By participating in Nilearn, you agree to abide by the :nipy:`NIPY Code of Conduct <conduct.html>`
If you have issues when using Nilearn, or if you have questions on how to use it, please don't hesitate to reach out!
There are currently three ways to interact with the Nilearn team: through the :neurostars:`neurostars <>` forum, our :nilearn-gh:`github <>` issues, and through our weekly drop-in hours, usually every Wednesday from 4pm to 5pm UTC. We post on our X account in advance to let you know if the drop-in hours are happening that week.
If you have a usage question, that is if you need help troubleshooting scripts using Nilearn, we would appreciate it if you either ask it during the drop-in hours or create a topic on :neurostars:`neurostars <>` with the "nilearn" tag. Asking questions or reporting issues is always valuable because it will help other users having the same problem. So, please don't hold onto a burning question!
We ask that you don't open an issue on :nilearn-gh:`GitHub <>` for usage questions. We use our :nilearn-gh:`GitHub <>` issue board for bug reports, feature requests, and documentation changes only.
If you are interested in contributing to the Nilearn project, we thank you very much. Note that there are multiple ways to help us, and not all of them require writing code.
We welcome open discussion around improvements---both to the documentation as well as to the code base---through our GitHub issue board!
- If you think you have discovered a bug, please start by searching through the existing :nilearn-gh:`issues <issues>` to make sure it has not already been reported. If the bug has not been reported yet, create an :nilearn-gh:`new issue <issues/new/choose>` including a minimal runnable example to showcase it (using :ref:`nilearn.datasets <datasets_ref>`) as well as your OS and Nilearn version.
- If you have an idea for a new feature, check if it is in the :ref:`nilearn_scope` and feel free to open a :nilearn-gh:`new issue <issues/new/choose>` to discuss it.
- If you think the documentation can be improved, please open a :nilearn-gh:`new issue <issues/new/choose>` to discuss what you would like to change! This helps to confirm that your proposed improvements don't overlap with any ongoing work.
Another way to help the project is to answer questions on :neurostars:`neurostars <>`, or comment on github :nilearn-gh:`issues <issues>`. Some :nilearn-gh:`issues <issues>` are used to gather user opinions on various questions, and any input from the community is valuable to us.
Any addition to the Nilearn's code base has to be reviewed and approved by several people including at least two :ref:`core_devs`. This can put a heavy burden on :ref:`core_devs` when a lot of :nilearn-gh:`pull requests <pulls>` are opened at the same time. We welcome help in reviewing :nilearn-gh:`pull requests <pulls>` from any community member. We do not expect community members to be experts in all changes included in :nilearn-gh:`pull requests <pulls>`, and we encourage you to concentrate on those code changes that you feel comfortable with. As always, more eyes on a code change means that the code is more likely to work in a wide variety of contexts!
If you want to contribute code:
- For new features, please be sure to create a :nilearn-gh:`new issue <issues/new/choose>` first, to discuss whether it can be included and its specifications.
- To help with known :nilearn-gh:`issues <issues>`, please check :nilearn-gh:`good first issues <labels/Good%20first%20issue>` to get started, :nilearn-gh:`known bugs <labels/Bug>`, or :nilearn-gh:`proposed enhancements <labels/Enhancement>`.
Please see the :ref:`contributing_code` section for more detailed information, including instructions for Setting up your environment and a description of the Contribution Guidelines.
The following sections explain the :ref:`nilearn_scope` and :ref:`nilearn_governance`, which jointly determine whether potential contributions will be accepted into the project.
Nilearn is an Open-source Python package for visualizing and analyzing human brain MRI data. It provides statistical and machine-learning tools for brain mapping, connectivity estimation and predictive modelling. It brings visualization tools with instructive documentation & open community.
Nilearn targets ease of use, but as Python code. In other words, we will not add graphical user interfaces, but we want our code to be as easy to understand as possible, with easy prototyping and debugging, even for beginners in Python.
We are parsimonious in the way we add features to the project, as it puts on weight. To assess new features, our main concern is their usefulness to a number of our users. To make Nilearn high-quality and sustainable we also weigh their benefits (i.e., new features, ease of use) with their cost (i.e., complexity of the code, runtime of the examples).
Exhaustive criteria used in the review process are detailed in the contribution guide below. Be sure to read and follow them so that your code can be accepted quickly.
