| 123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566676869707172737475767778798081828384858687888990919293949596979899100101102103104105106107108109110111112113114115116117118119120121122123124125126127128129130131132133134135136137138139140141142143144145146147148149150151152153154155156157158159160161162163164165166167168169170171172173174175176177178179180181182183184185186187188189190191192193194195196197198199200201202203204205206207208209210211212213214215216217218219220221222223224225226227228229230231232233234235236237238239240241242243244245246247248249250251252253254255256257258259260261262263264265266267268269270271272273274275276277278279280281282283284285286287288289290291292293294295296297298299300301302303304305306307308309310311312313314315316317318319320321322323324325326327328329330331332333334335336337338339340341342343344345346347348349350351352353354355356357358359360361362363364365366367368369370371372373374375376377378379380381382383384385386387388389390391392393394395396397398399400401402403404405406407408409410411412413414415416417418419420421422423424425426427428429430431432433434435436437438439440441442443444445446447448449450451452453454455456457458459460461462463464465466467468469470471472473474475476477478479480481482483484485486487488489490491492493494495496497498499500501502503504505506507508509510511512513514515516517518519520521522523524525526527528529530531532533534535536537538539540541542543544545546547548549550551552553554555556557558559560561562563564565566567568569570571572573574575576577578579580581582583584585586587588589590591592593594595596597598599600601602603604605606607608609610611612613614615616617618619620621622623624625626627628629630631632633634635636637638639640641642643644645646647648649650651652653654655656657658659660661662663664665666667668669670671672673674675676677678679680681682683684685686687688689690691692693694695696697698699700701702703704705706707708709710711712713714715716717718719720721 |
- # mypy: allow-untyped-defs
- import dataclasses
- import functools
- import inspect
- import sys
- import typing
- import warnings
- import weakref
- import torch
- import torch._C as _C
- import torch._library.infer_schema
- import torch.library as library
- from torch._library.infer_schema import infer_schema
- from torch.library import get_ctx
- from torchgen.model import (
- BaseTy,
- BaseType,
- FunctionSchema,
- ListType,
- OperatorName,
- SchemaKind,
- )
- from .autograd import autograd_kernel_indirection, construct_autograd_kernel
- """
- torch._custom_op is deprecated. We shipped a production-ready version of it into torch.library.
- Please use those APIs instead.
- """
- __all__ = ["custom_op", "CustomOp", "get_ctx"]
- SUPPORTED_DEVICE_TYPE_TO_KEY = {
- "cpu": "CPU",
- "cuda": "CUDA",
- }
- # We will not let users register CustomOps with anything that could look like
- # PyTorch internals to avoid confusion.
- RESERVED_NS = {
- "prim",
- "prims",
- "aten",
- "at",
- "torch",
- "pytorch",
- }
- def warn_deprecated():
- warnings.warn(
- "torch._custom_op is deprecated and will be removed in PyTorch 2.6, please "
- "use the equivalent torch.library API instead.",
- DeprecationWarning,
- stacklevel=2,
- )
- def custom_op(
- qualname: str, manual_schema: typing.Optional[str] = None
- ) -> typing.Callable:
- r"""
- This API is deprecated, please use torch.library.custom_op instead
- """
- warn_deprecated()
- def inner(func):
- if not inspect.isfunction(func):
- raise ValueError(
- f"custom_op(...)(func): Expected `func` to be a Python "
- f"function, got: {type(func)}"
- )
- ns, name = parse_qualname(qualname)
- validate_namespace(ns)
- if func.__name__ != name:
- raise ValueError(
- f"custom_op(qualname='{qualname}', ...)(func): expected `func` "
- f"to have name '{name}' but got '{func.__name__}'. "
- f"Please either change the name of `func` or the qualname that "
- f"is passed to `custom_op`"
- )
- schema = (
- infer_schema(func, mutates_args=())
- if manual_schema is None
- else manual_schema
- )
- schema_str = f"{name}{schema}"
- function_schema = FunctionSchema.parse(schema_str)
- validate_schema(function_schema)
- if manual_schema is not None:
- validate_function_matches_schema(function_schema, func)
- lib = library.Library(ns, "FRAGMENT")
- lib.define(schema_str)
- ophandle = find_ophandle_or_throw(ns, function_schema.name)
- result = CustomOp(
- lib, ns, function_schema, name, ophandle, _private_access=True
- )
- result.__name__ = func.__name__ # pyrefly: ignore [bad-assignment]
- result.__module__ = func.__module__
- result.__doc__ = func.__doc__
- library.impl(lib, result._opname, "Autograd")(
- autograd_kernel_indirection(weakref.proxy(result))
- )
- torch._C._dispatch_set_report_error_callback(
- ophandle, functools.partial(report_error_callback, weakref.proxy(result))
- )
- return result
- return inner
- # Global dictionary holding references to all CustomOp objects
- # Yes, it keeps all CustomOps alive (see NOTE [CustomOp lifetime])
- # Used to query the CustomOp associated with a specific C++ dispatcher operator.
