
GIVE THE PERFECT GIFT
Erin Mills Town Centre Gift Cards are the perfect choice for your gift giving needs.Purchase gift cards at kiosks near the food court or centre court, at Guest Services, or click below to purchase online.PURCHASE HEREHome
Grey Wolf Optimizer: A Pack of Solutions for Your Optimization Problems
Indigo
Loading Inventory...
Grey Wolf Optimizer: A Pack of Solutions for Your Optimization Problems
By None
Current price: $266.50


By None
Grey Wolf Optimizer: A Pack of Solutions for Your Optimization Problems
Current price: $266.50
Loading Inventory...
Size: Paperback
*Product information may vary - to confirm product availability, pricing, shipping and return information please contact Indigo
Grey Wolf Optimizer: A Pack of Solutions for Your Optimization Problems offers in-depth coverage of recent theoretical advancements in GWO, as well as several variants, improvements, and hybrid approaches developed to enhance the GWO's performance and adaptability. The use of generative AI to improve this algorithm and make it more generic is also explored, along with diverse applications across multiple fields to illustrate the practical utility and versatility of the methods presented. The book offers a deep dive into the algorithm's foundations and presents new developments to help researchers overcome common challenges.
It features numerous case studies and real-world examples across various fields, such as engineering, healthcare, finance, and environmental management. These applications demonstrate the versatility and effectiveness of the GWO in addressing complex, interdisciplinary challenges, making the content highly relevant and practical for readers. Written by some of the world&s most highly cited researchers in the field of artificial intelligence, algorithms, and machine learning, the book serves as an essential resource for researchers and practitioners interested in applying and developing the Grey Wolf Optimizer.
Helps readers understand the evolution, strengths, and current standing of the Grey Wolf Optimizer as a powerful optimization technique
Helps readers grasp the core concepts and theoretical foundations necessary for effective application
Introduces novel variants, improvements, and hybrid approaches designed to tackle optimization problems involving binary, multi-objective, noisy, dynamic, and combinatorial challenges
Features numerous case studies and real-world examples across various fields, such as engineering, healthcare, finance, and environmental management
Grey Wolf Optimizer: A Pack of Solutions for Your Optimization Problems offers in-depth coverage of recent theoretical advancements in GWO, as well as several variants, improvements, and hybrid approaches developed to enhance the GWO's performance and adaptability. The use of generative AI to improve this algorithm and make it more generic is also explored, along with diverse applications across multiple fields to illustrate the practical utility and versatility of the methods presented. The book offers a deep dive into the algorithm's foundations and presents new developments to help researchers overcome common challenges.
It features numerous case studies and real-world examples across various fields, such as engineering, healthcare, finance, and environmental management. These applications demonstrate the versatility and effectiveness of the GWO in addressing complex, interdisciplinary challenges, making the content highly relevant and practical for readers. Written by some of the world&s most highly cited researchers in the field of artificial intelligence, algorithms, and machine learning, the book serves as an essential resource for researchers and practitioners interested in applying and developing the Grey Wolf Optimizer.
Helps readers understand the evolution, strengths, and current standing of the Grey Wolf Optimizer as a powerful optimization technique
Helps readers grasp the core concepts and theoretical foundations necessary for effective application
Introduces novel variants, improvements, and hybrid approaches designed to tackle optimization problems involving binary, multi-objective, noisy, dynamic, and combinatorial challenges
Features numerous case studies and real-world examples across various fields, such as engineering, healthcare, finance, and environmental management


