As a rule of thumb:
- To be accepted, new features must be in the scope of the project and correspond to an established practice (typically as used in scientific publications).
- It must have a concrete use case, illustrated with a simple example in the Nilearn documentation to teach it easily to end-users.
- It must be thoroughly tested, and respect coding conventions of the existing codebase.
- Features introducing new dependencies will generally not be accepted.
Downloaders for new atlases datasets are usually discouraged.
There is no intention to provide a comprehensive collection of downloaders for the most widely used atlases and datasets. This would be outside the scope of this project. We will consider adding fetchers only for atlases and light datasets which are needed to demo and teach features.
Warning
Issues requesting to add a new atlas or dataset that are not linked to the development of a new feature or example will be closed as being out of scope.
The following projects are dedicated to host atlases and accept contributions:
We strongly aim to be a community oriented project where decisions are made based on consensus according to the criteria described above. Discussions are public, held on :nilearn-gh:`issues <issues>` and :nilearn-gh:`pull requests <pulls>` in Github. All modifications of the codebase are ultimately checked during a reviewing process, where maintainers or contributors make sure they respect the :ref:`contribution_guidelines`. To be merged, a pull request usually needs to be accepted by two maintainers. In case a consensus does not emerge easily, the decisions are made by the :ref:`core_devs`, i.e., people with write access to the repository, as listed :ref:`here <core_devs>`.
This project, hosted on :nilearn-gh:`\ `, is a community effort, and everyone is welcome to contribute. We value very much your feedback and opinion on features that should be improved or added. All discussions are public and held on relevant :nilearn-gh:`issues <issues>` or :nilearn-gh:`pull requests <pulls>`. To discuss your matter, please comment on a relevant :nilearn-gh:`issue <issues>` or open a new one.
The best way to contribute and to help the project is to start working on known :nilearn-gh:`issues <issues>` such as :nilearn-gh:`good first issues <labels/Good%20first%20issue>`, :nilearn-gh:`known bugs <labels/Bug>` or :nilearn-gh:`proposed enhancements <labels/Enhancement>`. If an issue does not already exist for a potential contribution, we ask that you first open a :nilearn-gh:`new issue <issues/new/choose>` before sending a :ref:`pull request` to discuss scope and potential design choices in advance.
When modifying the codebase, we ask every contributor to respect common guidelines. Those are inspired from :sklearn:`scikit-learn <developers/contributing.html#contributing-code>` and ensure Nilearn remains simple to understand, efficient and maintainable. For example, code needs to be tested and those tests need to run quickly in order not to burden the development process. To keep continuous integration efficient with our limited infrastructure, running all the examples must lead to downloading a limited amount of data (gigabytes) and execute in a reasonable amount of time (less than an hour). Those guidelines will hence be enforced during the reviewing process. The section Setting up your environment will help you to quickly get familiar with the tools we use for development and deployment.
Which PR ? | Guidelines | |
---|---|---|
PR Structure | Any |
|
Coding Style | Any |
|
Tests |
|
|
Examples | New features |
|
Documentation | Any |
|
A new pull request must have a clear scope, conveyed through its name, a reference to the issue it targets (through the exact mention "Closes #XXXX"), and a synthetic summary of its goals and main steps. When working on big contributions, we advise contributors to split them into several PRs when possible. This has the benefit of making code changes clearer, making PRs easier to review, and overall smoothening the whole process. No changes unrelated to the PR should be included.
When relevant, PR names should also include tags if they fall in various categories. When opening a PR, the authors should include the [WIP] tag in its name, or use github draft mode. When ready for review, they should switch the tag to [MRG] or can switch it back to normal mode. Other tags can describe the PR content : [FIX] for a bugfix, [DOC] for a change in documentation or examples, [ENH] for a new feature and [MAINT] for maintenance changes.
Changelog entries in nilearn/doc/changes/latest.rst
should adhere to the following conventions:
- Entry in the appropriate category
- Single line per entry
- Add a "badge" corresponding to the change type (see below)
- Finish with a link to the PR and the author's profile
- New contributors to add their details to the
authors
section of theCITATION.cff
(see below)
List of badges:
:bdg-primary:`Doc`
:bdg-secondary:`Maint`
:bdg-success:`API`
:bdg-info:`Plotting`
:bdg-warning:`Test`
:bdg-danger:`Deprecation`
:bdg-dark:`Code`
Example entry in nilearn/doc/changes/latest.rst
:
- :bdg-dark:`Code` Fix off-by-one error when setting ticks in :func:`~plotting.plot_surf` (:gh:`3105` by `Dimitri Papadopoulos Orfanos`_).