- # An example usage is FakeTensor: FakeTensor checks if a specific operator
- # has an implementation registered via the CustomOp API.
- # Indexed by qualname (e.g. aten::foo)
- global_registry: dict[str, "CustomOp"] = {}
- class CustomOp:
- r"""
- This API is deprecated, please use torch.library.custom_op instead
- """
- def __init__(
- self, lib, cpp_ns, schema, operator_name, ophandle, *, _private_access=False
- ):
- super().__init__()
- warn_deprecated()
- if not _private_access:
- raise RuntimeError(
- "The CustomOp constructor is private and we do not guarantee "
- "BC for it. Please use custom_op(...) to create a CustomOp object"
- )
- name = f"{cpp_ns}::{operator_name}"
- self._schema = schema
- self._cpp_ns = cpp_ns
- self._lib: library.Library = lib
- self._ophandle: _C._DispatchOperatorHandle = ophandle
- # Has the name of the op, e.g. "foo". We cache here for convenience.
- self._opname: str = operator_name
- # this is _opname but with namespace. e.g. "custom::foo"
- self._qualname: str = name
- self.__name__ = None # mypy requires this
- # NB: Some of these impls are registered as kernels to DispatchKeys.
- # Modifying the _impls dict directly won't do anything in that case.
- self._impls: dict[str, typing.Optional[FuncAndLocation]] = {}
- # See NOTE [CustomOp autograd kernel indirection]
- self._registered_autograd_kernel_indirection = False
- global_registry[self._qualname] = self
- def _register_autograd_kernel_indirection(self):
- if self._registered_autograd_kernel_indirection:
- raise AssertionError("autograd kernel indirection already registered")
- self._lib.impl(
- self._opname, autograd_kernel_indirection(weakref.proxy(self)), "Autograd"
- )
- self._registered_autograd_kernel_indirection = True
- # Records the impl and the source location in self._impls
- # Note that this doesn't cause torch.library to use the impl, that
- # needs to be done in a separate self._lib.impl call.
- def _register_impl(self, kind, func, stacklevel=2):
- if self._has_impl(kind):
- func_and_location = self._impls[kind]
- if func_and_location is None:
- raise AssertionError("func_and_location is unexpectedly None")
- location = func_and_location.location
- raise RuntimeError(
- f"Attempting to register a {kind} impl for operator {self._qualname} "
- f"that already has a {kind} impl registered from Python at "
- f"{location}. This is not supported."
- )
- frame = inspect.getframeinfo(sys._getframe(stacklevel))
- location = f"{frame.filename}:{frame.lineno}"
- self._impls[kind] = FuncAndLocation(func, location)
- def _get_impl(self, kind):
- return self._impls[kind]
- def _has_impl(self, kind):
- return kind in self._impls
- def _destroy(self):
- # NOTE: [CustomOp lifetime]
- # A CustomOp, once created, lives forever. The mechanism is that the
- # global registry holds a reference to it. However, to make testing
- # easier, we want to be able to destroy CustomOp objects.
- # CustomOp._destroy does the job, though it leaves the CustomOp
- # in a garbage state.
- del self._lib
- opnamespace = getattr(torch.ops, self._cpp_ns)
- if hasattr(opnamespace, self._opname):
- delattr(opnamespace, self._opname)
- del global_registry[self._qualname]
- def __repr__(self):
- return f'<CustomOp(op="{self._qualname}")>'
- def __call__(self, *args, **kwargs):
- # Bypass torch.ops.* and directly do OperatorHandle::callBoxed.
- # Using torch.ops.* is a bit of a pain (it can be slow and it has lifetime
- # issues from caching operators that make testing CustomOp difficult).
