Book Image

PyTorch 1.x Reinforcement Learning Cookbook

By : Yuxi (Hayden) Liu
Book Image

PyTorch 1.x Reinforcement Learning Cookbook

By: Yuxi (Hayden) Liu

Overview of this book

Reinforcement learning (RL) is a branch of machine learning that has gained popularity in recent times. It allows you to train AI models that learn from their own actions and optimize their behavior. PyTorch has also emerged as the preferred tool for training RL models because of its efficiency and ease of use. With this book, you'll explore the important RL concepts and the implementation of algorithms in PyTorch 1.x. The recipes in the book, along with real-world examples, will help you master various RL techniques, such as dynamic programming, Monte Carlo simulations, temporal difference, and Q-learning. You'll also gain insights into industry-specific applications of these techniques. Later chapters will guide you through solving problems such as the multi-armed bandit problem and the cartpole problem using the multi-armed bandit algorithm and function approximation. You'll also learn how to use Deep Q-Networks to complete Atari games, along with how to effectively implement policy gradients. Finally, you'll discover how RL techniques are applied to Blackjack, Gridworld environments, internet advertising, and the Flappy Bird game. By the end of this book, you'll have developed the skills you need to implement popular RL algorithms and use RL techniques to solve real-world problems.
Table of Contents (11 chapters)

Using convolutional neural networks for Atari games

In the previous recipe, we treated each observed image in the Pong environment as a grayscale array and fed it to a fully connected neural network. Flattening an image may actually result in information loss. Why don’t we use the image as input instead? In this recipe, we will incorporate convolutional neural networks (CNNs) into the DQN model.

A CNN is one of the best neural network architectures to deal with image inputs. In a CNN, the convolutional layers are able to effectively extract features from images, which will be passed on to downstream, fully connected layers. An example of a CNN with two convolutional layers is depicted here:

As you can imagine, if we simply flatten an image into a vector, we will lose some information on where the ball is located, and where the two players are. Such information is significant...