None: super().__init__() def forward(self, x, w1, w2): m1 = torch.cat([w1, w2]).sum() m2 = torch.cat([w1, w2]).sum() return x + torch.max(m1) + torch.max(m2) def pattern(w1, w2): return torch.cat([w1, w2]) def replacement(w1, w2): return torch.stack([w1, w2]) traced_module = symbolic_trace(M()) subgraph_rewriter.replace_pattern(traced_module, pattern, replacement) The above code will first match ``pattern`` in the ``forward`` method of ``traced_module``. Pattern-matching is done based on use-def relationships, not node names. For example, if you had ``p = torch.cat([a, b])`` in ``pattern``, you could match ``m = torch.cat([a, b])`` in the original ``forward`` function, despite the variable names being different (``p`` vs ``m``). The ``return`` statement in ``pattern`` is matched based on its value only; it may or may not match to the ``return`` statement in the larger graph. In other words, the pattern doesn't have to extend to the end of the larger graph. When the pattern is matched, it will be removed from the larger function and replaced by ``replacement``. If there are multiple matches for ``pattern`` in the larger function, each non-overlapping match will be replaced. In the case of a match overlap, the first found match in the set of overlapping matches will be replaced. ("First" here being defined as the first in a topological ordering of the Nodes' use-def relationships. In most cases, the first Node is the parameter that appears directly after ``self``, while the last Node is whatever the function returns.) One important thing to note is that the parameters of the ``pattern`` Callable must be used in the Callable itself, and the parameters of the ``replacement`` Callable must match the pattern. The first rule is why, in the above code block, the ``forward`` function has parameters ``x, w1, w2``, but the ``pattern`` function only has parameters ``w1, w2``. ``pattern`` doesn't use ``x``, so it shouldn't specify ``x`` as a parameter. As an example of the second rule, consider replacing .. code-block:: python def pattern(x, y): return torch.neg(x) + torch.relu(y) with .. code-block:: python def replacement(x, y): return torch.relu(x) In this case, ``replacement`` needs the same number of parameters as ``pattern`` (both ``x`` and ``y``), even though the parameter ``y`` isn't used in ``replacement``. After calling ``subgraph_rewriter.replace_pattern``, the generated Python code looks like this: .. code-block:: python def forward(self, x, w1, w2): stack_1 = torch.stack([w1, w2]) sum_1 = stack_1.sum() stack_2 = torch.stack([w1, w2]) sum_2 = stack_2.sum() max_1 = torch.max(sum_1) add_1 = x + max_1 max_2 = torch.max(sum_2) add_2 = add_1 + max_2 return add_2 """ match_and_replacements = _replace_pattern(gm, pattern, replacement) return [ Match(anchor=m.anchor, nodes_map=m.nodes_map) for m in match_and_replacements ]">

torch.fx.subgraph_rewriter — PyTorch 2.7 documentation (original) (raw)

import copy from dataclasses import dataclass from typing import Any, Callable, NamedTuple, Optional, TYPE_CHECKING, Union

import torch

from ._compatibility import compatibility from ._symbolic_trace import symbolic_trace from .graph import Graph from .graph_module import GraphModule from .node import Node

if TYPE_CHECKING: from .passes.utils.matcher_with_name_node_map_utils import InternalMatch

all = [ "Match", "replace_pattern", "replace_pattern_with_filters", "ReplacedPatterns", ]

@compatibility(is_backward_compatible=True) class Match(NamedTuple): # Node from which the match was found anchor: Node # Maps nodes in the pattern subgraph to nodes in the larger graph nodes_map: dict[Node, Node]

@compatibility(is_backward_compatible=False) @dataclass class ReplacedPatterns: # Node from which the match was found anchor: Node # Maps nodes in the pattern subgraph to nodes in the larger graph nodes_map: dict[Node, Node] # List of nodes that were added into the graph replacements: list[Node]

def _replace_attributes(gm: GraphModule, replacement: torch.nn.Module) -> None: gm.delete_all_unused_submodules()

if isinstance(replacement, GraphModule):
    replacement.graph.lint()

def try_get_attr(gm: torch.nn.Module, target: str) -> Optional[Any]:
    module_path, _, attr_name = target.rpartition(".")
    try:
        mod: torch.nn.Module = gm.get_submodule(module_path)
    except AttributeError:
        return None
    attr = getattr(mod, attr_name, None)
    return attr

for node in gm.graph.nodes:
    if node.op == "call_module" or node.op == "get_attr":
        gm_attr = try_get_attr(gm, node.target)
        replacement_attr = try_get_attr(replacement, node.target)

