Peng, ChengHu, QinChen, JiananKang, KyubyungLi, FengZou, Xukai2022-10-242022-10-242021-07Peng, C., Hu, Q., Chen, J., Kang, K., Li, F., & Zou, X. (2021). Energy-Efficient Device Selection in Federated Edge Learning. 2021 International Conference on Computer Communications and Networks (ICCCN), 1–9. https://doi.org/10.1109/ICCCN52240.2021.9522303978-1-66541-278-0https://hdl.handle.net/1805/30390Due to the increasing demand from mobile devices for the real-time response of cloud computing services, federated edge learning (FEL) emerges as a new computing paradigm, which utilizes edge devices to achieve efficient machine learning while protecting their data privacy. Implementing efficient FEL suffers from the challenges of devices’ limited computing and communication resources, as well as unevenly distributed datasets, which inspires several existing research focusing on device selection to optimize time consumption and data diversity. However, these studies fail to consider the energy consumption of edge devices given their limited power supply, which can seriously affect the cost-efficiency of FEL with unexpected device dropouts. To fill this gap, we propose a device selection model capturing both energy consumption and data diversity optimization, under the constraints of time consumption and training data amount. Then we solve the optimization problem by reformulating the original model and designing a novel algorithm, named E2DS, to reduce the time complexity greatly. By comparing with two classical FEL schemes, we validate the superiority of our proposed device selection mechanism for FEL with extensive experimental results.en-USPublisher PolicyEnergy consumptionPower suppliesTraining dataMachine learningEnergy-Efficient Device Selection in Federated Edge LearningArticle