đŸŸ Xarray is now 10 years old! 🎉

Contributing to xarray#

Note

Large parts of this document came from the Pandas Contributing Guide.

Overview#

We welcome your skills and enthusiasm at the xarray project!. There are numerous opportunities to contribute beyond just writing code. All contributions, including bug reports, bug fixes, documentation improvements, enhancement suggestions, and other ideas are welcome.

If you have any questions on the process or how to fix something feel free to ask us! The recommended place to ask a question is on GitHub Discussions , but we also have a Discord and a mailing list. There is also a “python-xarray” tag on Stack Overflow which we monitor for questions.

We also have a biweekly community call, details of which are announced on the Developers meeting. You are very welcome to join! Though we would love to hear from you, there is no expectation to contribute during the meeting either - you are always welcome to just sit in and listen.

This project is a community effort, and everyone is welcome to contribute. Everyone within the community is expected to abide by our code of conduct.

Where to start?#

If you are brand new to xarray or open-source development, we recommend going through the GitHub “issues” tab to find issues that interest you. Some issues are particularly suited for new contributors by the label Documentation and good first issue where you could start out. These are well documented issues, that do not require a deep understanding of the internals of xarray.

Once you’ve found an interesting issue, you can return here to get your development environment setup. The xarray project does not assign issues. Issues are “assigned” by opening a Pull Request(PR).

Bug reports and enhancement requests#

Bug reports are an important part of making xarray more stable. Having a complete bug report will allow others to reproduce the bug and provide insight into fixing.

Trying out the bug-producing code on the main branch is often a worthwhile exercise to confirm that the bug still exists. It is also worth searching existing bug reports and pull requests to see if the issue has already been reported and/or fixed.

Submitting a bug report#

If you find a bug in the code or documentation, do not hesitate to submit a ticket to the Issue Tracker. You are also welcome to post feature requests or pull requests.

If you are reporting a bug, please use the provided template which includes the following:

  1. Include a short, self-contained Python snippet reproducing the problem. You can format the code nicely by using GitHub Flavored Markdown:

    ```python
    import xarray as xr
    ds = xr.Dataset(...)
    
    ...
    ```
    
  2. Include the full version string of xarray and its dependencies. You can use the built in function:

    ```python
    import xarray as xr
    xr.show_versions()
    
    ...
    ```
    
  3. Explain why the current behavior is wrong/not desired and what you expect instead.

The issue will then show up to the xarray community and be open to comments/ideas from others.

See this stackoverflow article for tips on writing a good bug report .

Now that you have an issue you want to fix, enhancement to add, or documentation to improve, you need to learn how to work with GitHub and the xarray code base.

Version control, Git, and GitHub#

The code is hosted on GitHub. To contribute you will need to sign up for a free GitHub account. We use Git for version control to allow many people to work together on the project.

Some great resources for learning Git:

Getting started with Git#

GitHub has instructions for setting up Git including installing git, setting up your SSH key, and configuring git. All these steps need to be completed before you can work seamlessly between your local repository and GitHub.

Note

The following instructions assume you want to learn how to interact with github via the git command-line utility, but contributors who are new to git may find it easier to use other tools instead such as Github Desktop.

Development workflow#

To keep your work well organized, with readable history, and in turn make it easier for project maintainers to see what you’ve done, and why you did it, we recommend you to follow workflow:

  1. Create an account on GitHub if you do not already have one.

  2. You will need your own fork to work on the code. Go to the xarray project page and hit the Fork button near the top of the page. This creates a copy of the code under your account on the GitHub server.

  3. Clone your fork to your machine:

    git clone https://github.com/your-user-name/xarray.git
    cd xarray
    git remote add upstream https://github.com/pydata/xarray.git
    

    This creates the directory xarray and connects your repository to the upstream (main project) xarray repository.

Creating a development environment#

To test out code changes locally, you’ll need to build xarray from source, which requires you to create a local development environment.

