Python conditionals, loops, functions, aggregating (continued)


Description


This lecture discusses the general strategic impact of data, open data, data encoding, data provenance, data wrangling, includeing merging, aggregation, filtering. Continued introduction to coding includes conditionals, loops, functions, missing values, filtering, group-by. We will also introduce a basic Kaggle model for the Titantic dataset.

Learning Objectives


None

Readings (and Tasks to Be Completed Before Class)


Chapter 2: End to End Machine Learning Project

Notebooks


See all notebooks link.