Authors
Ahmed Imteaj, Urmish Thakker, Shiqiang Wang, Jian Li, M Hadi Amini
Publication date
2021/7/6
Journal
IEEE Internet of Things Journal
Volume
9
Issue
1
Pages
1-24
Publisher
IEEE
Description
Federated learning (FL) is a distributed machine learning strategy that generates a global model by learning from multiple decentralized edge clients. FL enables on-device training, keeping the client’s local data private, and further, updating the global model based on the local model updates. While FL methods offer several advantages, including scalability and data privacy, they assume there are available computational resources at each edge-device/client. However, the Internet-of-Things (IoT)-enabled devices, e.g., robots, drone swarms, and low-cost computing devices (e.g., Raspberry Pi), may have limited processing ability, low bandwidth and power, or limited storage capacity. In this survey article, we propose to answer this question: how to train distributed machine learning models for resource-constrained IoT devices? To this end, we first explore the existing studies on FL, relative assumptions for …
Total citations
20212022202320241793196137
Scholar articles
A Imteaj, U Thakker, S Wang, J Li, MH Amini - IEEE Internet of Things Journal, 2021