Update the main branch#

First make sure you have followed Setting up xarray for development

Before starting a new set of changes, fetch all changes from upstream/main, and start a new feature branch from that. From time to time you should fetch the upstream changes from GitHub:

git fetch upstream
git merge upstream/main

This will combine your commits with the latest xarray git main. If this leads to merge conflicts, you must resolve these before submitting your pull request. If you have uncommitted changes, you will need to git stash them prior to updating. This will effectively store your changes, which can be reapplied after updating.

Create a new feature branch#

Create a branch to save your changes, even before you start making changes. You want your main branch to contain only production-ready code:

git checkout -b shiny-new-feature

This changes your working directory to the shiny-new-feature branch. Keep any changes in this branch specific to one bug or feature so it is clear what the branch brings to xarray. You can have many “shiny-new-features” and switch in between them using the git checkout command.

Generally, you will want to keep your feature branches on your public GitHub fork of xarray. To do this, you git push this new branch up to your GitHub repo. Generally (if you followed the instructions in these pages, and by default), git will have a link to your fork of the GitHub repo, called origin. You push up to your own fork with:

git push origin shiny-new-feature

In git >= 1.7 you can ensure that the link is correctly set by using the --set-upstream option:

git push --set-upstream origin shiny-new-feature

From now on git will know that shiny-new-feature is related to the shiny-new-feature branch in the GitHub repo.

The editing workflow#

  1. Make some changes

  2. See which files have changed with git status. You’ll see a listing like this one:

    # On branch shiny-new-feature
    # Changed but not updated:
    #   (use "git add <file>..." to update what will be committed)
    #   (use "git checkout -- <file>..." to discard changes in working directory)
    #
    #  modified:   README
    
  3. Check what the actual changes are with git diff.

4. Build the documentation run for the documentation changes.

Run the test suite for code changes.

Commit and push your changes#

  1. To commit all modified files into the local copy of your repo, do git commit -am 'A commit message'.

  2. To push the changes up to your forked repo on GitHub, do a git push.

Open a pull request#

When you’re ready or need feedback on your code, open a Pull Request (PR) so that the xarray developers can give feedback and eventually include your suggested code into the main branch. Pull requests (PRs) on GitHub are the mechanism for contributing to xarray’s code and documentation.

Enter a title for the set of changes with some explanation of what you’ve done. Follow the PR template, which looks like this.

[ ]Closes #xxxx
[ ]Tests added
[ ]User visible changes (including notable bug fixes) are documented in whats-new.rst
[ ]New functions/methods are listed in api.rst

Mention anything you’d like particular attention for - such as a complicated change or some code you are not happy with. If you don’t think your request is ready to be merged, just say so in your pull request message and use the “Draft PR” feature of GitHub. This is a good way of getting some preliminary code review.

Creating a development environment#

To test out code changes locally, you’ll need to build xarray from source, which requires a Python environment. If you’re making documentation changes, you can skip to Contributing to the documentation but you won’t be able to build the documentation locally before pushing your changes.

Note

For small changes, such as fixing a typo, you don’t necessarily need to build and test xarray locally. If you make your changes then commit and push them to a new branch, xarray’s automated continuous integration tests will run and check your code in various ways. You can then try to fix these problems by committing and pushing more commits to the same branch.

You can also avoid building the documentation locally by instead viewing the updated documentation via the CI.

To speed up this feedback loop or for more complex development tasks you should build and test xarray locally.

Creating a Python Environment#

Before starting any development, you’ll need to create an isolated xarray development environment:

We’ll now kick off a two-step process:

  1. Install the build dependencies

  2. Build and install xarray

# Create and activate the build environment
conda create -c conda-forge -n xarray-tests python=3.10

# This is for Linux and MacOS
conda env update -f ci/requirements/environment.yml

# On windows, use environment-windows.yml instead
conda env update -f ci/requirements/environment-windows.yml

conda activate xarray-tests

# or with older versions of Anaconda:
source activate xarray-tests

# Build and install xarray
pip install -e .

At this point you should be able to import xarray from your locally built version:

$ python  # start an interpreter
>>> import xarray
>>> xarray.__version__
'0.10.0+dev46.g015daca'

This will create the new environment, and not touch any of your existing environments, nor any existing Python installation.

