pytest-compare 0.2.5

Last updated:

0 purchases

pytest-compare 0.2.5 Image
pytest-compare 0.2.5 Images
Add to Cart

Description:

pytestcompare 0.2.5

pytest-compare




x
What is it?
The pytest-compare helps validate method call arguments when testing python code.
pytest-compare is designed to work with assert methods. While python native variables can be easily compared, a more complicated structures sometimes do not. For example validating a pd.DataFrame will raise an exception. This is where pytest-compare comes in. It allows this kind of structures to be easily compared.
How to install
To install pytest-compare from PyPi, run the command:
pip install pytest-compare

Optional dependencies
Some compare modules may require additional packages to be installed.
Pandas
To compare pandas module, add the pandas option to the installation:
pip install pytest-compare[pandas]

How to use
The comparation modules are design to be used with assert methods. When validating patched method call arguments
df = pd.DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]})

with patch.object(ProductionClass, 'method', return_value=None) as mock_method:
thing = ProductionClass()
thing.method(df)

# will raise an exception
mock_method.assert_called_once_with(df)

# the correct way
mock_method.assert_called_once_with(CompareDataFrame(df))

Multiple arguments in a call
When a method is called using multiple arguments, all of them must be addressed in the test. while python native variables can be easily compared, pytest-compare is designed to compare a more complicated structures and do custom compares.
with patch.object(ProductionClass, 'method', return_value=None) as mock_method:
thing = ProductionClass()
thing.method(1, "str", df1, df2)

# the correct way
mock_method.assert_called_once_with(1, "str", CompareDataFrame(df1), CompareDataFrame(df2))

Args and Kwargs
When validating the call, the expected values must be passed in the exact same mix of args and kwargs as when they were called.
with patch.object(ProductionClass, 'method', return_value=None) as mock_method:
thing = ProductionClass()
thing.method(df1, dataframe=df2)

# the correct way
mock_method.assert_called_once_with(CompareDataFrame(df1), dataframe=CompareDataFrame(df2))

Actual and Expected convention

actual: The values that the method was originally called with.
expected: Test values to see if the method was called with.

For example here, arg_actual is the actual value while arg_expected is the expected value.
mock_method = Mock()

mock_method(arg_actual)
mock_method.assert_called_once_with(arg_expected)

If arg_actual is not equal to arg_expected, an exception will be raised.
Development
Setup
Virtual Environment
Create a virtual environment and install the dependencies:
$ python3 -m venv venv
$ source venv/bin/activate
$ pip install -e ".[pandas]" -r requirements-dev.txt -r requirements-quality.txt

Pre-commit Hooks
Start by installing the pre-commit hooks which will run black, mypy, flake8, and codespell on every commit.:
$ hooks/autohook.sh install

Creating tests
Running tests
To test the code, run the following command:
$ pytest

Writing tests
Tests are written using the pytest framework. To create a test for a new Compare module, create two files in the tests directory: conftest.py and the test file witch must start with test_.
The conftest.py file must implement the following fixtures:
@pytest.fixture
def actual_call_args() -> Tuple[Any]:
raise NotImplementedError("`actual_call_args` must be implemented")


@pytest.fixture
def actual_call_kwargs() -> Dict[str, Any]:
raise NotImplementedError("`actual_call_kwargs` must be implemented")


@pytest.fixture
def expected_call_args() -> Tuple[Any]:
raise NotImplementedError("`expected_call_args` must be implemented")


@pytest.fixture
def expected_call_kwargs() -> Dict[str, CompareBase]:
raise NotImplementedError("`expected_call_kwargs` must be implemented")

The test file must implement a test class that inherits from BaseTest.
That way two base tests will be run for each Compare module that wil test the args and kwargs of the method call.

License:

For personal and professional use. You cannot resell or redistribute these repositories in their original state.

Customer Reviews

There are no reviews.