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
まだ評価がありません
Nov 13, 2024 · 英語 · キンドル (398 ページ)
棚に追加

この本を評価する


ブックジャーナルをエクスポート

本の詳細

形式 キンドル
ページ数 398
言語 英語
公開されました Nov 13, 2024
出版社 Wiley-IEEE Press
ISBN-10 1394219229
ISBN-13 9781394219223

説明

The book dives into the innovative field of federated learning, exploring its potential to reshape artificial intelligence applications at the edge. With contributions from experts in the field, it showcases various architectures and frameworks that leverage decentralized data for model optimization. By emphasizing privacy and efficiency, the authors highlight how federated learning can offer robust solutions tailored to modern AI challenges.

Readers will find valuable insights into the methodologies that underpin federated learning, including strategies for effective collaboration among distributed devices. The book addresses practical applications across numerous sectors, illustrating how federated learning can enhance performance while safeguarding sensitive information.

Through detailed discussions and case studies, the work empowers practitioners and researchers alike to navigate the complexities of implementing federated learning in real-world scenarios. This comprehensive resource serves as a vital guide for those looking to harness the power of edge AI in a responsible and impactful manner.

ジャンル

科学&技術 ビジネス&経済
棚に追加

この本を評価する


ブックジャーナルをエクスポート