Associated entry in CITATION.cff
:
authors:
- given-names: Dimitri Papadopoulos
family-names: Orfanos
website: https://github.com/DimitriPapadopoulos
affiliation: NeuroSpin, C.E.A., Université Paris-Saclay, Gif-sur-Yvette, France
orcid: https://orcid.org/0000-0002-1242-8990
The nilearn codebase follows PEP8 styling. The main conventions we enforce are :
- line length < 80
- spaces around operators
- meaningful variable names
- function names are underscore separated (e.g.,
a_nice_function
) and as short as possible - public functions exposed in their parent module's init file
- private function names preceded with a "_" and very explicit, see also :ref:`private_functions`
- classes in CamelCase
- 2 empty lines between functions or classes
You can check that any code you may have edited follows these conventions by running ruff.
Each function and class must come with a “docstring” at the top of the function code, using numpydoc formatting. The docstring must summarize what the function does and document every parameter.
If an argument takes in a default value, it should be described with the type definition of that argument.
See the examples below:
def good(x, y=1, z=None):
"""Show how parameters are documented.
Parameters
----------
x : :obj:`int`
X
y : :obj:`int`, default=1
Note that "default=1" is preferred to "Defaults to 1".
z : :obj:`str`, default=None
"""
def bad(x, y=1, z=None):
"""Show how parameters should not be documented.
Parameters
----------
x :
The type of X is not described
y : :obj:`int`
The default value of y is not described.
z : :obj:`str`
Defaults=None.
The default value should be described after the type.
"""
Additionally, we consider it best practice to write modular functions; i.e., functions should preferably be relatively short and do one thing. This is also useful for writing unit tests.
Writing small functions is not always possible, and we do not recommend trying to reorganize larger, but well-tested, older functions in the codebase, unless there is a strong reason to do so (e.g., when adding a new feature).
Attributes that have been estimated from the data
should always have a name ending with trailing underscore.
For example the coefficients of some regression estimator
would be stored in a coef_
attribute after fit
has been called.
The estimated attributes are expected to be overridden when you call fit
a second time.
This follows the scikit-learn convention.
We start a name with a leading underscore to indicate that it is an internal implementation detail, not to be accessed directly from outside, of the enclosing context:
- the parent module (for a submodule name),
- or the module (for the name of a top-level function, class or global variable),
- or the class (for a method or attribute name).
Moreover, modules explicitly declare their interface through the __all__
attribute,
and any name not listed in __all__
should not be accessed from outside the module
In some cases when private functions are in a private module (filename beginning with an underscore), but are used outside of that file, we do not name them with a leading underscore.
Example:
nilearn
├── image.py # part of public API
├── __init__.py
├── maskers # part of public API
│ ├── __init__.py
│ ├── nifti_masker.py # part of public API
│ └── _validation.py # private to the maskers module
└── _utils.py # private to the nilearn module
Code inside maskers._validation.py
:
import numpy as np # not part of the public API
__all__ = ["check_mask_img", "ValidationError"] # all symbols in the public API
def check_mask_img(mask_img):
"""Public API of _validation module
can be used in nifti_masker module
but not the image module (which cannot import maskers._validation),
unless maskers/__init__.py imports it and lists it in __all__
to make it part of the maskers module's public API
"""
return _check_mask_shape(mask_img) and _check_mask_values(mask_img)
def _check_mask_shape(mask_img):
"""Private internal of _validation, cannot be used in nifti_masker"""
def _check_mask_values(mask_img):
"""Private internal of _validation, cannot be used in nifti_masker"""
class ValidationError(Exception):
"""Public API of _validation module"""
class _Validator:
"""Private internal of the _validation module"""
def validate(self, img):
"""Public API of _Validator"""
def _validate_shape(self, img):
"""Private internal of the _Validator class.
As we don't use the double leading underscore in nilearn we
cannot infer from the name alone if it is considered to be
exposed to subclasses or not.
"""
We use prettier to format HTML and CSS.
This is implemented via a pre-commit hook (see below) that can be run with
pre-commit run --all-files prettier
We use pre-commit to run a set of linters and autoformatters on the codebase.
