1038 lines
41 KiB
Python
1038 lines
41 KiB
Python
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import contextlib
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import ctypes
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import importlib
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import inspect
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import sys
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import types
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from typing import Any, Callable, Dict, Set, Type, Union
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import torch._C
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import torch.utils._pytree as pytree
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from torch import _utils_internal
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from torch._functorch.pyfunctorch import dispatch_functorch
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from torch.utils._python_dispatch import TorchDispatchMode
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# Query `hasattr` only once.
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_SET_GLOBAL_FLAGS = hasattr(sys, "getdlopenflags") and hasattr(sys, "setdlopenflags")
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@contextlib.contextmanager
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def dl_open_guard():
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"""
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Context manager to set the RTLD_GLOBAL dynamic linker flag while we open a
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shared library to load custom operators.
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"""
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if not _SET_GLOBAL_FLAGS:
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yield
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return
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old_flags = sys.getdlopenflags()
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sys.setdlopenflags(old_flags | ctypes.RTLD_GLOBAL)
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try:
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yield
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finally:
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sys.setdlopenflags(old_flags)
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class OperatorBase:
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"""
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Base class for OpOverload (which represents C++ ATen operators) and HigherOrderOperator
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(which represents Python-only operators that are unrepresentable in TorchScript).
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"""
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def __init__(self):
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# The dispatch cache precomputes a mapping of dispatch key that the
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# dispatcher wants to dispatch to, to an actual implementation of the
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# dispatch key. Confusingly, the actual implementation could *also* be a
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# dispatch key, but in this case, this refers to the C++ kernel that
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# was registered to some dispatch key. Aliases are permitted in the
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# latter but not the former; for example, you might lookup the
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# entry for AutogradCPU, and this maps you to the Autograd key for
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# the generic autograd kernel that works for all devices. Since this
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# is the Python dispatcher, you can also put an arbitrary Python
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# callable to call instead. This handler gets precisely the
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# args/kwargs that the operator was __call__'ed with.
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# NB: This name is hard-coded in torch/csrc/autograd/python_variable.cpp
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# for use with OpOverload; cache lookup is done entirely from C++
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# for speed.
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# TODO: The cache is NOT currently used by HigherOrderOperator, but it should!
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self._dispatch_cache: Dict[
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torch._C.DispatchKey, Union[torch._C.DispatchKey, Callable[..., Any]]
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] = {}
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# This table allows you to override the behavior of a particular
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# dispatch key to call a custom Python function, rather than the
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# ordinary C++ configured behavior. This is the raison d'etre of
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# Python dispatcher: to let you program the dispatcher from Python
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# in case you need something unusual, and don't want to clobber
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# the existing registrations using the Python operator registration
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# API.
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self.py_kernels: Dict[torch._C.DispatchKey, Callable[..., Any]] = {}
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# This table allows you to override the behavior of a particular
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# operator for a particular TorchDispatchMode. In practice,
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# we are using this mostly for ProxyTensorMode. Modes can be
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# thought of as an open world extension of dispatch keys, so it
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# makes sense that you should be able to register them, the same
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# way you can register dispatch keys.
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self.python_key_mode_table: Dict[
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Type[TorchDispatchMode], Callable[..., Any]
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] = {}
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# This table allows you to override the behavior of functorch
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# transformations. NB: this currently only does something for
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# HigherOrderOperator
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self.functorch_table = {}
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def __call__(self, *args, **kwargs):
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raise NotImplementedError()
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def has_kernel_for_dispatch_key(self, k):
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return k in self.py_kernels
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def has_kernel_for_any_dispatch_key(self, ks):
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for k in self.py_kernels:
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if not torch._C._dispatch_is_alias_key(k) and ks.has(k):
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return True
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return False
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def py_impl(self, k):
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def inner(fn):
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if inspect.isclass(k) and issubclass(k, TorchDispatchMode):
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assert k not in self.python_key_mode_table
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# TODO(voz): Should we replace setting torch._C.DispatchKey.Python entirely with setting mode keys?
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self.python_key_mode_table[k] = fn
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self._dispatch_cache.clear()
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return fn
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if isinstance(k, torch._C._functorch.TransformType):
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assert k not in self.functorch_table
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self.functorch_table[k] = fn
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return fn
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assert isinstance(k, torch._C.DispatchKey)
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assert (
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k != torch._C.DispatchKey.Python
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), "Please register a mode for the torch._C.DispatchKey.Python key instead."
