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A Field Guide to Federated Optimization

14 July 2021
Jianyu Wang
Zachary B. Charles
Zheng Xu
Gauri Joshi
H. B. McMahan
Blaise Agüera y Arcas
Maruan Al-Shedivat
Galen Andrew
Salman Avestimehr
Katharine Daly
Deepesh Data
Suhas Diggavi
Hubert Eichner
Advait Gadhikar
Zachary Garrett
Antonious M. Girgis
Filip Hanzely
Andrew Straiton Hard
Chaoyang He
Samuel Horváth
Zhouyuan Huo
A. Ingerman
Martin Jaggi
T. Javidi
Peter Kairouz
Satyen Kale
Sai Praneeth Karimireddy
Jakub Konecný
Sanmi Koyejo
Tian Li
Luyang Liu
M. Mohri
H. Qi
Sashank J. Reddi
Peter Richtárik
K. Singhal
Virginia Smith
Mahdi Soltanolkotabi
Weikang Song
A. Suresh
Sebastian U. Stich
Ameet Talwalkar
Hongyi Wang
Blake E. Woodworth
Shanshan Wu
Felix X. Yu
Honglin Yuan
Manzil Zaheer
Mi Zhang
Tong Zhang
Chunxiang Zheng
Chen Zhu
Wennan Zhu
    FedML
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Abstract

Federated learning and analytics are a distributed approach for collaboratively learning models (or statistics) from decentralized data, motivated by and designed for privacy protection. The distributed learning process can be formulated as solving federated optimization problems, which emphasize communication efficiency, data heterogeneity, compatibility with privacy and system requirements, and other constraints that are not primary considerations in other problem settings. This paper provides recommendations and guidelines on formulating, designing, evaluating and analyzing federated optimization algorithms through concrete examples and practical implementation, with a focus on conducting effective simulations to infer real-world performance. The goal of this work is not to survey the current literature, but to inspire researchers and practitioners to design federated learning algorithms that can be used in various practical applications.

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