mirror of
https://github.com/zebrajr/pytorch.git
synced 2025-12-07 00:21:07 +01:00
Lazos correctly pointed out this doesn't make sense for compile since we graph break in compile. This results in tons of unwanted user log spew. We do want this in export though since it's drastiaclly reduced the support load for DDEs. This PR does the refactor to keep it in export but remove it from compile Pull Request resolved: https://github.com/pytorch/pytorch/pull/149831 Approved by: https://github.com/mlazos
1321 lines
49 KiB
Python
1321 lines
49 KiB
Python
# mypy: allow-untyped-defs
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import builtins
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import collections
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import contextlib
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import copy
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import functools
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import inspect
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import math
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import os
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import warnings
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from itertools import chain
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from types import CodeType, FunctionType, ModuleType
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from typing import Any, Callable, NamedTuple, Optional, Union
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import torch
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import torch.utils._pytree as pytree
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from torch._C import ScriptObject # type: ignore[attr-defined]
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from torch._library.fake_class_registry import FakeScriptObject
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from ._compatibility import compatibility
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from ._lazy_graph_module import _make_graph_module
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from .graph import _PyTreeCodeGen, _PyTreeInfo, Graph
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from .graph_module import GraphModule
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from .node import Argument, base_types, map_aggregate
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from .proxy import ParameterProxy, Proxy, Scope, ScopeContextManager, TracerBase
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HAS_VARSTUFF = inspect.CO_VARARGS | inspect.CO_VARKEYWORDS
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# These need to run in global scope to handle nested calls correctly
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_orig_module_call: Callable = torch.nn.Module.__call__
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_orig_module_getattr: Callable = torch.nn.Module.__getattr__
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_proxyable_classes: dict[type, None] = {}
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_is_fx_tracing_flag = False
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def is_fx_tracing():
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return _is_fx_tracing_flag
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@compatibility(is_backward_compatible=True)
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class ProxyableClassMeta(type):
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"""
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ProxyableClassMeta allows you to make construction of a given Python class
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symbolically traceable. For example::
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import torch
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import torch.fx
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class TensorPair(metaclass=torch.fx.ProxyableClassMeta):
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def __init__(self, left, right):
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self.left, self.right = left, right
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def add(self, other):
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l = self.left + other.left
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r = self.right + other.right
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return TensorPair(l, r)
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def mul(self, other):
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l = self.left * other.left
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r = self.right * other.right
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return TensorPair(l, r)
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def use_tensor_pair_ctor(x: TensorPair, y: torch.Tensor):
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s = x.add(TensorPair(y, y))
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return s.mul(x)
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x = TensorPair(torch.randn(5, 3), torch.randn(5, 3))
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y = torch.randn(5, 3)
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ref_out = use_tensor_pair_ctor(x, y)
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traced = torch.fx.symbolic_trace(use_tensor_pair_ctor)
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print(traced.code)
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'''
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def forward(self, x : __main___TensorPair, y : torch.Tensor):
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tensor_pair = __main___TensorPair(y, y); y = None
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add = x.add(tensor_pair); tensor_pair = None
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mul = add.mul(x); add = x = None
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return mul
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'''
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From this example, we can see that construction of a class (``TensorPair``)
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defined with ``ProxyableClassMeta`` as metaclass can be recorded in symbolic
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tracing.
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"""
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def __init__(cls, name, bases, attrs):
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_proxyable_classes.setdefault(cls)
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super().__init__(name, bases, attrs)
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def __call__(cls, *args, **kwargs):
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instance = cls.__new__(cls) # type: ignore[call-overload]
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if not is_fx_tracing():
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cls.__init__(instance, *args, **kwargs) # type: ignore[misc]
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return instance
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found_proxies = []
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def check_proxy(a):
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if isinstance(a, Proxy):
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found_proxies.append(a)
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map_aggregate(args, check_proxy)
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map_aggregate(kwargs, check_proxy)
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if len(found_proxies) != 0:
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tracer = found_proxies[0].tracer
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return tracer.create_proxy("call_function", cls, args, kwargs)
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else:
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cls.__init__(instance, *args, **kwargs) # type: ignore[misc]
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return instance
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def _patch_function(fn: FunctionType, nargs: int) -> FunctionType:
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co = fn.__code__
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co_flags = co.co_flags & ~HAS_VARSTUFF
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co_args: tuple
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if hasattr(co, "co_qualname"):
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# Python-3.11+ code signature
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co_args = (
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nargs,
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0,
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0,
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co.co_nlocals,
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co.co_stacksize,
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co_flags,
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co.co_code,
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co.co_consts,
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co.co_names,
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co.co_varnames,
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co.co_filename,
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co.co_name,
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co.co_qualname, # type: ignore[attr-defined]
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co.co_firstlineno,
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co.co_lnotab,
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co.co_exceptiontable, # type: ignore[attr-defined]
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co.co_freevars,
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co.co_cellvars,
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)
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elif hasattr(co, "co_posonlyargcount"):
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co_args = (
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nargs,
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0,
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0,
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co.co_nlocals,
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co.co_stacksize,
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co_flags,
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co.co_code,
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co.co_consts,
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co.co_names,
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co.co_varnames,
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co.co_filename,
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co.co_name,
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co.co_firstlineno,
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co.co_lnotab,
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co.co_freevars,
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co.co_cellvars,
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)
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else:
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co_args = (
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nargs,
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0,
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co.co_nlocals,
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co.co_stacksize,
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co_flags,
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co.co_code,
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co.co_consts,
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co.co_names,
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co.co_varnames,
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co.co_filename,
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co.co_name,
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co.co_firstlineno,
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co.co_lnotab,
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co.co_freevars,
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co.co_cellvars,
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)
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new_code = CodeType(*co_args) # type: ignore[arg-type]
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return FunctionType(
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new_code, fn.__globals__, fn.__name__, fn.__defaults__, fn.__closure__
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)
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# we need to insert placeholder nodes for *args and **kwargs
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# we can't call this function normally, otherwise it would try to unpack them
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# instead, let's make python think that args and kwargs are normal variables
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@compatibility(is_backward_compatible=False)
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class PHBase:
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"""
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Object representing an input placeholder to `concrete_args`
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"""
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def __repr__(self):
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return "PH"
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PH = PHBase()
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@compatibility(is_backward_compatible=False)
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class PHWithMeta(PHBase):
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"""
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Object representing an input placeholder to `concrete_args`
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"""
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def __init__(self, ph_key: Optional[str] = None):
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super().__init__()
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# Provide a hey for user to identify placeholder node during analysis
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self.ph_key = ph_key
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def _transfer_attrs(fr, to):
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for attr_name in dir(fr):
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attr_val = getattr(fr, attr_name)
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if (
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not callable(attr_val)
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and not attr_name.startswith("__")
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and not hasattr(to, attr_name)
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):
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setattr(to, attr_name, attr_val)
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@compatibility(is_backward_compatible=True)
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class Tracer(TracerBase):
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# Reference: https://github.com/pytorch/pytorch/issues/54354
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# The first line of this docstring overrides the one Sphinx generates for the
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# documentation. We need it so that Sphinx doesn't leak `math`s path from the
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# build environment (e.g. `<module 'math' from '/leaked/path').