To view your environments:

conda info -e

To return to your root environment:

conda deactivate

See the full conda docs here.

Install pre-commit hooks#

We highly recommend that you setup pre-commit hooks to automatically run all the above tools every time you make a git commit. To install the hooks:

python -m pip install pre-commit
pre-commit install

This can be done by running:

pre-commit run

from the root of the xarray repository. You can skip the pre-commit checks with git commit --no-verify.

Contributing to the documentation#

If you’re not the developer type, contributing to the documentation is still of huge value. You don’t even have to be an expert on xarray to do so! In fact, there are sections of the docs that are worse off after being written by experts. If something in the docs doesn’t make sense to you, updating the relevant section after you figure it out is a great way to ensure it will help the next person.

About the xarray documentation#

The documentation is written in reStructuredText, which is almost like writing in plain English, and built using Sphinx. The Sphinx Documentation has an excellent introduction to reST. Review the Sphinx docs to perform more complex changes to the documentation as well.

Some other important things to know about the docs:

  • The xarray documentation consists of two parts: the docstrings in the code itself and the docs in this folder xarray/doc/.

    The docstrings are meant to provide a clear explanation of the usage of the individual functions, while the documentation in this folder consists of tutorial-like overviews per topic together with some other information (what’s new, installation, etc).

  • The docstrings follow the NumPy Docstring Standard, which is used widely in the Scientific Python community. This standard specifies the format of the different sections of the docstring. Refer to the documentation for the Numpy docstring format for a detailed explanation, or look at some of the existing functions to extend it in a similar manner.

  • The tutorials make heavy use of the ipython directive sphinx extension. This directive lets you put code in the documentation which will be run during the doc build. For example:

    .. ipython:: python
    
        x = 2
        x**3
    

    will be rendered as:

    In [1]: x = 2
    
    In [2]: x**3
    Out[2]: 8
    

    Almost all code examples in the docs are run (and the output saved) during the doc build. This approach means that code examples will always be up to date, but it does make building the docs a bit more complex.

  • Our API documentation in doc/api.rst houses the auto-generated documentation from the docstrings. For classes, there are a few subtleties around controlling which methods and attributes have pages auto-generated.

    Every method should be included in a toctree in api.rst, else Sphinx will emit a warning.

How to build the xarray documentation#

Requirements#

Make sure to follow the instructions on creating a development environment above, but to build the docs you need to use the environment file ci/requirements/doc.yml. You should also use this environment and these steps if you want to view changes you’ve made to the docstrings.

# Create and activate the docs environment
conda env create -f ci/requirements/doc.yml
conda activate xarray-docs

# or with older versions of Anaconda:
source activate xarray-docs

# Build and install a local, editable version of xarray
pip install -e .

Building the documentation#

To build the documentation run:

cd doc/
make html

Then you can find the HTML output files in the folder xarray/doc/_build/html/.

To see what the documentation now looks like with your changes, you can view the HTML build locally by opening the files in your local browser. For example, if you normally use Google Chrome as your browser, you could enter:

google-chrome _build/html/quick-overview.html

in the terminal, running from within the doc/ folder. You should now see a new tab pop open in your local browser showing the quick-overview page of the documentation. The different pages of this local build of the documentation are linked together, so you can browse the whole documentation by following links the same way you would on the officially-hosted xarray docs site.

The first time you build the docs, it will take quite a while because it has to run all the code examples and build all the generated docstring pages. In subsequent evocations, Sphinx will try to only build the pages that have been modified.

If you want to do a full clean build, do:

make clean
make html

Writing ReST pages#

Most documentation is either in the docstrings of individual classes and methods, in explicit .rst files, or in examples and tutorials. All of these use the ReST syntax and are processed by Sphinx.

This section contains additional information and conventions how ReST is used in the xarray documentation.

Section formatting#

We aim to follow the recommendations from the Python documentation and the Sphinx reStructuredText documentation for section markup characters,

  • * with overline, for chapters

  • =, for heading

  • -, for sections

  • ~, for subsections

  • ** text **, for bold text

Referring to other documents and sections#

Sphinx allows internal references between documents.

