Academic Catalog 2025–2026

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Courses

CYS624 Reinforcement Learning

[2–0, 2 cr.]

This course covers the fundamentals of reinforcement learning using a problem-based approach by addressing goal-directed problems on automated learning in an uncertain environment. Topics include finite Markov decision processes, dynamic programming, Monte-Carlo simulations, temporal-difference learning including Q-learning, function approximation, and policy gradient methods.