CS 4789
Last Updated
- Schedule of Classes - April 13, 2026 10:10AM EDT
Classes
CS 4789
Course Description
Course information provided by the 2026-2027 Catalog.
Reinforcement Learning is one of the most popular paradigms for modelling interactive learning and sequential decision making in dynamical environments. This course introduces the basics of Reinforcement Learning and the Markov Decision Process. The course will cover algorithms for planning and learning in Markov Decision Processes. We will discuss potential applications of Reinforcement Learning and their implications. We will study and implement classic Reinforcement Learning algorithms.
Prerequisites CS 3780 or equivalent.
Last 4 Terms Offered 2025SP, 2024SP, 2023SP, 2022SP
Learning Outcomes
- Identify the differences between Reinforcement Learning and traditional Supervised Learning and grasp the key definitions of Markov Decision Processes.
- Analyze the performance of the class planning algorithms and learning algorithms for Markov Decision Process.
- Implement classic algorithms and demonstrate their performance on benchmarks.
Regular Academic Session. Combined with: CS 5789
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Credits and Grading Basis
3 Credits Opt NoAud(Letter or S/U grades (no audit))
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Class Number & Section Details
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Meeting Pattern
- MW
- Aug 24 - Dec 7, 2026
Instructors
Dean, S
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Additional Information
Instruction Mode: In Person
For Bowers Computer and Information Science (CIS) Course Enrollment Help, please see: https://tdx.cornell.edu/TDClient/193/Portal/Home/
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