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"""Tracer(autowrap_modules=(math,), autowrap_functions=())
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``Tracer`` is the class that implements the symbolic tracing functionality
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of ``torch.fx.symbolic_trace``. A call to ``symbolic_trace(m)`` is equivalent
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to ``Tracer().trace(m)``.
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Tracer can be subclassed to override various behaviors of the tracing
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process. The different behaviors that can be overridden are described
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in the docstrings of the methods on this class.
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"""
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# Not checking BC on this API because the default value for `autowrap_modules`
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# includes the local filepath to the `math` module, which would jitter
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# across machines.
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@compatibility(is_backward_compatible=True)
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def __init__(
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self,
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autowrap_modules: tuple[ModuleType] = (math,),
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autowrap_functions: tuple[Callable, ...] = (),
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param_shapes_constant: bool = False,
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) -> None:
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# This method's signature is overridden by the first line of this class'
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# docstring. If this method's signature is modified, the signature that
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# overrides it also should be modified accordingly.
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"""
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Construct a Tracer object.
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Args:
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autowrap_modules (Tuple[ModuleType]): defaults to `(math, )`,
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Python modules whose functions should be wrapped automatically
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without needing to use fx.wrap(). Backward-compatibility for
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this parameter is guaranteed.
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autowrap_functions (Tuple[Callable, ...]): defaults to `()`,
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Python functions that should be wrapped automatically without
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needing to use fx.wrap(). Backward compatibility for this
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parameter is guaranteed.
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param_shapes_constant (bool): When this flag is set, calls to shape,
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size and a few other shape like attributes of a module's parameter
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will be evaluated directly, rather than returning a new Proxy value
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for an attribute access. Backward compatibility for this parameter
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is guaranteed.
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"""
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super().__init__()
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# Functions we will eagerly wrap when we see them while tracing
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# this captures both `math.sqrt()` and `from math import sqrt` automatically
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self._autowrap_function_ids: set[int] = {
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id(value)
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for name, value in chain.from_iterable(
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m.__dict__.items() for m in autowrap_modules
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)
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if not name.startswith("_") and callable(value)
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}
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self._autowrap_function_ids.update({id(f) for f in autowrap_functions})
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# Python modules to apply autowrap to at the start, in addition to
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# modules we see while tracing
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self._autowrap_search: list[ModuleType] = list(autowrap_modules)
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self.param_shapes_constant = param_shapes_constant
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self.submodule_paths: Optional[dict[torch.nn.Module, str]] = None
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self.root_module_name: str = ""
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# Maps the containing module's name to the operator name
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self.scope = Scope("", None)
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# Records the module call stack
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self.module_stack = collections.OrderedDict()
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self.num_calls: dict[str, int] = {}
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# Mapping of node name to module scope
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self.node_name_to_scope: dict[str, tuple[str, type]] = {}
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_qualname_counter: dict[str, int] = collections.defaultdict(int)
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@compatibility(is_backward_compatible=True)
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def get_fresh_qualname(self, prefix: str) -> str:
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"""
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Gets a fresh name for a prefix and returns it. This function ensures
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that it will not clash with an existing attribute on the graph.
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"""
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# The idea here is that if the module doesn't have this prefix at all we
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# should reset the counter to start from the beginning
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# It's a ... little bit hacky (doesn't cover all cases) but the precise
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# naming of the prefixes isn't a correctness issue, just a niceness
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# issue
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qualname = f"{prefix}0"
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if not hasattr(self.root, qualname):
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self._qualname_counter[prefix] = 0
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return qualname
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i = self._qualname_counter[prefix]
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while True:
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qualname = f"{prefix}{i}"
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i += 1
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if not hasattr(self.root, qualname):
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break
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self._qualname_counter[prefix] = i
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return qualname
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@compatibility(is_backward_compatible=True)
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def create_arg(self, a: Any) -> "Argument":
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"""
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A method to specify the behavior of tracing when preparing values to
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be used as arguments to nodes in the ``Graph``.
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By default, the behavior includes:
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#. Iterate through collection types (e.g. tuple, list, dict) and recursively
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call ``create_args`` on the elements.
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#. Given a Proxy object, return a reference to the underlying IR ``Node``
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#. Given a non-Proxy Tensor object, emit IR for various cases:
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* For a Parameter, emit a ``get_attr`` node referring to that Parameter
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* For a non-Parameter Tensor, store the Tensor away in a special
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attribute referring to that attribute.
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This method can be overridden to support more types.
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Args:
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a (Any): The value to be emitted as an ``Argument`` in the ``Graph``.
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Returns:
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The value ``a`` converted into the appropriate ``Argument``
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"""
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# The base tracer is used to construct Graphs when there is no associated
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# module hierarchy, so it can never create parameter references.
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# The default tracer adds the ability to refer to parameters when
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# tracing modules.
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if isinstance(a, torch.nn.Parameter):
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for n, p in self.root.named_parameters():
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if a is p:
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return self.create_node("get_attr", n, (), {})
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raise NameError("parameter is not a member of this module")
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elif isinstance(a, torch.Tensor):
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for n_, p_ in self.root.named_buffers():
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if a is p_:
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return self.create_node("get_attr", n_, (), {})
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elif isinstance(a, torch.nn.Module):
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for n_, p_ in self.root.named_modules():
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if a is p_:
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return self.create_node("get_attr", n_, (), {})
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# For NamedTuple instances that appear literally as args, we emit
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# a node to construct the NamedTuple and use that Node as the argument.