        # CASE 1: This target already exists as an attribute in our
        # result GraphModule. Whether or not it exists in
        # `replacement`, the existing submodule takes precedence.
        if gm_attr is not None:
            continue

        # CASE 2: The target exists as an attribute in `replacement`
        # only, so we need to copy it over.
        elif replacement_attr is not None:
            new_attr = copy.deepcopy(replacement_attr)
            if isinstance(replacement_attr, torch.nn.Module):
                gm.add_submodule(node.target, new_attr)
            else:
                setattr(gm, node.target, new_attr)

        # CASE 3: The target doesn't exist as an attribute in `gm`
        # or `replacement`
        else:
            raise RuntimeError(
                'Attempted to create a "',
                node.op,
                '" node during subgraph rewriting '
                f"with target {node.target}, but "
                "the referenced attribute does not "
                "exist in the replacement GraphModule",
            )

gm.graph.lint()

[docs]@compatibility(is_backward_compatible=True) def replace_pattern( gm: GraphModule, pattern: Union[Callable, GraphModule], replacement: Union[Callable, GraphModule], ) -> list[Match]: """ Matches all possible non-overlapping sets of operators and their data dependencies (pattern) in the Graph of a GraphModule (gm), then replaces each of these matched subgraphs with another subgraph (replacement).

Args:
    ``gm``: The GraphModule that wraps the Graph to operate on
    ``pattern``: The subgraph to match in ``gm`` for replacement
    ``replacement``: The subgraph to replace ``pattern`` with

Returns:
    List[Match]: A list of ``Match`` objects representing the places
    in the original graph that ``pattern`` was matched to. The list
    is empty if there are no matches. ``Match`` is defined as:

    .. code-block:: python

        class Match(NamedTuple):
            # Node from which the match was found
            anchor: Node
            # Maps nodes in the pattern subgraph to nodes in the larger graph
            nodes_map: Dict[Node, Node]

Examples:

.. code-block:: python

    import torch
    from torch.fx import symbolic_trace, subgraph_rewriter


    class M(torch.nn.Module):
        def __init__(self) -> None:
            super().__init__()

        def forward(self, x, w1, w2):
            m1 = torch.cat([w1, w2]).sum()
            m2 = torch.cat([w1, w2]).sum()
            return x + torch.max(m1) + torch.max(m2)


    def pattern(w1, w2):
        return torch.cat([w1, w2])


    def replacement(w1, w2):
        return torch.stack([w1, w2])


    traced_module = symbolic_trace(M())

    subgraph_rewriter.replace_pattern(traced_module, pattern, replacement)

The above code will first match ``pattern`` in the ``forward``
method of ``traced_module``. Pattern-matching is done based on
use-def relationships, not node names. For example, if you had
``p = torch.cat([a, b])`` in ``pattern``, you could match
``m = torch.cat([a, b])`` in the original ``forward`` function,
despite the variable names being different (``p`` vs ``m``).

The ``return`` statement in ``pattern`` is matched based on its
value only; it may or may not match to the ``return`` statement in
the larger graph. In other words, the pattern doesn't have to extend
to the end of the larger graph.

When the pattern is matched, it will be removed from the larger
function and replaced by ``replacement``. If there are multiple
matches for ``pattern`` in the larger function, each non-overlapping
match will be replaced. In the case of a match overlap, the first
found match in the set of overlapping matches will be replaced.
("First" here being defined as the first in a topological ordering
of the Nodes' use-def relationships. In most cases, the first Node
is the parameter that appears directly after ``self``, while the
last Node is whatever the function returns.)

