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[Python-Dev] Postponed annotations break inspection of dataclasses

The new postponed annotations have an unexpected interaction with
dataclasses. Namely, you cannot get the type hints of any of the data
classes methods.

For example, I have some code that inspects the type parameters of a
class's `__init__` method. (The real use case is to provide a default
serializer for the class, but that is not important here.)

from dataclasses import dataclass
from typing import get_type_hints

class Foo:

class Bar:
    foo: Foo


In Python 3.6 and 3.7, this does what is expected; it prints `{'foo':
<class '__main__.Foo'>, 'return': <class 'NoneType'>}`.

However, if in Python 3.7, I add `from __future__ import annotations`, then
this fails with an error:

NameError: name 'Foo' is not defined

I know why this is happening. The `__init__` method is defined in the
`dataclasses` module which does not have the `Foo` object in its
environment, and the `Foo` annotation is being passed to `dataclass` and
attached to `__init__` as the string `"Foo"` rather than as the original
object `Foo`, but `get_type_hints` for the new annotations only does a name
lookup in the module where `__init__` is defined not where the annotation
is defined.

I know that the use of lambdas to implement PEP 563 was rejected for
performance reasons. I could be wrong, but I think this was motivated by
variable annotations because the lambda would have to be constructed each
time the function body ran. I was wondering if I could motivate storing the
annotations as lambdas in class bodies and function signatures, in which
the environment is already being captured and is code that usually only
runs once.
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