mirror of https://github.com/zulip/zulip.git
518 lines
19 KiB
Markdown
518 lines
19 KiB
Markdown
# Python static type checker (mypy)
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[mypy](http://mypy-lang.org/) is a compile-time static type checker
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for Python, allowing optional, gradual typing of Python code. Zulip
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was fully annotated with mypy's Python 2 syntax in 2016, before our
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migration to Python 3 in late 2017. In 2018 and 2020, we migrated
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essentially the entire codebase to the nice PEP 484 (Python 3 only)
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and PEP 526 (Python 3.6) syntax for static types:
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```python
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user_dict: Dict[str, UserProfile] = {}
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def get_user(email: str, realm: Realm) -> UserProfile:
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... # Actual code of the function here
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```
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You can learn more about it at:
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- The
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[mypy cheat sheet for Python 3](https://mypy.readthedocs.io/en/latest/cheat_sheet_py3.html)
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is the best resource for quickly understanding how to write the PEP
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484 type annotations used by mypy correctly. The
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[Python 2 cheat sheet](https://mypy.readthedocs.io/en/latest/cheat_sheet.html)
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is useful for understanding the type comment syntax needed for our
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few modules that need to support both Python 2 and 3.
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- The
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[Python type annotation spec in PEP 484](https://www.python.org/dev/peps/pep-0484/).
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- Our [blog post on being an early adopter of mypy][mypy-blog-post] from 2016.
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- Our [best practices](#best-practices) section below.
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The mypy type checker is run automatically as part of Zulip's Travis
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CI testing process in the `backend` build.
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[mypy-blog-post]: https://blog.zulip.org/2016/10/13/static-types-in-python-oh-mypy/
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## Installing mypy
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mypy is installed by default in the Zulip development environment. If
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you'd like to install just the version of `mypy` that we're using
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(useful if e.g. you want `mypy` installed on your laptop outside the
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Vagrant guest), you can do that with
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`pip install -r requirements/mypy.txt`.
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## Running mypy on Zulip's code locally
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To run mypy on Zulip's python code, you can run the command:
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```bash
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tools/run-mypy
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```
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Mypy outputs errors in the same style as a compiler would. For
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example, if your code has a type error like this:
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```python
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foo = 1
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foo = '1'
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```
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you'll get an error like this:
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```console
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test.py: note: In function "test":
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test.py:200: error: Incompatible types in assignment (expression has type "str", variable has type "int")
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```
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## Mypy is there to find bugs in Zulip before they impact users
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For the purposes of Zulip development, you can treat `mypy` like a
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much more powerful linter that can catch a wide range of bugs. If,
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after running `tools/run-mypy` on your Zulip branch, you get mypy
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errors, it's important to get to the bottom of the issue, not just do
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something quick to silence the warnings, before we merge the changes.
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Possible explanations include:
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- A bug in any new type annotations you added.
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- A bug in the existing type annotations.
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- A bug in Zulip!
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- Some Zulip code is correct but confusingly reuses variables with
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different types.
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- A bug in mypy (though this is increasingly rare as mypy is now
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fairly mature as a project).
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Each explanation has its own solution, but in every case the result
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should be solving the mypy warning in a way that makes the Zulip
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codebase better. If you're having trouble, silence the warning with
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an `Any` or `# type: ignore[code]` so you're not blocked waiting for help,
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add a `# TODO: ` comment so it doesn't get forgotten in code review,
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and ask for help in chat.zulip.org.
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## Mypy stubs for third-party modules
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For the Python standard library and some popular third-party modules,
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the [typeshed project](https://github.com/python/typeshed) has
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[stubs](https://github.com/python/mypy/wiki/Creating-Stubs-For-Python-Modules),
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basically the equivalent of C header files defining the types used in
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these Python APIs.
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For other third-party modules that we call from Zulip, one either
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needs to add an `ignore_missing_imports` entry in `pyproject.toml` in the
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root of the project, letting `mypy` know that it's third-party code,
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or add type stubs to the `stubs/` directory, which has type stubs that
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mypy can use to type-check calls into that third-party module.
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It's easy to add new stubs! Just read the docs, look at some of
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existing examples to see how they work, and remember to remove the
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`ignore_missing_imports` entry in `pyproject.toml` when you add them.
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For any third-party modules that don't have stubs, `mypy` treats
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everything in the third-party module as an `Any`, which is the right
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model (one certainly wouldn't want to need stubs for everything just
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to use `mypy`!), but means the code can't be fully type-checked.
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## `type_debug.py`
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`zerver/lib/type_debug.py` has a useful decorator `print_types`. It
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prints the types of the parameters of the decorated function and the
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return type whenever that function is called. This can help find out
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what parameter types a function is supposed to accept, or if
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parameters with the wrong types are being passed to a function.
