Traktor/myenv/Lib/site-packages/torch/jit/annotations.py

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2024-05-23 01:57:24 +02:00
import ast
import builtins
import dis
import enum
import inspect
import re
import typing
import warnings
from textwrap import dedent
from typing import Type
import torch
from torch._C import (
_GeneratorType,
AnyType,
AwaitType,
BoolType,
ComplexType,
DeviceObjType,
DictType,
EnumType,
FloatType,
FutureType,
InterfaceType,
IntType,
ListType,
NoneType,
NumberType,
OptionalType,
StreamObjType,
StringType,
TensorType,
TupleType,
UnionType,
)
from torch._sources import get_source_lines_and_file
from .._jit_internal import ( # type: ignore[attr-defined]
_Await,
_qualified_name,
Any,
BroadcastingList1,
BroadcastingList2,
BroadcastingList3,
Dict,
Future,
is_await,
is_dict,
is_future,
is_ignored_fn,
is_list,
is_optional,
is_tuple,
is_union,
List,
Optional,
Tuple,
Union,
)
from ._state import _get_script_class
if torch.distributed.rpc.is_available():
from torch._C import RRefType
from .._jit_internal import is_rref, RRef
from torch._ops import OpOverloadPacket
class Module:
def __init__(self, name, members):
self.name = name
self.members = members
def __getattr__(self, name):
try:
return self.members[name]
except KeyError:
raise RuntimeError(
f"Module {self.name} has no member called {name}"
) from None
class EvalEnv:
env = {
"torch": Module("torch", {"Tensor": torch.Tensor}),
"Tensor": torch.Tensor,
"typing": Module("typing", {"Tuple": Tuple}),
"Tuple": Tuple,
"List": List,
"Dict": Dict,
"Optional": Optional,
"Union": Union,
"Future": Future,
"Await": _Await,
}
def __init__(self, rcb):
self.rcb = rcb
if torch.distributed.rpc.is_available():
self.env["RRef"] = RRef
def __getitem__(self, name):
if name in self.env:
return self.env[name]
if self.rcb is not None:
return self.rcb(name)
return getattr(builtins, name, None)
def get_signature(fn, rcb, loc, is_method):
if isinstance(fn, OpOverloadPacket):
signature = try_real_annotations(fn.op, loc)
else:
signature = try_real_annotations(fn, loc)
if signature is not None and is_method:
# If this is a method, then the signature will include a type for
# `self`, but type comments do not contain a `self`. So strip it
# away here so everything is consistent (`inspect.ismethod` does
# not work here since `fn` is unbound at this point)
param_types, return_type = signature
param_types = param_types[1:]
signature = (param_types, return_type)
if signature is None:
type_line, source = None, None
try:
source = dedent("".join(get_source_lines_and_file(fn)[0]))
type_line = get_type_line(source)
except TypeError:
pass
# This might happen both because we failed to get the source of fn, or
# because it didn't have any annotations.
if type_line is not None:
signature = parse_type_line(type_line, rcb, loc)
return signature
def is_function_or_method(the_callable):
# A stricter version of `inspect.isroutine` that does not pass for built-in
# functions
return inspect.isfunction(the_callable) or inspect.ismethod(the_callable)
def is_vararg(the_callable):
if not is_function_or_method(the_callable) and callable(the_callable): # noqa: B004
# If `the_callable` is a class, de-sugar the call so we can still get
# the signature
the_callable = the_callable.__call__
if is_function_or_method(the_callable):
return inspect.getfullargspec(the_callable).varargs is not None
else:
return False
def get_param_names(fn, n_args):
if isinstance(fn, OpOverloadPacket):
fn = fn.op
if (
not is_function_or_method(fn)
and callable(fn)
and is_function_or_method(fn.__call__)
): # noqa: B004
# De-sugar calls to classes
fn = fn.__call__
if is_function_or_method(fn):
if is_ignored_fn(fn):
fn = inspect.unwrap(fn)
return inspect.getfullargspec(fn).args
else:
# The `fn` was not a method or function (maybe a class with a __call__
# method, so use a default param name list)
return [str(i) for i in range(n_args)]
def check_fn(fn, loc):
# Make sure the function definition is not a class instantiation
try:
source = dedent("".join(get_source_lines_and_file(fn)[0]))
except (OSError, TypeError):
return
if source is None:
return
py_ast = ast.parse(source)
if len(py_ast.body) == 1 and isinstance(py_ast.body[0], ast.ClassDef):
raise torch.jit.frontend.FrontendError(
loc,
f"Cannot instantiate class '{py_ast.body[0].name}' in a script function",
)
if len(py_ast.body) != 1 or not isinstance(py_ast.body[0], ast.FunctionDef):
raise torch.jit.frontend.FrontendError(
loc, "Expected a single top-level function"
)
def _eval_no_call(stmt, glob, loc):
"""Evaluate statement as long as it does not contain any method/function calls."""
