Data Visualization: Selection and Brushing
Modern data visualization benefits from interaction through digital devices. Users select items and visualizations update to show the highlighted items and react to the selection. In some cases, a selection triggers an action in another view of a visualization, a process called brushing. Through guided examples and exercises using altair (a Python interface to Vega-Lite), this courselet shows how to construct and respond to different types of selections and interactions.
Launch on Chameleon
Launching this artifact will open it within Chameleon’s shared Jupyter experiment environment, which is accessible to all Chameleon users with an active allocation.
Download ArchiveDownload an archive containing the files of this artifact.