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if k in self.py_kernels:
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raise RuntimeError(
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f"Trying to override a python impl for {k} on operator {self.name()}"
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)
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self.py_kernels[k] = fn
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self._dispatch_cache.clear()
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return fn
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return inner
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# Registers an implementation to all **3** variants of functionalization that we have:
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# - DispatchKey.Functionalize
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# - functorch.TransformType.Functionalize
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# - FunctionalTensorMode
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# Example:
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# @py_functionalize_impl
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# def functionalize_rule(ctx, inner_f, *args):
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# args_unwrapped = ctx.unwrap_tensors(args)
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# with ctx.redispatch_to_next():
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# out = ctx.functionalize(inner_f)(*args_unwrapped)
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# return ctx.wrap_tensors(out)
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def py_functionalize_impl(self, fn):
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from torch._subclasses.functional_tensor import (
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CppFunctionalizeAPI as _CppFunctionalizeAPI,
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FunctorchFunctionalizeAPI as _FunctorchFunctionalizeAPI,
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PythonFunctionalizeAPI as _PythonFunctionalizeAPI,
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)
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# Construct our three flavors of functionalization,
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# each of which have slightly different wrap/unwrap/redispatch policies
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def functionalize_dk_fn(*args, **kwargs):
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return fn(_CppFunctionalizeAPI(), *args, **kwargs)
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def functionalize_dispatch_mode_fn(mode, *args, **kwargs):
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return fn(_PythonFunctionalizeAPI(mode), *args, **kwargs)
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def functionalize_functorch_fn(interpreter, *args, **kwargs):
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return fn(_FunctorchFunctionalizeAPI(interpreter), *args, **kwargs)
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self.py_impl(torch._C.DispatchKey.Functionalize)(functionalize_dk_fn)
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self.py_impl(torch._subclasses.functional_tensor.FunctionalTensorMode)(
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functionalize_dispatch_mode_fn
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)
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self.py_impl(torch._C._functorch.TransformType.Functionalize)(
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functionalize_functorch_fn
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)
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return fn
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def name(self):
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raise NotImplementedError()
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is_included_in_alias = torch._C._dispatch_is_included_in_alias
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DispatchKey = torch._C.DispatchKey
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# Equivalent to computeDispatchTableEntryWithDebug
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def resolve_key(op: OperatorBase, k: DispatchKey): # type: ignore[valid-type]
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# 1. (Direct) operator registration
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if op.has_kernel_for_dispatch_key(k):
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return k
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# 2.1 Use CompositeExplicitAutogradNonFunctional kernel if available
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cand = DispatchKey.CompositeExplicitAutogradNonFunctional
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if (
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k == DispatchKey.Undefined or is_included_in_alias(k, cand)
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) and op.has_kernel_for_dispatch_key(cand):
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return cand
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# 2.2 Use CompositeExplicitAutograd kernel if available
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cand = DispatchKey.CompositeExplicitAutograd
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if (
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k == DispatchKey.Undefined or is_included_in_alias(k, cand)
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) and op.has_kernel_for_dispatch_key(cand):
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return cand
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has_backend_kernel = op.has_kernel_for_any_dispatch_key(
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torch._C._dispatch_get_backend_keyset_from_autograd(k)
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) or op.has_kernel_for_dispatch_key(DispatchKey.CompositeExplicitAutograd)
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# 2.3. Use CompositeImplicitAutograd kernel if available
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cand = DispatchKey.CompositeImplicitAutogradNestedTensor
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if (
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(k != DispatchKey.Undefined and is_included_in_alias(k, cand))
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and op.has_kernel_for_dispatch_key(cand)
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and not has_backend_kernel
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):
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return cand
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cand = DispatchKey.CompositeImplicitAutograd
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if (
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k == DispatchKey.Undefined or is_included_in_alias(k, cand)
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) and op.has_kernel_for_dispatch_key(cand):
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if k == DispatchKey.AutogradOther and op.has_kernel_for_any_dispatch_key(
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torch._C._dispatch_autogradother_backends
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):
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raise RuntimeError("ambiguous autogradother kernel")
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elif not has_backend_kernel:
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return cand
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# 2.4. For autograd backend keys, use kernel from DispatchKey::Autograd if available
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cand = DispatchKey.Autograd
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if is_included_in_alias(k, cand) and op.has_kernel_for_dispatch_key(cand):
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return cand
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# 2.5 Use kernel from DispatchKey::FuncTorchBatchedDecomposition if available
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cand = DispatchKey.FuncTorchBatchedDecomposition
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if is_included_in_alias(k, cand) and op.has_kernel_for_dispatch_key(cand):
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return cand
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# Backend fallback
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if torch._C._dispatch_has_backend_fallback(k):
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# The dispatch key itself will implicitly route to backend fallback.
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# This is probably not great for the pure Python implementation.
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return k
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raise NotImplementedError(f"could not find kernel for {op} at dispatch key {k}")
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_higher_order_ops: Dict[str, "HigherOrderOperator"] = {}
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_HIGHER_ORDER_OP_DEFAULT_FALLTHROUGH_DISPATCH_KEYS = [
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DispatchKey.PythonDispatcher, # type: ignore[attr-defined]
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DispatchKey.PythonTLSSnapshot, # type: ignore[attr-defined]
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DispatchKey.ADInplaceOrView,
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DispatchKey.BackendSelect,
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DispatchKey.AutocastCPU, # type: ignore[attr-defined]
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DispatchKey.AutocastCUDA, # type: ignore[attr-defined]
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]
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class HigherOrderOperator(OperatorBase):
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# The HigherOrderOperator will appear as torch.ops.higher_order.{name}
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#
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# If you're creating a new HigherOrderOperator, please do not change the
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# default. Adding operators to the global torch.ops namespace is a bad
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# practice due to name collisions.
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def __init__(self, name):
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super().__init__()
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self._name = name
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# Make _OPNamespace not scream, this whole name based association needs a good hard look
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self.__name__ = name
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_higher_order_ops[name] = self
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self._ns = "higher_order"
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# For a normal HigherOrderOperator instance, we will change its __module__ from torch._ops to
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# torch._ops.higher_order.
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# For an instance of subclass of HigherOrderOperator (e.g. customized higher order op),
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# the __module__ attribute will be kept unchanged.
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if self.__class__ is HigherOrderOperator:
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self_name_space = "." + self.namespace if self.namespace else ""
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self.__module__ = self.__module__ + self_name_space
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self.non_fallthrough_keys = torch._C._dispatch_keyset_full()
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for dispatch_key in _HIGHER_ORDER_OP_DEFAULT_FALLTHROUGH_DISPATCH_KEYS:
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self.fallthrough(dispatch_key)
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# [NOTE] We have to register pre-dispatch key implementation
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# because sometimes HOP use aot-dispatch tracing to detect certaion
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# mutations. This is problematic when we are functionalizing HOP
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# during pre-dispatch because when the inner tracer starts, it will see
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# that PreDispatch key is still active. In that case, we just redispatch
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# it to next key. This is only safe to do when PreDispatch key stack has no
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# active modes.
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# TODO (tmanlaibaatar) Make it generic fallback mechanism
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def _(*args, **kwargs):
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if _len_torch_dispatch_stack_pre_dispatch() == 0:
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with torch._C._ExcludeDispatchKeyGuard(
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torch._C.DispatchKeySet(DispatchKey.PreDispatch)
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):
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return self(*args, **kwargs)
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raise AssertionError(
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"""
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Can't directly invoke HOP implementation at PreDispatch key
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if there are active modes on PreDispatch mode stack.
