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Learning to Play, 1st ed. 2020 Reinforcement Learning and Games

Langue : Anglais

Auteur :

Couverture de l’ouvrage Learning to Play
In this textbook the author takes as inspiration recent breakthroughs in game playing to explain how and why deep reinforcement learning works. In particular he shows why two-person games of tactics and strategy fascinate scientists, programmers, and game enthusiasts and unite them in a common goal: to create artificial intelligence (AI). 

After an introduction to the core concepts, environment, and communities of intelligence and games, the book is organized into chapters on reinforcement learning, heuristic planning, adaptive sampling, function approximation, and self-play. The author takes a hands-on approach throughout, with Python code examples and exercises that help the reader understand how AI learns to play. He also supports the main text with detailed pointers to online machine learning frameworks, technical details for AlphaGo, notes on how to play and program Go and chess, and a comprehensive bibliography.

The content is class-tested and suitable for advanced undergraduate and graduate courses on artificial intelligence and games. It's also appropriate for self-study by professionals engaged with applications of machine learning and with games development. Finally it's valuable for any reader engaged with the philosophical implications of artificial and general intelligence, games represent a modern Turing test of the power and limitations of AI.
Introduction.- Intelligence and Games.- Reinforcement Learning.- Heuristic Planning.- Adaptive Sampling.- Function Approximation.- Self-Play.- Conclusion.- App. A, Deep Reinforcement Learning Environments.- App. B, Running Python.- App. C, Tutorial for the Game of Go.- App. D, AlphaGo Technical Details.- References.- List of Figures.- List of Tables.- List of Algorithms.- Index.
Prof. Aske Plaat is Professor of Data Science at Leiden University and scientific director of the Leiden Institute of Advanced Computer Science (LIACS). He is co-founder of the Leiden Centre of Data Science (LCDR) and initiated the SAILS stimulation program. His research interests include reinforcement learning, scalable combinatorial reasoning algorithms, games and self-learning systems.

Author takes as inspiration breakthroughs in game playing, and using two-agent games to explain the full power of deep reinforcement learning

Suitable for advanced undergraduate and graduate courses in artificial intelligence, machine learning, games, and evolutionary computing, and for self-study by professionals

Author uses machine learning frameworks such as Gym, TensorFlow, and Keras, and provides exercises to help understand how AI is learning to play

Date de parution :

Ouvrage de 330 p.

15.5x23.5 cm

Disponible chez l'éditeur (délai d'approvisionnement : 15 jours).

Prix indicatif 52,74 €

Ajouter au panier

Date de parution :

Ouvrage de 330 p.

15.5x23.5 cm

Disponible chez l'éditeur (délai d'approvisionnement : 15 jours).

Prix indicatif 73,84 €

Ajouter au panier