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A Survey on Federated Learning: The Journey From Centralized to Distributed On-Site Learning and Beyond
Driven by privacy concerns and the visions of deep learning, the last four years have witnessed a paradigm shift in the applicability mechanism of machine learning (ML). An emerging model, called federated learning (FL), is rising above both centralized systems and on-site analysis, to be a new fash...
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Published in: | IEEE internet of things journal 2021-04, Vol.8 (7), p.5476-5497 |
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container_title | IEEE internet of things journal |
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creator | Abdulrahman, Sawsan Tout, Hanine Ould-Slimane, Hakima Mourad, Azzam Talhi, Chamseddine Guizani, Mohsen |
description | Driven by privacy concerns and the visions of deep learning, the last four years have witnessed a paradigm shift in the applicability mechanism of machine learning (ML). An emerging model, called federated learning (FL), is rising above both centralized systems and on-site analysis, to be a new fashioned design for ML implementation. It is a privacy-preserving decentralized approach, which keeps raw data on devices and involves local ML training while eliminating data communication overhead. A federation of the learned and shared models is then performed on a central server to aggregate and share the built knowledge among participants. This article starts by examining and comparing different ML-based deployment architectures, followed by in-depth and in-breadth investigation on FL. Compared to the existing reviews in the field, we provide in this survey a new classification of FL topics and research fields based on thorough analysis of the main technical challenges and current related work. In this context, we elaborate comprehensive taxonomies covering various challenging aspects, contributions, and trends in the literature, including core system models and designs, application areas, privacy and security, and resource management. Furthermore, we discuss important challenges and open research directions toward more robust FL systems. |
doi_str_mv | 10.1109/JIOT.2020.3030072 |
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An emerging model, called federated learning (FL), is rising above both centralized systems and on-site analysis, to be a new fashioned design for ML implementation. It is a privacy-preserving decentralized approach, which keeps raw data on devices and involves local ML training while eliminating data communication overhead. A federation of the learned and shared models is then performed on a central server to aggregate and share the built knowledge among participants. This article starts by examining and comparing different ML-based deployment architectures, followed by in-depth and in-breadth investigation on FL. Compared to the existing reviews in the field, we provide in this survey a new classification of FL topics and research fields based on thorough analysis of the main technical challenges and current related work. In this context, we elaborate comprehensive taxonomies covering various challenging aspects, contributions, and trends in the literature, including core system models and designs, application areas, privacy and security, and resource management. 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subjects | Artificial intelligence (AI) Cloud computing Computational modeling Data communication Data models Data privacy deep learning (DL) distributed intelligence Electronic devices Federated learning federated learning (FL) applications Internet of Things Machine learning machine learning (ML) Privacy Resource management Security Taxonomy |
title | A Survey on Federated Learning: The Journey From Centralized to Distributed On-Site Learning and Beyond |
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