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"""
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)
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self.py_impl(torch._C.DispatchKey.PreDispatch)(_)
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def py_impl(self, k):
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if isinstance(k, torch._C.DispatchKey) and not self.non_fallthrough_keys.has(k):
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self.non_fallthrough_keys = self.non_fallthrough_keys.add(k)
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return super().py_impl(k)
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@property
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def namespace(self):
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return self._ns
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def fallthrough(self, dispatch_key):
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self.non_fallthrough_keys = self.non_fallthrough_keys.remove(dispatch_key)
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def dispatch(self, dispatch_key, *args, **kwargs):
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from torch.utils._python_dispatch import _get_current_dispatch_mode
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if dispatch_key in self._dispatch_cache:
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kernel = self._dispatch_cache[dispatch_key]
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assert not isinstance(kernel, torch._C.DispatchKey)
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return kernel(*args, **kwargs)
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if dispatch_key == torch._C.DispatchKey.FuncTorchDynamicLayerFrontMode:
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return dispatch_functorch(self, args, kwargs)
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if dispatch_key == torch._C.DispatchKey.Python:
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# The place to handle ProxyTorchDispatchMode, FakeTensorMode, etc
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from torch.utils._python_dispatch import _pop_mode_temporarily
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curr_mode = _get_current_dispatch_mode()
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assert (
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curr_mode is not None
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), "Illegal invocation of dispatch on torch._C.DispatchKey.Python without a mode."
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assert (
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type(curr_mode) in self.python_key_mode_table
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), f"Current active mode {curr_mode} not registered"
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handler = self.python_key_mode_table[type(curr_mode)]
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with _pop_mode_temporarily() as mode:
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return handler(mode, *args, **kwargs)
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functionality_key = torch._C._to_functionality_key(dispatch_key) # type: ignore[attr-defined]
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if functionality_key == torch._C.DispatchKey.PreDispatch:
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from torch.utils._python_dispatch import _pop_mode_temporarily
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# The check for Python in the exclude set is so we properly respect `with no_dispatch()`
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# calls inside of a mode.
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if (
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_len_torch_dispatch_stack_pre_dispatch() > 0
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) and not torch._C._dispatch_tls_is_dispatch_key_excluded(
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DispatchKey.Python
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):
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curr_mode = _get_current_dispatch_mode_pre_dispatch()
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assert (
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curr_mode is not None
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), "Illegal invocation of dispatch on torch._C.DispatchKey.PreDispatch without a mode."
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assert (
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type(curr_mode) in self.python_key_mode_table
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), f"Current active mode {curr_mode} not registered"
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handler = self.python_key_mode_table[type(curr_mode)]
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with _pop_mode_temporarily(functionality_key) as mode:
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return handler(mode, *args, **kwargs)
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final_key = resolve_key(self, dispatch_key)
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# This can current fail due to backend fallbacks. You just have to
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# register them by hand for HigherOrderOperator.
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if final_key not in self.py_kernels:
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raise NotImplementedError(
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f"could not find kernel for HigherOrderOperator {self._name} "
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f"at dispatch key {final_key} (resolved from {dispatch_key})"
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)
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self._dispatch_cache[dispatch_key] = self.py_kernels[final_key]
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kernel = self.py_kernels[final_key]
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# It's illegal to register DispatchKey to py_kernels, since there's no
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# C++ kernel to call into
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assert not isinstance(kernel, torch._C.DispatchKey)
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return kernel(*args, **kwargs)
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def __call__(self, *args, **kwargs):
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# Dynamo already traces the body of HigherOrderOp beforehand when it
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# so no need to trace into it.
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import torch._dynamo
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from torch._dynamo import disable
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@disable
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def wrapper():
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flat_args = _to_flat_tuple(args, kwargs)
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if torch.overrides.has_torch_function(flat_args):
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return torch.overrides.handle_torch_function(
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self, flat_args, *args, **kwargs
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)
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dispatch_key_set = _compute_keyset(args, kwargs, self.non_fallthrough_keys)
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return self.dispatch(
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dispatch_key_set.highestPriorityTypeId(), *args, **kwargs
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)
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return wrapper()
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def __str__(self):
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return f"{self.name()}"
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def name(self):
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return self._name
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def _to_flat_tuple(args, kwargs):
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||
|
return pytree.arg_tree_leaves(*args, **kwargs)
|
||
|
|
||
|
|
||
|
def _compute_keyset(args, kwargs, non_fallthrough_keys):
|
||
|
tensors = _get_tensors(args, kwargs)
|
||
|
return key_extractor(tensors, non_fallthrough_keys)
|
||
|
|
||
|
|
||
|
def _get_tensors(args, kwargs):
|
||
|
flat_all = _to_flat_tuple(args, kwargs)
|
||
|
tensor_args = [t for t in flat_all if isinstance(t, torch.Tensor)]
|
||
|
return tuple(tensor_args)
|
||
|
|
||
|
|
||
|
# Note - this should maintain identical impl to the C++ dispatcher key extraction logic
|
||
|
# at ATen/core/dispatch/DispatchKeyExtractor.h
|
||
|
def key_extractor(tensors, key_mask):
|
||
|
key_set = torch._C._dispatch_tls_local_include_set()
|
||
|
for tensor in tensors:
|
||
|
key_set = key_set | torch._C._dispatch_keys(tensor)
|
||
|
key_set = key_set - torch._C._dispatch_tls_local_exclude_set()
