
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        def is_saveable_2_10(compiled_artifact):
            # can just use compiled_artifact.is_saveable in 2.11
            if compiled_artifact._artifacts is None:
                return False
            _, cache_info = compiled_artifact._artifacts
            return len(cache_info.aot_autograd_artifacts) == 1

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        if is_compile_cache_enabled(compiler_config):
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            if not is_saveable_2_10(compiled_graph):
                raise RuntimeError(
                    "The compiled artifact is not serializable. This usually means "
                    "that the model code has something that is not serializable "
                    "by torch.compile in it. You can fix this by either "
                    "figuring out what is not serializable and rewriting it, "
                    "filing a bug report, "
                    "or suppressing this error by "
                    "disabling vLLM's compilation cache via "
                    "VLLM_DISABLE_COMPILE_CACHE=1 "
                    "(this will greatly increase vLLM server warm start times)."
                )
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            compiled_graph.save(path=path, format=self.save_format)
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            compilation_counter.num_compiled_artifacts_saved += 1
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        return compiled_graph, (key, path)

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    def load(
        self,
        handle: Any,
        graph: fx.GraphModule,
        example_inputs: list[Any],
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        graph_index: int,
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        compile_range: Range,
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    ) -> Callable[..., Any]:
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        assert isinstance(handle, tuple)
        assert isinstance(handle[0], str)
        assert isinstance(handle[1], str)
        path = handle[1]
        inductor_compiled_graph = torch._inductor.CompiledArtifact.load(
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            path=path, format=self.save_format
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        )
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        compilation_counter.num_compiled_artifacts_loaded += 1
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        from torch._inductor.compile_fx import graph_returns_tuple
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        returns_tuple = graph_returns_tuple(graph)

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        def compiled_graph_wrapper(*args: Any) -> tuple[Any, ...] | Any:
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            graph_output = inductor_compiled_graph(*args)
            # unpack the tuple if needed
            # TODO(rzou): the implication is that we're not
            # reading the python bytecode correctly in vLLM?
            if returns_tuple:
                return graph_output
            else:
                return graph_output[0]

        return compiled_graph_wrapper


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class InductorAdaptor(CompilerInterface):
    """
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    The adaptor for the Inductor compiler, version 2.5, 2.6, 2.7.
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    """
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    name = "inductor"

    def compute_hash(self, vllm_config: VllmConfig) -> str:
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        factors = get_inductor_factors()
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        hash_str: str = safe_hash(
            str(factors).encode(), usedforsecurity=False
        ).hexdigest()[:10]
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        return hash_str

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    def initialize_cache(
        self, cache_dir: str, disable_cache: bool = False, prefix: str = ""
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    ) -> None:
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        self.cache_dir = cache_dir
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        self.prefix = prefix
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        self.base_cache_dir = cache_dir[: -len(prefix)] if prefix else cache_dir
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        if disable_cache:
            return
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        # redirect the cache directory to a subdirectory
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        # set flags so that Inductor and Triton store their cache
        # in the cache_dir, then users only need to copy the cache_dir
        # to another machine to reuse the cache.
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        inductor_cache = os.path.join(self.base_cache_dir, "inductor_cache")
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        os.makedirs(inductor_cache, exist_ok=True)
        os.environ["TORCHINDUCTOR_CACHE_DIR"] = inductor_cache
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        triton_cache = os.path.join(self.base_cache_dir, "triton_cache")
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        os.makedirs(triton_cache, exist_ok=True)
        os.environ["TRITON_CACHE_DIR"] = triton_cache

    def compile(
        self,
        graph: fx.GraphModule,
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        example_inputs: list[Any],
        compiler_config: dict[str, Any],
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        compile_range: Range,
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        key: str | None = None,
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    ) -> tuple[Callable[..., Any] | None, Any | None]:
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        compilation_counter.num_inductor_compiles += 1
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        from torch._inductor.compile_fx import compile_fx
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        current_config = {}
        if compiler_config is not None:
            current_config.update(compiler_config)
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        # disable remote cache
        current_config["fx_graph_cache"] = True
        current_config["fx_graph_remote_cache"] = False

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        set_inductor_config(current_config, compile_range)
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        set_functorch_config()
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        # inductor can inplace modify the graph, so we need to copy it
        # see https://github.com/pytorch/pytorch/issues/138980
        graph = copy.deepcopy(graph)

        # it's the first time we compile this graph
        # the assumption is that we don't have nested Inductor compilation.
        # compiled_fx_graph_hash will only be called once, and we can hook
        # it to get the hash of the compiled graph directly.

