Optimization Algorithms: AI Techniques for Design, Planning, and Control Problems

Khamis, Alaa

  • 出版商: Manning
  • 出版日期: 2024-06-18
  • 售價: $2,640
  • 貴賓價: 9.5$2,508
  • 語言: 英文
  • 頁數: 504
  • 裝訂: Quality Paper - also called trade paper
  • ISBN: 163343883X
  • ISBN-13: 9781633438835
  • 相關分類: 人工智慧Algorithms-data-structures
  • 尚未上市,歡迎預購

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商品描述

Solve design, planning, and control problems using modern machine learning and AI techniques.

In Optimization Algorithms: AI techniques for design, planning, and control problems you will learn:

  • Machine learning methods for search and optimization problems
  • The core concepts of search and optimization
  • Deterministic and stochastic optimization techniques
  • Graph search algorithms
  • Nature-inspired search and optimization algorithms
  • Efficient trade-offs between search space exploration and exploitation
  • State-of-the-art Python libraries for search and optimization

Optimization problems are everywhere in daily life. What's the fastest route from one place to another? How do you calculate the optimal price for a product? How should you plant crops, allocate resources, and schedule surgeries? Optimization Algorithms introduces the AI algorithms that can solve these complex and poorly-structured problems. Inside you'll find a wide range of optimization methods, from deterministic and stochastic derivative-free optimization to nature-inspired search algorithms and machine learning methods. Don't worry--there's no complex mathematical notation. You'll learn through in-depth case studies that cut through academic complexity to demonstrate how each algorithm works in the real world.

About the technology

Search and optimization algorithms are powerful tools that can help practitioners find optimal or near-optimal solutions to a wide range of design, planning and control problems. When you open a route planning app, call for a rideshare, or schedule a hospital appointment, an AI algorithm works behind the scenes to make sure you get an optimized result. This guide reveals the classical and modern algorithms behind these services.

About the book

Optimization Algorithms: AI techniques for design, planning, and control problems explores the AI algorithms that determine the most efficient routes, optimal designs, and solve other logistical issues. Dive into the exciting world of classical problems like the Travelling Salesman Problem and the Knapsack Problem, as well as cutting-edge modern implementations like graph search methods, metaheuristics and machine learning. Discover how to use these algorithms in real-world situations, with in-depth case studies on assembly line balancing, fitness planning, rideshare dispatching, routing and more. Plus, get hands-on experience with practical exercises to optimize and scale the performance of each algorithm.

About the reader

For AI practitioners familiar with the Python language.

About the author

Dr. Alaa Khamis is an AI and smart mobility technical leader at General Motors and a sessional lecturer at the University of Toronto. He is also an adjunct professor at Ontario Tech University and Nile University, affiliate member of the Center of Pattern Analysis and Machine Intelligence (CPAMI) at the University of Waterloo, and a former professor of artificial intelligence and robotics.

商品描述(中文翻譯)

使用現代機器學習和人工智慧技術解決設計、規劃和控制問題。

在《優化算法:設計、規劃和控制問題的人工智慧技術》中,您將學習到:

- 搜尋和優化問題的機器學習方法
- 搜尋和優化的核心概念
- 確定性和隨機優化技術
- 圖形搜尋算法
- 自然啟發的搜尋和優化算法
- 在搜尋空間探索和利用之間的高效平衡
- 用於搜尋和優化的最先進的Python庫

優化問題無處不在。從一個地方到另一個地方的最快路線是什麼?如何計算產品的最佳價格?如何種植作物、分配資源和安排手術?《優化算法》介紹了可以解決這些複雜且結構不良的問題的人工智慧算法。書中涵蓋了各種優化方法,從確定性和隨機無導數優化到自然啟發的搜尋算法和機器學習方法。不用擔心,書中沒有複雜的數學符號。您將通過深入的案例研究學習,這些案例研究將剖析學術複雜性,展示每個算法在現實世界中的工作原理。

關於技術:
搜尋和優化算法是強大的工具,可以幫助從業者找到設計、規劃和控制問題的最優或接近最優的解決方案。當您打開路線規劃應用程序、呼叫共乘服務或安排醫院預約時,AI算法在幕後工作,確保您獲得最優化的結果。本指南揭示了這些服務背後的經典和現代算法。

關於本書:
《優化算法:設計、規劃和控制問題的人工智慧技術》探索了確定最有效路線、最佳設計和解決其他後勤問題的人工智慧算法。深入研究經典問題,如旅行推銷員問題和背包問題,以及最先進的現代實現,如圖形搜尋方法、元啟發式和機器學習。發現如何在實際情況下使用這些算法,並通過深入案例研究進行實踐練習,以優化和擴展每個算法的性能。

關於讀者:
適合熟悉Python語言的AI從業者。

關於作者:
Dr. Alaa Khamis是通用汽車公司的AI和智能移動技術領導者,也是多倫多大學的臨時講師。他還是安大略科技大學和尼羅大學的兼職教授,滑鐵盧大學模式分析和機器智能中心(CPAMI)的聯合成員,以及人工智慧和機器人學的前任教授。

作者簡介

Dr. Alaa Khamis is an AI and smart mobility technical leader at General Motors and a sessional lecturer at the University of Toronto. He is also an adjunct professor at Ontario Tech University and Nile University, affiliate member of the Center of Pattern Analysis and Machine Intelligence (CPAMI) at the University of Waterloo, and a former professor of artificial intelligence and robotics.

作者簡介(中文翻譯)

Dr. Alaa Khamis 是通用汽車公司的人工智慧和智慧移動技術領導者,也是多倫多大學的臨時講師。他還是安大略科技大學和尼羅大學的兼職教授,滑鐵盧大學模式分析與機器智能中心(CPAMI)的聯合成員,以及人工智慧和機器人學的前教授。