|
||
|
key_set = key_set & key_mask
|
||
|
return key_set
|
||
|
|
||
|
|
||
|
# Mode stack for PreDispatchKey
|
||
|
# it should always have two keys with
|
||
|
# priority given to FunctionalTensorMode and
|
||
|
# then ProxyTorchDispatchMode. It means that
|
||
|
# slot 0 belongs to ProxyTorchDispatchMode and
|
||
|
# slot 1 belongs to FunctionalTensorMode.
|
||
|
class _ModeStackStateForPreDispatch:
|
||
|
def __init__(self):
|
||
|
self.__infra_modes = [None, None]
|
||
|
|
||
|
def set(self, index, mode):
|
||
|
assert index < len(self.__infra_modes)
|
||
|
self.__infra_modes[index] = mode
|
||
|
|
||
|
def get(self, index):
|
||
|
assert index < len(self.__infra_modes)
|
||
|
return self.__infra_modes[index]
|
||
|
|
||
|
def count(self):
|
||
|
return len([i for i in self.__infra_modes if i is not None])
|
||
|
|
||
|
|
||
|
_mode_stack_state_for_pre_dispatch = _ModeStackStateForPreDispatch()
|
||
|
|
||
|
|
||
|
def unset_mode_pre_dispatch(mode_key):
|
||
|
current_mode_stack_pre_dispatch = mode_stack_state_for_pre_dispatch()
|
||
|
assert mode_key in (
|
||
|
torch._C._TorchDispatchModeKey.PROXY,
|
||
|
torch._C._TorchDispatchModeKey.FUNCTIONAL,
|
||
|
)
|
||
|
if mode_key == torch._C._TorchDispatchModeKey.PROXY:
|
||
|
current_mode = current_mode_stack_pre_dispatch.get(0)
|
||
|
mode_stack_state_for_pre_dispatch().set(0, None)
|
||
|
return current_mode
|
||
|
else:
|
||
|
current_mode = current_mode_stack_pre_dispatch.get(1)
|
||
|
mode_stack_state_for_pre_dispatch().set(1, None)
|
||
|
return current_mode
|
||
|
|
||
|
|
||
|
def _set_mode_pre_dispatch(mode):
|
||
|
from torch._subclasses.functional_tensor import FunctionalTensorMode
|
||
|
from torch.fx.experimental.proxy_tensor import ProxyTorchDispatchMode
|
||
|
|
||
|
assert isinstance(mode, (FunctionalTensorMode, ProxyTorchDispatchMode))
|
||
|
if isinstance(mode, FunctionalTensorMode):
|
||
|
current_mode = mode_stack_state_for_pre_dispatch().get(1)
|
||
|
assert current_mode is None
|
||
|
mode_stack_state_for_pre_dispatch().set(1, mode)
|
||
|
return
|
||
|
|
||
|
current_mode = mode_stack_state_for_pre_dispatch().get(0)
|
||
|
assert current_mode is None
|
||
|
mode_stack_state_for_pre_dispatch().set(0, mode)
|
||
|
|
||
|
|
||
|
def _pop_mode_from_pre_dispatch():
|
||
|
mode_stack = mode_stack_state_for_pre_dispatch()
|
||
|
if mode_stack.get(1) is not None:
|
||
|
res = mode_stack.get(1)
|
||
|
mode_stack.set(1, None)
|
||
|
return res
|
||
|
|
||
|
if mode_stack.get(0) is not None:
|
||
|
res = mode_stack.get(0)
|
||
|
mode_stack.set(0, None)
|
||
|
return res
|
||
|
|
||
|
raise AssertionError("Trying to pop empty mode stack")
|
||
|
|
||
|
|
||
|
def _len_torch_dispatch_stack_pre_dispatch():
|
||
|
return mode_stack_state_for_pre_dispatch().count()
|
||
|
|
||
|
|
||
|
def _get_dispatch_mode_pre_dispatch(mode_key):
|
||
|
assert mode_key in (
|
||
|
torch._C._TorchDispatchModeKey.PROXY,
|
||
|
torch._C._TorchDispatchModeKey.FUNCTIONAL,
|
||
|
)
|
||
|
if mode_key == torch._C._TorchDispatchModeKey.PROXY:
|
||
|
return mode_stack_state_for_pre_dispatch().get(0)
|
||
|
return mode_stack_state_for_pre_dispatch().get(1)
|
||
|
|
||
|
|
||
|
def _get_current_dispatch_mode_pre_dispatch():
|
||
|
stack_len = mode_stack_state_for_pre_dispatch().count()
|
||
|
if stack_len == 2:
|
||
|
return mode_stack_state_for_pre_dispatch().get(1)
|
||
|
if stack_len == 1:
|
||
|
return (
|
||
|
mode_stack_state_for_pre_dispatch().get(1)
|
||
|
if mode_stack_state_for_pre_dispatch().get(1) is not None
|
||
|
else mode_stack_state_for_pre_dispatch().get(0)
|
||
|
)
|
||
|
return None
|
||
|
|
||
|
|
||
|
def mode_stack_state_for_pre_dispatch():
|
||
|
global _mode_stack_state_for_pre_dispatch
|
||
|
return _mode_stack_state_for_pre_dispatch
|
||
|
|
||
|
|
||
|
cached_ops: Set["OpOverload"] = set()
|
||
|
|
||
|
|
||
|
def add_cached_op(op_overload):
|
||
|
global cached_ops
|
||
|
cached_ops.add(op_overload)
|
||
|
|
||
|
|
||
|
def reset_cached_ops():
|
||
|
global cached_ops
|
||
|
cached_ops.clear()
|
||
|
|
||
|
|
||
|
def get_cached_ops():
|
||
|
global cached_ops
|
||
|
return cached_ops
|
||
|
|
||
|
|
||
|
# Each OpOverload object contains pointer to a a specific operator overload, a pointer to the parent `OpOverloadPacket` object.
