mirror of
https://github.com/zebrajr/pytorch.git
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Summary: Previously to get a list of parameters this code was just putting them in the reverse order in which they were defined, which is not always right. This PR allows parameter lists to define the order themselves. To do this parameter lists need to have a corresponding function that provides the names of the parameters. Pull Request resolved: https://github.com/pytorch/pytorch/pull/18198 Differential Revision: D14966270 Pulled By: driazati fbshipit-source-id: 59331aa59408660069785906304b2088c19534b2
259 lines
7.5 KiB
Python
259 lines
7.5 KiB
Python
"""
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The weak_script annotation needs to be here instead of inside torch/jit/ so it
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can be used in other places in torch/ (namely torch.nn) without running into
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circular dependency problems
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"""
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import weakref
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import inspect
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from torch._six import builtins
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# Tracks standalone weak script functions
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compiled_weak_fns = weakref.WeakKeyDictionary() # noqa: T484
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# Tracks which methods should be converted to strong methods
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weak_script_methods = weakref.WeakKeyDictionary() # noqa: T484
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# Converted modules and their corresponding WeakScriptModuleProxy objects
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weak_modules = weakref.WeakKeyDictionary() # noqa: T484
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# Types that have been declared as weak modules
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weak_types = weakref.WeakKeyDictionary() # noqa: T484
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# Wrapper functions that can call either of 2 functions depending on a boolean
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# argument
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boolean_dispatched = weakref.WeakKeyDictionary() # noqa: T484
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# Python Op functions that should be ignored by the compiler. These will be replaced
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# with an operator that always throws an error
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ignored_fns = weakref.WeakSet() # noqa: T484
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COMPILATION_PENDING = object()
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COMPILED = object()
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def createResolutionCallback(frames_up=0):
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"""
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Creates a function which, given a string variable name,
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returns the value of the variable in the scope of the caller of
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the function which called createResolutionCallback (by default).
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This is used to enable access in-scope Python variables inside
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TorchScript fragments.
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frames_up is number of additional frames to go up on the stack.
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The default value is 0, which correspond to the frame of the caller
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of createResolutionCallback. Also for example, if frames_up is set
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to 1, then the frame of the caller's caller of createResolutionCallback
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will be taken.
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For example, the following program prints 2::
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def bar():
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cb = createResolutionCallback(1)
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print(cb("foo"))
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def baz():
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foo = 2
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bar()
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baz()
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"""
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frame = inspect.currentframe()
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i = 0
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while i < frames_up + 1:
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frame = frame.f_back
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i += 1
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f_locals = frame.f_locals
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f_globals = frame.f_globals
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def env(key):
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if key in f_locals:
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return f_locals[key]
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elif key in f_globals:
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return f_globals[key]
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elif hasattr(builtins, key):
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return getattr(builtins, key)
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else:
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return None
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return env
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def weak_script(fn, _frames_up=0):
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"""
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Marks a function as a weak script function. When used in a script function
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or ScriptModule, the weak script function will be lazily compiled and
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inlined in the graph. When not used in a script function, the weak script
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annotation has no effect.
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"""
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compiled_weak_fns[fn] = {
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"status": COMPILATION_PENDING,
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"compiled_fn": None,
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"rcb": createResolutionCallback(_frames_up + 1)
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}
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return fn
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def weak_module(cls):
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weak_types[cls] = {
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"method_stubs": None
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}
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return cls
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def weak_script_method(fn):
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weak_script_methods[fn] = {
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"rcb": createResolutionCallback(frames_up=2),
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"original_method": fn
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}
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return fn
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def boolean_dispatch(arg_name, arg_index, default, if_true, if_false, module_name, func_name):
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"""
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Dispatches to either of 2 weak script functions based on a boolean argument.
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In TorchScript, the boolean argument must be constant so that the correct
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function to use can be determined at compile time.
