A cookiecutter template for a custom Jupyter widget project using Svelte. With widget-svelte-cookiecutter you can create a custom Jupyter interactive widget project that uses Svelte for the frontend. This was adapted from the fantastic widget-ts-cookiecutter.
For an overview of how to use IPyWidgets + Svelte, check out this blog post.
Install cookiecutter:
$ pip install cookiecutter
After installing cookiecutter, use widget-svelte-cookiecutter:
$ cookiecutter https://github.com/cabreraalex/widget-svelte-cookiecutter
As widget-ts-cookiecutter runs, you will be asked for basic information about your custom Jupyter widget project. You will be prompted for the following information:
author_name
: your name or the name of your organization,author_email
: your project's contact email,github_project_name
: name of your custom Jupyter widget's GitHub repository,github_organization_name
: name of your custom Jupyter widget's GitHub user or organization,python_package_name
: name of the Python "back-end" package used in your custom widget.npm_package_name
: name for the npm "front-end" package holding the JavaScript
implementation used in your custom widget.npm_package_version
: initial version of the npm package.project_short_description
: a short description for your project that will
be used for both the "back-end" and "front-end" packages.After this, you will have a directory containing files used for creating a custom Jupyter widget. To check that eveything is set up as it should be, you should run the tests:
Create a dev environment:
conda create -n widget-dev -c conda-forge nodejs yarn python jupyterlab jupyter-packaging
conda activate widget-dev
Install the python. This will also build the TS package.
pip install -e .
When developing your extensions, you need to manually enable your extensions with the notebook / lab frontend. For lab, this is done by the command:
jupyter labextension develop --overwrite .
yarn run build
For classic notebook, you can run:
jupyter nbextension install --sys-prefix --symlink --overwrite --py <your python package name>
jupyter nbextension enable --sys-prefix --py <your python package name>
Note that the --symlink
flag doesn't work on Windows, so you will here have to run
the install
command every time that you rebuild your extension. For certain installations
you might also need another flag instead of --sys-prefix
, but we won't cover the meaning
of those flags here.
For Jupyter Notebook you can just watch for JS changes:
yarn watch
If you use JupyterLab to develop then you can watch the source directory and run JupyterLab at the same time in different terminals to watch for changes in the extension's source and automatically rebuild the widget.
# Watch the source directory in one terminal, automatically rebuilding when needed
yarn watch
# Watch to rebuild JupyterLab
jupyter labextension watch
# Run JupyterLab in another terminal
jupyter lab
After a change wait for the build to finish and then refresh your browser and the changes should take effect.
If you make a change to the python code then you will need to restart the notebook kernel to have it take effect.
, 'dev'
entry in _version.py
.package.json
npm login
npm publish
python setup.py sdist bdist_wheel
pip install twine
twine upload dist/<python package name>*
git tag <python package version identifier>
)_version.py
, and put it back to dev (e.g. 0.1.0 -> 0.2.0.dev).
Update the versions of the npm packages (without publishing).git push
and git push --tags
.