EDA for Machine Learning: Slides

Lecture slides for Exploratory Data Analysis for Machine Learning.

Part 1: Foundations of EDA

Chapter Slides
1. Exploratory Data Analysis eda-slides.html
2. Conditional Distributions conditioning-slides.html
3. Clustering clustering-slides.html
4. Statistical Simulation simulation-slides.html
5. Sampling and Study Design study-design-slides.html
6. Information Theory info-theory-slides.html

Part 2: Linear Algebra Methods

Chapter Slides
7. Linear Regression lin-reg-slides.html
8. Principal Component Analysis pca-slides.html
9. Linear Discriminant Analysis lin-discr-slides.html

Part 3: Text Data

Chapter Slides
10. Text as Data text-as-data-slides.html
11. Topic Models topic-models-slides.html

Part 4: Time Series Data

Chapter Slides
12. Time Series Data ts-data-slides.html
13. Time Domain Methods ts-time-domain-slides.html
14. Frequency Domain Methods ts-freq-domain-slides.html

Part 5: Graph Data

Chapter Slides
15. Graph Theory for Machine Learning graph-theory-slides.html

Usage

These slides are designed as visual overviews for lecture or self-study orientation. We recommend using them as the first step in the slides → workbooks → book learning sequence.

  • Slides: Survey the terrain (“What am I about to learn?”)
  • Workbooks: Attempt exercises (“Can I do this?”)
  • Book: Read for understanding (“Why does this work?”)

How to Cite

Thrall, T. (2025). Exploratory Data Analysis for Machine Learning. https://tthrall.github.io/eda4ml/