|
||
|
# You can obtain an OpOverload object through attribute query on OpOverloadPacket.
|
||
|
class OpOverload(OperatorBase):
|
||
|
def __init__(self, overloadpacket, op, op_dk, schema, tags):
|
||
|
super().__init__()
|
||
|
self._op = op
|
||
|
self._op_dk = op_dk
|
||
|
self._schema = schema
|
||
|
self._overloadpacket = overloadpacket
|
||
|
self._tags = tags
|
||
|
self._overloadname = (
|
||
|
"default" if schema.overload_name == "" else schema.overload_name
|
||
|
)
|
||
|
self._name = self._schema.name
|
||
|
if schema.overload_name:
|
||
|
self._name += "." + schema.overload_name
|
||
|
self.__name__ = f"{self._schema.name.split('::')[1]}.{self._overloadname}"
|
||
|
self.__module__ = overloadpacket.__module__
|
||
|
op.__module__ = overloadpacket.__module__
|
||
|
self.__qualname__ = self._name
|
||
|
self.__annotations__ = {}
|
||
|
|
||
|
# If the OpOverload was constructed from a Library.def in Python.
|
||
|
self._defined_in_python = self.__qualname__ in torch.library._defs
|
||
|
|
||
|
# Logic replicated from aten/src/ATen/native/MathBitsFallback.h
|
||
|
is_write = None
|
||
|
for a in self._schema.arguments:
|
||
|
if a.alias_info is None:
|
||
|
continue
|
||
|
if is_write is None:
|
||
|
is_write = a.alias_info.is_write
|
||
|
else:
|
||
|
# We will conservatively call mixed mutable/non-mutable
|
||
|
# aliased inputs as NOT a view
|
||
|
is_write = a.alias_info.is_write or is_write
|
||
|
self.is_view = is_write is not None and not is_write
|
||
|
|
||
|
# it's a no-op since OpOverload object is immutable and must be unique for a given op overload.
|
||
|
def __deepcopy__(self, memo=None):
|
||
|
return self
|
||
|
|
||
|
def __repr__(self):
|
||
|
return "<OpOverload(op='{}.{}', overload='{}')>".format(
|
||
|
*self._schema.name.split("::"), self._overloadname
|
||
|
)
|
||
|
|
||
|
def __call__(self_, *args, **kwargs): # noqa: B902
|
||
|
# use `self_` to avoid naming collide with aten ops arguments that
|
||
|
# are named "self". This way, all the aten ops can be called by kwargs.
|
||
|
return self_._op(*args, **kwargs)
|
||
|
|
||
|
def __hash__(self):
|
||
|
return hash(self._op)
|
||
|
|
||
|
# `my_namespace.my_op_name.overload_name`
|
||
|
def __str__(self):
|
||
|
return "{}.{}.{}".format(*self._schema.name.split("::"), self._overloadname)
|
||
|
|
||
|
def has_kernel_for_dispatch_key(self, k):
|
||
|
return super().has_kernel_for_dispatch_key(
|
||
|
k
|
||
|
) or torch._C._dispatch_has_kernel_for_dispatch_key(self.name(), k)
|
||
|
|
||
|
def has_kernel_for_any_dispatch_key(self, ks):
|
||
|
return torch._C._dispatch_has_kernel_for_any_dispatch_key(
|
||
|
self.name(), ks
|
||
|
) or super().has_kernel_for_any_dispatch_key(ks)
|
||
|
|
||
|
@property
|
||
|
def namespace(self):
|
||
|
return self._schema.name.split("::")[0]
|
||
|
|
||
|
def _handle(self):
|
||
|
return torch._C._dispatch_find_schema_or_throw(
|
||
|
self._schema.name, self._schema.overload_name
|
||
|
)
|
||
|
|
||
|
def decompose(self, *args, **kwargs):
|
||
|
dk = torch._C.DispatchKey.CompositeImplicitAutograd
|
||
|
if dk in self.py_kernels:
|
||
|
# NB: This branch is not too necessary anymore, because we can
|
||
|
# apply Python CompositeImplicitAutograd *before* tracing
|
||
|
# using Python dispatcher (also taking advantage of the autograd
|
||
|
# formula). But it's included for completeness
|
||
|
return self.py_kernels[dk](*args, **kwargs)
|
||
|
elif torch._C._dispatch_has_kernel_for_dispatch_key(self.name(), dk):
|
||
|
return self._op_dk(dk, *args, **kwargs)
|
||
|
else:
|
||
|
return NotImplemented
|
||
|
|
||
|
# Remove a dispatch key from the dispatch cache. This will force it to get
|
||
|
# recomputed the next time. Does nothing
|
||
|
# WARNING: if you register a dispatch key to py_kernels of an OpOverload,
|
||
|
# calling _del_dispatch on that key is NOT sufficient to apply your change,
|
||
|
# because a single registration may affect MULTIPLE dispatch keys (e.g.,
|
||
|
# registering Autograd affects AutogradCPU). del_dispatch is to be used
|
||
|
# only if you are specifically modifying how get_dispatch handles a
|
||
|
# particular input 'key'.
|
||
|
def _uncache_dispatch(self, key):
|
||
|
self._dispatch_cache.pop(key, None)
|
||
|
|
||
|
# This implements the pre-computation logic for the Python dispatcher.
|
||
|
def _get_dispatch(self, key):
|
||
|
# This is only called upon a cache miss
|
||
|
assert key not in self._dispatch_cache, f"{self} {key}"
|
||
|
|
||
|
if key == torch._C.DispatchKey.Python:
|
||
|
if not self.python_key_mode_table:
|
||
|
self._dispatch_cache[key] = key
|
||
|
add_cached_op(self)
|
||
|
return key
|
||
|
|
||
|
def handler(*args, **kwargs):
|
||
|
from torch.utils._python_dispatch import _get_current_dispatch_mode
|
||
|
|
||
|
# TODO: We also need to handle tensor subclasses here
|
||
|
# TODO(voz): We should walk all the nodes here / turn it into a list, topmode is ok for now.
|
||
|
curr_mode = type(_get_current_dispatch_mode())
|
||
|
assert (
|
||
|
curr_mode is not None
|
||
|
), "Illegal invocation of dispatch on torch._C.DispatchKey.Python without a mode."
