Federated Learning: From Algorithms to System Implementation

Liefeng Bo, Heng Huang Songxiang Gu

  • 出版商: World Scientific Pub
  • 出版日期: 2024-09-04
  • 售價: $6,590
  • 貴賓價: 9.5$6,261
  • 語言: 英文
  • 頁數: 548
  • 裝訂: Hardcover - also called cloth, retail trade, or trade
  • ISBN: 981129254X
  • ISBN-13: 9789811292545
  • 相關分類: Algorithms-data-structures
  • 海外代購書籍(需單獨結帳)

相關主題

商品描述

Authored by researchers and practitioners who build cutting-edge federated learning applications to solve real-world problems, this book covers the spectrum of federated learning technology from concepts and application scenarios to advanced algorithms and finally system implementation in three parts. It provides a comprehensive review and summary of federated learning technology, as well as presenting numerous novel federated learning algorithms which no other books have summarized. The work also references the most recent papers, articles and reviews from the past several years to keep pace with the academic and industrial state of the art of federated learning.


The first part lays a foundational understanding of federated learning by going through its definition and characteristics, and also possible application scenarios and related privacy protection technologies. The second part elaborates on some of the federated learning algorithms innovated by JD Technology which encompass both vertical and horizontal scenarios, including vertical federated tree models, linear regression, kernel learning, asynchronous methods, deep learning, homomorphic encryption, and reinforcement learning. The third and final part shifts in scope to federated learning systems - namely JD Technology's own FedLearn system - by discussing its design and implementation using gRPC, in addition to specific performance optimization techniques plus integration with blockchain technology.


This book will serve as a great reference for readers who are experienced in federated learning algorithms, building privacy-preserving machine learning applications or solving real-world problems with privacy-restricted scenarios.


商品描述(中文翻譯)

本書由研究者和實踐者撰寫,他們致力於構建尖端的聯邦學習應用,以解決現實世界中的問題。全書分為三個部分,涵蓋了聯邦學習技術的各個範疇,從概念和應用場景到先進算法,最後是系統實現。它提供了對聯邦學習技術的全面回顧和總結,並介紹了許多其他書籍未曾總結的新穎聯邦學習算法。本書還參考了過去幾年最新的論文、文章和評論,以跟上聯邦學習在學術界和工業界的最新進展。

第一部分通過定義和特徵,奠定了對聯邦學習的基礎理解,並探討了可能的應用場景及相關的隱私保護技術。第二部分詳細闡述了京東科技創新的聯邦學習算法,涵蓋了垂直和水平場景,包括垂直聯邦樹模型、線性回歸、核學習、非同步方法、深度學習、同態加密和強化學習。第三部分則轉向聯邦學習系統,特別是京東科技的 FedLearn 系統,討論其設計和實現,使用 gRPC,並介紹具體的性能優化技術以及與區塊鏈技術的整合。

本書將成為對於有經驗的讀者的極佳參考,特別是那些在聯邦學習算法、構建保護隱私的機器學習應用或在隱私受限場景中解決現實問題方面的讀者。