CS109
Course Resources
Syllabus
Schedule
Honor Code
Office Hours
Course Reader
Python Review
Latex Cheat Sheet
Lecture Videos
AIWG Student Guide
Midterm
Challenge
Final
Problem Sets
1. Core Probability
2. Discrete Random Variables
3. Continuous Random Variables
4. Probabilistic Models
5. Uncertainty Theory
6. Information Theory + MLE
7. Machine Learning
Lecture
1. Welcome
2. Conditioning and Bayes
3. Independence
4. Counting
5. Binomial
6. Moments
7. Poisson
8. Continuous
9. Gaussian
10. Probabilistic Models
11. Inference
12. General Inference
13. Multinomial
14. Beta
15. Midterm Review
16. Central Limit Theorem
17. Sampling & Bootstrapping
18. Algorithm Analysis
19. Information Theory
20. Maximum Likelihood Estimation
21. Logistic Regression
22. Comparing Classifiers
23. Deep Learning
24. Ethics Probability
25. Reinforcement 1
Section
Section Signup Form
Section 1
Section 2
Section 3
Section 4
Section 5
Section 6
Section 7
Section 8
PEP
Midterm
Schedule
Lecture 25: Reinforcement 1
May 29, 2026
NVIDIA Auditorium, 1:30pm
Lecture Materials
Slides
Reading
Learning Goals
Practice!.