- result = _C._dispatch_call_boxed(self._ophandle, *args, **kwargs)
- return result
- def impl(
- self,
- device_types: typing.Union[str, typing.Iterable[str]],
- _stacklevel=2,
- ) -> typing.Callable:
- r"""
- This API is deprecated, please use torch.library.custom_op instead
- """
- if isinstance(device_types, str):
- device_types = [device_types]
- for device_type in device_types:
- validate_device_type(device_type)
- def inner(f):
- for device_type in set(device_types):
- self._check_doesnt_have_library_impl(device_type)
- self._register_impl(device_type, f, stacklevel=_stacklevel)
- dispatch_key = SUPPORTED_DEVICE_TYPE_TO_KEY[device_type]
- library.impl(self._lib, self._opname, dispatch_key)(f)
- return f
- return inner
- def _check_doesnt_have_library_impl(self, device_type):
- if self._has_impl(device_type):
- return
- key = SUPPORTED_DEVICE_TYPE_TO_KEY[device_type]
- if _C._dispatch_has_computed_kernel_for_dispatch_key(self._qualname, key):
- raise RuntimeError(
- f"impl(..., device_types={device_type}): the operator {self._qualname} "
- f"already has an implementation for this device type via a "
- f"pre-existing torch.library or TORCH_LIBRARY registration."
- )
- def impl_factory(self) -> typing.Callable:
- r"""Register an implementation for a factory function."""
- def inner(f):
- self._register_impl("factory", f)
- library.impl(self._lib, self._opname, "BackendSelect")(f)
- return f
- return inner
- def impl_abstract(self, _stacklevel=2) -> typing.Callable:
- r"""
- This API is deprecated, please use torch.library.custom_op instead
- """
- def inner(f):
- self._check_doesnt_have_library_meta_impl()
- self._register_impl("abstract", f, stacklevel=_stacklevel)
- location = self._get_impl("abstract").location
- qualname = self._qualname
- # Handle DispatchKey.Meta registration
- @functools.wraps(f)
- def f_with_ctx(*args, **kwargs):
- def error_on_ctx():
- raise RuntimeError(
- f"Attempted to call get_ctx() for the meta implementation "
- f"for {qualname}."
- f"You have presumably called get_ctx() because the operator "
- f"has a data-dependent output shape; if so, there is no "
- f"such meta implementation and this error is the correct "
- f"behavior. Otherwise, please remove the call to get_ctx() "
- f"in the implementation registered with impl_abstract "
- f"at {location}"
- )
- with torch._library.fake_impl.set_ctx_getter(error_on_ctx):
- return f(*args, **kwargs)
- self._lib.impl(self._opname, f_with_ctx, "Meta")
- return f
- return inner
- def _check_can_register_backward(self):
- def error(detail):
- raise RuntimeError(
- f"Cannot use torch._custom_ops APIs to register backward "
- f"formula for {detail}. Got operator "
- f"{self._qualname} with schema: {schema}"
- )
- schema = self._schema
- if schema.kind() != SchemaKind.functional:
- error("non-functional operator")
- rets = schema.returns
- if not schema.returns:
- error("operator with no returns")
- if len(rets) <= 0:
- raise AssertionError(f"expected at least one return, got {len(rets)}")
- is_non_mutating_view = any(
- r.annotation is not None and not r.annotation.is_write for r in rets
- )
- if is_non_mutating_view:
- error("operator that returns views")
- # We make assumptions about the schema's return types.
- allowed_return_types = {
- BaseType(BaseTy.int): "int",
- BaseType(BaseTy.SymInt): "SymInt",
- BaseType(BaseTy.bool): "bool",
- BaseType(BaseTy.float): "float",
- BaseType(BaseTy.Tensor): "Tensor",
- ListType(BaseType(BaseTy.Tensor), None): "List[Tensor]",
- }
- for ret in schema.returns:
- if ret.type in allowed_return_types:
- continue
- error(
- f"operator with return not in {list(allowed_return_types.values())} (got {ret.type})"
- )
- def _check_doesnt_have_library_autograd_impl(self):
- if self._registered_autograd_kernel_indirection:
- return
- if _C._dispatch_has_kernel_for_dispatch_key(
- self._qualname, "CompositeImplicitAutograd"
- ):
- raise RuntimeError(
- f"impl_backward/impl_save_for_backward: the operator {self._qualname} "
- f"already has an implementation for this device type via a "
- f"pre-existing registration to DispatchKey::CompositeImplicitAutograd."
