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Reinforcement Learning with TensorFlow

Reinforcement Learning with TensorFlow

By : Dutta
2.2 (5)
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Reinforcement Learning with TensorFlow

Reinforcement Learning with TensorFlow

2.2 (5)
By: Dutta

Overview of this book

Reinforcement learning (RL) allows you to develop smart, quick and self-learning systems in your business surroundings. It's an effective method for training learning agents and solving a variety of problems in Artificial Intelligence - from games, self-driving cars and robots, to enterprise applications such as data center energy saving (cooling data centers) and smart warehousing solutions. The book covers major advancements and successes achieved in deep reinforcement learning by synergizing deep neural network architectures with reinforcement learning. You'll also be introduced to the concept of reinforcement learning, its advantages and the reasons why it's gaining so much popularity. You'll explore MDPs, Monte Carlo tree searches, dynamic programming such as policy and value iteration, and temporal difference learning such as Q-learning and SARSA. You will use TensorFlow and OpenAI Gym to build simple neural network models that learn from their own actions. You will also see how reinforcement learning algorithms play a role in games, image processing and NLP. By the end of this book, you will have gained a firm understanding of what reinforcement learning is and understand how to put your knowledge to practical use by leveraging the power of TensorFlow and OpenAI Gym.
Table of Contents (17 chapters)
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Continuous action space algorithms

There are many continuous action space algorithms in deep reinforcement learning topology. Some of them, which we covered earlier in Chapter 4Policy Gradients, were mainly stochastic policy gradients and stochastic actor-critic algorithms. Stochastic policy gradients were associated with many problems such as difficulty in choosing step size owing to the non-stationary data due to continuous change in observation and reward distribution, where a bad step would adversely affect the learning of the policy network parameters. Therefore, there was a need for an approach that can restrict this policy search space and avoid bad steps while training the policy network parameters.

Here, we will try to cover some of the advanced continuous action space algorithms:

  • Trust region policy optimization
  • Deterministic policy gradients
...
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