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COMP 4010 [0.5 credit] Introduction to Reinforcement Learning


Learn about designing and programming reinforcement learning agents to perform complex tasks in interactive environments. Topics include Markov decision processes, dynamic programming methods, Monte Carlo methods, temporal difference learning, prediction/control with function approximation, policy gradient, and deep reinforcement learning algorithms.
Includes: Experiential Learning Activity
Prerequisite(s): COMP 2402, (COMP 2404 or SYSC 3010 or SYSC 3110), MATH 1007 and (MATH 1104 or MATH 1107), STAT 2507.
Lectures three hours a week.