- f"CompositeImplicitAutograd operators do not need an autograd formula; "
- f"instead, the operator will decompose into its constituents and those "
- f"can have autograd formulas defined on them."
- )
- # We can improve this by adding "all Autograd<BACKEND> keys", but
- # realistically people will just be using this API for CPU/CUDA for now.
- for key in ["Autograd", "AutogradCPU", "AutogradCUDA"]:
- if _C._dispatch_has_kernel_for_dispatch_key(self._qualname, key):
- raise RuntimeError(
- f"impl_backward/impl_save_for_backward: "
- f"the operator {self._qualname} already has an Autograd kernel "
- f"registered to DispatchKey::{key} vi a pre-existing "
- f"torch.library or TORCH_LIBRARY registration. Please either "
- f"remove those registrations or don't use the torch._custom_ops APIs"
- )
- def _check_doesnt_have_library_meta_impl(self):
- if self._has_impl("abstract"):
- return
- # If the user's operator is CompositeExplicitAutograd,
- # allow them to impl_abstract. This is being pragmatic
- # (existing custom ops may have CompositeExplicitAutograd
- # registration that don't work with Meta kernels, so this
- # gives them an escape hatch).
- if _C._dispatch_has_kernel_for_dispatch_key(
- self._qualname, "CompositeExplicitAutograd"
- ) and not _C._dispatch_has_kernel_for_dispatch_key(self._qualname, "Meta"):
- return
- # Otherwise, if the user's already has a Meta kernel or their
- # op is CompositeImplicitAutograd or some other alias dispatch key,
- # raise.
- # Special case for CompositeImplicitAutograd
- if _C._dispatch_has_kernel_for_dispatch_key(
- self._qualname, "CompositeImplicitAutograd"
- ):
- raise RuntimeError(
- f"impl_abstract(...): the operator {self._qualname} "
- f"already has an implementation for this device type via a "
- f"pre-existing registration to DispatchKey::CompositeImplicitAutograd."
- f"CompositeImplicitAutograd operators do not need an abstract impl; "
- f"instead, the operator will decompose into its constituents and those "
- f"can have abstract impls defined on them."
- )
- if _C._dispatch_has_kernel_for_dispatch_key(self._qualname, "Meta"):
- raise RuntimeError(
- f"impl_abstract(...): the operator {self._qualname} "
- f"already has an DispatchKey::Meta implementation via a "
- f"pre-existing torch.library or TORCH_LIBRARY registration. "
- f"Please either remove that registration or don't call impl_abstract."
- )
- # NOTE ["backward", "save_for_backward", and "autograd"]
- # As a part of the explicit autograd API, a user must provide us
- # a "save_for_backward" function and a "backward" function.
- # When both of these have been provided, then we automatically
- # construct the "autograd" kernel.
- def _register_autograd_kernel(self):
- if not self._has_impl("backward"):
- raise AssertionError("backward impl must be registered first")
- if not self._has_impl("save_for_backward"):
- raise AssertionError("save_for_backward impl must be registered first")
- kernel = construct_autograd_kernel(
- self._schema,
- self._output_differentiability,
- self,
- get_op(self._qualname),
- self._get_impl("save_for_backward").func,
- self._get_impl("backward").func,
- )
- self._register_impl("autograd", kernel)
- def impl_save_for_backward(self, _stacklevel=2):
- r"""Register a function that tells us what to save for backward.
- Please see impl_backward for more details.
