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Advances and Open Problems in Federated Learning
Peter Kairouz
H. Brendan McMahan
Brendan Avent
Aurélien Bellet
Mehdi Bennis
Arjun Nitin Bhagoji
Kallista Bonawit
Zachary Charles
Graham Cormode
Rachel Cummings
Rafael G. L. D'Oliveira
Hubert Eichner
Salim El Rouayheb
David Evans
Josh Gardner
Zachary Garrett
Adrià Gascón
Badih Ghazi
Phillip B. Gibbons
Marco Gruteser
Zaid Harchaoui
Chaoyang He
Lie He
Zhouyuan Huo
Ben Hutchinson
Justin Hsu
Martin Jaggi
Tara Javidi
Gauri Joshi
Mikhail Khodak
Jakub Konecný
Aleksandra Korolova
Farinaz Koushanfar
Sanmi Koyejo
Tancrède Lepoint
Yang Liu
Prateek Mittal
Mehryar Mohri
Richard Nock
Ayfer Özgür
Rasmus Pagh
Hang Qi
Daniel Ramage
Ramesh Raskar
Mariana Raykova
Dawn Song
Weikang Song
Sebastian U. Stich
Ziteng Sun
Ananda Theertha Suresh
Florian Tramèr
Praneeth Vepakomma
Jianyu Wang
Li Xiong
Zheng Xu
Qiang Yang
Felix X. Yu
Han Yu
Sen Zhao
出版
Now Publishers
, 2021-06-23
主題
Computers / Artificial Intelligence / General
Computers / Machine Theory
Computers / Data Science / Machine Learning
Science / General
ISBN
1680837885
9781680837889
URL
http://books.google.com.hk/books?id=_A2EzgEACAAJ&hl=&source=gbs_api
註釋
The term Federated Learning was coined as recently as 2016 to describe a machine learning setting where multiple entities collaborate in solving a machine learning problem, under the coordination of a central server or service provider. Each client's raw data is stored locally and not exchanged or transferred; instead, focused updates intended for immediate aggregation are used to achieve the learning objective. Since then, the topic has gathered much interest across many different disciplines and the realization that solving many of these interdisciplinary problems likely requires not just machine learning but techniques from distributed optimization, cryptography, security, differential privacy, fairness, compressed sensing, systems, information theory, statistics, and more. This monograph has contributions from leading experts across the disciplines, who describe the latest state-of-the art from their perspective. These contributions have been carefully curated into a comprehensive treatment that enables the reader to understand the work that has been done and get pointers to where effort is required to solve many of the problems before Federated Learning can become a reality in practical systems. Researchers working in the area of distributed systems will find this monograph an enlightening read that may inspire them to work on the many challenging issues that are outlined. This monograph will get the reader up to speed quickly and easily on what is likely to become an increasingly important topic: Federated Learning.