Bokeh in Jupyter Notebooks ========================== Welcome to [Bokeh](https://bokeh.org/) in Jupyter Notebooks! Bokeh is a Python interactive visualization library for large datasets that natively uses the latest web technologies. Its goal is to provide elegant, concise construction of novel graphics in the style of Protovis/D3, while delivering high-performance interactivity over large data to thin clients. These Jupyter notebooks provide useful Bokeh examples and a tutorial to get started. You can download the repository and execute `jupyter notebook` from your terminal to try out the notebooks locally on your own machine. Alternatively, you can immediately launch live versions of the Tutorial notebooks in your browser on [mybinder.org](https://mybinder.org/v2/gh/bokeh/bokeh-notebooks/master?filepath=tutorial%2F00%20-%20Introduction%20and%20Setup.ipynb). Please visit the [Bokeh web page](https://bokeh.org) for more information and full documentation, and the [Bokeh Discourse](https://discourse.bokeh.org/) for community discussion. Be sure to follow us on Twitter [@bokeh](https://twitter.com/bokeh)!