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Here is an example using the interactive console:
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```pycon
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>>> from zerver.lib.type_debug import print_types
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>>>
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>>> @print_types
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... def func(x, y):
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... return x + y
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...
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>>> func(1.0, 2)
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func(float, int) -> float
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3.0
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>>> func('a', 'b')
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func(str, str) -> str
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'ab'
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>>> func((1, 2), (3,))
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func((int, int), (int,)) -> (int, int, int)
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(1, 2, 3)
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>>> func([1, 2, 3], [4, 5, 6, 7])
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func([int, ...], [int, ...]) -> [int, ...]
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[1, 2, 3, 4, 5, 6, 7]
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```
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`print_all` prints the type of the first item of lists. So `[int, ...]` represents
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a list whose first element's type is `int`. Types of all items are not printed
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because a list can have many elements, which would make the output too large.
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Similarly in dicts, one key's type and the corresponding value's type are printed.
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So `{1: 'a', 2: 'b', 3: 'c'}` will be printed as `{int: str, ...}`.
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## Using @overload to accurately describe variations
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Sometimes, a function's type is most precisely expressed as a few
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possibilities, and which possibility can be determined by looking at
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the arguments. You can express that idea in a way mypy understands
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using `@overload`. For example, `check_list` returns a `Validator`
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function that verifies that an object is a list, raising an exception
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if it isn't.
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It supports being passed a `sub_validator`, which will verify that
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each element in the list has a given type as well. One can express
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the idea "If `sub_validator` validates that something is a `ResultT`,
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`check_list(sub_validator)` validators that something is a
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`List[ResultT]` as follows:
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```python
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@overload
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def check_list(sub_validator: None, length: Optional[int]=None) -> Validator[List[object]]:
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...
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@overload
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def check_list(sub_validator: Validator[ResultT],
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length: Optional[int]=None) -> Validator[List[ResultT]]:
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...
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def check_list(sub_validator: Optional[Validator[ResultT]]=None,
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length: Optional[int]=None) -> Validator[List[ResultT]]:
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```
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The first overload expresses the types for the case where no
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`sub_validator` is passed, in which case all we know is that it
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returns a `Validator[List[object]]`; whereas the second defines the
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type logic for the case where we are passed a `sub_validator`.
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**Warning:** Mypy only checks the body of an overloaded function
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against the final signature and not against the more restrictive
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`@overload` signatures. This allows some type errors to evade
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detection by mypy:
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```python
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@overload
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def f(x: int) -> int: ...
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@overload
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def f(x: str) -> int: ... # oops
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def f(x: Union[int, str]) -> Union[int, str]:
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return x
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x: int = f("three!!")
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```
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Due to this potential for unsafety, we discourage overloading unless
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it's absolutely necessary. Consider writing multiple functions with
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different names instead.
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See the [mypy overloading documentation][mypy-overloads] for more details.
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[mypy-overloads]: https://mypy.readthedocs.io/en/stable/more_types.html#function-overloading
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## Best practices
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### When is a type annotation justified?
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Usually in fully typed code, mypy will protect you from writing a type
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annotation that isn't justified by the surrounding code. But when you
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need to write annotations at the border between untyped and typed
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code, keep in mind that **a type annotation should always represent a
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guarantee,** not an aspiration. If you have validated that some value
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is an `int`, it can go in an `int` annotated variable. If you are
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going to validate it later, it should not. When in doubt, an `object`
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annotation is always safe.
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Mypy understands many Python constructs like `assert`, `if`,
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`isinstance`, and logical operators, and uses them to automatically
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narrow the type of validated objects in many cases.
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```python
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def f(x: object, y: Optional[str]) -> None:
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if isinstance(x, int):
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# Within this if block, mypy infers that x: int
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print(x + 1)
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assert y is not None
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# After that assert statement, mypy infers that y: str
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print(y.strip())
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```
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It won't be able do this narrowing if the validation is hidden behind
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a function call, so sometimes it's helpful for a validation function
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to return the type-narrowed value back to the caller even though the
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caller already has it. (The validators in `zerver/lib/validator.py`
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are examples of this pattern.)
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### Avoid the `Any` type
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Mypy provides the [`Any`
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type](https://mypy.readthedocs.io/en/stable/dynamic_typing.html) for
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interoperability with untyped code, but it is completely unchecked.
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You can put an value of an arbitrary type into an expression of type
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`Any`, and get an value of an arbitrary type out, and mypy will make
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no effort to check that the input and output types match. So using
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`Any` defeats the type safety that mypy would otherwise provide.
