1 |
Introduction to course and machine learning |
HTML / PDF |
See slides |
N/A |
Anaconda guide |
|
2 |
Introduction to Python |
HTML / PDF |
Notebook / HTML |
Notebook / HTML |
Reading |
|
3 |
Model and hyperparameter selection |
HTML / PDF |
Notebook / HTML |
Notebook / HTML |
Reading |
|
4 |
Supervised ML |
HTML / PDF |
Notebook / HTML |
Notebook / HTML |
Reading |
|
5 |
Unsupervised ML |
HTML / PDF |
Notebook / HTML |
Notebook / HTML |
Reading |
|
6 |
Explainability |
HTML / PDF |
Notebook / HTML |
Notebook / HTML |
Reading |
|
7 |
Fairness |
HTML / PDF |
Notebook / HTML |
Notebook / HTML |
Reading |
|
8 |
Causality – Heterogeneous treatment effects |
HTML / PDF |
Notebook / HTML |
Notebook / HTML |
Reading |
|
9 |
Causality – Double machine learning |
HTML / PDF |
Notebook / HTML |
Notebook / HTML |
Reading |
|