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Numerical Computing with Python
book

Numerical Computing with Python

by Pratap Dangeti, Allen Yu, Claire Chung, Aldrin Yim
December 2018
Beginner to intermediate
682 pages
18h 1m
English
Packt Publishing
Content preview from Numerical Computing with Python

Reinforcement learning basics

Before we deep dive into the details of reinforcement learning, I would like to cover some of the basics necessary for understanding the various nuts and bolts of RL methodologies. These basics appear across various sections of this chapter, which we will explain in detail whenever required:

  • Environment: This is any system that has states, and mechanisms to transition between states. For example, the environment for a robot is the landscape or facility it operates.
  • Agent: This is an automated system that interacts with the environment.
  • State: The state of the environment or system is the set of variables or features that fully describe the environment.
  • Goal or absorbing state or terminal state: This is the state ...
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Publisher Resources

ISBN: 9781789953633OtherOtherErrata Page