Book Image

Hands-On Intelligent Agents with OpenAI Gym

By : Palanisamy P
Book Image

Hands-On Intelligent Agents with OpenAI Gym

By: Palanisamy P

Overview of this book

Many real-world problems can be broken down into tasks that require a series of decisions to be made or actions to be taken. The ability to solve such tasks without a machine being programmed requires a machine to be artificially intelligent and capable of learning to adapt. This book is an easy-to-follow guide to implementing learning algorithms for machine software agents in order to solve discrete or continuous sequential decision making and control tasks. Hands-On Intelligent Agents with OpenAI Gym takes you through the process of building intelligent agent algorithms using deep reinforcement learning starting from the implementation of the building blocks for configuring, training, logging, visualizing, testing, and monitoring the agent. You will walk through the process of building intelligent agents from scratch to perform a variety of tasks. In the closing chapters, the book provides an overview of the latest learning environments and learning algorithms, along with pointers to more resources that will help you take your deep reinforcement learning skills to the next level.
Table of Contents (12 chapters)

Summary

We learned a lot in this chapter. More importantly, we implemented an agent that learned to solve the Mountain Car problem smartly in 7 minutes or so!

We started by understanding the famous Mountain Car problem and looking at how the environment, the observation space, the state space, and rewards are designed in the Gym's MountainCar-v0 environment. We revisited the reinforcement learning Gym boilerplate code we used in the previous chapter and made some improvements to it, which are also available in the code repository of this book.

We then defined the hyperparameters for our Q-learning agent and started implementing a Q-learning algorithm from scratch. We first implemented the agent's initialization function to initialize the agent's internal state variables, including the Q value representation, using a NumPy n-dimensional array. Then, we implemented...