Author: | Armando Fandango | ISBN: | 9781789535914 |
Publisher: | Packt Publishing | Publication: | February 11, 2020 |
Imprint: | Packt Publishing | Language: | English |
Author: | Armando Fandango |
ISBN: | 9781789535914 |
Publisher: | Packt Publishing |
Publication: | February 11, 2020 |
Imprint: | Packt Publishing |
Language: | English |
Simplify artificial intelligence (AI) by designing and implementing self-learning agents using PyTorch
If you are a data scientist, machine learning engineer, deep learning practitioner or AI researcher looking for practical content that will help you implement reinforcement learning algorithms, this book is ideal. With this beginner-level guide, you'll be able to use PyTorch 1.0's offerings to build your own self-learning agents. Working knowledge of Python programming language is a must.
Reinforcement learning is widely used in segments such as robotic process automation and self-navigating cars. This book will help you get up to speed with reinforcement learning using PyTorch 1.0.
The book starts by introducing you to major concepts that will help you to understand how reinforcement learning algorithms work. You will then explore a variety of topics that focus on the most important and practical details of the reinforcement learning domain. The book will also boost your knowledge of the different reinforcement learning methods and their algorithms. As you progress, you'll cover concepts such as the Multi-Armed Bandit problem, Markov Decision Processes (MDPs), and Q-learning, which will further hone your skills in developing self-learning agents. The goal of this book is to help you understand why and how each RL algorithm plays an important role in building these agents. Hands-On Reinforcement Learning with PyTorch 1.0 will also give you insights on implementing PyTorch functionalities and services to cover a range of RL tasks. Following this, you'll explore how deep RL can be used in different segments of enterprise applications such as NLP, time series, and computer vision. As you wrap up the final chapters, you'll cover a segment on evaluating algorithms by using environments from the popular OpenAI Gym toolkit.
By the end of this book, you'll have the skills you need to implement reinforcement learning algorithms to solve common and not-so-common challenges faced.
Simplify artificial intelligence (AI) by designing and implementing self-learning agents using PyTorch
If you are a data scientist, machine learning engineer, deep learning practitioner or AI researcher looking for practical content that will help you implement reinforcement learning algorithms, this book is ideal. With this beginner-level guide, you'll be able to use PyTorch 1.0's offerings to build your own self-learning agents. Working knowledge of Python programming language is a must.
Reinforcement learning is widely used in segments such as robotic process automation and self-navigating cars. This book will help you get up to speed with reinforcement learning using PyTorch 1.0.
The book starts by introducing you to major concepts that will help you to understand how reinforcement learning algorithms work. You will then explore a variety of topics that focus on the most important and practical details of the reinforcement learning domain. The book will also boost your knowledge of the different reinforcement learning methods and their algorithms. As you progress, you'll cover concepts such as the Multi-Armed Bandit problem, Markov Decision Processes (MDPs), and Q-learning, which will further hone your skills in developing self-learning agents. The goal of this book is to help you understand why and how each RL algorithm plays an important role in building these agents. Hands-On Reinforcement Learning with PyTorch 1.0 will also give you insights on implementing PyTorch functionalities and services to cover a range of RL tasks. Following this, you'll explore how deep RL can be used in different segments of enterprise applications such as NLP, time series, and computer vision. As you wrap up the final chapters, you'll cover a segment on evaluating algorithms by using environments from the popular OpenAI Gym toolkit.
By the end of this book, you'll have the skills you need to implement reinforcement learning algorithms to solve common and not-so-common challenges faced.