Rule-Based AI and Deep Learning in Everyday Games
Buch, Englisch, 408 Seiten, Format (B × H): 178 mm x 254 mm, Gewicht: 764 g
ISBN: 978-1-032-72212-2
Verlag: Chapman and Hall/CRC
What exactly is ML? How is it related to AI? Why is deep learning (DL) so popular these days? This book explains how traditional rule-based AI and ML work and how they can be implemented in everyday games such as Last Coin Standing, Tic Tac Toe, or Connect Four. Game rules in these three games are easy to implement. As a result, readers will learn rule-based AI, deep reinforcement learning, and more importantly, how to combine the two to create powerful game strategies (the whole is indeed greater than the sum of its parts) without getting bogged down in complicated game rules.
Implementing rule-based AI and ML in these straightforward games is quick and not computationally intensive. Consequently, game strategies can be trained in mere minutes or hours without requiring GPU training or supercomputing facilities, showcasing AI's ability to achieve superhuman performance in these games. More importantly, readers will gain a thorough understanding of the principles behind rule-based AI, such as the MiniMax algorithm, alpha-beta pruning, and Monte Carlo Tree Search (MCTS), and how to integrate them with cutting-edge ML techniques like convolutional neural networks and deep reinforcement learning to apply them in their own business fields and tackle real-world challenges.
Written with clarity from the ground up, this book appeals to both general readers and industry professionals who seek to learn about rule-based AI and deep reinforcement learning, as well as students and educators in computer science and programming courses.
Zielgruppe
Professional Practice & Development
Autoren/Hrsg.
Fachgebiete
- Mathematik | Informatik EDV | Informatik Informatik Künstliche Intelligenz Maschinelles Lernen
- Mathematik | Informatik EDV | Informatik Daten / Datenbanken
- Mathematik | Informatik EDV | Informatik Digital Lifestyle Computerspiele, Internetspiele
- Mathematik | Informatik EDV | Informatik Programmierung | Softwareentwicklung Spiele-Programmierung, Rendering, Animation
- Sozialwissenschaften Sport | Tourismus | Freizeit Hobbies & Spiele
- Mathematik | Informatik EDV | Informatik Business Application Unternehmenssoftware
- Mathematik | Informatik EDV | Informatik Informatik Künstliche Intelligenz Neuronale Netzwerke
Weitere Infos & Material
List of Figures
Preface
Acknowledgments
Section I Rule-Based A.I.
Chapter 1 Rule-Based AI in the Coin Game
Chapter 2 Look-Ahead Search in Tic Tac Toe
Chapter 3 Planning Three Steps Ahead in Connect Four
Chapter 4 Recursion and MiniMax Tree Search
Chapter 5 Depth Pruning in MiniMax
Chapter 6 Alpha-Beta Pruning
Chapter 7 Position Evaluation in MiniMax
Chapter 8 Monte Carlo Tree Search
Section II Deep Learning
Chapter 9 Deep Learning in the Coin Game
Chapter 10 Policy Networks in Tic Tac Toe
Chapter 11 A Policy Network in Connect Four
Section III Reinforcement Learning
Chapter 12 Tabular Q-Learning in the Coin Game
Chapter 13 Self-Play Deep Reinforcement Learning
Chapter 14 Vectorization to Speed Up Deep Reinforcement Learning
Chapter 15 A Value Network in Connect Four
Section IV AlphaGo Algorithms
Chapter 16 Implement AlphaGo in the Coin Game
Chapter 17 AlphaGo in Tic Tac Toe and Connect Four
Chapter 18 Hyperparameter Tuning in AlphaGo
Chapter 19 The Actor-Critic Method and AlphaZero
Chapter 20 Iterative Self-Play and AlphaZero in Tic Tac Toe
Chapter 21 AlphaZero in Unsolved Games
Bibliography