|
||
|
if curr_mode not in self.python_key_mode_table:
|
||
|
# TODO: This path is slow, should generally encourage this
|
||
|
# case to not happen
|
||
|
return self._op_dk(key, *args, **kwargs)
|
||
|
# TODO(voz): The idea behind this is that we do not yet support dispatch by key + mode, only key.
|
||
|
return self.python_key_mode_table[curr_mode](*args, **kwargs)
|
||
|
|
||
|
self._dispatch_cache[key] = handler
|
||
|
add_cached_op(self)
|
||
|
return handler
|
||
|
|
||
|
functionality_key = torch._C._to_functionality_key(key) # type: ignore[attr-defined]
|
||
|
if functionality_key == torch._C.DispatchKey.PreDispatch:
|
||
|
curr_stack_len = _len_torch_dispatch_stack_pre_dispatch()
|
||
|
# The check for Python in the exclude set is so we properly respect `with no_dispatch()`
|
||
|
# calls inside of a mode.
|
||
|
if (
|
||
|
curr_stack_len > 0
|
||
|
and not torch._C._dispatch_tls_is_dispatch_key_excluded(
|
||
|
DispatchKey.Python
|
||
|
)
|
||
|
):
|
||
|
|
||
|
def handler(*args, **kwargs):
|
||
|
@contextlib.contextmanager
|
||
|
def _temporarily_pop_modes_from_pre_dispatch():
|
||
|
top_mode = _pop_mode_from_pre_dispatch()
|
||
|
try:
|
||
|
yield top_mode
|
||
|
finally:
|
||
|
_set_mode_pre_dispatch(top_mode)
|
||
|
|
||
|
with _temporarily_pop_modes_from_pre_dispatch() as curr_mode:
|
||
|
assert isinstance(curr_mode, TorchDispatchMode)
|
||
|
overload_types = []
|
||
|
args_flattened, _ = torch.utils._pytree.tree_flatten(
|
||
|
(args, kwargs.values())
|
||
|
)
|
||
|
for a in args_flattened:
|
||
|
# TODO: need to double check the semantics of the "types" argument to torch_dispatch.
|
||
|
# It's generated in PyInterpreter.cpp, but seems to be generated in two places,
|
||
|
# where in one case we only include tensors with the python key, and in another
|
||
|
# we include **all** tensors.
|
||
|
if isinstance(a, torch.Tensor) and torch._C._dispatch_keys(
|
||
|
a
|
||
|
).has(torch._C.DispatchKey.Python):
|
||
|
overload_types.append(type(a))
|
||
|
# TODO: check that I got these args correct (in C++, we pass in "0000"??)
|
||
|
|
||
|
return curr_mode.__torch_dispatch__(
|
||
|
self, overload_types, args, kwargs
|
||
|
)
|
||
|
|
||
|
# Note [Not Caching Per-Dispatch-Key Mode Handlers]
|
||
|
# Note that we're not caching this handler. There isn't really a point, since the slow bit
|
||
|
# is the handler itself (in python).
|
||
|
# Also, not caching means that we don't have to reset the cache when any existing
|
||
|
# modes go out of scope (which in of itself takes time to loop through all operators).
|
||
|
return handler
|
||
|
|
||
|
final_key = resolve_key(self, key)
|
||
|
|
||
|
# See Note [Not Caching Per-Dispatch-Key Mode Handlers]
|
||
|
cache_result = key != torch._C.DispatchKey.PreDispatch
|
||
|
|
||
|
# TODO: We could potentially have lots of debugging wrappers against
|
||
|
# dispatch keys; design some general registration mechanism instead of
|
||
|
# having if statement for each of them
|
||
|
if key == torch._C.DispatchKey.Functionalize:
|
||
|
import torch._dispatch.python as pydispatch
|
||
|
|
||
|
if pydispatch.CROSSREF_FUNCTIONALIZE:
|
||
|
handler = pydispatch.make_crossref_functionalize(self, final_key)
|
||
|
if cache_result:
|
||
|
self._dispatch_cache[key] = handler
|
||
|
add_cached_op(self)
|
||
|
return handler
|
||
|
|
||
|
# print(self, key, final_key)
|
||
|
r = self.py_kernels.get(final_key, final_key)
|
||
|
if cache_result:
|
||
|
self._dispatch_cache[key] = r
|
||
|
add_cached_op(self)
|
||
|
return r
|
||
|
|
||
|
def name(self):
|
||
|
return self._name
|
||
|
|
||
|
@property
|
||
|
def overloadpacket(self):
|
||
|
return self._overloadpacket
|
||
|
|
||
|
@property
|
||
|
def op(self):
|
||
|
return self._op
|
||
|
|
||
|
@property
|
||
|
def tags(self):
|
||
|
return self._tags
|
||
|
|
||
|
# TODO: add more methods to expose information about input and output arguments
|
||
|
|
||
|
|
||
|
# OpOverloadPacket class contains pointer to a base unresolved operator that doesn't correspond to a specific operator
|
||
|
# You can obtain an OpOverload object through attribute query.
|
||
|
class OpOverloadPacket:
|
||
|
def __init__(self, qualified_op_name, op_name, op, overload_names):
|
||
|
# These attributes are accessible on the object through the properties
|
||
|
# defined below but are immutable
|
||
|
self._qualified_op_name = qualified_op_name
|
||
|
self.__name__ = op_name
|
||
|
self._op = op
|
||
|
self._overload_names = overload_names
|
||
|
self._dir = []
