CS109
Course Resources
Syllabus
Honor Code
Office Hours
Course Reader
Python Review
Latex Cheat Sheet
Midterm
Challenge
Final
Problem Sets
1. Counting
2. Core Probability
3. Random Variables
4. Probabilistic Models
5. Uncertainty Theory
Lecture
1. Welcome
2. Combinatorics
3. Probability
4. Conditioning and Bayes
5. Independence
6. Random Variables
7. More Random Variables
8. Poisson
9. Continuous
10. Gaussian
11. Probabilistic Models
12. Inference
13. Modeling
14. General Inference & Beta
15. More Beta & Thompson Sampling
16. Adding Variables
17. Central Limit Theorem
18. Bootstrapping
19. Algorithm Analysis
20. MLE and MAP
21. Naive Bayes
22. Logistic Regressions
23. Deep Learning
Section
Section 1
Section 2
Section 3
Section 4
Section 5
Section 6
Section 7
Schedule
Section 6
August 8, 2024
This week we'll learn about CLT and bootstrapping!
Section Materials
Section Handout
Section Soln
Pset App Link
Colab Notebook
Colab Solution