pytest-snapshot 0.9.0

Last updated:

0 purchases

pytest-snapshot 0.9.0 Image
pytest-snapshot 0.9.0 Images
Add to Cart

Description:

pytestsnapshot 0.9.0

A plugin for snapshot testing with pytest.
This library was inspired by jest’s snapshot testing.
Snapshot testing can be used to test that the value of an expression does not change unexpectedly.
The added benefits of snapshot testing are that

They are easy to create.
They are easy to update when the expected value of a test changes.

Instead of manually updating tests when the expected value of an expression changes,
the developer simply needs to

run pytest --snapshot-update to update the snapshot tests
verify that the snapshot files contain the new expected results
commit the snapshot changes to version control


Features

snapshot testing of strings and bytes
snapshot testing of (optionally nested) collections of strings and bytes
complete control of the snapshot file path and content



Requirements

Python 3.5+ or PyPy
pytest 3.0+



Installation
You can install “pytest-snapshot” via pip from PyPI:
$ pip install pytest-snapshot


Usage

assert_match
A classic equality test looks like:
def test_function_output():
assert foo('function input') == 'expected result'
It could be re-written using snapshot testing as:
def test_function_output_with_snapshot(snapshot):
snapshot.snapshot_dir = 'snapshots' # This line is optional.
snapshot.assert_match(foo('function input'), 'foo_output.txt')
The author of the test should then

run pytest --snapshot-update to generate the snapshot file snapshots/foo_output.txt
containing the output of foo().
verify that the content of the snapshot file is valid.
commit it to version control.

Now, whenever the test is run, it will assert that the output of foo() is equal to the snapshot.
What if the behaviour of foo() changes and the test starts to fail?
In the first example, the developer would need to manually update the expected result in test_function_output.
This could be tedious if the expected result is large or there are many tests.
In the second example, the developer would simply

run pytest --snapshot-update
verify that the snapshot file contains the new expected result
commit it to version control.

Snapshot testing can be used for expressions whose values are strings or bytes.
For other types, you should first create a human readable representation of the value.
For example, to snapshot test a json-serializable value, you could either convert it into json
or preferably convert it into the more readable yaml format using PyYAML:
snapshot.assert_match(yaml.dump(foo()), 'foo_output.yml')


assert_match_dir
When snapshot testing a collection of values, assert_match_dir comes in handy.
It will save a snapshot of a collection of values as a directory of snapshot files.
assert_match_dir takes a dictionary from file name to value.
Dictionaries can also be nested to create nested directories containing snapshot files.
For example, the following code creates the directory snapshots/people
containing files john.json and jane.json.
def test_something(snapshot):
snapshot.snapshot_dir = 'snapshots'
snapshot.assert_match_dir({
'john.json': '{"first name": "John", "last name": "Doe"}',
'jane.json': '{"first name": "Jane", "last name": "Doe"}',
}, 'people')
When running pytest --snapshot-update, snapshot files will be added, updated, or deleted as necessary.
As a safety measure, snapshots will only be deleted when using the --allow-snapshot-deletion flag.


Common use case
A quick way to create snapshot tests is to create a directory containing many test case directories.
In each test case, add files containing the inputs to the function you wish to test.
For example:
test_cases
case1
input.json
case2
input.json
...
Next, add a test that is parametrized on all test case directories. The test should

read input from the test case directory
call the function to be tested
snapshot the result to the test case directory

import json
import os

import pytest
import yaml
from pathlib import Path


def json_to_yaml(json_string):
obj = json.loads(json_string)
return yaml.dump(obj, indent=2)


@pytest.mark.parametrize('case_dir', list(Path('test_cases').iterdir()))
def test_json(case_dir, snapshot):
# Read input files from the case directory.
input_json = case_dir.joinpath('input.json').read_text()

# Call the tested function.
output_yaml = json_to_yaml(input_json)

# Snapshot the return value.
snapshot.snapshot_dir = case_dir
snapshot.assert_match(output_yaml, 'output.yml')
Now, we can run pytest --snapshot-update to create an output.yml snapshot for each test case.
If we later decide to modify the tested function’s behaviour,
we can fix the test cases with another pytest --snapshot-update.



Similar Packages
Another python package that can be used for snapshot testing is snapshottest.
While this package and snapshottest fulfill the same role, there are some differences.
With pytest-snapshot:

Every snapshot is saved to a separate file.
The paths to snapshot files are fully customizable.
The serialization of objects to snapshots is fully customizable (the library does not serialize).

This allows the user to organize snapshots in the most human-readable and logical place in their code repository.
This is highly beneficial since snapshots will be viewed by users many times during development and code reviews.


Contributing
Contributions are very welcome. Before contributing, please discuss the change with me.
I wish to keep this plugin flexible and not enforce any project layout on the user.
Tests can be run with tox or python -m pytest.
Note that the test suite does not pass when run with --assert=plain.


License
Distributed under the terms of the MIT license, “pytest-snapshot” is free and open source software.


Issues
If you encounter any problems, please file an issue along with a detailed description.


Links

Releases: https://pypi.org/project/pytest-snapshot/
Code: https://github.com/joseph-roitman/pytest-snapshot


This pytest plugin was generated with Cookiecutter along with @hackebrot’s cookiecutter-pytest-plugin template.

License:

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

Customer Reviews

There are no reviews.