Reinforcement Learning

Course Name: 

Reinforcement Learning(CS426)

Programme: 

B.Tech (CSE)

Semester: 

Seventh

Category: 

Programme Specific Electives (PSE)

Credits (L-T-P): 

04(3-1-0)

Content: 

Introduction and Basics of RL, Defining RL Framework and Markov Decision Process Polices, Value Functions and
Bellman Equations, Exploration vs. Exploitation,Tabular methods and Q-networks,Deep Q-networks,Policy
optimization, Vanilla Policy Gradient Reinforce algorithm and stochastic policy search, Actor-critic methods,
Advanced policy gradient, Model-based RL approach, Meta-learning, Multi-Agent Reinforcement Learning, Partially
Observable Markov Decision Process, Ethics in RL, Applying RL for real-world problems.

References: 

1. Reinforcement Learning: An Introduction, Sutton and Barto, 2nd Edition.
2. Reinforcement Learning: State-of-the-Art, Marco Wiering and Martijn van Otterlo, Eds.
3. Artificial Intelligence: A Modern Approach, Stuart J. Russell and Peter Norvig
4. Deep Learning, Ian Goodfellow, Yoshua Bengio, and Aaron Courville.

Department: 

Computer Science and Engineering
 

Contact us

Dr. Manu Basavaraju
Head of the Department
Department of CSE, NITK, Surathkal
P. O. Srinivasnagar, Mangalore - 575 025
Karnataka, India.
Hot line: +91-0824-2474053
Email: hodcse[AT]nitk[DOT]ac[DOT]in
            hodcse[AT]nitk[DOT]edu[DOT]in

                      

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