Documents can be linked with the :doc: directive:

See the :doc:`/getting-started-guide/installing`

See the :doc:`/getting-started-guide/quick-overview`

will render as:

See the Installation

See the Quick Overview

Including figures and files#

Image files can be directly included in pages with the image:: directive.

Contributing to the code base#

Code standards#

Writing good code is not just about what you write. It is also about how you write it. During Continuous Integration testing, several tools will be run to check your code for stylistic errors. Generating any warnings will cause the test to fail. Thus, good style is a requirement for submitting code to xarray.

In addition, because a lot of people use our library, it is important that we do not make sudden changes to the code that could have the potential to break a lot of user code as a result, that is, we need it to be as backwards compatible as possible to avoid mass breakages.

Code Formatting#

xarray uses several tools to ensure a consistent code format throughout the project:

  • Black for standardized code formatting,

  • blackdoc for standardized code formatting in documentation,

  • ruff for code quality checks and standardized order in imports

  • absolufy-imports for absolute instead of relative imports from different files,

  • mypy for static type checking on type hints.

We highly recommend that you setup pre-commit hooks to automatically run all the above tools every time you make a git commit. This can be done by running:

pre-commit install

from the root of the xarray repository. You can skip the pre-commit checks with git commit --no-verify.

Backwards Compatibility#

Please try to maintain backwards compatibility. xarray has a growing number of users with lots of existing code, so don’t break it if at all possible. If you think breakage is required, clearly state why as part of the pull request.

Be especially careful when changing function and method signatures, because any change may require a deprecation warning. For example, if your pull request means that the argument old_arg to func is no longer valid, instead of simply raising an error if a user passes old_arg, we would instead catch it:

def func(new_arg, old_arg=None):
    if old_arg is not None:
        from warnings import warn

        warn(
            "`old_arg` has been deprecated, and in the future will raise an error."
            "Please use `new_arg` from now on.",
            DeprecationWarning,
        )

        # Still do what the user intended here

This temporary check would then be removed in a subsequent version of xarray. This process of first warning users before actually breaking their code is known as a “deprecation cycle”, and makes changes significantly easier to handle both for users of xarray, and for developers of other libraries that depend on xarray.

Testing With Continuous Integration#

The xarray test suite runs automatically via the GitHub Actions, continuous integration service, once your pull request is submitted.

A pull-request will be considered for merging when you have an all ‘green’ build. If any tests are failing, then you will get a red ‘X’, where you can click through to see the individual failed tests. This is an example of a green build.

_images/ci.png

Note

Each time you push to your PR branch, a new run of the tests will be triggered on the CI. If they haven’t already finished, tests for any older commits on the same branch will be automatically cancelled.

Test-driven development/code writing#

xarray is serious about testing and strongly encourages contributors to embrace test-driven development (TDD). This development process “relies on the repetition of a very short development cycle: first the developer writes an (initially failing) automated test case that defines a desired improvement or new function, then produces the minimum amount of code to pass that test.” So, before actually writing any code, you should write your tests. Often the test can be taken from the original GitHub issue. However, it is always worth considering additional use cases and writing corresponding tests.

Adding tests is one of the most common requests after code is pushed to xarray. Therefore, it is worth getting in the habit of writing tests ahead of time so that this is never an issue.

Like many packages, xarray uses pytest and the convenient extensions in numpy.testing.

Writing tests#

All tests should go into the tests subdirectory of the specific package. This folder contains many current examples of tests, and we suggest looking to these for inspiration.

The xarray.testing module has many special assert functions that make it easier to make statements about whether DataArray or Dataset objects are equivalent. The easiest way to verify that your code is correct is to explicitly construct the result you expect, then compare the actual result to the expected correct result:

def test_constructor_from_0d():
    expected = Dataset({None: ([], 0)})[None]
    actual = DataArray(0)
    assert_identical(expected, actual)

Transitioning to pytest#

xarray existing test structure is mostly class-based, meaning that you will typically find tests wrapped in a class.

class TestReallyCoolFeature: ...

