Contributing guide#

This document aims at summarizing the most important information for getting you started on contributing to this project. We assume that you are already familiar with git and with making pull requests on GitHub.

For more extensive tutorials, that also cover the absolute basics, please refer to other resources such as the pyopensci tutorials, the scientific Python tutorials, or the scanpy developer guide.

Tip

The hatch project manager

We highly recommend to familiarize yourself with hatch. Hatch is a Python project manager that

  • manages virtual environments, separately for development, testing and building the documentation. Separating the environments is useful to avoid dependency conflicts.

  • allows to run tests locally in different environments (e.g. different python versions)

  • allows to run tasks defined in pyproject.toml, e.g. to build documentation.

While the project is setup with hatch in mind, it is still possible to use different tools to manage dependencies, such as uv or pip.

Installing dev dependencies#

In addition to the packages needed to use this package, you need additional python packages to run tests and build the documentation.

Code-style#

This package uses pre-commit to enforce consistent code-styles. On every commit, pre-commit checks will either automatically fix issues with the code, or raise an error message.

To enable pre-commit locally, simply run

pre-commit install

in the root of the repository. Pre-commit will automatically download all dependencies when it is run for the first time.

Alternatively, you can rely on the pre-commit.ci service enabled on GitHub. If you didn’t run pre-commit before pushing changes to GitHub it will automatically commit fixes to your pull request, or show an error message.

If pre-commit.ci added a commit on a branch you still have been working on locally, simply use

git pull --rebase

to integrate the changes into yours. While the pre-commit.ci is useful, we strongly encourage installing and running pre-commit locally first to understand its usage.

Finally, most editors have an autoformat on save feature. Consider enabling this option for ruff and biome.

Writing tests#

This package uses pytest for automated testing. Please write Tests for every function added to the package.

Most IDEs integrate with pytest and provide a GUI to run tests. Just point yours to one of the environments returned by

hatch env create hatch-test  # create test environments for all supported versions
hatch env find hatch-test  # list all possible test environment paths

Alternatively, you can run all tests from the command line by executing

in the root of the repository.

Continuous integration#

Continuous integration via GitHub actions will automatically run the tests on all pull requests and test against the minimum and maximum supported Python version.

Additionally, there’s a CI job that tests against pre-releases of all dependencies (if there are any). The purpose of this check is to detect incompatibilities of new package versions early on and gives you time to fix the issue or reach out to the developers of the dependency before the package is released to a wider audience.

The CI job is defined in .github/workflows/test.yaml, however the single point of truth for CI jobs is the Hatch test matrix defined in pyproject.toml. This means that local testing via hatch and remote testing on CI tests against the same python versions and uses the same environments.

Publishing a release#

Updating the version number#

Before making a release, you need to update the version number in the pyproject.toml file. Please adhere to Semantic Versioning, in brief

Given a version number MAJOR.MINOR.PATCH, increment the:

  1. MAJOR version when you make incompatible API changes,

  2. MINOR version when you add functionality in a backwards compatible manner, and

  3. PATCH version when you make backwards compatible bug fixes.

Additional labels for pre-release and build metadata are available as extensions to the MAJOR.MINOR.PATCH format.

Once you are done, commit and push your changes and navigate to the “Releases” page of this project on GitHub. Specify vX.X.X as a tag name and create a release. For more information, see managing GitHub releases. This will automatically create a git tag and trigger a Github workflow that creates a release on PyPI.

Writing documentation#

Please write documentation for new or changed features and use-cases. This project uses sphinx with the following features:

See scanpy’s Documentation for more information on how to write your own.

Tutorials with myst-nb and jupyter notebooks#

The documentation is set-up to render jupyter notebooks stored in the docs/notebooks directory using myst-nb. Currently, only notebooks in .ipynb format are supported that will be included with both their input and output cells. It is your responsibility to update and re-run the notebook whenever necessary.

If you are interested in automatically running notebooks as part of the continuous integration, please check out this feature request in the cookiecutter-scverse repository.

Hints#

  • If you refer to objects from other packages, please add an entry to intersphinx_mapping in docs/conf.py. Only if you do so can sphinx automatically create a link to the external documentation.

  • If building the documentation fails because of a missing link that is outside your control, you can add an entry to the nitpick_ignore list in docs/conf.py

Building the docs locally#