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```python
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x: Any = 5
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y: str = x # oops
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print(y.strip()) # runtime error
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```
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If you think you need to use `Any`, consider the following safer
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alternatives first:
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- To annotate a dictionary where different keys correspond to values
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of different types, instead of writing `Dict[str, Any]`, try
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declaring a
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[**`dataclass`**](https://mypy.readthedocs.io/en/stable/additional_features.html#dataclasses)
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or a
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[**`TypedDict`**](https://mypy.readthedocs.io/en/stable/more_types.html#typeddict).
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- If you're annotating a class or function that might be used with
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different data types at different call sites, similar to the builtin
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`List` type or the `sorted` function, [**generic
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types**](https://mypy.readthedocs.io/en/stable/generics.html) with
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`TypeVar` might be what you need.
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- If you need to accept data of several specific possible types at a
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single site, you may want a [**`Union`
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type**](https://mypy.readthedocs.io/en/stable/kinds_of_types.html#union-types).
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`Union` is checked: before using `value: Union[str, int]` as a
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`str`, mypy requires that you validate it with an
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`instance(value, str)` test.
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- If you really have no information about the type of a value, use the
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**`object` type**. Since every type is a subtype of `object`, you
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can correctly annotate any value as `object`. The [difference
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between `Any` and
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`object`](https://mypy.readthedocs.io/en/stable/dynamic_typing.html#any-vs-object)
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is that mypy will check that you safely validate an `object` with
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`isinstance` before using it in a way that expects a more specific
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type.
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- A common way for `Any` annotations to sneak into your code is the
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interaction with untyped third-party libraries. Mypy treats any
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value imported from an untyped library as annotated with `Any`, and
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treats any type imported from an untyped library as equivalent to
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`Any`. Consider providing real type annotations for the library by
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[**writing a stub file**](#mypy-stubs-for-third-party-modules).
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### Avoid `cast()`
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The [`cast`
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function](https://mypy.readthedocs.io/en/stable/type_narrowing.html#casts) lets you
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provide an annotation that Mypy will not verify. Obviously, this is
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completely unsafe in general.
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```python
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x = cast(str, 5) # oops
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print(x.strip()) # runtime error
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```
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Instead of using `cast`:
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- You can use a [variable
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annotation](https://mypy.readthedocs.io/en/stable/type_inference_and_annotations.html#explicit-types-for-variables)
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to be explicit or to disambiguate types that mypy can check but
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cannot infer.
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```python
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l: List[int] = []
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```
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- You can use an [`isinstance`
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test](https://mypy.readthedocs.io/en/stable/common_issues.html#complex-type-tests)
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to safely verify that a value really has the type you expect.
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### Avoid `# type: ignore` comments
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Mypy allows you to ignore any type checking error with a
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[`# type: ignore`
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comment](https://mypy.readthedocs.io/en/stable/common_issues.html#spurious-errors-and-locally-silencing-the-checker),
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but you should avoid this in the absence of a very good reason, such
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as a bug in mypy itself. If there are no safe options for dealing
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with the error, prefer an unchecked `cast`, since its unsafety is
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somewhat more localized.
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Our linter requires all `# type: ignore` comments to be [scoped to the
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specific error
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code](https://mypy.readthedocs.io/en/stable/error_codes.html) being
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ignored, and followed by an explanation such as a link to a GitHub
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issue.
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### Avoid other unchecked constructs
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- As mentioned
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[above](#using-overload-to-accurately-describe-variations), we
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**discourage writing overloaded functions** because their bodies are
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not checked against the `@overload` signatures.
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- **Avoid `Callable[..., T]`** (with literal ellipsis `...`), since
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mypy cannot check the types of arguments passed to it. Provide the
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specific argument types (`Callable[[int, str], T]`) in simple cases,
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or use [callback
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protocols](https://mypy.readthedocs.io/en/stable/protocols.html#callback-protocols)
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in more complex cases.
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### Use `Optional` and `None` correctly
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The [`Optional`
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type](https://mypy.readthedocs.io/en/stable/cheat_sheet_py3.html#built-in-types)
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is for optional values, which are values that could be `None`. For
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example, `Optional[int]` is equivalent to `Union[int, None]`.
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The `Optional` type is **not for optional parameters** (unless they
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are also optional values as above). This signature does not use the
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`Optional` type:
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```python
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def func(flag: bool = False) -> str:
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...
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```
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A collection such as `List` should only be `Optional` if `None` would
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have a different meaning than the natural meaning of an empty
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collection. For example:
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- An include list where the default is to include everything should be
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`Optional` with default `None`.
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- An exclude list where the default is to exclude nothing should be
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non-`Optional` with default `[]`.
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Don't test an `Optional` value using truthiness (`if value:`,
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`not value`, `value or default_value`), especially when the type might
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have falsy values other than `None`.
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```python
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s: Optional[str]
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if not s: # bad: are we checking for None or ""?
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...
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if s is None: # good
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...