Going forward, we are moving to a more functional style using the pytest framework, which offers a richer testing framework that will facilitate testing and developing. Thus, instead of writing test classes, we will write test functions like this:

def test_really_cool_feature(): ...

Using pytest#

Here is an example of a self-contained set of tests that illustrate multiple features that we like to use.

  • functional style: tests are like test_* and only take arguments that are either fixtures or parameters

  • pytest.mark can be used to set metadata on test functions, e.g. skip or xfail.

  • using parametrize: allow testing of multiple cases

  • to set a mark on a parameter, pytest.param(..., marks=...) syntax should be used

  • fixture, code for object construction, on a per-test basis

  • using bare assert for scalars and truth-testing

  • assert_equal and assert_identical from the xarray.testing module for xarray object comparisons.

  • the typical pattern of constructing an expected and comparing versus the result

We would name this file test_cool_feature.py and put in an appropriate place in the xarray/tests/ structure.

import pytest
import numpy as np
import xarray as xr
from xarray.testing import assert_equal


@pytest.mark.parametrize("dtype", ["int8", "int16", "int32", "int64"])
def test_dtypes(dtype):
    assert str(np.dtype(dtype)) == dtype


@pytest.mark.parametrize(
    "dtype",
    [
        "float32",
        pytest.param("int16", marks=pytest.mark.skip),
        pytest.param(
            "int32", marks=pytest.mark.xfail(reason="to show how it works")
        ),
    ],
)
def test_mark(dtype):
    assert str(np.dtype(dtype)) == "float32"


@pytest.fixture
def dataarray():
    return xr.DataArray([1, 2, 3])


@pytest.fixture(params=["int8", "int16", "int32", "int64"])
def dtype(request):
    return request.param


def test_series(dataarray, dtype):
    result = dataarray.astype(dtype)
    assert result.dtype == dtype

    expected = xr.DataArray(np.array([1, 2, 3], dtype=dtype))
    assert_equal(result, expected)

A test run of this yields

((xarray) $ pytest test_cool_feature.py -v
================================= test session starts ==================================
platform darwin -- Python 3.10.6, pytest-7.2.0, pluggy-1.0.0 --
cachedir: .pytest_cache
plugins: hypothesis-6.56.3, cov-4.0.0
collected 11 items

xarray/tests/test_cool_feature.py::test_dtypes[int8] PASSED                       [  9%]
xarray/tests/test_cool_feature.py::test_dtypes[int16] PASSED                      [ 18%]
xarray/tests/test_cool_feature.py::test_dtypes[int32] PASSED                      [ 27%]
xarray/tests/test_cool_feature.py::test_dtypes[int64] PASSED                      [ 36%]
xarray/tests/test_cool_feature.py::test_mark[float32] PASSED                      [ 45%]
xarray/tests/test_cool_feature.py::test_mark[int16] SKIPPED (unconditional skip)  [ 54%]
xarray/tests/test_cool_feature.py::test_mark[int32] XFAIL (to show how it works)  [ 63%]
xarray/tests/test_cool_feature.py::test_series[int8] PASSED                       [ 72%]
xarray/tests/test_cool_feature.py::test_series[int16] PASSED                      [ 81%]
xarray/tests/test_cool_feature.py::test_series[int32] PASSED                      [ 90%]
xarray/tests/test_cool_feature.py::test_series[int64] PASSED                      [100%]


==================== 9 passed, 1 skipped, 1 xfailed in 1.83 seconds ====================

Tests that we have parametrized are now accessible via the test name, for example we could run these with -k int8 to sub-select only those tests which match int8.

((xarray) bash-3.2$ pytest  test_cool_feature.py  -v -k int8
================================== test session starts ==================================
platform darwin -- Python 3.10.6, pytest-7.2.0, pluggy-1.0.0 --
cachedir: .pytest_cache
plugins: hypothesis-6.56.3, cov-4.0.0
collected 11 items

test_cool_feature.py::test_dtypes[int8] PASSED
test_cool_feature.py::test_series[int8] PASSED

Running the test suite#

The tests can then be run directly inside your Git clone (without having to install xarray) by typing:

pytest xarray

The tests suite is exhaustive and takes a few minutes. Often it is worth running only a subset of tests first around your changes before running the entire suite.

