基于深度强化学习的联邦边缘学习资源配置

IF 3.2 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Xingyun Chen, Junjie Pang, Tonghui Sun
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引用次数: 0

摘要

随着移动互联网技术的快速发展和对数据隐私的日益关注,联邦学习(FL)已经成为训练机器学习模型的重要框架。鉴于技术的进步,用户设备(UE)现在可以同时处理多个计算任务,并且由于UE可以具有适合各种FL任务的多个数据源,因此多任务FL可能是同时响应不同应用程序请求的一种很有前途的方法。然而,同时运行多个FL任务可能会导致设备计算资源的紧张和过度的能耗,特别是能耗挑战的问题。由于电池容量有限、设备异构等因素,UE可能无法高效完成局部训练任务,部分UE可能成为拥有高质量数据的掉队者。为了缓解多任务FL环境下的能耗挑战,设计了一种多任务FL自动部署(MFLD)算法,以达到局部平衡和能耗目标。MFLD算法利用深度强化学习(Deep Reinforcement Learning, DRL)技术,根据任务需求自动选择ue并分配计算资源。大量的实验验证了我们提出的方法,并显示了任务部署成功率和能耗成本的显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep reinforcement learning based resource provisioning for federated edge learning
With the rapid development of mobile internet technology and increasing concerns over data privacy, Federated Learning (FL) has emerged as a significant framework for training machine learning models. Given the advancements in technology, User Equipment (UE) can now process multiple computing tasks simultaneously, and since UEs can have multiple data sources that are suitable for various FL tasks, multiple tasks FL could be a promising way to respond to different application requests at the same time. However, running multiple FL tasks simultaneously could lead to a strain on the device’s computation resource and excessive energy consumption, especially the issue of energy consumption challenge. Due to factors such as limited battery capacity and device heterogeneity, UE may fail to efficiently complete the local training task, and some of them may become stragglers with high-quality data. Aiming at alleviating the energy consumption challenge in a multi-task FL environment, we design an automatic Multi-Task FL Deployment (MFLD) algorithm to reach the local balancing and energy consumption goals. The MFLD algorithm leverages Deep Reinforcement Learning (DRL) techniques to automatically select UEs and allocate the computation resources according to the task requirement. Extensive experiments validate our proposed approach and showed significant improvements in task deployment success rate and energy consumption cost.
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CiteScore
4.70
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