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```
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### Read-only types
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The basic Python collections
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[`List`](https://docs.python.org/3/library/typing.html#typing.List),
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[`Dict`](https://docs.python.org/3/library/typing.html#typing.Dict),
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and [`Set`](https://docs.python.org/3/library/typing.html#typing.Set)
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are mutable, but it's confusing for a function to mutate a collection
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that was passed to it as an argument, especially by accident. To
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avoid this, prefer annotating function parameters with read-only
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types:
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- [`Sequence`](https://docs.python.org/3/library/typing.html#typing.Sequence)
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instead of `List`,
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- [`Mapping`](https://docs.python.org/3/library/typing.html#typing.Mapping)
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instead of `Dict`,
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- [`AbstractSet`](https://docs.python.org/3/library/typing.html#typing.AbstractSet)
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instead of `Set`.
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This is especially important for parameters with default arguments,
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since a mutable default argument is confusingly shared between all
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calls to the function.
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```python
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def f(items: Sequence[int] = []) -> int:
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items.append(1) # mypy catches this mistake
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return sum(items)
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```
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In some cases the more general
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[`Collection`](https://docs.python.org/3/library/typing.html#typing.Collection)
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or
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[`Iterable`](https://docs.python.org/3/library/typing.html#typing.Iterable)
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types might be appropriate. (But don’t use `Iterable` for a value
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that might be iterated multiple times, since a one-use iterator is
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`Iterable` too.)
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A function's return type can be mutable if the return value is always
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a freshly created collection, since the caller ends up with the only
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reference to the value and can freely mutate it without risk of
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confusion. But a read-only return type might be more appropriate for
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a function that returns a reference to an existing collection.
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Read-only types have the additional advantage of being [covariant
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rather than
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invariant](https://mypy.readthedocs.io/en/latest/common_issues.html#invariance-vs-covariance):
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if `B` is a subtype of `A`, then `List[B]` may not be converted to
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`List[A]`, but `Sequence[B]` may be converted to `Sequence[A]`.
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### Typing decorators
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A simple decorator that operates on functions of a fixed signature
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works with no issues:
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```python
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def fancy(func: Callable[[str], str]) -> Callable[[int], str]:
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def wrapped_func(n: int) -> str:
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print("so fancy")
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return func(str(n))
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return wrapped_func
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@fancy
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def f(s: str) -> str:
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return s
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```
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A decorator with an argument also works:
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```python
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def fancy(message: str) -> Callable[[Callable[[str], str]], Callable[[int], str]]:
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def wrapper(func: Callable[[str], str]) -> Callable[[int], str]:
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def wrapped_func(n: int) -> str:
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print(message)
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return func(str(n))
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return wrapped_func
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return wrapper
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@fancy("so fancy")
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def f(s: str) -> str:
|
||
return s
|
||
```
|
||
|
||
And a [generic
|
||
decorator](https://mypy.readthedocs.io/en/stable/generics.html#declaring-decorators)
|
||
that operates on functions of arbitrary signatures can be written
|
||
[with a `cast`](https://github.com/python/mypy/issues/1927) if the
|
||
output signature is always the same as the input signature:
|
||
|
||
```python
|
||
FuncT = TypeVar("FuncT", bound=Callable[..., object])
|
||
|
||
def fancy(func: FuncT) -> FuncT:
|
||
def wrapped_func(*args: object, **kwargs: object) -> object:
|
||
print("so fancy")
|
||
return func(*args, **kwargs)
|
||
return cast(FuncT, wrapped_func) # https://github.com/python/mypy/issues/1927
|
||
|
||
@fancy
|
||
def f(s: str) -> str:
|
||
return s
|
||
```
|
||
|
||
(A generic decorator with an argument would return
|
||
`Callable[[FuncT], FuncT]`.)
|
||
|
||
But Mypy doesn't yet support the advanced type annotations that would
|
||
be needed to correctly type generic signature-changing decorators,
|
||
such as `zerver.decorator.authenticated_json_view`, which passes an
|
||
extra argument to the inner function. For these decorators we must
|
||
unfortunately give up some type safety by falling back to
|
||
`Callable[..., T]`.
|
||
|
||
## Troubleshooting advice
|
||
|
||
All of our linters, including mypy, are designed to only check files
|
||
that have been added in Git (this is by design, since it means you
|
||
have untracked files in your Zulip checkout safely). So if you get a
|
||
`mypy` error like this after adding a new file that is referenced by
|
||
the existing codebase:
|
||
|
||
```console
|
||
mypy | zerver/models.py:1234: note: Import of 'zerver.lib.markdown_wrappers' ignored
|
||
mypy | zerver/models.py:1234: note: (Using --follow-imports=error, module not passed on command line)
|
||
```
|
||
|
||
The problem is that you need to `git add` the new file.
|