CS 181
General
Syllabus
Calendar
Staff
Office Hours
Resources
Schedule
Lecture Recaps
Lecture 1 (Nonparametric Regression)
Lecture 2 (Linear Regression)
Lecture 3 (Probabilistic Regression)
Lecture 4 (Linear Classification)
Lecture 5 (Probabilistic Classification)
Lecture 6 (Model Selection - Frequentist)
Lecture 7 (Model Selection - Bayesian)
Lecture 8 (Neural Networks 1)
Lecture 9 (Neural Networks 2)
Lecture 10 (Support Vector Machine 1)
Lecture 11 (Support Vector Machine 2)
Lecture 12 (Ethics in ML)
Lecture 13 (Clustering)
Lecture 14 (Mixture Models)
Lecture 15 (Nonprobabilistic Embeddings)
Lecture 16 (Topic Models)
Lecture 17 (Graphical Models)
Lecture 18 (Inference in Bayes Nets)
Lecture 19 (Hidden Markov Models)
Lecture 20 (Markov Decision Processes)
Lecture 21 (Reinforcement Learning 1)
Lecture 22 (Reinforcement Learning 2)
Lecture 23 (Final Lecture - Interpretability)
Sections
HW
Zoom
Piazza
The Cube
Supervised Learning
Discrete
Continuous
Probabilistic
Lecture 5 - Probabilistic Classification
Lecture 3 - Probabilistic Regression
Nonprobabilistic
Lecture 1 - KNN Classification
Lecture 4 - Linear Classification
Lecture 8 - Neural Networks 1
Lecture 9 - Neural Networks 2
Lecture 10 - Support Vector Machines 1
Lecture 11 - Support Vector Machines 2
Lecture 1 - KNN and Kernel Regression
Lecture 2 - Linear Regression
Lecture 8 - Neural Networks 1
Lecture 9 - Neural Networks 2
Unsupervised Learning
Discrete
Continuous
Probabilistic
Lecture 14 - Mixture Models
Lecture 16 - Topic Models
Nonprobabilistic
Lecture 13 - HAC and K-Means
Lecture 15 - Principal Component Analysis