Jupyter notebooks provide a useful environment for interactive exploration of data. A common question I get, though, is how you can progress from this nonlinear, interactive, trial-and-error style of exploration to a more linear and reproducible analysis based on organized, packaged, and tested code. This series of videos presents a case study in how I personally approach reproducible data analysis within the Jupyter notebook.
Each video is approximately 5-8 minutes; the videos areavailable in a YouTube Playlist.Alternatively, below you can find the videos with some description and links to relevant resources
Published on March 03, 2017 07:00