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if isinstance(a, tuple) and hasattr(a, "_fields"):
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args = tuple(self.create_arg(elem) for elem in a)
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return self.create_node("call_function", a.__class__, args, {})
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# Tensors do not have a reliable string repr() from which they can be
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# constructed (and we probably don't want to rely on that, either), so
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# for any constant Tensor values we encounter, first search for if they
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# are an attribute of some module in the module hierarchy. If so, emit
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# a get_attr to retrieve that tensor. Otherwise, we'll store away the
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# tensor value into a special attribute on the Module s.t. we can
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# retrieve it with a get_attr.
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if isinstance(a, (torch.Tensor, ScriptObject, FakeScriptObject)):
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qualname: Optional[str] = self.tensor_attrs.get(a)
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# Tensor was not found in the Module hierarchy, stow it away in a
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# special attribute and set the qualname to refer to that
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if not qualname:
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base_name = (
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"_tensor_constant"
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if isinstance(a, torch.Tensor)
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else "_torchbind_obj"
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)
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qualname = self.get_fresh_qualname(base_name)
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assert isinstance(qualname, str)
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self.tensor_attrs[a] = qualname
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setattr(self.root, qualname, a)
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return self.create_node("get_attr", qualname, (), {})
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if type(a) in _proxyable_classes:
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# This is an instance of a proxyable class for which we did not
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# witness its construction. Intern this as a constant attribute
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# TODO: binary search
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qualname = self.get_fresh_qualname(f"_{a.__class__.__name__}_constant_")
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assert isinstance(qualname, str)
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setattr(self.root, qualname, a)
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return self.create_node("get_attr", qualname, (), {})
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return super().create_arg(a)
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@compatibility(is_backward_compatible=True)
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def is_leaf_module(self, m: torch.nn.Module, module_qualified_name: str) -> bool:
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"""
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A method to specify whether a given ``nn.Module`` is a "leaf" module.
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Leaf modules are the atomic units that appear in
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the IR, referenced by ``call_module`` calls. By default,
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Modules in the PyTorch standard library namespace (torch.nn)
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are leaf modules. All other modules are traced through and
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their constituent ops are recorded, unless specified otherwise
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via this parameter.
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Args:
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m (Module): The module being queried about
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module_qualified_name (str): The path to root of this module. For example,
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if you have a module hierarchy where submodule ``foo`` contains
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submodule ``bar``, which contains submodule ``baz``, that module will
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appear with the qualified name ``foo.bar.baz`` here.
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"""
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return (
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m.__module__.startswith("torch.nn")
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or m.__module__.startswith("torch.ao.nn")
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) and not isinstance(m, torch.nn.Sequential)
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@compatibility(is_backward_compatible=True)
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def path_of_module(self, mod: torch.nn.Module) -> str:
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"""
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Helper method to find the qualified name of ``mod`` in the Module hierarchy
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of ``root``. For example, if ``root`` has a submodule named ``foo``, which has
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a submodule named ``bar``, passing ``bar`` into this function will return
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the string "foo.bar".
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Args:
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mod (str): The ``Module`` to retrieve the qualified name for.
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"""
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# Prefer the O(1) algorithm
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if self.submodule_paths:
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path = self.submodule_paths.get(mod)
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if path is None:
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raise NameError("module is not installed as a submodule")
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assert isinstance(path, str)
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return path
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# O(N^2) fallback in the case that we didn't store the submodule
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# paths.
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else:
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for n, p in self.root.named_modules():
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if mod is p:
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return n
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raise NameError("module is not installed as a submodule")
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@compatibility(is_backward_compatible=True)
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def call_module(
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self,
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m: torch.nn.Module,
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forward: Callable[..., Any],
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args: tuple[Any, ...],
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kwargs: dict[str, Any],
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) -> Any:
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"""
|
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Method that specifies the behavior of this ``Tracer`` when it encounters
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a call to an ``nn.Module`` instance.
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By default, the behavior is to check if the called module is a leaf module
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via ``is_leaf_module``. If it is, emit a ``call_module`` node referring to
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``m`` in the ``Graph``. Otherwise, call the ``Module`` normally, tracing through
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the operations in its ``forward`` function.
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This method can be overridden to--for example--create nested traced
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GraphModules, or any other behavior you would want while tracing across
|
|
``Module`` boundaries.
|
|
|
|
Args:
|
|
|
|
m (Module): The module for which a call is being emitted
|
|
forward (Callable): The forward() method of the ``Module`` to be invoked
|
|
args (Tuple): args of the module callsite
|
|
kwargs (Dict): kwargs of the module callsite
|
|
|
|
Return:
|
|
|
|
The return value from the Module call. In the case that a ``call_module``
|
|
node was emitted, this is a ``Proxy`` value. Otherwise, it is whatever
|
|
value was returned from the ``Module`` invocation.
|
|
"""
|
|
module_qualified_name = self.path_of_module(m)
|
|
with ScopeContextManager(
|
|
self.scope, Scope(module_qualified_name, type(m))
|
|
) as _scope:
|
|
# module_stack is an ordered dict so writing then deleting the
|
|
# entry is equivalent to push/pop on a list
|
|
num_calls = self.num_calls.get(module_qualified_name, 0)
|
|
module_key = (
|
|
f"{_scope.module_path}@{num_calls}"
|
|
if num_calls > 0
|
|
else _scope.module_path
|
|
)
|
|
self.module_stack[module_key] = (module_qualified_name, _scope.module_type)
|
|
self.num_calls[module_qualified_name] = num_calls + 1
|
|
if not self.is_leaf_module(m, module_qualified_name):
|
|
ret_val = forward(*args, **kwargs)
|
|
else:
|
|
ret_val = self.create_proxy(
|
|
"call_module", module_qualified_name, args, kwargs
|
|
)
|
|
key, _ = self.module_stack.popitem(last=True)
|
|
assert key == module_key, f" Unexpected key {key}"
|
|
|
|
return ret_val
|
|
|
|
@compatibility(is_backward_compatible=False)
|
|
def getattr(self, attr: str, attr_val: Any, parameter_proxy_cache: dict[str, Any]):
|
|
"""
|
|
Method that specifies the behavior of this ``Tracer`` when we call getattr
|
|
on a call to an ``nn.Module`` instance.
|
|
|
|
By default, the behavior is to return a proxy value for the attribute. It
|
|
also stores the proxy value in the ``parameter_proxy_cache``, so that future
|
|
calls will reuse the proxy rather than creating a new one.
