Model Optimization Methods for Efficient and Edge AI: Federated Learning Architectures, Frameworks and Applications

Model Optimization Methods for Efficient and Edge AI: Federated Learning Architectures, Frameworks and Applications

Pethuru Raj Chelliah , Amir Masoud Rahmani , Robert Colby
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Nov 27, 2024 · Anglais · Relié (432 pages)
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Détails du livre

Format Relié
Pages 432
Langue Anglais
Publié Nov 27, 2024
Éditeur Wiley-IEEE Press
ISBN-10 1394219210
ISBN-13 9781394219216

Description

This comprehensive work delves into the rapidly evolving landscape of artificial intelligence, specifically focusing on model optimization methods tailored for efficient and edge AI. The authors bring together their expertise to present a thorough exploration of federated learning architectures, frameworks, and practical applications. By addressing the challenges and advancements in this field, they illuminate how AI can be effectively deployed across various environments while ensuring data privacy and reducing latency.

The book serves as a vital resource for researchers and practitioners seeking to enhance their understanding of cutting-edge techniques in AI. It bridges theoretical concepts with real-world applications, providing insights into the design and implementation of robust federated learning systems. The collaborative approach of the authors, combined with practical illustrations, makes it an essential guide for those aiming to stay ahead in the domain of AI technology.

Genres

Science & Technologie Affaires & Économie
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