The easiest way to do this is with:

pytest xarray/path/to/test.py -k regex_matching_test_name

Or with one of the following constructs:

pytest xarray/tests/[test-module].py
pytest xarray/tests/[test-module].py::[TestClass]
pytest xarray/tests/[test-module].py::[TestClass]::[test_method]

Using pytest-xdist, one can speed up local testing on multicore machines, by running pytest with the optional -n argument:

pytest xarray -n 4

This can significantly reduce the time it takes to locally run tests before submitting a pull request.

For more, see the pytest documentation.

Running the performance test suite#

Performance matters and it is worth considering whether your code has introduced performance regressions. xarray is starting to write a suite of benchmarking tests using asv to enable easy monitoring of the performance of critical xarray operations. These benchmarks are all found in the xarray/asv_bench directory.

To use all features of asv, you will need either conda or virtualenv. For more details please check the asv installation webpage.

To install asv:

python -m pip install asv

If you need to run a benchmark, change your directory to asv_bench/ and run:

asv continuous -f 1.1 upstream/main HEAD

You can replace HEAD with the name of the branch you are working on, and report benchmarks that changed by more than 10%. The command uses conda by default for creating the benchmark environments. If you want to use virtualenv instead, write:

asv continuous -f 1.1 -E virtualenv upstream/main HEAD

The -E virtualenv option should be added to all asv commands that run benchmarks. The default value is defined in asv.conf.json.

Running the full benchmark suite can take up to one hour and use up a few GBs of RAM. Usually it is sufficient to paste only a subset of the results into the pull request to show that the committed changes do not cause unexpected performance regressions. You can run specific benchmarks using the -b flag, which takes a regular expression. For example, this will only run tests from a xarray/asv_bench/benchmarks/groupby.py file:

asv continuous -f 1.1 upstream/main HEAD -b ^groupby

If you want to only run a specific group of tests from a file, you can do it using . as a separator. For example:

asv continuous -f 1.1 upstream/main HEAD -b groupby.GroupByMethods

will only run the GroupByMethods benchmark defined in groupby.py.

You can also run the benchmark suite using the version of xarray already installed in your current Python environment. This can be useful if you do not have virtualenv or conda, or are using the setup.py develop approach discussed above; for the in-place build you need to set PYTHONPATH, e.g. PYTHONPATH="$PWD/.." asv [remaining arguments]. You can run benchmarks using an existing Python environment by:

asv run -e -E existing

or, to use a specific Python interpreter,:

asv run -e -E existing:python3.10

This will display stderr from the benchmarks, and use your local python that comes from your $PATH.

Learn how to write a benchmark and how to use asv from the documentation .

Documenting your code#

Changes should be reflected in the release notes located in doc/whats-new.rst. This file contains an ongoing change log for each release. Add an entry to this file to document your fix, enhancement or (unavoidable) breaking change. Make sure to include the GitHub issue number when adding your entry (using :issue:`1234`, where 1234 is the issue/pull request number).

If your code is an enhancement, it is most likely necessary to add usage examples to the existing documentation. This can be done by following the guidelines for contributing to the documentation.

Contributing your changes to xarray#

Committing your code#

Keep style fixes to a separate commit to make your pull request more readable.

Once you’ve made changes, you can see them by typing:

git status

If you have created a new file, it is not being tracked by git. Add it by typing:

git add path/to/file-to-be-added.py

Doing ‘git status’ again should give something like:

# On branch shiny-new-feature
#
#       modified:   /relative/path/to/file-you-added.py
#

The following defines how a commit message should ideally be structured:

  • A subject line with < 72 chars.

  • One blank line.

  • Optionally, a commit message body.

Please reference the relevant GitHub issues in your commit message using GH1234 or #1234. Either style is fine, but the former is generally preferred.

