nebari-dev / nebari-docsLinks
ð Documentation for Nebari
â16Updated last week
Alternatives and similar repositories for nebari-docs
Users that are interested in nebari-docs are comparing it to the libraries listed below
Sorting:
- The purpose of this repository is to make it as easy as possible to develop and use awesome Panel extensions.â57Updated last year
- Data science environments, for collaboration. âĻâ153Updated last week
- A pytest plugin for regression testing and regenerating Jupyter Notebooksâ52Updated this week
- ð§âðŦ Practical guide to big data analysis, with Pythonâ23Updated last year
- Kedro-Accelerator speeds up pipelines by parallelizing I/O in the background.â36Updated 3 years ago
- Edit pydantic models with widgets from the awesome Panel packageâ24Updated last year
- A framework for building print-oriented media with Jupyterâ37Updated last week
- ðŠī Nebari - your open source data science platformâ307Updated last week
- For when your data won't fit in your dataframeâ48Updated 2 months ago
- Bidirectional communication for the HoloViz ecosystemâ34Updated 2 months ago
- Simple markdown changelogs for GitHub repositoriesâ53Updated this week
- Cluster tools for running Dask on Databricksâ14Updated last year
- ð Pytest plugin for testing notebooksâ199Updated 5 months ago
- A place to provide Coiled feedbackâ19Updated 6 months ago
- Application creator and general launcher for JupyterHubâ40Updated last week
- Tools for making Prefect work better for typical data science workflowsâ18Updated 3 years ago
- Extremely lightweight compatibility layer between pandas and Polarsâ41Updated last year
- pytest plugin that checks URLsâ18Updated last year
- A Tree Widget using Jupyter-widgets protocol and jsTreeâ132Updated last year
- A toolbox ð§° for Jupyter notebooks ð: testing, experiment tracking, debugging, profiling, and more!â67Updated 11 months ago
- Plugin for The Littlest JupyterHub to build multiple user environments with repo2dockerâ62Updated last month
- â86Updated last week
- A GitHub action to build data science environment images with repo2docker and push them to registries.