In this course, you will learn about several algorithms that can learn near optimal policies based on trial and error interaction with the environment---learning from the agent’s own experience. Learning from actual experience is striking because it requires no prior knowledge of the environment’s dynamics, yet can still attain optimal behavior. We will cover intuitively simple but powerful Monte Carlo methods, and temporal difference learning methods including Q-learning. We will wrap up this course investigating how we can get the best of both worlds: algorithms that can combine model-based planning (similar to dynamic programming) and temporal difference updates to radically accelerate learning.


Sample-based Learning Methods
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Sample-based Learning Methods
This course is part of Reinforcement Learning Specialization


Instructors: Martha White
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Reviewed on Nov 23, 2019
Good balance of theory and programming assignments. I really like the weekly bonus videos with professors and developers. Recommend to everyone.
Reviewed on Feb 15, 2021
Excellent course that naturally extends the first specialization course. The application examples in programming are very good and I loved how RL gets closer and closer to how a living being thinks.
Reviewed on Jun 26, 2020
It's an important course in understanding the working of reinforcement learning. Although some important and complex topics are not explored in this course which are mentioned in the textbook.





