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出版商:
Springer
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出版日期:
2025-08-02
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售價:
$6,680
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貴賓價:
9.5 折
$6,346
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語言:
英文
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頁數:
82
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裝訂:
Hardcover - also called cloth, retail trade, or trade
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ISBN:
9819692229
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ISBN-13:
9789819692224
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相關分類:
Machine Learning、Edge computing
商品描述
This book serves as a primer on a secure computing framework known as federated learning. Federated learning is the study of methods to enable multiple parties to collaboratively train machine learning/AI models, while each party retains its own, raw data on-premise, never sharing it with others. This book is designed to be accessible to anyone with a background in undergraduate applied mathematics. It covers the basics of topics from computer science that are needed to understand examples of simple federated computing frameworks. It is my hope that by learning basic concepts and technical jargon from computer science, readers will be able to start collaborative work with researchers interested in secure computing. Chap. 1 provides the background and motivation for data security and federated learning and the simplest type of neural network. Chap. 2 introduces the idea of multiparty computation (MPC) and why enhancements are needed to provide security and privacy. Chap. 3 discusses edge computing, a distributed computing model in which data processing takes place on local devices, closer to where it is being generated. Advances in hardware and economies of scale have made it possible for edge computing devices to be embedded in everyday consumer products to process large volumes of data quickly and produce results in near real-time. Chap. 4 covers the basics of federated learning. Federated learning is a framework that enables multiple parties to collaboratively train AI models, while each party retains control of its own raw data, never sharing it with others. Chap. 5 discusses two attacks that target weaknesses of federated learning systems: (1) data leakage, i.e., inferring raw data used to train an AI model by unauthorized parties, and (2) data poisoning, i.e., a cyberattack that compromises data used to train an AI model to manipulate its output.
商品描述(中文翻譯)
本書作為一個關於安全計算框架的入門書,該框架被稱為聯邦學習(federated learning)。聯邦學習是研究使多方能夠協作訓練機器學習/人工智慧(AI)模型的方法,同時每一方保留其自己的原始數據在本地,從不與他人分享。本書旨在讓任何具備本科應用數學背景的人都能輕鬆理解。它涵蓋了理解簡單聯邦計算框架示例所需的計算機科學基礎知識。我的希望是,通過學習計算機科學的基本概念和技術術語,讀者能夠開始與對安全計算感興趣的研究人員進行合作。
第一章提供了數據安全和聯邦學習的背景與動機,以及最簡單類型的神經網絡。第二章介紹了多方計算(multiparty computation, MPC)的概念,以及為何需要增強措施來提供安全性和隱私。第三章討論了邊緣計算(edge computing),這是一種分散式計算模型,其中數據處理在本地設備上進行,靠近數據生成的地方。硬體的進步和規模經濟使得邊緣計算設備能夠嵌入日常消費產品中,以快速處理大量數據並在接近實時的情況下產生結果。第四章涵蓋了聯邦學習的基本知識。聯邦學習是一個框架,使多方能夠協作訓練AI模型,同時每一方保留對其原始數據的控制,從不與他人分享。第五章討論了針對聯邦學習系統弱點的兩種攻擊:(1)數據洩漏,即未經授權的方推斷用於訓練AI模型的原始數據,以及(2)數據中毒,即一種網絡攻擊,通過破壞用於訓練AI模型的數據來操縱其輸出。
作者簡介
Mei Kobayashi holds an A.B. from Princeton University in Chemistry and a M.A. and Ph.D. in mathematics from the University of California at Berkeley. She was Researcher at IBM for 26 years working on: inverse problems, control theory, airflow simulations digital steganography, applications of wavelets, and text analysis. Subsequently, she joined NTT communications as Data Science Specialist, where she was Co-Manager of a team to initiate digital transformation in the Customer Services Division. She is currently Member of the Research and Development Team at EAGLYS. In addition to her work, she was Visiting Associate Professor at the University of Tokyo and Visiting Researcher at OIST, has taught at Japanese National Universities in: Kyoto, Tsukuba, Hiroshima, and Tokyo, and is currently teaching at Tsuda Women's University. She has been serving on the Editorial Board of the Communications of the ACM for over a decade and was Columnist for SIAM News.
作者簡介(中文翻譯)
小林芽衣(Mei Kobayashi)擁有普林斯頓大學(Princeton University)化學學士學位(A.B.)以及加州大學伯克利分校(University of California at Berkeley)數學碩士(M.A.)和博士(Ph.D.)學位。她在IBM擔任研究員26年,專注於:反問題、控制理論、氣流模擬、數位隱寫術、波浪應用及文本分析。隨後,她加入NTT通訊擔任數據科學專家,並擔任客戶服務部門數位轉型團隊的共同經理。她目前是EAGLYS研究與開發團隊的成員。除了她的工作外,她曾擔任東京大學的訪問副教授及OIST的訪問研究員,並在日本的國立大學(如京都、筑波、廣島和東京)教授課程,目前在津田女子大學(Tsuda Women's University)任教。她在《ACM通訊》(Communications of the ACM)的編輯委員會服務超過十年,並曾擔任SIAM News的專欄作家。