|
|
|
|
This method can be overridden to --for example-- not return proxies when
|
|
querying parameters.
|
|
|
|
Args:
|
|
|
|
attr (str): The name of the attribute being queried
|
|
attr_val (Any): The value of the attribute
|
|
parameter_proxy_cache (Dict[str, Any]): A cache of attr names to proxies
|
|
|
|
Return:
|
|
|
|
The return value from the getattr call.
|
|
"""
|
|
|
|
def maybe_get_proxy_for_attr(
|
|
attr_val, collection_to_search, parameter_proxy_cache
|
|
):
|
|
for n, p in collection_to_search:
|
|
if attr_val is p:
|
|
if n not in parameter_proxy_cache:
|
|
kwargs = {}
|
|
if (
|
|
"proxy_factory_fn"
|
|
in inspect.signature(self.create_proxy).parameters
|
|
):
|
|
kwargs["proxy_factory_fn"] = (
|
|
None
|
|
if not self.param_shapes_constant
|
|
else lambda node: ParameterProxy(
|
|
self, node, n, attr_val
|
|
)
|
|
)
|
|
val_proxy = self.create_proxy("get_attr", n, (), {}, **kwargs) # type: ignore[arg-type]
|
|
parameter_proxy_cache[n] = val_proxy
|
|
return parameter_proxy_cache[n]
|
|
return None
|
|
|
|
if isinstance(attr_val, torch.nn.Parameter):
|
|
maybe_parameter_proxy = maybe_get_proxy_for_attr(
|
|
attr_val, self.root.named_parameters(), parameter_proxy_cache
|
|
)
|
|
if maybe_parameter_proxy is not None:
|
|
return maybe_parameter_proxy
|
|
|
|
if self.proxy_buffer_attributes and isinstance(attr_val, torch.Tensor):
|
|
maybe_buffer_proxy = maybe_get_proxy_for_attr(
|
|
attr_val, self.root.named_buffers(), parameter_proxy_cache
|
|
)
|
|
if maybe_buffer_proxy is not None:
|
|
return maybe_buffer_proxy
|
|
|
|
return attr_val
|
|
|
|
# This method will be refactored
|
|
@compatibility(is_backward_compatible=False)
|
|
def create_args_for_root(self, root_fn, is_module, concrete_args=None):
|
|
"""
|
|
Create ``placeholder`` nodes corresponding to the signature of the ``root``
|
|
Module. This method introspects root's signature and emits those
|
|
nodes accordingly, also supporting ``*args`` and ``**kwargs``.
|
|
"""
|
|
# In some cases, a function or method has been decorated with a wrapper
|
|
# defined via ``functools.wraps``. In this case, the outer code object
|
|
# will likely not contain the actual parameters we care about, so unwrap
|
|
# the function to get to the innermost callable.
|
|
fn_for_analysis = inspect.unwrap(root_fn)
|
|
co = fn_for_analysis.__code__
|
|
total_args = co.co_argcount + co.co_kwonlyargcount
|
|
orig_args = list(co.co_varnames)
|
|
names_iter = iter(co.co_varnames)
|
|
args: list[Any] = []
|
|
skip_arg_idx = 0
|
|
if is_module:
|
|
if total_args == 0:
|
|
raise RuntimeError(
|
|
"``self`` argument cannot be part of *args expansion!"
|
|
)
|
|
skip_arg_idx = 1
|
|
next(names_iter) # skip self
|
|
args.append(self.root)
|
|
|
|
sig = inspect.signature(fn_for_analysis)
|
|
|
|
# This covers the very specific case where we are passing in flat
|
|
# concrete_args as a tuple, but our traced fn takes (*args, **kwargs).
|
|
# In this case, just take the concrete_args and pass them through.
|
|
name_idx = 0
|
|
if (
|
|
isinstance(concrete_args, tuple)
|
|
and len(concrete_args) > 0
|
|
and (co.co_flags & HAS_VARSTUFF)
|
|
and total_args == 1
|
|
):
|
|
for concrete_arg in concrete_args:
|
|
out = self.create_proxy("placeholder", f"input_{name_idx}", (), {})
|
|
if isinstance(concrete_arg, PHBase):
|
|
if concrete_arg != PH:
|
|
# Transfer attrs in the case where you're using a placeholder other
|
|
# than the singleton PH (PH has no attributes to transfer).
|
|
# Proxies were created out of the placeholders.
|
|
# Transfer any metadata (put on the placeholders in the form of
|
|
# attributes set by the user) from the placeholder to the
|
|
# underlying nodes (the proxy is unwrapped by the user, but
|
|
# the metadata should hold).
|
|
_transfer_attrs(fr=concrete_arg, to=out.node)
|
|
args.append(out)
|
|
name_idx += 1
|
|
return root_fn, args
|
|
|
|
arg_names = [next(names_iter) for idx in range(skip_arg_idx, total_args)]
|
|
if isinstance(concrete_args, tuple):
|
|
if len(arg_names) != len(concrete_args):
|
|
raise RuntimeError(
|
|
f"Tracing expected {len(arg_names)} arguments but got {len(concrete_args)} concrete arguments"
|
|
)
|
|
concrete_args = dict(zip(arg_names, concrete_args))
|
|
|
|
def proxy_placeholder(name):
|
|
return self._proxy_placeholder(name, concrete_args, sig, fn_for_analysis)
|
|
|
|
args.extend(proxy_placeholder(names) for names in arg_names)
|
|
|
|
if co.co_kwonlyargcount > 0 or co.co_flags & HAS_VARSTUFF:
|
|
# TODO: type annotations for *args and **kwargs
|
|
if co.co_flags & inspect.CO_VARARGS:
|
|
args.append(proxy_placeholder("*" + next(names_iter)))
|
|
if co.co_flags & inspect.CO_VARKEYWORDS:
|
|
args.append(proxy_placeholder("**" + next(names_iter)))
|
|
root_fn = _patch_function(root_fn, len(args))
|
|
|
|
flat_args, in_spec = pytree.tree_flatten(tuple(args))
|
|
if not all(child.is_leaf() for child in in_spec.children_specs):
