Originally published in my blog: https://sobolevn.me/2019/08/testing-mypy-types
Have you ever tried to:
- Create complex generic types in your own project?
- Write distributable stubs for your library?
- Create custom
mypy
plugin? - Write custom type-checker?
In case you try to do any of these, you will soon find out that you need to test your types. Wait, what? Let me explain this paradox in detail.
The first tests for types in Python
Let's start with a history lesson.
The first time I got interested in mypy
, I found their testing technique unique and interesting. That's how it looks like:
[case testNestedListAssignmentToTuple]
from typing import List
a, b, c = None, None, None # type: (A, B, C)
a, b = [a, b]
a, b = [a] # E: Need more than 1 value to unpack (2 expected)
a, b = [a, b, c] # E: Too many values to unpack (2 expected, 3 provided)
This looks familiar:
-
[case]
defines a new test, likedef test_
does - The contents inside are raw
python
source code lines that are processed withmypy
-
# E:
comments areassert
statements that tell whatmypy
output is expected at each line
So, we can write this kind of tests for our libraries as well, right? That was the question when I started writing returns
library (which is a typed monad implementation in Python). So, I needed to test what is going on inside and what types are revealed by mypy
. Then I tried to reuse this test cases from mypy
.
Long story short, it is impossible. This little helper is builtin inside mypy
source code and cannot be reused. So, I started to look for other solutions.
Modern approach
I stumbled on pytest-mypy-plugins
package. It was originally created to make sure that types for django
works fine in TypedDjango
project. Check out my previous post about it.
To install pytest-mypy-plugins
in your project run:
pip install pytest-mypy-plugins
It works similar to mypy
's own test cases, but with a slightly different design. Let's create a yaml
file and place it as ./typesafety/test_compose.yml
:
# ./typesafety/test_compose.yml
- case: compose_two_functions
main: |
from myapp import first, second
reveal_type(second(first(1))) # N: Revealed type is 'builtins.str*'
files:
- path: myapp.py
content: |
def first(num: int) -> float:
return float(num)
def second(num: float) -> str:
return str(num)
What do we have here?
-
case
definition, this is basically a test's name -
main
section that containspython
source code that is required for the test -
# N:
comment that indicates a note frommypy
-
files
section where you can create temporary helper files to be used in this test
Nice! How can we run it? Since pytest-mypy-plugins
is a pytest
plugin, we only need to run pytest
as usual and to specify our mypy
configuration file (defaults to mypy.ini
):
pytest --mypy-ini-file=setup.cfg
You can have two mypy
configurations: one for your project, one for tests. Just saying. Let's have a look at our setup.cfg
contents:
[mypy]
check_untyped_defs = True
ignore_errors = False
ignore_missing_imports = True
strict_optional = True
That's the invokation result:
» pytest --mypy-ini-file=setup.cfg
================================ test session starts =================================
platform darwin -- Python 3.7.4, pytest-5.1.1, py-1.8.0, pluggy-0.12.0
rootdir: /code/, inifile: setup.cfg
plugins: mypy-plugins-1.0.3
collected 1 item
typesafety/test_compose.yml . [100%]
================================= 1 passed in 2.00s ==================================
It works! Let's complicate our example a little bit.
Checking for errors
We can also use pytest-mypy-plugins
to enforce and check constraints on our complex type specs. Let's imagine you have a type definition with complex generics and you want to make sure that it works correctly.
That's actually very helpful, because you can check for success cases with raw mypy
checks, while you cannot tell mypy
to expect an error for a specific expression or call.