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"""
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if compiled_weak_fns.get(if_true) is None or compiled_weak_fns.get(if_false) is None:
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raise RuntimeError("both functions must be weak script")
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def fn(*args, **kwargs):
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dispatch_flag = False
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if arg_name in kwargs:
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dispatch_flag = kwargs[arg_name]
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elif arg_index < len(args):
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dispatch_flag = args[arg_index]
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if dispatch_flag:
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return if_true(*args, **kwargs)
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else:
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return if_false(*args, **kwargs)
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if if_true.__doc__ is None and if_false.__doc__ is not None:
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doc = if_false.__doc__
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if_true.__doc__ = doc
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elif if_false.__doc__ is None and if_true.__doc__ is not None:
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doc = if_true.__doc__
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if_false.__doc__ = doc
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elif if_false.__doc__ is None and if_true.__doc__ is None:
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# neither function has a docstring
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doc = None
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else:
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raise RuntimeError("only one function can have a docstring")
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fn.__doc__ = doc
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if module_name is not None:
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fn.__module__ = module_name
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if func_name is not None:
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fn.__name__ = func_name
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boolean_dispatched[fn] = {
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"if_true": if_true,
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"if_false": if_false,
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"index": arg_index,
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"default": default,
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"arg_name": arg_name
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}
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return fn
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def ignore(fn):
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ignored_fns.add(fn)
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return fn
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def _parameter_list(parameter_names_fn):
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"""
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Decorator to denote that a function returns a list of all the parameters
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in a module
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"""
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def decorator(fn):
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fn._parameter_names_fn = parameter_names_fn
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return fn
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return decorator
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try:
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import typing
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from typing import Tuple, List, Dict
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def is_tuple(ann):
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# For some reason Python 3.7 violates the Type[A, B].__origin__ == Type rule
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return ann.__module__ == 'typing' and \
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(getattr(ann, '__origin__', None) is typing.Tuple or
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getattr(ann, '__origin__', None) is tuple)
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def is_list(ann):
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return ann.__module__ == 'typing' and \
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(getattr(ann, '__origin__', None) is typing.List or
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getattr(ann, '__origin__', None) is list)
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def is_dict(ann):
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return ann.__module__ == 'typing' and \
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(getattr(ann, '__origin__', None) is typing.Dict or
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getattr(ann, '__origin__', None) is dict)
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except ImportError:
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# A minimal polyfill for versions of Python that don't have typing.
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# Note that this means that they also don't support the fancy annotation syntax, so
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# those instances will only be used in our tiny `type: ` comment interpreter.
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# The __getitem__ in typing is implemented using metaclasses, but I'm too lazy for that.
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class TupleCls(object):
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def __getitem__(self, types):
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return TupleInstance(types)
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class TupleInstance(object):
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__slots__ = ['__args__']
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def __init__(self, types):
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self.__args__ = types
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class ListInstance(object):
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__slots__ = ['__args__']
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def __init__(self, types):
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self.__args__ = types
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class ListCls(object):
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def __getitem__(self, types):
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return TupleInstance(types)
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class DictInstance(object):
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__slots__ = ['__args__']
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def __init__(self, types):
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self.__args__ = types
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class DictCls(object):
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def __getitem__(self, types):
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return DictInstance(types)
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Tuple = TupleCls() # noqa: T484
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List = ListCls() # noqa: T484
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Dict = DictCls() # noqa: T484
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def is_tuple(ann):
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return isinstance(ann, TupleInstance)
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def is_list(ann):
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return isinstance(ann, ListInstance)
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def is_dict(ann):
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return isinstance(ann, DictInstance)
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# allows BroadcastingList instance to be subscriptable
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class BroadcastingListCls(object):
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def __getitem__(self, types):
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return
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# mypy doesn't support parameters on types, so we have to explicitly type each
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# list size
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BroadcastingList1 = BroadcastingListCls()
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for i in range(2, 7):
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globals()["BroadcastingList{}".format(i)] = BroadcastingList1
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