2021 Fall COMPSCI 285 001 LEC 001

2021 Fall

COMPSCI 285 001 - LEC 001

Deep Reinforcement Learning, Decision Making, and Control

Sergey Levine

Aug 25, 2021 - Dec 10, 2021
Mo, We
05:00 pm - 06:29 pm
Internet/Online
Class #:30560
Units: 3

Instruction Mode: Pending Review
Time Conflict Enrollment Allowed

Current Enrollment

Total Open Seats: 7
Enrolled: 228
Waitlisted: 0
Capacity: 235
Waitlist Max: 125
No Reserved Seats

Hours & Workload

3 hours of instructor presentation of course materials per week, and 6 hours of outside work hours per week.

Course Catalog Description

Intersection of control, reinforcement learning, and deep learning. Deep learning methods, which train large parametric function approximators, achieve excellent results on problems that require reasoning about unstructured real-world situations (e.g., computer vision, speech recognition, NLP). Advanced treatment of the reinforcement learning formalism, the most critical model-free reinforcement learning algorithms (policy gradients, value function and Q-function learning, and actor-critic), a discussion of model-based reinforcement learning algorithms, an overview of imitation learning, and a range of advanced topics (e.g., exploration, model-based learning with video prediction, transfer learning, multi-task learning, and meta-learning).

Class Notes

* Time conflicts with this class WILL be allowed.

* In accordance with campus guidelines, this class will be offered remote-only.

Rules & Requirements

Requisites

  • Students not in the Master of Engineering Program

Repeat Rules

Course is not repeatable for credit.

Reserved Seats

Current Enrollment

No Reserved Seats

Textbooks & Materials

See class syllabus or https://calstudentstore.berkeley.edu/textbooks for the most current information.

Textbook Lookup

Guide to Open, Free, & Affordable Course Materials

eTextbooks

Associated Sections

None