        hash_str, file_path = None, None
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        from torch._inductor.codecache import compiled_fx_graph_hash
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        def hijacked_compile_fx_inner(*args: Any, **kwargs: Any) -> Any:
            output = torch._inductor.compile_fx.compile_fx_inner(*args, **kwargs)
            nonlocal hash_str
            inductor_compiled_graph = output
            if inductor_compiled_graph is not None:
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                nonlocal file_path
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                compiled_fn = inductor_compiled_graph.current_callable
                file_path = compiled_fn.__code__.co_filename  # noqa
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                if (
                    not file_path.startswith(self.base_cache_dir)
                    and compiled_fn.__closure__ is not None
                ):
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                    # hooked in the align_inputs_from_check_idxs function
                    # in torch/_inductor/utils.py
                    for cell in compiled_fn.__closure__:
                        if not callable(cell.cell_contents):
                            continue
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                        code = cell.cell_contents.__code__
                        if code.co_filename.startswith(self.base_cache_dir):
                            # this is the real file path
                            # compiled from Inductor
                            file_path = code.co_filename
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                            break
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                hash_str = inductor_compiled_graph._fx_graph_cache_key
            return output
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        def hijack_compiled_fx_graph_hash(*args: Any, **kwargs: Any) -> Any:
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            out = compiled_fx_graph_hash(*args, **kwargs)
            nonlocal hash_str
            hash_str = out[0]
            return out

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        def _check_can_cache(*args: Any, **kwargs: Any) -> None:
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            # no error means it can be cached.
            # Inductor refuses to cache the graph outside of Dynamo
            # tracing context, and also disables caching for graphs
            # with high-order ops.
            # For vLLM, in either case, we want to cache the graph.
            # see https://github.com/pytorch/pytorch/blob/9f5ebf3fc609105a74eab4ccc24932d6353ff566/torch/_inductor/codecache.py#L1221 # noqa
            return

        def _get_shape_env() -> AlwaysHitShapeEnv:
            return AlwaysHitShapeEnv()

        with ExitStack() as stack:
            # for hijacking the hash of the compiled graph
            stack.enter_context(
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                patch(
                    "torch._inductor.codecache.compiled_fx_graph_hash",
                    hijack_compiled_fx_graph_hash,
                )
            )
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            # for providing a dummy shape environment
            stack.enter_context(
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                patch(
                    "torch._inductor.codecache.FxGraphCache._get_shape_env",
                    _get_shape_env,
                )
            )
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            from torch._functorch._aot_autograd.autograd_cache import AOTAutogradCache
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            # torch 2.8+ on main uses _get_shape_env in AOTAutogradCache
            if hasattr(AOTAutogradCache, "_get_shape_env"):
                stack.enter_context(
                    patch(
                        "torch._functorch._aot_autograd.autograd_cache.AOTAutogradCache._get_shape_env",
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                        _get_shape_env,
                    )
                )
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            # for forcing the graph to be cached
            stack.enter_context(
                patch(
                    "torch._inductor.codecache.FxGraphCache._check_can_cache",
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                    _check_can_cache,
                )
            )
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            # Dynamo metrics context, see method for more details.
            stack.enter_context(self.metrics_context())

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            # Disable remote caching. When these are on, on remote cache-hit,
            # the monkey-patched functions never actually get called.
            # vLLM today assumes and requires the monkey-patched functions to
            # get hit.
            # TODO(zou3519): we're going to replace this all with
            # standalone_compile sometime.
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            stack.enter_context(
                torch._inductor.config.patch(fx_graph_remote_cache=False)
            )
            # InductorAdaptor (unfortunately) requires AOTAutogradCache
            # to be turned off to run. It will fail to acquire the hash_str
            # and error if not.
            # StandaloneInductorAdaptor (PyTorch 2.8+) fixes this problem.
            stack.enter_context(
                torch._functorch.config.patch(enable_autograd_cache=False)
            )
            stack.enter_context(
                torch._functorch.config.patch(enable_remote_autograd_cache=False)
            )
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            stack.enter_context(_patch_constrain_to_fx_strides())
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            compiled_graph = compile_fx(
                graph,
                example_inputs,
                inner_compile=hijacked_compile_fx_inner,
                config_patches=current_config,
            )
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        # Turn off the checks if we disable the compilation cache.
        if is_compile_cache_enabled(compiler_config):
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            if hash_str is None:
                raise RuntimeError(
                    "vLLM failed to compile the model. The most "
                    "likely reason for this is that a previous compilation "
                    "failed, leading to a corrupted compilation artifact. "
                    "We recommend trying to "
                    "remove ~/.cache/vllm/torch_compile_cache and try again "
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                    "to see the real issue. "
                )
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            assert file_path is not None, (
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                "failed to get the file path of the compiled graph"
            )
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        return compiled_graph, (hash_str, file_path)

