This repository contains the list of scverse ecosystem packages that are displayed on scverse.org. The goal is to increase visibility of ecosystem packages and make it easier for users to find appropriate software. Registered ecosystem packages can also get their own tag to use on the scverse forum for user discussion. Authors of these packages can be added the scverse github organization. In the future, we may also test releases of core packages against the test suites of ecosystem packages.
If a package is part of this list, it means it fulfills certain minimum requirements as outlined below. It does not imply endorsement or that an in-depth review has been performed.
Hint: If you want to receive notifications about new ecosystem packages, simply use GitHub's "watch" functionality for this repository.
Submit a pull-request adding a meta.yaml
file for your package to the packages
directory.
- Please refer to other entries for examples
- The full definition of available fields is available in
schema.json
- Please copy the checklist from below into the pull request description and answer all questions.
For a package to become an approved ecosystem package, it must fulfill all mandatory requirements from the checklist below.
Ecosystem packages can be written in non-Python languages as long as they fulfill the above requirements.
If you cannot or do not want to comply with these requirements, you are still free to make your package interoperable with scverse by using our datastructures, but we will not list your package on our ecosystem page.
Name of the tool: XXX
Short description: XXX
How does the package use scverse data structures (please describe in a few sentences): XXX
- The code is publicly available under an OSI-approved license
- The package provides versioned releases
- The package can be installed from a standard registry (e.g. PyPI, conda-forge, bioconda)
- Automated tests cover essential functions of the package and a reasonable range of inputs and conditions 1
- Continuous integration (CI) automatically executes these tests on each push or pull request 2
- The package provides API documentation via a website or README3
- The package uses scverse datastructures where appropriate (i.e. AnnData, MuData or SpatialData and their modality-specific extensions)
- I am an author or maintainer of the tool and agree on listing the package on the scverse website
- Please announce this package on scverse communication channels (zulip, discourse, twitter)
- Please tag the author(s) these announcements. Handles (e.g.
@scverse_team
) to include are:- Twitter:
- Zulip:
- Discourse:
- Mastodon:
- The package provides tutorials (or "vignettes") that help getting users started quickly
- The package uses the scverse cookiecutter template.
Footnotes
-
We recommend thtat tests cover at least all user facing (public) functions. Minimal tests ensure that the function does not fail on an example data set. Ideally, tests also ensure the correctness of the results, e.g. by comparing against a snapshot. ↩
-
Continuous integration means that software tests are automatically executed on every push to the git repository. This guarantees they are always run and that they are run in a clean environment. Scverse ecosystem packages most commonly use GitHub Actions for CI. For an example, check out our cookiecutter template. ↩
-
By API documentation, we mean an overview of all public functions provided a package, with documentation of their parameters. For an example, see the Scanpy documentation. In simple cases, this can be done manually in a README file. For anything more complex, we recommend the Sphinx Autodoc plugin ↩