Handbook of Artificial Intelligence and Data Sciences for Routing Problems (Springer Optimization and Its Applications, 219)

Handbook of Artificial Intelligence and Data Sciences for Routing Problems (Springer Optimization and Its Applications, 219)

Handbook of Artificial Intelligence and Data Sciences for Routing Problems (Springer Optimization and Its Applications, 219)

by: Carlos A.S. Oliveira (Editor), Miltiades P. Pardalos (Editor)

Publisher: Springer

Publication Date: 2025-03-14

Language: English

Print Length: 277 pages

ISBN-10: 3031782615

ISBN-13: 9783031782619

Book Description

This handbook delves into the rapidly evolving field of artificial intelligence and optimization, focusing on the intersection of machine learning, combinatorial optimization, and real-world applications in transportation and network design.Covering an array of topics from classical optimization problems such as the Traveling Salesman Problem and the Knapsack Problem, to modern techniques including advanced heuristic methods, Generative Adversarial Networks, and Variational Autoencoders, this book provides a roadmap for solving complex problems. The included case studies showcase practical implementations of algorithms in predicting route sequences, traffic management, and eco-friendly transportation.This comprehensive guide is essential for researchers, practitioners, and students interested in AI and optimization. Whether you are a researcher seeking standard approaches or a professional looking for practical solutions to industry challenges, this book offers valuable insights into modern AI algorithms.

Editorial Reviews

This handbook delves into the rapidly evolving field of artificial intelligence and optimization, focusing on the intersection of machine learning, combinatorial optimization, and real-world applications in transportation and network design.Covering an array of topics from classical optimization problems such as the Traveling Salesman Problem and the Knapsack Problem, to modern techniques including advanced heuristic methods, Generative Adversarial Networks, and Variational Autoencoders, this book provides a roadmap for solving complex problems. The included case studies showcase practical implementations of algorithms in predicting route sequences, traffic management, and eco-friendly transportation.This comprehensive guide is essential for researchers, practitioners, and students interested in AI and optimization. Whether you are a researcher seeking standard approaches or a professional looking for practical solutions to industry challenges, this book offers valuable insights into modern AI algorithms.

Amazon Page

资源下载资源下载价格10立即购买