bytecode = compile(stmt, "", mode="eval")
for insn in dis.get_instructions(bytecode):
if "CALL" in insn.opname:
raise RuntimeError(
f"Type annotation should not contain calls, but '{stmt}' does"
)
return eval(bytecode, glob, loc) # type: ignore[arg-type] # noqa: P204
def parse_type_line(type_line, rcb, loc):
"""Parse a type annotation specified as a comment.
Example inputs:
# type: (Tensor, torch.Tensor) -> Tuple[Tensor]
# type: (Tensor, Tuple[Tensor, Tensor]) -> Tensor
"""
arg_ann_str, ret_ann_str = split_type_line(type_line)
try:
arg_ann = _eval_no_call(arg_ann_str, {}, EvalEnv(rcb))
except (NameError, SyntaxError) as e:
raise RuntimeError(
"Failed to parse the argument list of a type annotation"
) from e
if not isinstance(arg_ann, tuple):
arg_ann = (arg_ann,)
try:
ret_ann = _eval_no_call(ret_ann_str, {}, EvalEnv(rcb))
except (NameError, SyntaxError) as e:
raise RuntimeError(
"Failed to parse the return type of a type annotation"
) from e
arg_types = [ann_to_type(ann, loc) for ann in arg_ann]
return arg_types, ann_to_type(ret_ann, loc)
def get_type_line(source):
"""Try to find the line containing a comment with the type annotation."""
type_comment = "# type:"
lines = source.split("\n")
lines = list(enumerate(lines))
type_lines = list(filter(lambda line: type_comment in line[1], lines))
# `type: ignore` comments may be needed in JIT'ed functions for mypy, due
# to the hack in torch/_VF.py.
# An ignore type comment can be of following format:
# 1) type: ignore
# 2) type: ignore[rule-code]
# This ignore statement must be at the end of the line
# adding an extra backslash before the space, to avoid triggering
# one of the checks in .github/workflows/lint.yml
type_pattern = re.compile("# type:\\ ignore(\\[[a-zA-Z-]+\\])?$")
type_lines = list(filter(lambda line: not type_pattern.search(line[1]), type_lines))
if len(type_lines) == 0:
# Catch common typo patterns like extra spaces, typo in 'ignore', etc.
wrong_type_pattern = re.compile("#[\t ]*type[\t ]*(?!: ignore(\\[.*\\])?$):")
wrong_type_lines = list(
filter(lambda line: wrong_type_pattern.search(line[1]), lines)
)
if len(wrong_type_lines) > 0:
raise RuntimeError(
"The annotation prefix in line "
+ str(wrong_type_lines[0][0])
+ " is probably invalid.\nIt must be '# type:'"
+ "\nSee PEP 484 (https://www.python.org/dev/peps/pep-0484/#suggested-syntax-for-python-2-7-and-straddling-code)" # noqa: B950
+ "\nfor examples"
)
return None
elif len(type_lines) == 1:
# Only 1 type line, quit now
return type_lines[0][1].strip()
# Parse split up argument types according to PEP 484
# https://www.python.org/dev/peps/pep-0484/#suggested-syntax-for-python-2-7-and-straddling-code
return_line = None
parameter_type_lines = []
for line_num, line in type_lines:
if "# type: (...) -> " in line:
return_line = (line_num, line)
break
elif type_comment in line:
parameter_type_lines.append(line)
if return_line is None:
raise RuntimeError(
"Return type line '# type: (...) -> ...' not found on multiline "
"type annotation\nfor type lines:\n"
+ "\n".join([line[1] for line in type_lines])
+ "\n(See PEP 484 https://www.python.org/dev/peps/pep-0484/#suggested-syntax-for-python-2-7-and-straddling-code)"
)
def get_parameter_type(line):
item_type = line[line.find(type_comment) + len(type_comment) :]
return item_type.strip()
types = map(get_parameter_type, parameter_type_lines)
parameter_types = ", ".join(types)
return return_line[1].replace("...", parameter_types)
def split_type_line(type_line):
"""Split the comment with the type annotation into parts for argument and return types.
