CSE 471: Introduction to Artificial Intelligence
Class: M/W, 1:30--2:45PM, COORL1-20
Office Hours: ASU Sync, M/W, 3:15--4:15PM
TA: Akkamahadevi Hanni
Course home | Syllabus | Schedule | Student Projects |
Subject to change. Check back frequently for updates.
Last updated: Jan 8, 2023
Date | Topics | Lecture Notes |
Reading/Project Assignments | Deadlines | Important Dates |
M. 01/09 | Course introduction. | Lecture Slides | Recommended: R&N, Third Edition, Chapter 1 | ||
W. 01/11 | Rational agent. | Lecture Slides | Required: R&N, Third Edition, Chapter 2 | ||
M. 01/16 | Holiday observed; class excused | Lecture Slides | |||
W. 01/18 | Search. | Lecture Slides | Required: R&N, Third Edition, Chapter 3.1--3.4 | ||
M. 01/23 | Uninformed search. | Lecture Slides | Required: R&N, Third Edition, Chapter 3.1--3.4 | ||
W. 01/25 | Informed search. | Lecture Slides | Required: R&N, Third Edition, Chapter 3.5--3.6 | ||
M. 01/30 | Adversarial search. | Lecture Slides | Required: R&N, Third Edition, Chapter 5 | ||
W. 02/01 | Adversarial search (cont) | Lecture Slides | Required: R&N, Third Edition, Chapter 5 | ||
M. 02/06 | General games | Lecture Slides | Required: R&N, Third Edition, Chapter 5, 16 | ||
W. 02/08 | Logic Agents | Lecture Slides | Required: R&N, Third Edition, Chapter 7 | ||
M. 02/13 | Logic Agents (cont.) | Lecture Slides | Required: R&N, Third Edition, Chapter 7 | ||
W. 02/15 | Logic Agents (cont.) | Lecture Slides | Required: R&N, Third Edition, Chapter 7 | ||
M. 02/20 | First-order logic | Lecture Slides | Required: R&N, Third Edition, Chapter 9 | ||
W. 02/22 | Markov Decision Process | Lecture Slides | Required: R&N, Third Edition, Chapter 17.1-2 | ||
M. 02/27 | Markov Decision Process (cont.) | Lecture Slides | Required: RN, Third Edition, Chapter 17.1-2 | ||
W. 03/01 | Markov Decision Process (cont.) | Lecture Slides | Required: RN, Third Edition, Chapter 17.1-2 | ||
M. 03/06 | Spring break | ||||
W. 03/08 | Spring break | ||||
M. 03/13 | Reinforcement Learning | Lecture Slides | Required: RN, Third Edition, Chapter 21.1-3 | ||
W. 03/15 | Reinforcement Learning (cont) | Lecture Slides | Required: RN, Third Edition, Chapter 21.4-5 | ||
M. 03/20 | Reinforcement Learning (cont) | Lecture Slides | Required: RN, Third Edition, Chapter 21.4-5 | ||
W. 03/22 | Probabilistic inference | Lecture Slides | Required: RN, Third Edition, Chapter 13 | ||
M. 03/27 | Bayesian Network | Lecture Slides | Required: RN, Third Edition, Chapter 14 | ||
W. 03/29 | Bayesian Network (cont) | Lecture Slides | Required: RN, Third Edition, Chapter 14 | ||
M. 04/03 | Hidden Markov Model | Lecture Slides | Required: RN, Third Edition, Chapter 15 | ||
W. 04/05 | Particle Filters | Lecture Slides | Required: RN, Third Edition, Chapter 15 | ||
M. 04/10 | Decision Networks | Lecture Slides | Required: RN, Third Edition, Chapter 16 | ||
W. 04/12 | Naive Bayes | Lecture Slides | Required: RN, Third Edition, Chapter 20 | ||
M. 04/17 | Perceptron | Lecture Slides | Required: RN, Third Edition, Chapter 18 | ||
W. 04/19 | Logistic Regression | Lecture Slides | Required: RN, Third Edition, Chapter 18 | ||
M. 04/24 | Neural Networks | Lecture Slides | Required: RN, Third Edition, Chapter 18 | ||
W. 04/26 | TBD | Lecture Slides |