Exploratory Data Analysis and Data Quality
Learners can run structured EDA, profile data quality, inspect distributions and relationships, compare segments, investigate missingness and outliers, and write careful findings with evidence and limits.
Downloadable-first courseRead the lesson online, then use the downloadable pack to run the practice and worked notebooks locally. A browser lab can be added later after full visualization runtime validation.
Module sequence
- LessonRead the classroom explanation
- Practice activityUse the supplied notebook and dataset
- Module checkConfirm the skill before moving on
Notebook path
After downloading the pack, open modules/module-09/notebooks/module-09-practice.ipynb in JupyterLab.