For example, for an input of:
# type: (Tensor, torch.Tensor) -> Tuple[Tensor, Tensor]
This function will return:
("(Tensor, torch.Tensor)", "Tuple[Tensor, Tensor]")
"""
start_offset = len("# type:")
try:
arrow_pos = type_line.index("->")
except ValueError:
raise RuntimeError(
"Syntax error in type annotation (cound't find `->`)"
) from None
return type_line[start_offset:arrow_pos].strip(), type_line[arrow_pos + 2 :].strip()
def try_real_annotations(fn, loc):
"""Try to use the Py3.5+ annotation syntax to get the type."""
try:
# Note: anything annotated as `Optional[T]` will automatically
# be returned as `Union[T, None]` per
# https://github.com/python/typing/blob/master/src/typing.py#L850
sig = inspect.signature(fn)
except ValueError:
return None
all_annots = [sig.return_annotation] + [
p.annotation for p in sig.parameters.values()
]
if all(ann is sig.empty for ann in all_annots):
return None
arg_types = [ann_to_type(p.annotation, loc) for p in sig.parameters.values()]
return_type = ann_to_type(sig.return_annotation, loc)
return arg_types, return_type
# Finds common type for enum values belonging to an Enum class. If not all
# values have the same type, AnyType is returned.
def get_enum_value_type(e: Type[enum.Enum], loc):
enum_values: List[enum.Enum] = list(e)
if not enum_values:
raise ValueError(f"No enum values defined for: '{e.__class__}'")
types = {type(v.value) for v in enum_values}
ir_types = [try_ann_to_type(t, loc) for t in types]
# If Enum values are of different types, an exception will be raised here.
# Even though Python supports this case, we chose to not implement it to
# avoid overcomplicate logic here for a rare use case. Please report a
# feature request if you find it necessary.
res = torch._C.unify_type_list(ir_types)
if not res:
return AnyType.get()
return res
def is_tensor(ann):
if issubclass(ann, torch.Tensor):
return True
if issubclass(
ann,
(
torch.LongTensor,
torch.DoubleTensor,
torch.FloatTensor,
torch.IntTensor,
torch.ShortTensor,
torch.HalfTensor,
torch.CharTensor,
torch.ByteTensor,
torch.BoolTensor,
),
):
warnings.warn(
"TorchScript will treat type annotations of Tensor "
"dtype-specific subtypes as if they are normal Tensors. "
"dtype constraints are not enforced in compilation either."
)
return True
return False
def _fake_rcb(inp):
return None
def try_ann_to_type(ann, loc, rcb=None):
ann_args = typing.get_args(ann) # always returns a tuple!