One important thing to note is that the parameters of the
``pattern`` Callable must be used in the Callable itself,
and the parameters of the ``replacement`` Callable must match
the pattern. The first rule is why, in the above code block, the
``forward`` function has parameters ``x, w1, w2``, but the
``pattern`` function only has parameters ``w1, w2``. ``pattern``
doesn't use ``x``, so it shouldn't specify ``x`` as a parameter.
As an example of the second rule, consider replacing

.. code-block:: python

    def pattern(x, y):
        return torch.neg(x) + torch.relu(y)

with

.. code-block:: python

    def replacement(x, y):
        return torch.relu(x)

In this case, ``replacement`` needs the same number of parameters
as ``pattern`` (both ``x`` and ``y``), even though the parameter
``y`` isn't used in ``replacement``.

After calling ``subgraph_rewriter.replace_pattern``, the generated
Python code looks like this:

.. code-block:: python

    def forward(self, x, w1, w2):
        stack_1 = torch.stack([w1, w2])
        sum_1 = stack_1.sum()
        stack_2 = torch.stack([w1, w2])
        sum_2 = stack_2.sum()
        max_1 = torch.max(sum_1)
        add_1 = x + max_1
        max_2 = torch.max(sum_2)
        add_2 = add_1 + max_2
        return add_2
"""
match_and_replacements = _replace_pattern(gm, pattern, replacement)
return [
    Match(anchor=m.anchor, nodes_map=m.nodes_map) for m in match_and_replacements
]

Experimental API, not backward compatible

@compatibility(is_backward_compatible=False) def replace_pattern_with_filters( gm: GraphModule, pattern: Union[Callable, Graph, GraphModule], replacement: Union[Callable, Graph, GraphModule, None] = None, match_filters: Optional[ list[Callable[["InternalMatch", Graph, Graph], bool]] ] = None, ignore_literals: bool = False, # Placed at the end to avoid breaking backward compatibility replacement_callback: Optional[ Callable[["InternalMatch", Graph, Graph], Graph] ] = None, ) -> list[ReplacedPatterns]: """ See replace_pattern for documentation. This function is an overload with an additional match_filter argument.

Args:
    ``match_filters``: A list of functions that take in
        (match: InternalMatch, original_graph: Graph, pattern_graph: Graph) and return a boolean indicating
        whether the match satisfies the condition.
        See matcher_utils.py for definition of InternalMatch.
    ``replacement_callback``: A function that takes in a match and returns a
        Graph to be used as the replacement. This allows you to construct a
        replacement graph based on the match.
"""

return _replace_pattern(
    gm, pattern, replacement, match_filters, ignore_literals, replacement_callback
)

def _replace_pattern( gm: GraphModule, pattern: Union[Callable, Graph, GraphModule], replacement: Union[Callable, Graph, GraphModule, None] = None, match_filters: Optional[ list[Callable[["InternalMatch", Graph, Graph], bool]] ] = None, ignore_literals: bool = False, # Placed at the end to avoid breaking backward compatibility replacement_callback: Optional[ Callable[["InternalMatch", Graph, Graph], Graph] ] = None, ) -> list[ReplacedPatterns]: from torch.fx.passes.utils.matcher_utils import InternalMatch, SubgraphMatcher

if match_filters is None:
    match_filters = []

# Get the graphs for `gm`, `pattern`, `replacement`
original_graph: Graph = gm.graph

if isinstance(pattern, GraphModule):
    pattern_graph = pattern.graph
elif isinstance(pattern, Graph):
    pattern_graph = pattern
else:
    pattern_graph = symbolic_trace(pattern).graph

matcher = SubgraphMatcher(
    pattern_graph,
    match_output=False,
    match_placeholder=False,
    remove_overlapping_matches=True,
    ignore_literals=ignore_literals,
)
_matches: list[InternalMatch] = matcher.match(original_graph)

# Filter out matches that don't match the filter
_matches = [
    m
    for m in _matches
    if all(
        match_filter(m, original_graph, pattern_graph)
        for match_filter in match_filters
    )
]

if isinstance(replacement, GraphModule):
    common_replacement_graph = replacement.graph
elif isinstance(replacement, Graph):
    common_replacement_graph = replacement
elif callable(replacement):
    common_replacement_graph = symbolic_trace(replacement).graph
else:
    assert (
        replacement_callback is not None
    ), "Must provide either a replacement GraphModule or a replacement callback"
    common_replacement_graph = None