|
||
|
|
||
|
# it's a no-op since OpOverloadPacket object is immutable and must be unique for a given op.
|
||
|
def __deepcopy__(self, memo=None):
|
||
|
return self
|
||
|
|
||
|
def __repr__(self):
|
||
|
return "<OpOverloadPacket(op='{}.{}')>".format(
|
||
|
*self._qualified_op_name.split("::")
|
||
|
)
|
||
|
|
||
|
def __hash__(self):
|
||
|
return hash(self._op)
|
||
|
|
||
|
def __str__(self):
|
||
|
return "{}.{}".format(*self._qualified_op_name.split("::"))
|
||
|
|
||
|
@property
|
||
|
def op(self):
|
||
|
return self._op
|
||
|
|
||
|
def __getattr__(self, key):
|
||
|
# It is not a valid op_name when __file__ is passed in
|
||
|
if key == "__file__":
|
||
|
return "torch.ops"
|
||
|
|
||
|
# ensure that query for dunder attributes that does not exist on
|
||
|
# opoverloadpacket but instead exists on the self._op object does not unnecessarily call
|
||
|
# `_get_operation_overload` (which is an expensive operation).
|
||
|
# This is done to prevent any potential slowdown. This list can be extended
|
||
|
# if there exists other attributes like `__name__` that only exist on self._op and not on the
|
||
|
# opoverloadpacket.
|
||
|
# This is ok since we are guaranteed that an overload name for an aten op can't start with '__'
|
||
|
try:
|
||
|
if key.startswith("__"):
|
||
|
return getattr(self._op, key)
|
||
|
except AttributeError:
|
||
|
# for consistency because it seems weird to
|
||
|
# throw an attribute error with a message containing
|
||
|
# an object name different from the one the attribute
|
||
|
# query was performed on.
|
||
|
raise AttributeError(
|
||
|
f"'{str(self)}' can't have an overload name beginning with '__' and the "
|
||
|
f"underlying op {str(self._op)} has no attribute {key} either."
|
||
|
) from None
|
||
|
|
||
|
try:
|
||
|
# This is ok since we are guaranteed that an overload name for an aten op can't be 'default'
|
||
|
use_key = "" if key == "default" else key
|
||
|
# TODO: disallow access to overloads registered by JIT
|
||
|
op_, op_dk_, tags = torch._C._get_operation_overload(
|
||
|
self._qualified_op_name, use_key
|
||
|
)
|
||
|
schema = torch._C._get_schema(self._qualified_op_name, use_key)
|
||
|
overload = OpOverload(self, op_, op_dk_, schema, tags)
|
||
|
# cache the overload object
|
||
|
setattr(self, key, overload)
|
||
|
self._dir.append(key)
|
||
|
return overload
|
||
|
except RuntimeError:
|
||
|
raise AttributeError(
|
||
|
f"The underlying op of '{str(self)}' has no overload name '{key}'"
|
||
|
) from None
|
||
|
|
||
|
def __iter__(self):
|
||
|
return iter(self._dir)
|
||
|
|
||
|
def __call__(self_, *args, **kwargs): # noqa: B902
|
||
|
# use `self_` to avoid naming collide with aten ops arguments that
|
||
|
# named "self". This way, all the aten ops can be called by kwargs.
|
||
|
|
||
|
# overloading __call__ to ensure torch.ops.foo.bar()
|
||
|
# is still callable from JIT
|
||
|
# We save the function ptr as the `op` attribute on
|
||
|
# OpOverloadPacket to access it here.
|
||
|
return self_._op(*args, **(kwargs or {}))
|
||
|
|
||
|
# TODO: use this to make a __dir__
|
||
|
def overloads(self):
|
||
|
return [n if n else "default" for n in self._overload_names]
|
||
|
|
||
|
|
||
|
# Resolution of torch.fn is different from torch.ops.aten.fn
|
||
|
# torch.fn uses the Python argparser, matches with the
|
||
|
# appropriate schema, and calls into the unboxed version of the method
|
||
|
# torch.ops.aten.fn resolution is done via the mechanism defined in JIT.
|
||
|
# JIT creates a stack of all the overloads and then tries to match the
|
||
|
# correct one at runtime and always calls into the boxed version of the method
|
||
|
# Autograd codegen creates VariableType, TracerType,
|
||
|
# inplace or view type and python bindings.
|
||
|
# Aten codegen generates tensor methods for the tensor class.
|
||
|
|
||
|
# _OpNamespace is a subclass of ModuleType because the torch script
|
||
|
# allows attribute lookups on modules only. Since we want torch.ops.foo.bar()
|
||
|
# to work from script, we need to ensure ops and foo are modules
|
||
|
|
||
|
|
||
|
class _OpNamespace(types.ModuleType):
|
||
|
"""
|
||
|
An op namespace to dynamically bind Operators into Python.
|
||
|
|
||
|
Say a user has created a custom Operator called "my_namespace::my_op". To
|
||
|
call this op, the user will write torch.ops.my_namespace.my_op(...).
|
||
|
At startup, this operation will not yet be bound into Python. Instead, the
|
||
|
following sequence of magic tricks will occur:
|
||
|
1. `torch.ops.my_namespace` will invoke the `__getattr__` magic method
|
||
|
on the `torch.ops` object, which will create a new `_OpNamespace`
|
||
|
object called `my_namespace` and set it as an attribute on the `ops`
|
||
|
object.
|
||
|
2. `torch.ops.my_namespace.my_op` will then invoke `__getattr__` on
|
||
|
the `my_namespace` object, which will retrieve the operation via
|
||
|
`torch.get_operation`, a function bound from C++, and then in a similar
|
||
|
fashion bind this new object onto the `my_namespace` object.
|
||
|
3. `torch.ops.my_namespace.my_op(...)` then calls this new operation
|
||
|
and subsequent accesses will incur no further lookup (the namespace and
|
||
|
operation will already exist).
