Multicore Federated Learning for Mobile-Edge Computing Platforms

被引:1
|
作者
Bai, Yang [1 ]
Chen, Lixing [2 ,3 ]
Li, Jianhua [2 ,3 ]
Wu, Jun [2 ,3 ]
Zhou, Pan [4 ]
Xu, Zichuan [5 ]
Xu, Jie [6 ]
机构
[1] Shanghai Jiao Tong Univ, Sch Elect Informat & Elect Engn, Dept Automat, Shanghai 200240, Peoples R China
[2] Shanghai Jiao Tong Univ, Sch Elect Informat & Elect Engn, Inst Cyber Sci & Technol, Shanghai 200240, Peoples R China
[3] Shanghai Jiao Tong Univ, Shanghai Key Lab Integrated Adm Technol Informat S, Shanghai 200240, Peoples R China
[4] Huazhong Univ Sci & Technol, Hubei Engn Res Ctr Big Data Secur, Sch Cyber Sci & Engn, Hubei Key Lab Distributed Syst Secur, Wuhan 430074, Peoples R China
[5] Dalian Univ Technol, Sch Software, Dalian 116024, Peoples R China
[6] Univ Miami, Dept Elect & Comp Engineer, Coral Gables, FL 33146 USA
基金
中国国家自然科学基金;
关键词
Training; Convergence; Performance evaluation; Federated learning; Servers; Standards; Processor scheduling; Client scheduling; federated learning (FL); mobile-edge computing (MEC); NETWORKS; CHALLENGES;
D O I
10.1109/JIOT.2022.3224239
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
With increasingly strict data privacy regulations, federated learning (FL) has become one of the most often heard machine learning techniques due to its privacy-preserving trait. To efficiently implement the FL intelligence, researchers recently resort to a newly emerged computing paradigm, mobile-edge computing (MEC), and bring about a burst of works. However, most existing works neglect practical issues in MEC systems, e.g., device heterogeneity, unstable channel conditions, and unknown user mobility. Any of them, if not handled properly, can cause fatal failures to FL. This article proposed a novel FL framework, called multicore FL (MC-FL), to help FL intelligence land successfully on realistic MEC systems. A distinct feature of MC-FL is maintaining and training multiple global models (GMs) that exhibit different tradeoffs between learning performances and computational complexity. While this modification seems simple, it can effectively handle the device heterogeneity and device status variations, and improve the compatibility and robustness of FL. Furthermore, MC-FL employs a partial client participation scheme that allows participating clients to vary across time. This enables MC-FL to function under uncertain mobile environments. We rigorously prove the convergence of the designed MC-FL framework. In particular, we propose an online client scheduling scheme for MC-FL to judiciously schedule clients for training multiple GMs in a manner that minimizes the completion time of MC-FL. We also provide a service provisioning scenario with MC-FL to show how service subscribers could benefit from multiple GMs and improve their Quality of Experience (QoE). We evaluate our method on real-world data sets, and the results show that MC-FL outperforms state-of-the-art benchmarks.
引用
收藏
页码:5940 / 5952
页数:13
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