- """
- def inner(f):
- self._check_can_register_backward()
- self._check_doesnt_have_library_autograd_impl()
- if not self._registered_autograd_kernel_indirection:
- self._register_autograd_kernel_indirection()
- self._register_impl("save_for_backward", f, stacklevel=_stacklevel)
- if self._has_impl("backward"):
- self._register_autograd_kernel()
- return inner
- def impl_backward(self, output_differentiability=None, _stacklevel=2):
- r"""
- This API is deprecated, please use torch.library.custom_op instead
- """
- if output_differentiability is not None:
- def yell():
- raise RuntimeError(
- f"impl_backward(output_differentiability): expected "
- f"output_differentiability to be a list of bools with "
- f"length equal to the number of outputs of this CustomOp "
- f"got: {output_differentiability}"
- )
- if not isinstance(output_differentiability, list):
- yell()
- for diff in output_differentiability:
- if not isinstance(diff, bool):
- yell()
- if len(self._schema.returns) != len(output_differentiability):
- yell()
- def inner(f):
- self._check_can_register_backward()
- self._check_doesnt_have_library_autograd_impl()
- if not self._registered_autograd_kernel_indirection:
- self._register_autograd_kernel_indirection()
- self._register_impl("backward", f, stacklevel=_stacklevel)
- self._output_differentiability = output_differentiability
- if self._has_impl("save_for_backward"):
- self._register_autograd_kernel()
- return inner
- @dataclasses.dataclass
- class FuncAndLocation:
- func: typing.Callable
- location: str
- def find_ophandle_or_throw(cpp_ns: str, operator_name: OperatorName):
- overload_name = (
- "" if operator_name.overload_name is None else operator_name.overload_name
- )
- return _C._dispatch_find_schema_or_throw(
- f"{cpp_ns}::{str(operator_name.name)}", overload_name
- )
- def validate_namespace(ns: str) -> None:
- if "." in ns:
- raise ValueError(
- f'custom_op(..., ns="{ns}"): expected ns to not contain any . (and be a '
- f"valid variable name)"
- )
- if ns in RESERVED_NS:
- raise ValueError(
- f"custom_op(..., ns='{ns}'): '{ns}' is a reserved namespace, "
- f"please choose something else. "
- )
- def validate_schema(schema: FunctionSchema) -> None:
- if not torch._library.utils.is_functional_schema(schema):
- raise ValueError(
- f"custom_op only supports functional operators "
- f"(ops that do not mutate any inputs, do not return "
- f"views of the inputs, and has at least one return). "
- f"Got the following non-functional schema: {schema}"
- )
- # For simplicity: don't allow self arguments
- if schema.arguments.self_arg is not None:
- raise ValueError(
- f"custom_op does not support arguments named 'self'. Please "
- f"rename your argument. Got: {schema}"
- )
- def parse_qualname(qualname: str) -> tuple[str, str]:
- names = qualname.split("::", 1)
- if len(names) != 2:
- raise ValueError(
- f"Expected there to be a namespace in {qualname}, i.e. The "
- f"operator name should look something like ns::foo"
- )
- if "." in names[1]:
- raise ValueError(
- f"The torch.custom_ops APIs do not handle overloads, "
- f"i.e. operator names with '.' in them. "
- f"Please name your operator something like ns::foo. "
- f"Got: {qualname}"
- )
- return names[0], names[1]
- def validate_device_type(device_type: str) -> None:
- if device_type not in SUPPORTED_DEVICE_TYPE_TO_KEY:
- raise ValueError(
- f"CustomOp.impl(device_types=[{device_type}, ...]): we only support device_type "
- f"in {SUPPORTED_DEVICE_TYPE_TO_KEY.keys()}."
- )
- def supported_param(param: inspect.Parameter) -> bool:
- return param.kind in (
- inspect.Parameter.POSITIONAL_OR_KEYWORD,
- inspect.Parameter.KEYWORD_ONLY,
- )
- def validate_function_matches_schema(
- schema: FunctionSchema, func: typing.Callable
- ) -> None:
- sig = inspect.signature(func)
- if not all(supported_param(p) for _, p in sig.parameters.items()):
- raise ValueError(
- f"custom_op(..., manual_schema)(func): positional-only args, "
- f"varargs, and kwargs are not supported. Please rewrite `func` "
- f"to not have them. Got `func` with signature: {sig}"
- )
- if (
- any(
- p.annotation is not inspect.Parameter.empty
- for _, p in sig.parameters.items()
- )
- or sig.return_annotation is not inspect.Signature.empty
- ):
- raise ValueError(
- f"custom_op(..., manual_schema)(func): When passing in a manual "
- f"schema, we expect `func` to have no type annotations to avoid "
- f"ambiguity. Got `func` with signature: {sig}"
- )
- positional = [
- (name, param)
- for name, param in sig.parameters.items()
- if param.kind == inspect.Parameter.POSITIONAL_OR_KEYWORD
- ]
- kwargonly = [
- (name, param)