To install pre-commit, run:
pip install pre-commit
Then run the following to install the pre-commit hooks:
pre-commit install
Pre-commit will then run all those hooks on the files you have staged for commit. Note that if some of those hooks fail you may have to edit some files and stage them again.
When fixing a bug, the first step is to write a minimal test that fails because of it, and then write the bugfix to make this test pass. For new code you should have roughly one test function per function covering every line and testing the logic of the function. They should run on small mocked data, cover a representative range of parameters.
Hint
It is easier to write good unit tests for short, self-contained functions. Try to keep this in mind when you write new functions. For more information about this coding approach, see test-driven development.
We use pytest to run our tests.
If you are not familiar with pytest, have a look at this introductory video by one of the pytest core developer.
In general tests for a specific module (say nilearn/image/image.py
)
are kept in a tests
folder in a separate module
with a name that matches the module being tested
(so in this case nilearn/image/tests/test_image.py
).
When you have added a test you can check that your changes worked
and didn't break anything by running pytest nilearn
.
To do quicker checks it's possible to run only a subset of tests:
pytest -v nilearn/module/tests/test_module.py
If you need to do some special "set up" for your tests (for example you need to generate some data, or a NiftiImage object or a file...) you can use pytest fixtures to help you mock this data (more information on pytest fixtures in this video).
Fixture are recognizable because they have a @pytest.fixture
decorator.
Fixtures that are shared by many tests modules can be found in nilearn/conftest.py
but some fixures specific to certain modules can also be kept in that testing module.
Before adding new fixtures, first check those that exist
in the test modules you are working in or in nilearn/conftest.py
.
Many tests must be seeded to avoid random failures.
When your test use random numbers,
you can seed a random number generator with numpy.random.default_rng
like in the following examples:
def test_something():
# set up
rng = np.random.default_rng(0)
my_number = rng.normal()
# the rest of the test
You can also use the rng
fixture.
def test_something(rng):
# set up
my_number = rng.normal()
# the rest of the test
Documentation must be understandable by people from different backgrounds. The “narrative” documentation should be an introduction to the concepts of the library. It includes very little code and should first help the user figure out which parts of the library he needs and then how to use it. It must be full of links, of easily-understandable titles, colorful boxes and figures.
Examples take a hands-on approach focused on a generic usecase from which users will be able to adapt code to solve their own problems. They include plain text for explanations, python code and its output and most importantly figures to depict its results. Each example should take only a few seconds to run.
To build our documentation, we are using sphinx for the main documentation and sphinx-gallery for the example tutorials. If you want to work on those, check out next section to learn how to use those tools to build documentation.
Here are the key steps you need to go through to copy the repo before contributing:
- fork the repo from github (fork button in the top right corner of our :nilearn-gh:`main github page <>`) and clone your fork locally:
git clone [email protected]:<your_username>/nilearn.git
- (optional but highly recommended) set up a virtual environment to wor in using whichever environment management tool you're used to and activate it. For example:
python3 -m venv nilearn
source nilearn/bin/activate
or:
conda create -n nilearn pip
conda activate nilearn
- install the forked version of
nilearn
Recommendation
When you install nilearn, it will use the version stored in the version control system (in this case git) to get the version number you would see if you typed in your terminal:
pip show nilearn
or:
python -c "import nilearn; print(nilearn.__version__)"
To make sure that you get the correct version number, you must fetch all the git tags from the nilearn github repository, by running the following commands:
# add the nilearn repo as an "upstream" remote
git remote add upstream https://github.com/nilearn/nilearn.git
# fetch all the tags
git fetch --all
# check that you got all the tags
git tag --list
You can then install nilearn in editable mode:
pip install -e '.[dev]'
This installs your local version of Nilearn,
along with all dependencies necessary for developers (hence the [dev]
tag).
For more information about the dependency installation options, see pyproject.toml
.
The installed version will also reflect any changes you make to your code.
- check that all tests pass with (this can take a while):
pytest nilearn
- (optional) install pre-commit hooks to run the linter and other checks before each commit:
pre-commit install
Here are the key steps you need to go through to contribute code to nilearn
:
- open or join an already existing issue explaining what you want to work on
- on your fork, create a new branch from main:
git checkout -b your_branch
- implement changes, lint and format
Recommendation
To lint your code and verify PEP8 compliance, you can run ruff locally on the changes you have made.
ruff check --fix <path_to_edited_file>
To format your code, you can also use ruff and run:
ruff format <path_to_edited_file>
Note that if you installed pre-commit and the pre-commit hooks, those commands will be run automatically before each commit.