|
||
|
"""
|
||
|
|
||
|
def __init__(self, name):
|
||
|
super().__init__("torch.ops." + name)
|
||
|
self.name = name
|
||
|
self._dir = []
|
||
|
|
||
|
def __iter__(self):
|
||
|
return iter(self._dir)
|
||
|
|
||
|
def __getattr__(self, op_name):
|
||
|
# It is not a valid op_name when __file__ is passed in
|
||
|
if op_name == "__file__":
|
||
|
return "torch.ops"
|
||
|
elif op_name in ["__origin__", "__self__"]:
|
||
|
raise AttributeError(
|
||
|
f"Invalid attribute '{op_name}' for '_OpNamespace' '{self.name}'"
|
||
|
)
|
||
|
|
||
|
# Get the op `my_namespace::my_op` if available. This will also check
|
||
|
# for overloads and raise an exception if there are more than one.
|
||
|
namespace_name = self.name
|
||
|
qualified_op_name = f"{namespace_name}::{op_name}"
|
||
|
try:
|
||
|
op, overload_names = torch._C._jit_get_operation(qualified_op_name)
|
||
|
if op is None:
|
||
|
raise AttributeError(
|
||
|
f"'_OpNamespace' '{self.name}' object has no attribute '{op_name}'"
|
||
|
)
|
||
|
except RuntimeError as e:
|
||
|
# Turn this into AttributeError so getattr(obj, key, default)
|
||
|
# works (this is called by TorchScript with __origin__)
|
||
|
raise AttributeError(
|
||
|
f"'_OpNamespace' '{self.name}' object has no attribute '{op_name}'"
|
||
|
) from e
|
||
|
|
||
|
# let the script frontend know that op is identical to the builtin op
|
||
|
# with qualified_op_name
|
||
|
torch.jit._builtins._register_builtin(op, qualified_op_name)
|
||
|
op.__module__ = self.__module__ + "." + namespace_name
|
||
|
opoverloadpacket = OpOverloadPacket(
|
||
|
qualified_op_name, op_name, op, overload_names
|
||
|
)
|
||
|
opoverloadpacket.__module__ = self.__module__ + "." + namespace_name
|
||
|
# cache the opoverloadpacket to ensure that each op corresponds to
|
||
|
# a unique OpOverloadPacket object
|
||
|
setattr(self, op_name, opoverloadpacket)
|
||
|
self._dir.append(op_name)
|
||
|
return opoverloadpacket
|
||
|
|
||
|
|
||
|
class _PyOpNamespace(_OpNamespace):
|
||
|
def __init__(self, name, ops):
|
||
|
super().__init__(name)
|
||
|
self._ops = ops
|
||
|
|
||
|
def __getattr__(self, name):
|
||
|
# Following _OpNamespace.__getattr__, we cache the op on the _PyOpNamespace object.
|
||
|
op = self._ops.get(name, None)
|
||
|
if op is None:
|
||
|
raise AttributeError(
|
||
|
f"'_PyOpNamespace' '{self.name}' object has no attribute '{name}'"
|
||
|
)
|
||
|
setattr(self, name, op)
|
||
|
return op
|
||
|
|
||
|
|
||
|
class _Ops(types.ModuleType):
|
||
|
__file__ = "_ops.py"
|
||
|
|
||
|
def __init__(self):
|
||
|
super().__init__("torch.ops")
|
||
|
self.loaded_libraries = set()
|
||
|
self._higher_order_op_namespace = _PyOpNamespace(
|
||
|
"torch.ops.higher_order", _higher_order_ops
|
||
|
)
|
||
|
self._dir = []
|
||
|
|
||
|
def __getattr__(self, name):
|
||
|
# Check if the name is a HigherOrderOperator
|
||
|
if name == "higher_order":
|
||
|
return self._higher_order_op_namespace
|
||
|
|
||
|
# Here we are creating `torch.ops.my_namespace`
|
||
|
namespace = _OpNamespace(name)
|
||
|
setattr(self, name, namespace)
|
||
|
self._dir.append(name)
|
||
|
return namespace
|
||
|
|
||
|
def __iter__(self):
|
||
|
return iter(self._dir)
|
||
|
|
||
|
def import_module(self, module):
|
||
|
"""
|
||
|
Imports a Python module that has torch.library registrations.
|
||
|
|
||
|
Generally, to extend PyTorch with custom operators, a user will
|
||
|
create a Python module whose import triggers registration of
|
||
|
the custom operators via a torch.ops.load_library call or a call
|
||
|
to one or more torch.library.* APIs.
|
||
|
|
||
|
It is unexpected for Python modules to have side effects, so some
|
||
|
linters and formatters will complain. Use this API to import Python
|
||
|
modules that contain these torch.library side effects.
|
||
|
|
||
|
Args:
|
||
|
module (str): The name of the Python module to import
|
||
|
|
||
|
"""
|
||
|
importlib.import_module(module)
|
||
|
|
||
|
def load_library(self, path):
|
||
|
"""
|
||
|
Loads a shared library from the given path into the current process.
|
||
|
|
||
|
The library being loaded may run global initialization code to register
|
||
|
custom operators with the PyTorch JIT runtime. This allows dynamically
|
||
|
loading custom operators. For this, you should compile your operator
|
||
|
and the static registration code into a shared library object, and then
|
||
|
call ``torch.ops.load_library('path/to/libcustom.so')`` to load the
|
||
|
shared object.
|
||
|
|
||
|
After the library is loaded, it is added to the
|
||
|
``torch.ops.loaded_libraries`` attribute, a set that may be inspected
|
||
|
for the paths of all libraries loaded using this function.
|
||
|
|
||
|
Args:
|
||
|
path (str): A path to a shared library to load.
|
||
|
"""
|
||
|
if torch._running_with_deploy():
|
||
|
return
|
||
|
|
||
|
path = _utils_internal.resolve_library_path(path)
|
||
|
with dl_open_guard():
|
||
|
# Import the shared library into the process, thus running its
|
||
|
# static (global) initialization code in order to register custom
|
||
|
# operators with the JIT.
|
||
|
ctypes.CDLL(path)
|
||
|
self.loaded_libraries.add(path)
|
||
|
|
||
|
|
||
|
# The ops "namespace"
|
||
|
ops = _Ops()
|