Lectures

Contents

Date Title Materials
Lecture 0 June 2 Welcome to SURE 2025 slides
Lecture 1 June 3 Exploring data: into the tidyverse slides
Lecture 2 June 4 Data visualization: the grammar of graphics and ggplot2 slides
Lecture 3 June 5 Data visualization: categorical data slides
Lecture 4 June 6 Data visualization: quantitative data slides
Lecture 5 June 9 Unsupervised learning: principal component analysis slides
Lecture 6 June 10 Unsupervised learning: \(k\)-means clustering slides
Lecture 7 June 11 Unsupervised learning: hierarchical clustering slides
Lecture 8 June 12 Data visualization: density estimation slides
Lecture 9 June 13 Presentations slides
Lecture 10 June 16 Simulation slides
Lecture 11 June 17 Supervised learning: linear regression slides
Lecture 12 June 20 Supervised learning: model building slides
Lecture 13 June 23 Data wrangling with R’s data.table package slides
Lecture 14 June 24 Supervised learning: regularization slides
Lecture 15 June 25 Supervised learning: logistic regression slides
Lecture 16 June 26 Supervised learning: generalized linear models slides
Lecture 17 June 27 The command line and git slides