10-301 + 10-601, Fall 2024
School of Computer Science
Carnegie Mellon University
This schedule is tentative and subject to change. Please check back often.
Date | Lecture | Readings | Announcements |
---|---|---|---|
Classification & Regression |
|||
Mon, 26-Aug | Lecture 1
:
Course Overview [Slides] [Slides (Inked)] |
|
HW1 Out |
Wed, 28-Aug | Lecture 2
:
Machine Learning as Function Approximation [Slides] [Slides (Inked)] |
|
|
Fri, 30-Aug |
Recitation: HW1 [Handout] [Solutions] |
|
|
Mon, 2-Sep |
(Labor Day - No Class) |
|
|
Wed, 4-Sep | Lecture 3
:
Decision Trees [Slides] [Slides (Inked)] [Poll] |
|
HW1 Due HW2 Out |
Fri, 6-Sep |
Recitation: HW2 [Handout] [Solutions] |
|
|
Mon, 9-Sep | Lecture 4
:
k-Nearest Neighbors [Slides] [Slides (Inked)] [Poll] |
|
|
Wed, 11-Sep | Lecture 5
:
Model Selection and Experimental Design [Slides] [Slides (Inked)] [Poll] |
|
|
Linear Models |
|||
Fri, 13-Sep | Lecture 6
:
Perceptron [Slides] [Slides (Inked)] [Poll] |
|
|
Mon, 16-Sep | Lecture 7
:
Linear Regression [Slides] [Slides (Inked)] [Poll] |
|
HW2 Due HW3 Out |
Wed, 18-Sep | Lecture 8
:
Optimization for ML [Slides] [Slides (Inked)] [Poll] |
|
|
Fri, 20-Sep |
Recitation: HW3 [Handout] [Solutions] |
|
Exam 1 Practice Problems out |
Mon, 23-Sep | Lecture 9
:
Stochastic Gradient Descent / Logistic Regression [Slides] [Slides (Inked)] [Poll] |
|
HW3 Due (only two grace/late days permitted)
|
Wed, 25-Sep | Lecture 10
:
Feature Engineering / Regularization [Slides] [Slides (Inked)] [Poll] |
|
|
Fri, 27-Sep |
Exam 1 Review OH |
|
|
Neural Networks |
|||
Mon, 30-Sep | Lecture 11
:
Neural Networks [Slides] [Slides (Inked)] [Poll] |
|
|
Mon, 30-Sep |
Exam 1 (evening exam, details will be announced on Piazza) 6:30p - 8:30p |
|
HW4 Out |
Wed, 2-Oct | Lecture 12
:
Backpropagation I [Slides] [Slides (Inked)] [Poll] |
|
|
Fri, 4-Oct |
Recitation: HW4 [Handout] [Solutions] |
|
|
Mon, 7-Oct | Lecture 13
:
Backpropagation II [Slides] [Slides (Inked)] [Poll] |
|
|
Societal Impacts |
|||
Wed, 9-Oct | Lecture 14
:
Societal Impacts of ML [Slides] [Slides (Inked)] [Poll] |
|
HW4 Due HW5 Out |
Fri, 11-Oct |
Recitation: HW5 [Handout] [Solutions] |
|
|
Mon, 14-Oct |
(Fall Break - No Class) |
|
|
Tue, 15-Oct |
|
|
|
Wed, 16-Oct |
(Fall Break - No Class) |
|
|
Thu, 17-Oct |
|
|
|
Fri, 18-Oct |
(Fall Break - No Class) |
|
|
Learning Theory |
|||
Mon, 21-Oct | Lecture 15
:
PAC Learning [Slides] [Slides (Inked)] [Poll] |
|
|
Wed, 23-Oct | Lecture 16
:
PAC Learning / MLE & MAP [Slides] [Slides (Inked)] [Poll] |
|
|
Fri, 25-Oct |
Recitation: HW6 [Handout] [Solutions] |
|
|
Sun, 27-Oct |
|
|
HW5 Due HW6 Out, Exam 2 Practice Problems out |
Deep Learning |
|||
Mon, 28-Oct | Lecture 17
:
CNNs and RNNs [Slides] [Slides (Inked)] [Poll] |
|
|
Wed, 30-Oct | Lecture 18
:
RNN-LMs and Transformers-LMs [Slides] [Slides (Inked)] [Poll] |
|
|
Fri, 1-Nov |
Exam 2 Review OH |
|
|
Sat, 2-Nov |
|
|
HW6 Due (only two grace/late days permitted)
|
Mon, 4-Nov | Lecture 19
:
AutoDiff, Pre-training, Fine-Tuning, In-context Learning [Slides] [Slides (Inked)] [Poll] |
|
|
Reinforcement Learning |
|||
Wed, 6-Nov | Lecture 20
:
Reinforcement Learning: MDPs [Slides] [Slides (Inked)] [Poll] |
|
|
Thu, 7-Nov |
Exam 2 (evening exam, details will be announced on Piazza) 6:45p - 8:45p |
|
HW7 Out |
Fri, 8-Nov |
Recitation: HW7 [Handout] [Solutions] |
|
|
Mon, 11-Nov | Lecture 21
:
Reinforcement Learning: Value/Policy Iteration [Slides] [Slides (Inked)] [Poll] |
|
|
Wed, 13-Nov | Lecture 22
:
Reinforcement Learning: Q-Learning / Deep RL [Slides] [Slides (Inked)] [Poll] |
|
|
Fri, 15-Nov |
Recitation: HW8 [Handout] [Solutions] |
|
|
Sun, 17-Nov |
|
|
HW7 Due HW8 Out |
Learning Paradigms |
|||
Mon, 18-Nov | Lecture 23
:
Recommender Systems / Ensemble Methods: Boosting [Slides] [Slides (Inked)] [Poll] |
|
|
Wed, 20-Nov | Lecture 24
:
Ensemble Methods: Bagging / K-Means [Slides] [Poll] |
|
|
Fri, 22-Nov |
No Recitation |
|
|
Mon, 25-Nov | Lecture 25
:
Dimensionality Reduction: PCA [Poll] |
|
HW8 Due HW9 Out |
Wed, 27-Nov |
(Thanksgiving Break - No Class) |
|
|
Thu, 28-Nov |
|
|
|
Fri, 29-Nov |
(Thanksgiving Break - No Class) |
|
|
Mon, 2-Dec |
Recitation: HW9 |
|
Exam 3 Practice Problems out |
Wed, 4-Dec | Lecture 26
:
Special Topics: Generative Models for Vision / Significance Testing for ML [Poll] |
|
|
Thu, 5-Dec |
|
|
HW9 Due (only two grace/late days permitted)
|
Fri, 6-Dec |
Exam 3 Review OH |
|
|