Federated Learning in IoT: a Survey from a Resource-Constrained Perspective
August 25, 2023 Β· The Cartographer Β· π 2023 International Conference on Artificial Intelligence Robotics, Signal and Image Processing (AIRoSIP)
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"Title-pattern auto-detect: Federated Learning in IoT: a Survey from a Resource-Constrained Perspective"
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Authors
Ishmeet Kaur andAdwaita Janardhan Jadhav
arXiv ID
2308.13157
Category
cs.LG: Machine Learning
Cross-listed
cs.DC
Citations
7
Venue
2023 International Conference on Artificial Intelligence Robotics, Signal and Image Processing (AIRoSIP)
Last Checked
23 hours ago
Abstract
The IoT ecosystem is able to leverage vast amounts of data for intelligent decision-making. Federated Learning (FL), a decentralized machine learning technique, is widely used to collect and train machine learning models from a variety of distributed data sources. Both IoT and FL systems can be complementary and used together. However, the resource-constrained nature of IoT devices prevents the widescale deployment FL in the real world. This research paper presents a comprehensive survey of the challenges and solutions associated with implementing Federated Learning (FL) in resource-constrained Internet of Things (IoT) environments, viewed from 2 levels, client and server. We focus on solutions regarding limited client resources, presence of heterogeneous client data, server capacity, and high communication costs, and assess their effectiveness in various scenarios. Furthermore, we categorize the solutions based on the location of their application, i.e., the IoT client, and the FL server. In addition to a comprehensive review of existing research and potential future directions, this paper also presents new evaluation metrics that would allow researchers to evaluate their solutions on resource-constrained IoT devices.
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