Contributing¶
Welcome to keras-explainable
contributor’s guide.
This document focuses on getting any potential contributor familiarized with the development processes, but other kinds of contributions are also appreciated.
If you are new to using git or have never collaborated in a project previously, please have a look at contribution-guide.org. Other resources are also listed in the excellent guide created by FreeCodeCamp [1].
Please notice, all users and contributors are expected to be open, considerate, reasonable, and respectful. When in doubt, Python Software Foundation’s Code of Conduct is a good reference in terms of behavior guidelines.
Issue Reports¶
If you experience bugs or general issues with keras-explainable
, please have a look
on the issue tracker. If you don’t see anything useful there, please feel
free to fire an issue report.
Tip
Please don’t forget to include the closed issues in your search. Sometimes a solution was already reported, and the problem is considered solved.
New issue reports should include information about your programming environment (e.g., operating system, Python version) and steps to reproduce the problem. Please try also to simplify the reproduction steps to a very minimal example that still illustrates the problem you are facing. By removing other factors, you help us to identify the root cause of the issue.
Documentation Improvements¶
You can help improve keras-explainable
docs by making them more readable and coherent, or
by adding missing information and correcting mistakes.
keras-explainable
documentation uses Sphinx as its main documentation compiler.
This means that the docs are kept in the same repository as the project code, and
that any documentation update is done in the same way was a code contribution.
When working on documentation changes in your local machine, you can
compile them using tox
:
tox -e docs
and use Python’s built-in web server for a preview in your web browser
(http://localhost:8000
):
python3 -m http.server --directory 'docs/_build/html'
Code Contributions¶
Submit an issue¶
Before you work on any non-trivial code contribution it’s best to first create a report in the issue tracker to start a discussion on the subject. This often provides additional considerations and avoids unnecessary work.
Create an environment¶
Before you start coding, we recommend creating an isolated virtual
environment to avoid any problems with your installed Python packages.
This can easily be done via either virtualenv
:
virtualenv <PATH TO VENV>
source <PATH TO VENV>/bin/activate
or Miniconda:
conda create -n keras-explainable python=3 six virtualenv pytest pytest-cov
conda activate keras-explainable
Clone the repository¶
Create an user account on GitHub if you do not already have one.
Fork the project repository: click on the Fork button near the top of the page. This creates a copy of the code under your account on GitHub.
Clone this copy to your local disk:
git clone git@github.com:YourLogin/keras-explainable.git cd keras-explainable
You should run:
pip install -U pip setuptools -e .
to be able to import the package under development in the Python REPL.
Install
pre-commit
:pip install pre-commit pre-commit install
keras-explainable
comes with a lot of hooks configured to automatically help the developer to check the code being written.
Implement your changes¶
Create a branch to hold your changes:
git checkout -b my-feature
and start making changes. Never work on the main branch!
Start your work on this branch. Don’t forget to add docstrings to new functions, modules and classes, especially if they are part of public APIs.
Add yourself to the list of contributors in
AUTHORS.rst
.When you’re done editing, do:
git add <MODIFIED FILES> git commit
to record your changes in git.
Please make sure to see the validation messages from
pre-commit
and fix any eventual issues. This should automatically use flake8/black to check/fix the code style in a way that is compatible with the project.Important
Don’t forget to add unit tests and documentation in case your contribution adds an additional feature and is not just a bugfix.
Moreover, writing a descriptive commit message is highly recommended. In case of doubt, you can check the commit history with:
git log --graph --decorate --pretty=oneline --abbrev-commit --all
to look for recurring communication patterns.
Please check that your changes don’t break any unit tests with:
tox
(after having installed
tox
withpip install tox
orpipx
).You can also use
tox
to run several other pre-configured tasks in the repository. Trytox -av
to see a list of the available checks.
Submit your contribution¶
If everything works fine, push your local branch to GitHub with:
git push -u origin my-feature
Go to the web page of your fork and click “Create pull request” to send your changes for review.
Troubleshooting¶
The following tips can be used when facing problems to build or test the package:
Make sure to fetch all the tags from the upstream repository. The command
git describe --abbrev=0 --tags
should return the version you are expecting. If you are trying to run CI scripts in a fork repository, make sure to push all the tags. You can also try to remove all the egg files or the complete egg folder, i.e.,.eggs
, as well as the*.egg-info
folders in thesrc
folder or potentially in the root of your project.Sometimes
tox
misses out when new dependencies are added, especially tosetup.cfg
anddocs/requirements.txt
. If you find any problems with missing dependencies when running a command withtox
, try to recreate thetox
environment using the-r
flag. For example, instead of:tox -e docs
Try running:
tox -r -e docs
Make sure to have a reliable
tox
installation that uses the correct Python version (e.g., 3.7+). When in doubt you can run:tox --version # OR which tox
If you have trouble and are seeing weird errors upon running
tox
, you can also try to create a dedicated virtual environment with atox
binary freshly installed. For example:virtualenv .venv source .venv/bin/activate .venv/bin/pip install tox .venv/bin/tox -e all
Pytest can drop you in an interactive session in the case an error occurs. In order to do that you need to pass a
--pdb
option (for example by runningtox -- -k <NAME OF THE FALLING TEST> --pdb
). You can also setup breakpoints manually instead of using the--pdb
option.
Maintainer tasks¶
Releases¶
If you are part of the group of maintainers and have correct user permissions
on PyPI, the following steps can be used to release a new version for
keras-explainable
:
Make sure all unit tests are successful.
Tag the current commit on the main branch with a release tag, e.g.,
v1.2.3
.Push the new tag to the upstream repository, e.g.,
git push upstream v1.2.3
Clean up the
dist
andbuild
folders withtox -e clean
(orrm -rf dist build
) to avoid confusion with old builds and Sphinx docs.Run
tox -e build
and check that the files indist
have the correct version (no.dirty
or git hash) according to the git tag. Also check the sizes of the distributions, if they are too big (e.g., > 500KB), unwanted clutter may have been accidentally included.Run
tox -e publish -- --repository pypi
and check that everything was uploaded to PyPI correctly.