articleIEEE Signal Processing MagazineMay 1, 2020GREEN OA

Federated Learning: Challenges, Methods, and Future Directions

TLTian LiAKAnit Kumar SahuATAmeet TalwalkarVSVirginia Smith

Carnegie Mellon University

Indexed inarxivcrossref

Abstract

Federated learning involves training statistical models over remote devices or siloed data centers, such as mobile phones or hospitals, while keeping data localized. Training in heterogeneous and potentially massive networks introduces novel challenges that require a fundamental departure from standard approaches for large-scale machine learning, distributed optimization, and privacy-preserving data analysis. In this article, we discuss the unique characteristics and challenges of federated learning, provide a broad overview of current approaches, and outline several directions of future work that are relevant to a wide range of research communities.

Citation impact

4,557
total citations
FWCI
283.72
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100%
References
53
Citations per year

Authors

4
  • TL
    Tian LiCorresponding

    Carnegie Mellon University

  • AK
    Anit Kumar Sahu

    Carnegie Mellon University

  • AT
    Ameet Talwalkar

    Carnegie Mellon University

  • VS
    Virginia Smith

    Carnegie Mellon University

Topics & keywords

Keywords
  • Federated learning
  • Range (aeronautics)
  • Work (physics)
  • Big data
  • Mobile device
  • Data modeling
  • Mobile computing
  • Key (lock)
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