# As we progressively replace nodes, we'll need to keep track of how the match results should change
match_changed_node: dict[Node, Node] = {}

match_and_replacements = []
for match in _matches:
    if replacement_callback is not None:
        replacement_graph = replacement_callback(
            match, original_graph, pattern_graph
        )
    else:
        assert (
            common_replacement_graph is not None
        ), "Must provide either a replacement GraphModule or a replacement callback"
        replacement_graph = common_replacement_graph
    replacement_placeholders = [
        n for n in replacement_graph.nodes if n.op == "placeholder"
    ]

    # Build connecting between replacement graph's input and original graph input producer node

    # Initialize `val_map` with mappings from placeholder nodes in
    # `replacement` to their corresponding node in `original_graph`
    assert len(match.placeholder_nodes) == len(replacement_placeholders)
    val_map: dict[Node, Node] = {}
    for rn, gn in zip(replacement_placeholders, match.placeholder_nodes):
        if isinstance(gn, Node):
            val_map[rn] = match_changed_node.get(gn, gn)
            if gn != val_map[rn]:
                # Update match.placeholder_nodes and match.nodes_map with the node that replaced gn
                gn_ind = match.placeholder_nodes.index(gn)
                match.placeholder_nodes[gn_ind] = match_changed_node[gn]
                map_key = list(match.nodes_map.keys())[
                    list(match.nodes_map.values()).index(gn)
                ]
                match.nodes_map[map_key] = match_changed_node[gn]
        else:
            val_map[rn] = gn

    # Copy the replacement graph over
    user_nodes: set[Node] = set()
    for n in match.returning_nodes:
        user_nodes.update(n.users)

    first_user_node = None
    if len(user_nodes) == 0:
        first_user_node = None
    elif len(user_nodes) == 1:
        first_user_node = next(iter(user_nodes))
    else:
        # If there are multiple user nodes, we need to find the first user node
        # in the current execution order of the `original_graph`
        for n in original_graph.nodes:
            if n in user_nodes:
                first_user_node = n
                break

    first_next_node = None
    if first_user_node is None:
        # no users, so we insert the replacement graph before the first next
        # node of returning nodes
        next_node = None
        for n in reversed(original_graph.nodes):
            if n in match.returning_nodes:
                first_next_node = next_node
                break
            else:
                next_node = n
    insert_point = (
        first_user_node if first_user_node is not None else first_next_node
    )
    assert insert_point is not None, "The insert point can't be None"
    with original_graph.inserting_before(insert_point):
        copied_returning_nodes = original_graph.graph_copy(
            replacement_graph, val_map
        )

    if isinstance(copied_returning_nodes, Node):
        copied_returning_nodes = (copied_returning_nodes,)

    # Get a list of nodes that have been replaced into the graph
    replacement_nodes: list[Node] = [
        v for v in val_map.values() if v not in match.placeholder_nodes
    ]

    # Hook the output Node of the replacement subgraph in to the
    # original Graph at the correct location
    assert len(match.returning_nodes) == len(copied_returning_nodes)  # type: ignore[arg-type]
    for gn, copied_node in zip(match.returning_nodes, copied_returning_nodes):  # type: ignore[arg-type]
        gn.replace_all_uses_with(copied_node)
        match_changed_node[gn] = copied_node
    # Remove the original nodes
    for node in reversed(pattern_graph.nodes):
        if node.op != "placeholder" and node.op != "output":
            gn = match.nodes_map[node]
            gm.graph.erase_node(gn)

    match_and_replacements.append(
        ReplacedPatterns(
            anchor=match.anchors[0],
            nodes_map=match.nodes_map,
            replacements=replacement_nodes,
        )
    )

# Update the passed-in GraphModule to reflect the new state of
# `original_graph`
gm.recompile()

# If `replacement` was an nn.Module, we'll need to make sure that
# all the submodules have been copied over correctly
if isinstance(replacement, torch.nn.Module):
    _replace_attributes(gm, replacement)

return match_and_replacements