Skip to content

Material for teaching array-oriented programming for data analysis in NumPy and Awkward Array

License

Notifications You must be signed in to change notification settings

hsf-training/array-oriented-programming

Array-oriented programming for data analysis

Material for teaching array-oriented programming for data analysis in NumPy and Awkward Array.

Usage

Building the book

If you'd like to develop and/or build the Array-oriented programming for data analysis book, you should:

  1. Clone this repository
  2. Run pip install -r requirements.txt (it is recommended you do this within a virtual environment)
  3. (Optional) Edit the books source files located in the array-oriented-programming/ directory
  4. Run jupyter-book clean array-oriented-programming/ to remove any existing builds
  5. Run jupyter-book build array-oriented-programming/

A fully-rendered HTML version of the book will be built in array-oriented-programming/_build/html/.

Hosting the book

Please see the Jupyter Book documentation to discover options for deploying a book online using services such as GitHub, GitLab, or Netlify.

For GitHub and GitLab deployment specifically, the cookiecutter-jupyter-book includes templates for, and information about, optional continuous integration (CI) workflow files to help easily and automatically deploy books online with GitHub or GitLab. For example, if you chose github for the include_ci cookiecutter option, your book template was created with a GitHub actions workflow file that, once pushed to GitHub, automatically renders and pushes your book to the gh-pages branch of your repo and hosts it on GitHub Pages when a push or pull request is made to the main branch.

Contributors

We welcome and recognize all contributions. You can see a list of current contributors in the contributors tab.

Credits

This project is created using the excellent open source Jupyter Book project and the executablebooks/cookiecutter-jupyter-book template.

About

Material for teaching array-oriented programming for data analysis in NumPy and Awkward Array

Resources

License

Code of conduct

Stars

Watchers

Forks