|
|
# In the case that we have pytree-flattened inputs in
|
|
# `concrete_args`, generate a flattening wrapper around the
|
|
# original root function and return that.
|
|
self.graph._codegen = _PyTreeCodeGen(
|
|
_PyTreeInfo(orig_args[:total_args], in_spec, None)
|
|
)
|
|
|
|
def flatten_fn(*args):
|
|
tree_args = pytree.tree_unflatten(list(args), in_spec)
|
|
tree_out = root_fn(*tree_args)
|
|
out_args, out_spec = pytree.tree_flatten(tree_out)
|
|
assert isinstance(self.graph._codegen, _PyTreeCodeGen)
|
|
self.graph._codegen.pytree_info = (
|
|
self.graph._codegen.pytree_info._replace(out_spec=out_spec)
|
|
)
|
|
return out_args
|
|
|
|
return flatten_fn, flat_args
|
|
return root_fn, args
|
|
|
|
@compatibility(is_backward_compatible=True)
|
|
def trace(
|
|
self,
|
|
root: Union[torch.nn.Module, Callable[..., Any]],
|
|
concrete_args: Optional[dict[str, Any]] = None,
|
|
) -> Graph:
|
|
"""
|
|
Trace ``root`` and return the corresponding FX ``Graph`` representation. ``root``
|
|
can either be an ``nn.Module`` instance or a Python callable.
|
|
|
|
Note that after this call, ``self.root`` may be different from the ``root`` passed
|
|
in here. For example, when a free function is passed to ``trace()``, we will
|
|
create an ``nn.Module`` instance to use as the root and add embedded constants
|
|
to.
|
|
|
|
|
|
Args:
|
|
|
|
root (Union[Module, Callable]): Either a ``Module`` or a function to be
|
|
traced through. Backwards-compatibility for this parameter is
|
|
guaranteed.
|
|
concrete_args (Optional[Dict[str, any]]): Concrete arguments that should
|
|
not be treated as Proxies. This parameter is experimental and
|
|
its backwards-compatibility is *NOT* guaranteed.
|
|
|
|
Returns:
|
|
|
|
A ``Graph`` representing the semantics of the passed-in ``root``.
|
|
"""
|
|
global _is_fx_tracing_flag
|
|
old_is_fx_tracing_flag = _is_fx_tracing_flag
|
|
_is_fx_tracing_flag = True
|
|
try:
|
|
if isinstance(root, torch.nn.Module):
|
|
# do real recompilation for _LazyGraphModule before retracing since the trace
|
|
# method can not trace the _lazy_forward method. Got error:
|
|
# https://gist.github.com/shunting314/75549c2e82ae07ac1139c94a3583d259
|
|
# without this.
|
|
from torch.fx._lazy_graph_module import _LazyGraphModule
|
|
|
|
_LazyGraphModule.force_recompile(root)
|
|
|
|
self.root = root
|
|
|
|
assert hasattr(
|
|
type(root), self.traced_func_name
|
|
), f"traced_func_name={self.traced_func_name} doesn't exist in {type(root).__name__}"
|
|
|
|
fn = getattr(type(root), self.traced_func_name)
|
|
self.root_module_name = root._get_name()
|
|
self.submodule_paths = {mod: name for name, mod in root.named_modules()}
|
|
else:
|
|
self.root = torch.nn.Module()
|
|
fn = root
|
|
|
|
tracer_cls: Optional[type[Tracer]] = getattr(self, "__class__", None)
|
|
self.graph = Graph(tracer_cls=tracer_cls)
|
|
if hasattr(fn, "__code__"):
|
|
code = fn.__code__
|
|
self.graph._co_fields = {
|
|
"co_name": code.co_name,
|
|
"co_filename": code.co_filename,
|
|
"co_firstlineno": code.co_firstlineno,
|
|
}
|
|
|
|
# When we encounter a Tensor value that's not a parameter, we look if it
|
|
# is some other attribute on the model. Construct a dict mapping Tensor
|
|
# values to the qualified name here for efficiency. This is used downstream
|
|
# in create_arg
|
|
self.tensor_attrs: dict[
|
|
Union[torch.Tensor, ScriptObject, FakeScriptObject], str
|
|
] = {}
|
|
|
|
def collect_tensor_attrs(m: torch.nn.Module, prefix_atoms: list[str]):
|
|
for k, v in m.__dict__.items():
|
|
if isinstance(v, (torch.Tensor, ScriptObject, FakeScriptObject)):
|
|
self.tensor_attrs[v] = ".".join(prefix_atoms + [k])
|
|
for k, v in m.named_children():
|
|
collect_tensor_attrs(v, prefix_atoms + [k])
|
|
|
|
collect_tensor_attrs(self.root, [])
|
|
|
|
assert isinstance(fn, FunctionType)
|
|
|
|
fn_globals = fn.__globals__ # run before it gets patched
|
|
fn, args = self.create_args_for_root(
|
|
fn, isinstance(root, torch.nn.Module), concrete_args
|
|
)
|
|
|
|
parameter_proxy_cache: dict[
|
|
str, Proxy
|
|
] = {} # Reduce number of get_attr calls
|
|
|
|
# Method dispatch on parameters is not recorded unless it's directly used.
|
|
# Thus, we need to insert a proxy when __getattr__ requests a parameter.
|
|
@functools.wraps(_orig_module_getattr)
|
|
def module_getattr_wrapper(mod, attr):
|
|
attr_val = _orig_module_getattr(mod, attr)
|
|
return self.getattr(attr, attr_val, parameter_proxy_cache)
|
|
|
|
@functools.wraps(_orig_module_call)
|
|
def module_call_wrapper(mod, *args, **kwargs):
|
|
def forward(*args, **kwargs):
|
|
return _orig_module_call(mod, *args, **kwargs)
|
|
|
|
_autowrap_check(
|
|
patcher, # type: ignore[has-type]
|
|
getattr(getattr(mod, "forward", mod), "__globals__", {}),
|
|
self._autowrap_function_ids,
|
|
)
|
|
return self.call_module(mod, forward, args, kwargs)
|
|
|
|
with _new_patcher() as patcher:
|
|
# allow duplicate patches to support the case of nested calls
|
|
patcher.patch_method(
|
|
torch.nn.Module,
|
|
"__getattr__",
|
|
module_getattr_wrapper,
|
|
deduplicate=False,
|
|
)
|
|
patcher.patch_method(
|
|
torch.nn.Module,
|
|
"__call__",
|
|
module_call_wrapper,
|
|
deduplicate=False,
|
|
)
|
|
_patch_wrapped_functions(patcher)
|
|
_autowrap_check(patcher, fn_globals, self._autowrap_function_ids)
|
|
for module in self._autowrap_search:
|
|
_autowrap_check(
|
|
patcher, module.__dict__, self._autowrap_function_ids
|
|
)
|
|
self.create_node(
|
|
"output",
|
|
"output",
|
|
(self.create_arg(fn(*args)),),
|
|
{},
|
|
type_expr=fn.__annotations__.get("return", None),
|
|
)
|
|
|
|
self.submodule_paths = None
|
|
except RuntimeError as e:
|
|
if isinstance(e.args[0], str) and "data-dependent" in e.args[0]:
|
|
partial_fx_graph = self.graph.python_code(
|
|
root_module="self",
|
|
verbose=True,
|
|
).src
|
|
e.partial_fx_graph = partial_fx_graph # type: ignore[attr-defined]
|
|
raise
|
|
|
|
raise
|
|
finally:
|
|
_is_fx_tracing_flag = old_is_fx_tracing_flag
|
|
return self.graph
|
|
|
|
def __deepcopy__(self, memo):