- for name, param in sig.parameters.items()
- if param.kind == inspect.Parameter.KEYWORD_ONLY
- ]
- def error():
- raise ValueError(
- f"custom_op(..., manual_schema)(func): When passing in a manual "
- f"schema, we expect `func`'s signature to match `manual_schema` "
- f"(aside from type annotations). "
- f"func's signature: {sig}, manual_schema: {schema}"
- )
- def error_default_args():
- raise ValueError(
- f"custom_op(..., manual_schema)(func): "
- f"neither func nor manual_schema should have default "
- f"arguments. Got "
- f"func's signature: {sig}, manual_schema: {schema}"
- )
- def compare(sig_args, schema_args):
- if len(sig_args) != len(schema_args):
- error()
- for (name, param), arg in zip(sig_args, schema_args):
- if name != arg.name:
- error()
- if param.default is not inspect.Parameter.empty or arg.default is not None:
- error_default_args()
- compare(positional, schema.arguments.flat_positional)
- compare(kwargonly, schema.arguments.flat_kwarg_only)
- def report_error_callback(custom_op: typing.Any, key: str) -> None:
- if key == "Undefined":
- raise NotImplementedError(
- f"{custom_op}: There were no Tensor inputs to this operator "
- f"(e.g. you passed an empty list of Tensors). If your operator is a "
- f"factory function (that is, it takes no Tensors and constructs "
- f"a new one), then please use CustomOp.impl_factory to register "
- f"an implementation for it"
- )
- if key == "Meta":
- raise NotImplementedError(
- f"{custom_op}: when running with device='Meta' tensors: there is no "
- f"abstract impl registered for this CustomOp. Please register one via "
- f"CustomOp.impl_abstract to get this CustomOp to work with Meta tensors"
- )
- if key in ("CPU", "CUDA"):
- device = key.lower()
- raise NotImplementedError(
- f"{custom_op}: when running with device='{device}' tensors: there is no "
- f"{device} impl registered for this CustomOp. Please register one via "
- f"CustomOp.impl(device_type='{device}')"
- )
- raise NotImplementedError(
- f"{custom_op}: No implementation for dispatch key {key}. It is likely "
- f"that we have not added this functionality yet, please either open an "
- f"issue or if you're feeling adventurous, use the low-level "
- f"torch.library API"
- )
- def custom_op_from_existing(op):
- ns = op.namespace
- lib = torch.library.Library(ns, "FRAGMENT")
- name = op.name().split("::")[-1]
- schema_str = str(op._schema)
- # CustomOp expects the schema string without the namespace
- schema_str = schema_str.rsplit("::", maxsplit=1)[-1]
- schema = FunctionSchema.parse(schema_str)
- return CustomOp(lib, ns, schema, name, op, _private_access=True)
- def get_op(qualname):
- def error_not_found():
- raise ValueError(
- f"Could not find the operator {qualname}. Please make sure you have "
- f"already registered the operator and (if registered from C++) "
- f"loaded it via torch.ops.load_library."
- )
- ns, name = parse_qualname(qualname)
- if not hasattr(torch.ops, ns):
- error_not_found()
- opnamespace = getattr(torch.ops, ns)
- if not hasattr(opnamespace, name):
- error_not_found()
- packet = getattr(opnamespace, name)
- if not hasattr(packet, "default"):
- error_not_found()
- return packet.default
- def _find_custom_op(qualname, also_check_torch_library=False):
- if qualname in global_registry:
- return global_registry[qualname]
- if not also_check_torch_library:
- raise RuntimeError(
- f'Could not find custom op "{qualname}". Did you register it via '
- f"the torch._custom_ops API?"
- )
- overload = get_op(qualname)
- result = custom_op_from_existing(overload)
- return result
- def get_abstract_impl(qualname):
- if qualname not in torch._custom_op.impl.global_registry:
- return None
- custom_op = torch._custom_op.impl.global_registry[qualname]
- if custom_op is None:
- return None
- if not custom_op._has_impl("abstract"):
- return None
- return custom_op._get_impl("abstract").func
- def _custom_op_with_schema(qualname, schema, needs_fixed_stride_order=True):
- ns, name = qualname.split("::")
- schema_str = f"{name}{schema}"
- function_schema = FunctionSchema.parse(schema_str)
- validate_schema(function_schema)
- tags = [torch._C.Tag.needs_fixed_stride_order] if needs_fixed_stride_order else []
- lib = library.Library(ns, "FRAGMENT")
- lib.define(schema_str, tags=tags)
- ophandle = find_ophandle_or_throw(ns, function_schema.name)
- result = CustomOp(lib, ns, function_schema, name, ophandle, _private_access=True)
- result._register_autograd_kernel_indirection()
- torch._C._dispatch_set_report_error_callback(
- ophandle, functools.partial(report_error_callback, weakref.proxy(result))
- )
- return get_op(qualname)
|