Let's begin with our complex type definition:
# returns/functions.py
from typing import Callable, TypeVar
# Aliases:
_FirstType = TypeVar('_FirstType')
_SecondType = TypeVar('_SecondType')
_ThirdType = TypeVar('_ThirdType')
def compose(
first: Callable[[_FirstType], _SecondType],
second: Callable[[_SecondType], _ThirdType],
) -> Callable[[_FirstType], _ThirdType]:
"""Allows typed function composition."""
return lambda argument: second(first(argument))
This code takes two function and checks that their types match, so they can be composed. Let's test it:
# ./typesafety/test_compose.yml
- case: compose_two_wrong_functions
main: |
from returns.functions import compose
def first(num: int) -> float:
return float(num)
def second(num: str) -> str:
return str(num)
reveal_type(compose(first, second))
out: |
main:9: error: Cannot infer type argument 2 of "compose"
main:9: note: Revealed type is 'def (Any) -> Any'
In this example I changed how we make a type assertion: out
is easier for multi-line output than inline comments.
Now we have two passing tests:
» pytest --mypy-ini-file=setup.cfg
================================ test session starts =================================
platform darwin -- Python 3.7.4, pytest-5.1.1, py-1.8.0, pluggy-0.12.0
rootdir: /code, inifile: setup.cfg
plugins: mypy-plugins-1.0.3
collected 2 items
typesafety/test_compose.yml .. [100%]
================================= 2 passed in 2.65s ==================================
Let's test one more complex case.
Extra mypy settings
We can change mypy
configuration on per-test bases. Let's add some new values to the existing configuration:
- case: compose_optional_functions
mypy_config: # appends options for this test
no_implicit_optional = True
main: |
from returns.functions import compose
def first(num: int = None) -> float:
return float(num)
def second(num: float) -> str:
return str(num)
reveal_type(compose(first, second))
out: |
main:3: error: Incompatible default for argument "num" (default has type "None", argument has type "int")
main:9: note: Revealed type is 'def (builtins.int*) -> builtins.str*'
We added no_implicit_optional
configuration option that requires to add explicit Optional[]
type to arguments where we set None
as a default value. And our test got it from the mypy_config
section that appends options to the base mypy
settings from --mypy-ini-file
setting.
Custom DSL
pytest-mypy-plugins
also allows to create custom yaml
-based DSL
s to make your testing process easier and test cases shorter.
Imagine, that we want to have reveal_type
as a top-level key. It will just reveal a type of a source code line that is passed to it. Like so:
- case: reveal_type_extension_is_loaded
main: |
def my_function(arg: int) -> float:
return float(arg)
reveal_type: my_function
out: |
main:4: note: Revealed type is 'def (arg: builtins.int) -> builtins.float'
Let's have a look at what it takes to achieve it:
# reveal_type_hook.py
from pytest_mypy.item import YamlTestItem
def hook(item: YamlTestItem) -> None:
parsed_test_data = item.parsed_test_data
main_source = parsed_test_data['main']
obj_to_reveal = parsed_test_data.get('reveal_type')
if obj_to_reveal:
for file in item.files:
if file.path.endswith('main.py'):
file.content = f'{main_source}\nreveal_type({obj_to_reveal})'
What do we do here?
- We get the source code from the
main:
key - Then append
reveal_type()
call from thereveal_type:
key
As a result, we have a custom DSL
that fulfills our initial idea.
Running:
» pytest --mypy-ini-file=setup.cfg --mypy-extension-hook=reveal_type_hook.hook
================================ test session starts =================================
platform darwin -- Python 3.7.4, pytest-5.1.1, py-1.8.0, pluggy-0.12.0
rootdir: /code, inifile: setup.cfg
plugins: mypy-plugins-1.0.3
collected 1 item
typesafety/test_hook.yml . [100%]
================================= 1 passed in 0.87s ==================================
We pass a new flag: --mypy-extension-hook
which points to our own DSL
implementation. And it works perfectly! That's how one can reuse a large amounts of code in yaml
-based tests.
Conlusion
pytest-mypy-plugins
is an absolute must for people who work a lot with types or mypy
plugins in python
. It simplifies the process of refactoring and distributing types.
You can have a look at the real world example usage of these tests in:
Share what your use-cases are! We are still in a pretty early stage of this project and we would like to find out what our users are thinking.