- commit your changes on this branch (don't forget to write tests!)
- run the tests locally (to go faster, only run tests which are relevant to what you work on with, for example):
pytest -v nilearn/plotting/tests/test_surf_plotting.py
- push your changes to your online fork:
git push
- in github, open a pull request from your online fork to the main repo
(most likely from
your_fork:your_branch
tonilearn:main
). - check that all continuous integration tests pass
For more details about the Fork Clone Push workflows, read here.
If you wish to build documentation:
- First, ensure that you have installed sphinx and sphinx-gallery. When in your fork top folder, you can install the required packages using:
pip install '.[doc]'
- Then go to
nilearn/examples
ornilearn/doc
and make needed changes using reStructuredText files - You can now go to
nilearn/doc
and build the examples locally:
make html-strict
or, if you do not have make install (for instance under Windows):
python3 -m sphinx -b html -d _build/doctrees . _build/html
The full build can take a very long time. So if you don't need the plots, a quicker option is:
make html-noplot
- Visually review the output in
nilearn/doc/_build/html/auto_examples/
. If all looks well and there were no errors, commit and push the changes. - You can now open a Pull Request from Nilearn's Pull Request page.
- Request the CI builds the full documentation from your branch:
git commit --allow-empty -m "[full doc] request full build"
Tip
When generating documentation locally, you can build only specific files
to reduce building time. To do so, use the filename_pattern
:
python3 -m sphinx -D sphinx_gallery_conf.filename_pattern=\\
plot_decoding_tutorial.py -b html -d _build/doctrees . _build/html
We want atlases in nilearn to be internally consistent. Specifically, your atlas object should have three attributes (as with the existing atlases):
description
(bytes): A text description of the atlas. This should be brief but thorough, describing the source (paper), relevant information related to its construction (modality, dataset, method), and, if there is more than one map, a description of each map.labels
(list): a list of string labels corresponding to each atlas label, in the same (numerical) order as the atlas labelsmaps
(list or string): the path to the nifti image, or a list of paths
In addition, the atlas will need to be called by a fetcher. For example, see :nilearn-gh:`here <blob/main/nilearn/datasets/atlas.py>`.
Finally, as with other features, please provide a test for your atlas. Examples can be found :nilearn-gh:`here <blob/main/nilearn/datasets/tests/test_atlas.py>`.
The :mod:`nilearn.datasets` module provides functions to download some neuroimaging datasets, such as :func:`nilearn.datasets.fetch_haxby` or :func:`nilearn.datasets.fetch_atlas_harvard_oxford`.
Downloading data takes time and large datasets slow down the build of the example gallery. Moreover, downloads can fail for reasons we do not control, such as a web service that is temporarily unavailable. This is frustrating for users and a major issue for continuous integration (new code cannot be merged unless the examples run successfully on the CI infrastructure). Finally, datasets or the APIs that provide them sometimes change, in which case the downloader needs to be adapted.
As for any contributed feature, before starting working on a new downloader, we recommend opening a :nilearn-gh:`new issue <issues/new/choose>` to discuss whether it is necessary or if existing downloaders could be used instead.
To add a new fetcher, nilearn.datasets.utils
provides some helper functions,
such as get_dataset_dir
to find a directory where the dataset is or will be
stored according to the user's configuration, or fetch_files
to load files
from the disk or download them if they are missing.
The new fetcher, as any other function, also needs to be tested (in the relevant
submodule of nilearn.datasets.tests
). When the tests run, the fetcher does
not have access to the network and will not actually download files. This is to
avoid spurious failures due to unavailable network or servers, and to avoid
slowing down the tests with long downloads.
The functions from the standard library and the requests
library that
nilearn uses to download files are mocked: they are replaced with dummy
functions that return fake data.
Exactly what fake data is returned can be configured through the object
returned by the request_mocker
pytest fixture, defined in
nilearn.datasets.tests._testing
. The docstrings of this module and the
Sender
class it contains provide information on how to write a test using
this fixture. Existing tests can also serve as examples.
More information about the project organization, conventions, and maintenance process can be found there : :ref:`maintenance_process`.