Panel: the most flexible data app framework for Python Build Status Coverage Latest dev release Latest release Docs Binder Support Home | Installation instructions | Getting Started Guide | Reference Guides | Examples | License | Support Panel works with the tools you know and love Panel makes it easy to combine widgets, plots, tables and other viewable Python objects into custom analysis tools, applications, and dashboards. Panel works really well with the visualization tools you already know and love like Altair/ Vega, Bokeh, Datashader, Deck.gl/ pydeck, Echarts/ pyecharts, Folium, HoloViews, hvPlot, plotnine, Matplotlib, Plotly, PyVista/ VTK, Seaborn and more. Panel also works with the ipywidgets ecosystem. Panel provides bi-directional communication making it possible to react to clicks, selections, hover etc. events. You can develop in Jupyter Notebooks as well as editors like VS Code, PyCharm or Spyder. Panel provides a unique combination of deployment options. You can share your data and models as a web application running on the Tornado (default), Flask, Django or Fast API web server. a stand alone client side application powered by Pyodide or PyScript via panel convert. an interactive Jupyter notebook component. a static .html web page, a .gif video, a .png image and more. Panel has something to offer for every one from beginner to data pro. Panel is a member of the HoloViz ecosystem Panel is a member of the ambitious HoloViz dataviz ecosystem and has first class support for the other members like hvPlot (simple .hvplot plotting api), HoloViews (powerful plotting api), and Datashader (big data viz). Panel is built on top of Param. Param enables you to annotate your code with parameter ranges, documentation, and dependencies between parameters and code. With this approach, you don't ever have to commit to whether your code will be used in a notebook, a data app, in batch processing, or reports. you will write less code and be able to develop large, maintainable code bases! Mini getting-started Head over to the getting started guide for more! Installation Instructions Panel can be installed on Linux, Windows, or Mac with conda: conda install -c pyviz panel or with pip: pip install panel See the Environments section below for additional instructions for your environment. Interactive data apps Bring your data or model def model(n=5): return "⭐"*n Bind it to a Panel widget and lay it out. import panel as pn pn.extension() slider = pn.widgets.IntSlider(value=5, start=1, end=5) interactive_model = pn.bind(model, n=slider) layout = pn.Column(slider, interactive_model) For deployment on a web server wrap it in a nice template. pn.template.FastListTemplate( site="Panel", title="Example", main=[layout], ).servable() Start the server with panel serve name_of_script.py --show or panel serve name_of_notebook.ipynb --show Examples Get started Develop applications in your favorite notebook or editor environment, including Jupyter(Lab) notebooks, VSCode, Google Colab and many more, see our getting started guide for more details. Support & Feedback Usage questions and showcases -> HoloViz Community Bug reports and feature requests -> Github Developer discussions -> Gitter For more detail check out the HoloViz Community Guide. Contributing ❤️ Check out the Contributing Guide. License Panel is completely free and open-source. It is licensed under the BSD 3-Clause License. Sponsors The Panel project is grateful for the numerous contributions from the community including The awesome-panel.org project, tweets and videos by Marc Skov Madsen Inspiring blog posts, tweets and videos by Sophia Yang Cool videos by Thu Hien Vu The Panel project is also very grateful for the sponsorship by the organizations and companies below: