Reinforcement Learning

Udacity
via Udacity
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You should take this course if you have an interest in machine learning and the desire to engage with it from a theoretical perspective. Through a combination of classic papers and more recent work, you will explore automated decision-making from a computer-science perspective. You will examine efficient algorithms, where they exist, for single-agent and multi-agent planning as well as approaches to learning near-optimal decisions from experience. At the end of the course, you will replicate a result from a published paper in reinforcement learning.

Instructor(s)

Charles Isbell
Udacity
via Udacity
Free
English
Approx. 4 months
Self paced
advanced