Thanks for contributing to Jupyter Notebook!
Make sure to follow Project Jupyter's Code of Conduct for a friendly and welcoming collaborative environment.
Note: You will need NodeJS to build the extension package.
The jlpm
command is JupyterLab's pinned version of yarn that is installed with JupyterLab. You may use
yarn
or npm
in lieu of jlpm
below.
Note: we recommend using mamba
to speed the creating of the environment.
# create a new environment
mamba create -n notebook -c conda-forge python nodejs -y
# activate the environment
mamba activate notebook
# Install package in development mode
pip install -e ".[dev,test]"
# Link the notebook extension and @jupyter-notebook schemas
jlpm develop
# Enable the server extension
jupyter server extension enable notebook
notebook
follows a monorepo structure. To build all the packages at once:
jlpm build
There is also a watch
script to watch for changes and rebuild the app automatically:
jlpm watch
To make sure the notebook
server extension is installed:
$ jupyter server extension list
Config dir: /home/username/.jupyter
Config dir: /home/username/miniforge3/envs/notebook/etc/jupyter
jupyterlab enabled
- Validating jupyterlab...
jupyterlab 3.0.0 OK
notebook enabled
- Validating notebook...
notebook 7.0.0a0 OK
Config dir: /usr/local/etc/jupyter
Then start Jupyter Notebook with:
jupyter notebook
To run the tests:
jlpm run build:test
jlpm run test
There are also end to end tests to cover higher level user interactions, located in the ui-tests
folder. To run these tests:
cd ui-tests
# start a new Jupyter server in a terminal
jlpm start
# in a new terminal, run the tests
jlpm test
The test
script calls the Playwright test runner. You can pass additional arguments to playwright
by appending parameters to the command. For example to run the test in headed mode, jlpm test --headed
.
Checkout the Playwright Command Line Reference for more information about the available command line options.
Running the end to end tests in headful mode will trigger something like the following:
The repository is configured to use the Lerna caching system (via nx
) for some of the development scripts.
This helps speed up rebuilds when running jlpm run build
multiple times to avoid rebuilding packages that have not changed on disk.
To learn more about Lerna caching:
Often a PR might make changes to the user interface, which can cause the visual regression tests to fail.
If you want to update the reference snapshots while working on a PR you can post the following sentence as a GitHub comment:
bot please update playwright snapshots
This will trigger a GitHub Action that will run the UI tests automatically and push new commits to the branch if the reference snapshots have changed.
All non-python source code is formatted using prettier and python source code is formatted using blacks
When code is modified and committed, all staged files will be
automatically formatted using pre-commit git hooks (with help from
pre-commit. The benefit of
using a code formatters like prettier
and black
is that it removes the topic of
code style from the conversation when reviewing pull requests, thereby
speeding up the review process.
As long as your code is valid,
the pre-commit hook should take care of how it should look.
pre-commit
and its associated hooks will automatically be installed when
you run pip install -e ".[dev,test]"
To install pre-commit
manually, run the following:
pip install pre-commit
pre-commit install
You can invoke the pre-commit hook by hand at any time with:
pre-commit run
which should run any autoformatting on your code and tell you about any errors it couldn't fix automatically. You may also install black integration into your text editor to format code automatically.
If you have already committed files before setting up the pre-commit
hook with pre-commit install
, you can fix everything up using
pre-commit run --all-files
. You need to make the fixing commit
yourself after that.
You may also use the prettier npm script (e.g. npm run prettier
or
yarn prettier
or jlpm prettier
) to format the entire code base.
We recommend installing a prettier extension for your code editor and
configuring it to format your code with a keyboard shortcut or
automatically on save.
Some of the hooks only run on CI by default, but you can invoke them by
running with the --hook-stage manual
argument.
First make sure you have set up a development environment as described above.
Then run the following command to build the docs:
hatch run docs:build
In a separate terminal window, run the following command to serve the documentation:
hatch run docs:serve
Now open a web browser and navigate to http://localhost:8000
to access the documentation.
Alternatively you can also contribute to Jupyter Notebook without setting up a local environment, directly from a web browser:
- Gitpod integration is enabled. The Gitpod config automatically builds the Jupyter Notebook application and the documentation.
- GitHub’s built-in editor is suitable for contributing small fixes
- A more advanced github.dev editor can be accessed by pressing the dot (.) key while in the Jupyter Notebook GitHub repository,