Now you can commit your changes in your local repository:

git commit -m

Pushing your changes#

When you want your changes to appear publicly on your GitHub page, push your forked feature branch’s commits:

git push origin shiny-new-feature

Here origin is the default name given to your remote repository on GitHub. You can see the remote repositories:

git remote -v

If you added the upstream repository as described above you will see something like:

origin  git@github.com:yourname/xarray.git (fetch)
origin  git@github.com:yourname/xarray.git (push)
upstream        git://github.com/pydata/xarray.git (fetch)
upstream        git://github.com/pydata/xarray.git (push)

Now your code is on GitHub, but it is not yet a part of the xarray project. For that to happen, a pull request needs to be submitted on GitHub.

Review your code#

When you’re ready to ask for a code review, file a pull request. Before you do, once again make sure that you have followed all the guidelines outlined in this document regarding code style, tests, performance tests, and documentation. You should also double check your branch changes against the branch it was based on:

  1. Navigate to your repository on GitHub – your-user-name/xarray

  2. Click on Branches

  3. Click on the Compare button for your feature branch

  4. Select the base and compare branches, if necessary. This will be main and shiny-new-feature, respectively.

Finally, make the pull request#

If everything looks good, you are ready to make a pull request. A pull request is how code from a local repository becomes available to the GitHub community and can be looked at and eventually merged into the main version. This pull request and its associated changes will eventually be committed to the main branch and available in the next release. To submit a pull request:

  1. Navigate to your repository on GitHub

  2. Click on the Pull Request button

  3. You can then click on Commits and Files Changed to make sure everything looks okay one last time

  4. Write a description of your changes in the Preview Discussion tab

  5. Click Send Pull Request.

This request then goes to the repository maintainers, and they will review the code.

If you have made updates to the documentation, you can now see a preview of the updated docs by clicking on “Details” under the docs/readthedocs.org check near the bottom of the list of checks that run automatically when submitting a PR, then clicking on the “View Docs” button on the right (not the big green button, the small black one further down).

_images/view-docs.png

If you need to make more changes, you can make them in your branch, add them to a new commit, push them to GitHub, and the pull request will automatically be updated. Pushing them to GitHub again is done by:

git push origin shiny-new-feature

This will automatically update your pull request with the latest code and restart the Continuous Integration tests.

Delete your merged branch (optional)#

Once your feature branch is accepted into upstream, you’ll probably want to get rid of the branch. First, update your main branch to check that the merge was successful:

git fetch upstream
git checkout main
git merge upstream/main

Then you can do:

git branch -D shiny-new-feature

You need to use a upper-case -D because the branch was squashed into a single commit before merging. Be careful with this because git won’t warn you if you accidentally delete an unmerged branch.

If you didn’t delete your branch using GitHub’s interface, then it will still exist on GitHub. To delete it there do:

git push origin --delete shiny-new-feature

PR checklist#

  • Properly comment and document your code. See “Documenting your code”.

  • Test that the documentation builds correctly by typing make html in the doc directory. This is not strictly necessary, but this may be easier than waiting for CI to catch a mistake. See “Contributing to the documentation”.

  • Test your code.

    • Write new tests if needed. See “Test-driven development/code writing”.

    • Test the code using Pytest. Running all tests (type pytest in the root directory) takes a while, so feel free to only run the tests you think are needed based on your PR (example: pytest xarray/tests/test_dataarray.py). CI will catch any failing tests.

    • By default, the upstream dev CI is disabled on pull request and push events. You can override this behavior per commit by adding a [test-upstream] tag to the first line of the commit message. For documentation-only commits, you can skip the CI per commit by adding a [skip-ci] tag to the first line of the commit message.

  • Properly format your code and verify that it passes the formatting guidelines set by Black and Flake8. See “Code formatting”. You can use pre-commit to run these automatically on each commit.

    • Run pre-commit run --all-files in the root directory. This may modify some files. Confirm and commit any formatting changes.

  • Push your code and create a PR on GitHub.

  • Use a helpful title for your pull request by summarizing the main contributions rather than using the latest commit message. If the PR addresses an issue, please reference it.