|
|
# _autowrap_search contains modules, which cannot be deepcopied.
|
|
new_tracer = Tracer.__new__(Tracer)
|
|
|
|
for k, v in self.__dict__.items():
|
|
if k in {"_autowrap_search"}:
|
|
new_obj = copy.copy(v)
|
|
else:
|
|
new_obj = copy.deepcopy(v, memo)
|
|
|
|
new_tracer.__dict__[k] = new_obj
|
|
|
|
return new_tracer
|
|
|
|
def _proxy_placeholder(self, name, concrete_args, sig, fn_for_analysis):
|
|
if concrete_args is not None and name in concrete_args:
|
|
cnt = 0
|
|
|
|
def replace_ph(x):
|
|
nonlocal cnt
|
|
cnt += 1
|
|
param = sig.parameters[name]
|
|
default: tuple[Any, ...] = (
|
|
() if param.default is inspect.Parameter.empty else (param.default,)
|
|
)
|
|
out = self.create_proxy(
|
|
"placeholder", f"{name}_{str(cnt)}", default, {}
|
|
)
|
|
if isinstance(x, PHBase):
|
|
if x != PH:
|
|
# Transfer attrs in the case where you're using a placeholder other
|
|
# than the singleton PH (PH has no attributes to transfer).
|
|
# Proxies were created out of the placeholders.
|
|
# Transfer any metadata (put on the placeholders in the form of
|
|
# attributes set by the user) from the placeholder to the
|
|
# underlying nodes (the proxy is unwrapped by the user, but
|
|
# the metadata should hold).
|
|
_transfer_attrs(fr=x, to=out.node)
|
|
|
|
return out
|
|
# Union[int, bool] == bool in Python <= 3.6
|
|
if type(x) == bool or type(x) in base_types and type(x) != torch.Tensor:
|
|
torch._assert(
|
|
out == x,
|
|
f"{name} has been specialized to have value {x} but got another value",
|
|
)
|
|
elif x is None:
|
|
args = (
|
|
out,
|
|
f"{name} has been specialized to have value None but got another value",
|
|
)
|
|
self.create_proxy("call_function", _assert_is_none, args, {})
|
|
else:
|
|
warnings.warn(
|
|
f"Was not able to add assertion to guarantee correct input {name} to "
|
|
f"specialized function. It is up to the user to make sure that your inputs match the "
|
|
f"inputs you specialized the function with."
|
|
)
|
|
|
|
return x
|
|
|
|
return pytree.tree_map(replace_ph, concrete_args[name])
|
|
if name[0] == "*":
|
|
default: tuple[Any, ...] = ()
|
|
else:
|
|
param = sig.parameters[name]
|
|
default = ( # type: ignore[assignment]
|
|
() if param.default is inspect.Parameter.empty else (param.default,)
|
|
)
|
|
return self.create_proxy(
|
|
"placeholder",
|
|
name,
|
|
default,
|
|
{},
|
|
type_expr=fn_for_analysis.__annotations__.get(name, None),
|
|
)
|
|
|
|
|
|
# Dictionary of (id(globals dict), function name) => globals_dict to patch for
|
|
# the purposes of the wrap() API.
|
|
# We key by the globals dict id and function name to ensure we're wrapping a given
|
|
# function only once.
|
|
_wrapped_fns_to_patch: dict[tuple[int, str], dict] = {}
|
|
|
|
# List of methods on classes to wrap (class type, function name)
|
|
# this currently only works for Tensor.* methods that aren't traced properly
|
|
_wrapped_methods_to_patch: list[tuple[type, str]] = []
|
|
|
|
if os.environ.get("FX_PATCH_GETITEM") == "1":
|
|
# This change is needed to trace models like PositionalEmbedding from BERT:
|
|
# https://github.com/pytorch/benchmark/blob/master/torchbenchmark/models/BERT_pytorch/bert_pytorch/model/embedding/position.py
|
|
# but causes issues in quantization documented here:
|
|
# https://github.com/pytorch/pytorch/issues/50710
|
|
# once that is fixed we can make this the default behavior.
|
|
_wrapped_methods_to_patch.append((torch.Tensor, "__getitem__"))
|
|
|
|
|
|
def _find_proxy(*objects_to_search):
|
|
"""
|
|
Recursively search a data structure for a Proxy() and return it,
|
|
return None if not found.
|
|
"""
|
|
proxy = None
|
|
|
|
def find_proxy(x):
|
|
nonlocal proxy
|
|
if isinstance(x, Proxy):
|
|
proxy = x
|
|
|
|
map_aggregate(objects_to_search, find_proxy)
|
|
return proxy
|
|
|
|
|
|
def _create_wrapped_func(orig_fn):
|
|
@functools.wraps(orig_fn)
|
|
def wrapped(*args, **kwargs):
|
|
"""
|
|
Given an closed-over ``orig_function`` to invoke, search the args and kwargs for
|
|
a Proxy object. If there is one, emit a ``call_function`` node to preserve the
|
|
call to this leaf function directly. Otherwise, just return the results of
|
|
this function call, as this function is not being traced.
