GitHub + Jupyter Notebooks = <3
Communicating ideas that combine code, data and visualizations can be hard, especially if you’re trying to collaborate in realtime with your colleagues. Whether you’re a researcher studying Wikipedia, an astronomer…
Communicating ideas that combine code, data and visualizations can be hard, especially if you’re trying to collaborate in realtime with your colleagues.
Whether you’re a researcher studying Wikipedia, an astronomer investigating the movements of galaxies in our cosmic neighborhood or a data-scientist at fashion retailer Stitch Fix, producing insights from data and sharing is a common challenge.
Jupyter notebooks solve this problem by making it easy to capture data-driven workflows that combine code, equations, text and visualizations and share them with others. From today Jupyter notebooks render in all their glory right here on GitHub.
With Git Large File Storage and Jupyter notebook support, GitHub has never been a better place to version and collaborate on data-intensive workflows. With more than 200,000 Jupyter notebooks already on GitHub we’re excited to level-up the GitHub-Jupyter experience.
Looking to get started? Simply commit a .ipynb
file to a new or existing repository to view the rendered notebook. Alternatively if you’re looking for some inspiration then check out this incredible gallery of Jupyter notebooks.
Written by
Related posts
GitHub and JFrog partner to unify code and binaries for DevSecOps
This partnership between GitHub and JFrog enables developers to manage code and binaries more efficiently on two of the most widely used developer platforms in the world.
2024 GitHub Accelerator: Meet the 11 projects shaping open source AI
Announcing the second cohort, delivering value to projects, and driving a new frontier.
Introducing GitHub Copilot Extensions: Unlocking unlimited possibilities with our ecosystem of partners
The world of Copilot is getting bigger, improving the developer experience by keeping developers in the flow longer and allowing them to do more in natural language.