Advances and Open Problems in Federated Learning in Machine Learning

Advances and Open Problems in Federated Learning in Machine Learning

Peter Kairouz , H Brendan McMahan , Brendan Avent
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Jun 23, 2021 · English · Paperback (226 pages)
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Book Details

Format Paperback
Pages 226
Language English
Published Jun 23, 2021
Publisher Now Publishers
ISBN-10 1680837885
ISBN-13 9781680837889

Description

The exploration of federated learning represents a significant evolution in the field of machine learning, embodying the quest for privacy-preserving solutions amidst growing data concerns. With the term first coined in 2016, this cutting-edge approach enables the development of algorithms that train models across multiple decentralized devices while keeping sensitive data local. This collaborative yet private paradigm opens new doors for innovative applications within various industries, from healthcare to finance.

The work delves into both the advances made in federated learning and the current challenges that researchers face. By addressing critical issues such as communication efficiency, data heterogeneity, and model performance, it provides a comprehensive overview of the state-of-the-art techniques and methodologies. As the authors examine unresolved problems and future directions, they illuminate the path for ongoing research, emphasizing the potential impact of federated learning in shaping a more secure and efficient digital landscape.

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