if ann is inspect.Signature.empty:
return TensorType.getInferred()
if ann is None:
return NoneType.get()
if inspect.isclass(ann) and is_tensor(ann):
return TensorType.get()
if is_tuple(ann):
# Special case for the empty Tuple type annotation `Tuple[()]`
if len(ann_args) == 1 and ann_args[0] == ():
return TupleType([])
return TupleType([try_ann_to_type(a, loc) for a in ann_args])
if is_list(ann):
elem_type = try_ann_to_type(ann_args[0], loc)
if elem_type:
return ListType(elem_type)
if is_dict(ann):
key = try_ann_to_type(ann_args[0], loc)
value = try_ann_to_type(ann_args[1], loc)
# Raise error if key or value is None
if key is None:
raise ValueError(
f"Unknown type annotation: '{ann_args[0]}' at {loc.highlight()}"
)
if value is None:
raise ValueError(
f"Unknown type annotation: '{ann_args[1]}' at {loc.highlight()}"
)
return DictType(key, value)
if is_optional(ann):
if issubclass(ann_args[1], type(None)):
contained = ann_args[0]
else:
contained = ann_args[1]
valid_type = try_ann_to_type(contained, loc)
msg = "Unsupported annotation {} could not be resolved because {} could not be resolved. At\n{}"
assert valid_type, msg.format(repr(ann), repr(contained), repr(loc))
return OptionalType(valid_type)
if is_union(ann):
# TODO: this is hack to recognize NumberType
if set(ann_args) == {int, float, complex}:
return NumberType.get()
inner: List = []
# We need these extra checks because both `None` and invalid
# values will return `None`
# TODO: Determine if the other cases need to be fixed as well
for a in typing.get_args(ann):
if a is None:
inner.append(NoneType.get())
maybe_type = try_ann_to_type(a, loc)
msg = "Unsupported annotation {} could not be resolved because {} could not be resolved. At\n{}"
assert maybe_type, msg.format(repr(ann), repr(maybe_type), repr(loc))
inner.append(maybe_type)
return UnionType(inner) # type: ignore[arg-type]
if torch.distributed.rpc.is_available() and is_rref(ann):
return RRefType(try_ann_to_type(ann_args[0], loc))
if is_future(ann):
return FutureType(try_ann_to_type(ann_args[0], loc))
if is_await(ann):
elementType = try_ann_to_type(ann_args[0], loc) if ann_args else AnyType.get()
return AwaitType(elementType)
if ann is float:
return FloatType.get()
if ann is complex:
return ComplexType.get()
if ann is int or ann is torch.SymInt:
return IntType.get()
if ann is str:
return StringType.get()
if ann is bool:
return BoolType.get()
if ann is Any:
return AnyType.get()
if ann is type(None):
return NoneType.get()
if inspect.isclass(ann) and hasattr(ann, "__torch_script_interface__"):
return InterfaceType(ann.__torch_script_interface__)
if ann is torch.device:
return DeviceObjType.get()
if ann is torch.Generator:
return _GeneratorType.get()
if ann is torch.Stream:
return StreamObjType.get()
if ann is torch.dtype:
return IntType.get() # dtype not yet bound in as its own type
if inspect.isclass(ann) and issubclass(ann, enum.Enum):
if _get_script_class(ann) is None:
scripted_class = torch.jit._script._recursive_compile_class(ann, loc)
name = scripted_class.qualified_name()
else:
name = _qualified_name(ann)
return EnumType(name, get_enum_value_type(ann, loc), list(ann))
if inspect.isclass(ann):
maybe_script_class = _get_script_class(ann)
if maybe_script_class is not None:
return maybe_script_class
if torch._jit_internal.can_compile_class(ann):
return torch.jit._script._recursive_compile_class(ann, loc)
# Maybe resolve a NamedTuple to a Tuple Type
if rcb is None:
rcb = _fake_rcb
return torch._C._resolve_type_from_object(ann, loc, rcb)
def ann_to_type(ann, loc, rcb=None):
the_type = try_ann_to_type(ann, loc, rcb)
if the_type is not None:
return the_type
raise ValueError(f"Unknown type annotation: '{ann}' at {loc.highlight()}")
__all__ = [
"Any",
"List",
"BroadcastingList1",
"BroadcastingList2",
"BroadcastingList3",
"Tuple",
"is_tuple",
"is_list",
"Dict",
"is_dict",
"is_optional",
"is_union",
"TensorType",
"TupleType",
"FloatType",
"ComplexType",
"IntType",
"ListType",
"StringType",
"DictType",
"AnyType",
"Module",
# TODO: Consider not exporting these during wildcard import (reserve
# that for the types; for idiomatic typing code.)
"get_signature",
"check_fn",
"get_param_names",
"parse_type_line",
"get_type_line",
"split_type_line",
"try_real_annotations",
"try_ann_to_type",
"ann_to_type",
]