|
|
"""
|
|
proxy = _find_proxy(args, kwargs)
|
|
if proxy is not None:
|
|
return_proxy = proxy.tracer.create_proxy(
|
|
"call_function", orig_fn, args, kwargs
|
|
)
|
|
return_proxy.node.meta["is_wrapped"] = True
|
|
return return_proxy
|
|
return orig_fn(*args, **kwargs)
|
|
|
|
return wrapped
|
|
|
|
|
|
def _create_wrapped_method(cls, name):
|
|
orig_fn = getattr(cls, name)
|
|
|
|
@functools.wraps(orig_fn)
|
|
def wrapped(*args, **kwargs):
|
|
"""
|
|
Search the args and kwargs for a Proxy object. If there is one,
|
|
emit a ``call_method`` node to preserve the call to this method
|
|
directly. Otherwise, just return the results of this function
|
|
call, as this function is not being traced.
|
|
"""
|
|
proxy = _find_proxy(args, kwargs)
|
|
if proxy is not None:
|
|
return proxy.tracer.create_proxy("call_method", name, args, kwargs)
|
|
return orig_fn(*args, **kwargs)
|
|
|
|
return wrapped
|
|
|
|
|
|
class _PatchedFn(NamedTuple):
|
|
frame_dict: Any
|
|
fn_name: str
|
|
orig_fn: Any
|
|
new_fn: Any
|
|
|
|
def revert(self):
|
|
raise NotImplementedError
|
|
|
|
def patch(self):
|
|
raise NotImplementedError
|
|
|
|
|
|
class _PatchedFnSetItem(_PatchedFn):
|
|
def revert(self):
|
|
self.frame_dict[self.fn_name] = self.orig_fn
|
|
|
|
def patch(self):
|
|
self.frame_dict[self.fn_name] = self.new_fn
|
|
|
|
|
|
class _PatchedFnDel(_PatchedFn):
|
|
def revert(self):
|
|
del self.frame_dict[self.fn_name]
|
|
|
|
def patch(self):
|
|
self.frame_dict[self.fn_name] = self.new_fn
|
|
|
|
|
|
class _PatchedFnSetAttr(_PatchedFn):
|
|
def revert(self):
|
|
setattr(self.frame_dict, self.fn_name, self.orig_fn)
|
|
|
|
def patch(self):
|
|
setattr(self.frame_dict, self.fn_name, self.new_fn)
|
|
|
|
|
|
class _Patcher:
|
|
def __init__(self) -> None:
|
|
super().__init__()
|
|
self.patches_made: list[_PatchedFn] = []
|
|
self.visited: set[int] = set()
|
|
|
|
def patch(
|
|
self,
|
|
frame_dict: dict[str, Any],
|
|
name: str,
|
|
new_fn: Callable,
|
|
deduplicate: bool = True,
|
|
):
|
|
"""
|
|
Replace frame_dict[name] with new_fn until we exit the context manager.
|
|
"""
|
|
new_fn.__fx_already_patched = deduplicate # type: ignore[attr-defined]
|
|
if name not in frame_dict and hasattr(builtins, name):
|
|
self.patches_made.append(_PatchedFnDel(frame_dict, name, None, new_fn))
|
|
self.patches_made[-1].patch()
|
|
elif getattr(frame_dict[name], "__fx_already_patched", False):
|
|
return # already patched, no need to do it again
|
|
else:
|
|
self.patches_made.append(
|
|
_PatchedFnSetItem(frame_dict, name, frame_dict[name], new_fn)
|
|
)
|
|
self.patches_made[-1].patch()
|
|
|
|
def patch_method(
|
|
self, cls: type, name: str, new_fn: Callable, deduplicate: bool = True
|
|
):
|
|
"""
|
|
Replace object_or_dict.name with new_fn until we exit the context manager.
|
|
"""
|
|
new_fn.__fx_already_patched = deduplicate # type: ignore[attr-defined]
|
|
orig_fn = getattr(cls, name)
|
|
if getattr(orig_fn, "__fx_already_patched", False):
|
|
return # already patched, no need to do it again
|
|
self.patches_made.append(_PatchedFnSetAttr(cls, name, orig_fn, new_fn))
|
|
self.patches_made[-1].patch()
|
|
|
|
def visit_once(self, thing: Any):
|
|
"""Return True on the first call to with thing, otherwise false"""
|
|
idx = id(thing)
|
|
if idx in self.visited:
|
|
return False
|
|
self.visited.add(idx)
|
|
return True
|
|
|
|
def revert_all_patches(self):
|
|
"""
|
|
Remove all the stored patcheds. It doesn't modify patches_made.
|
|
"""
|
|
for patch in self.patches_made:
|
|
patch.revert()
|
|
return self.patches_made
|
|
|
|
def reapply_all_patches(self):
|
|
"""
|
|
Patch all the stored patcheds. It doesn't modify patches_made.
|
|
"""
|
|
for patch in self.patches_made:
|
|
patch.patch()
|
|
return self.patches_made
|
|
|
|
def __enter__(self):
|
|
return self
|
|
|
|
def __exit__(self, exc_type, exc_val, exc_tb):
|
|
"""
|
|
Undo all the changes made via self.patch() and self.patch_method()
|
|
"""
|
|
while self.patches_made:
|
|
# unpatch in reverse order to handle duplicates correctly
|
|
self.patches_made.pop().revert()
|
|
self.visited.clear()
|
|
|
|
|
|
CURRENT_PATCHER: Optional[_Patcher] = None
|
|
|
|
|
|
@contextlib.contextmanager
|
|
def _new_patcher():
|
|
global CURRENT_PATCHER
|
|
prior_patcher = CURRENT_PATCHER
|
|
try:
|
|
CURRENT_PATCHER = _Patcher()
|
|
yield CURRENT_PATCHER
|
|
finally:
|
|
# Clear all the patches made by when using current patcher.
|
|
assert CURRENT_PATCHER is not None
|
|
CURRENT_PATCHER.revert_all_patches()
|
|
CURRENT_PATCHER = prior_patcher
|
|
|
|
|
|
@contextlib.contextmanager
|
|
def _maybe_revert_all_patches():
|
|
current_patcher = CURRENT_PATCHER
|
|
patches_made = None
|
|
patches_removed = None
|
|
try:
|
|
if current_patcher is not None:
|
|
patches_removed = current_patcher.revert_all_patches()
|
|
yield
|
|
finally:
|
|
if current_patcher is not None:
|
|
patches_made = current_patcher.reapply_all_patches()
|
|
assert (
|
|
patches_made == patches_removed
|
|
), "CURRENT_PATCHER was changed during a revert_all_patches"
|
|
|
|
|
|
def _patch_wrapped_functions(patcher: _Patcher):
|
|
"""
|
|
Go through ``_wrapped_fn_patch_table`` and, for each frame object, wrap
|
|
the listed global functions in the `_create_wrapped_func` wrapper.
