- how to write a python library that you can host for public/private use
- adding test coverage to data science python projects
- learning libraries like matplotlib, seaborn beyond what you see in tutorials
I think material for all fo this exists in different sources like documentation/stack over flow but either it's too detailed or too superfluous. The middle (intermediate) layer is often missing.