Statistical Foundations for Data Science

Statistics
Data Science
Lecture Notes
Decision Science

This course builds the statistical foundation for applied data science by connecting core statistical ideas to decisions under uncertainty, data design, variation, and communication.

By the end, a reader should be able to describe a data-generating process, distinguish signal from variability, explain sampling and measurement bias, summarize data responsibly, fit and critique basic models, and communicate statistical evidence in a decision-facing way.

Histogram showing a skewed resolution-time distribution from the statistical foundations course

Figure: A skewed service-resolution distribution used to show why summary statistics need context before they become decision evidence (adapted from Lecture 04: Distributions, Variability, and Tail Risk).

Lecture Sequence