|
|
"""
|
|
for (_, name), frame_dict in _wrapped_fns_to_patch.copy().items():
|
|
if name not in frame_dict and hasattr(builtins, name):
|
|
orig_fn = getattr(builtins, name)
|
|
else:
|
|
orig_fn = frame_dict[name]
|
|
patcher.patch(frame_dict, name, _create_wrapped_func(orig_fn))
|
|
|
|
for cls, name in _wrapped_methods_to_patch:
|
|
patcher.patch_method(cls, name, _create_wrapped_method(cls, name))
|
|
|
|
|
|
def _autowrap_check(
|
|
patcher: _Patcher, frame_dict: dict[str, Any], function_ids: set[int]
|
|
):
|
|
"""
|
|
Some methods, like `math.sqrt` are common enough we want to automatically wrap them as we see them.
|
|
This method searches a scope for them and patches them if found.
|
|
"""
|
|
if patcher.visit_once(frame_dict):
|
|
for name, value in frame_dict.items():
|
|
if (
|
|
not name.startswith("_")
|
|
and callable(value)
|
|
and id(value) in function_ids
|
|
):
|
|
patcher.patch(frame_dict, name, _create_wrapped_func(value))
|
|
|
|
|
|
@compatibility(is_backward_compatible=True)
|
|
def wrap(fn_or_name: Union[str, Callable]):
|
|
"""
|
|
This function can be called at module-level scope to register fn_or_name as a "leaf function".
|
|
A "leaf function" will be preserved as a CallFunction node in the FX trace instead of being
|
|
traced through::
|
|
|
|
# foo/bar/baz.py
|
|
def my_custom_function(x, y):
|
|
return x * x + y * y
|
|
|
|
|
|
torch.fx.wrap("my_custom_function")
|
|
|
|
|
|
def fn_to_be_traced(x, y):
|
|
# When symbolic tracing, the below call to my_custom_function will be inserted into
|
|
# the graph rather than tracing it.
|
|
return my_custom_function(x, y)
|
|
|
|
This function can also equivalently be used as a decorator::
|
|
|
|
# foo/bar/baz.py
|
|
@torch.fx.wrap
|
|
def my_custom_function(x, y):
|
|
return x * x + y * y
|
|
|
|
A wrapped function can be thought of a "leaf function", analogous to the concept of
|
|
"leaf modules", that is, they are functions that are left as calls in the FX trace
|
|
rather than traced through.
|
|
|
|
Args:
|
|
|
|
fn_or_name (Union[str, Callable]): The function or name of the global function to insert into the
|
|
graph when it's called
|
|
"""
|
|
if not callable(fn_or_name) and not isinstance(fn_or_name, str):
|
|
raise RuntimeError(
|
|
"Unsupported type for global function! Must be either a callable or "
|
|
"string name"
|
|
)
|
|
|
|
if callable(fn_or_name):
|
|
assert not isinstance(fn_or_name, str) # to make mypy happy
|
|
fn_name = fn_or_name.__name__
|
|
else:
|
|
assert isinstance(
|
|
fn_or_name, str
|
|
), "fn_or_name must be a global function or string name"
|
|
fn_name = fn_or_name
|
|
|
|
currentframe = inspect.currentframe()
|
|
assert currentframe is not None
|
|
f = currentframe.f_back
|
|
assert f is not None
|
|
if f.f_code.co_name != "<module>":
|
|
raise NotImplementedError("wrap must be called at the top level of a module")
|
|
|
|
# consider implementing Callable version of this via _autowrap_function_ids / _autowrap_search
|
|
# semantics would be slightly different, but would add support `from x import wrapped_function`
|
|
_wrapped_fns_to_patch[(id(f.f_globals), fn_name)] = f.f_globals
|
|
return fn_or_name
|
|
|
|
|
|
@compatibility(is_backward_compatible=True)
|
|
def symbolic_trace(
|
|
root: Union[torch.nn.Module, Callable[..., Any]],
|
|
concrete_args: Optional[dict[str, Any]] = None,
|
|
) -> GraphModule:
|
|
"""
|
|
Symbolic tracing API
|
|
|
|
Given an ``nn.Module`` or function instance ``root``, this function will return a ``GraphModule``
|
|
constructed by recording operations seen while tracing through ``root``.
|
|
|
|
``concrete_args`` allows you to partially specialize your function, whether it's to remove control flow or data structures.
|
|
|
|
For example::
|
|
|
|
def f(a, b):
|
|
if b == True:
|
|
return a
|
|
else:
|
|
return a * 2
|
|
|
|
FX can typically not trace through this due to the presence of control
|
|
flow. However, we can use `concrete_args` to specialize on the value of
|
|
`b` to trace through this::
|
|
|
|
f = fx.symbolic_trace(f, concrete_args={"b": False})
|
|
assert f(3, False) == 6
|
|
|
|
Note that although you can still pass in different values of `b`, they will be ignored.
|
|
|
|
We can also use `concrete_args` to eliminate data-structure handling from
|
|
our function. This will use pytrees to flatten your input. To avoid
|
|
overspecializing, pass in `fx.PH` for values that shouldn't be
|
|
specialized. For example::
|
|
|
|
def f(x):
|
|
out = 0
|
|
for v in x.values():
|
|
out += v
|
|
return out
|
|
|
|
|
|
f = fx.symbolic_trace(f, concrete_args={"x": {"a": fx.PH, "b": fx.PH, "c": fx.PH}})
|
|
assert f({"a": 1, "b": 2, "c": 4}) == 7
|
|
|
|
|
|
Args:
|
|
root (Union[torch.nn.Module, Callable]): Module or function to be traced and converted
|
|
into a Graph representation.
|
|
concrete_args (Optional[Dict[str, any]]): Inputs to be partially specialized
|
|
|
|
Returns:
|
|
GraphModule: a Module created from the recorded operations from ``root``.
|
|
"""
|
|
tracer = Tracer()
|
|
graph = tracer.trace(root, concrete_args)
|
|
name = (
|
|
root.__class__.__name__ if isinstance(root, torch.nn.Module) else root.__name__
|
|
)
|
|
return _make_graph_module(tracer.root, graph, name)
|
|
|
|
|
|
@wrap
|
|
def _assert_is_none(value, msg):
|
|
assert value is None, msg
|