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    def load(
        self,
        handle: Any,
        graph: fx.GraphModule,
        example_inputs: list[Any],
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        graph_index: int,
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        compile_range: Range,
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    ) -> Callable[..., Any]:
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        assert isinstance(handle, tuple)
        assert isinstance(handle[0], str)
        assert isinstance(handle[1], str)
        hash_str = handle[0]

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        from torch._functorch._aot_autograd.autograd_cache import AOTAutogradCache
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        from torch._inductor.codecache import FxGraphCache
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        with ExitStack() as exit_stack:
            exit_stack.enter_context(
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                patch(
                    "torch._inductor.codecache.FxGraphCache._get_shape_env",
                    lambda *args, **kwargs: AlwaysHitShapeEnv(),
                )
            )
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            # torch 2.8+ on main uses _get_shape_env in AOTAutogradCache
            if hasattr(AOTAutogradCache, "_get_shape_env"):
                exit_stack.enter_context(
                    patch(
                        "torch._functorch._aot_autograd.autograd_cache.AOTAutogradCache._get_shape_env",
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                        lambda *args, **kwargs: AlwaysHitShapeEnv(),
                    )
                )
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            # Dynamo metrics context, see method for more details.
            exit_stack.enter_context(self.metrics_context())

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            from torch._inductor.output_code import CompiledFxGraphConstantsWithGm
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            constants = CompiledFxGraphConstantsWithGm(graph)
            inductor_compiled_graph, _ = FxGraphCache._lookup_graph(
                hash_str, example_inputs, True, None, constants
            )
            assert inductor_compiled_graph is not None, (
                "Inductor cache lookup failed. Please remove "
                f"the cache directory and try again."  # noqa
            )
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        # Inductor calling convention (function signature):
        # f(list) -> tuple
        # Dynamo calling convention (function signature):
        # f(*args) -> Any

        # need to know if the graph returns a tuple
        from torch._inductor.compile_fx import graph_returns_tuple
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        returns_tuple = graph_returns_tuple(graph)

        # this is the callable we return to Dynamo to run
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        def compiled_graph(*args: Any) -> tuple[Any, ...] | Any:
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            # convert args to list
            list_args = list(args)
            graph_output = inductor_compiled_graph(list_args)
            # unpack the tuple if needed
            if returns_tuple:
                return graph_output
            else:
                return graph_output[0]

        return compiled_graph

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    def metrics_context(self) -> contextlib.AbstractContextManager[Any]:
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        """
        This method returns the Dynamo metrics context (if it exists,
        otherwise a null context). It is used by various compile components.
        Present in torch>=2.6, it's used inside FxGraphCache in
        torch==2.6 (but not after). It might also be used in various other
        torch.compile internal functions.

        Because it is re-entrant, we always set it (even if entering via Dynamo
        and the context was already entered). We might want to revisit if it
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        should be set at a different mode of compilation.
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        This is likely a bug in PyTorch: public APIs should not rely on
        manually setting up internal contexts. But we also rely on non-public
        APIs which might not provide these guarantees.
        """
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        if is_torch_equal_or_newer("2.6"):
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            import torch._dynamo.utils
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            return torch._dynamo.utils.get_metrics_context()  # type: ignore[no-any-return]
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        else:
            return contextlib.nullcontext()

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def set_inductor_config(config: dict[str, Any], compile_range: Range) -> None:
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    if compile_range.is_single_size():
        # for a specific batch size, tuning triton kernel parameters
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        # can be beneficial
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        config["max_autotune"] = envs.VLLM_ENABLE_INDUCTOR_MAX_AUTOTUNE
        config["coordinate_descent_tuning"] = (
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            envs.VLLM_ENABLE_INDUCTOR_COORDINATE_DESCENT_TUNING
        )
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def set_functorch_config() -> None:
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    if not envs.VLLM_USE_MEGA_AOT_ARTIFACT:
        torch._functorch.config.bundled_autograd_cache = False
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class EagerAdaptor(CompilerInterface):
    name = "eager"

    def compile(
        self,
        graph: fx.GraphModule,
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        example_inputs: list[Any],
        compiler_config: dict[str, Any],
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        compile_range: Range,
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        key: str | None = None,
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    ) -> tuple[Callable[..., Any] | None, Any | None]:
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        compilation_counter.num_eager_compiles += 1
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        # we don't need to compile the graph, just return the graph itself.
        # It does not support caching, return None for the handle.
        return graph, None