Resource Consumption for Supporting Federated Learning Enabled Network Edge Intelligence

被引:0
|
作者
Liu, Yi-Jing [1 ,2 ]
Feng, Gang [1 ,2 ]
Sun, Yao [3 ]
Li, Xiaoqian [1 ,2 ]
Zhou, Jianhong [1 ,2 ,4 ]
Qin, Shuang [1 ,2 ]
机构
[1] Univ Elect Sci & Technol China, Natl Key Lab Sci & Technol Commun, Chengdu, Peoples R China
[2] Univ Elect Sci & Technol China, Yangtze Delta Reg Inst Huzhou, Chengdu, Peoples R China
[3] Univ Glasgow, James Watt Sch Engn, Glasgow, Lanark, Scotland
[4] Xihua Univ, Sch Comp & Software Engn, Chengdu, Peoples R China
来源
2022 IEEE INTERNATIONAL CONFERENCE ON COMMUNICATIONS WORKSHOPS (ICC WORKSHOPS) | 2022年
关键词
D O I
10.1109/ICCWORKSHOPS53468.2022.9814613
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Federated learning (FL) has recently become one of the hottest focuses in network edge intelligence. In the FL framework, user equipments (UEs) train local machine learning (ML) models and transmit the trained models to an aggregator where a global model is formed and then sent back to UEs, such that FL can enable collaborative model training. In largescale and dynamic edge networks, both local model training and transmission may not be always successful due to constrained power and computing resources at mobile devices, wireless channel impairments, bandwidth limitations, etc., which directly degrades FL performance in terms of model accuracy and/or training time. On the other hand, we need to quantify the benefits and cost of deploying edge intelligence when we plan to improve network performance by using artificial intelligence (AI) techniques which definitely incur certain cost. Therefore, it is imperative to deeply understand the relationship between the required multiple-dimensional resources and FL performance to facilitate FL enabled edge intelligence. In this paper, we construct an analytical model for investigating the relationship between the accuracy of ML model and consumed network resources in FL enabled edge networks. Based on the analytical model, we can explicitly quantify the trained model accuracy given spatialtemporal domain distribution, available user computing and communication resources. Numerical results validate the effectiveness of our theoretical modeling and analysis. Our analytical model in this paper provides some useful guidelines for appropriately promoting FL enabled edge network intelligence.
引用
收藏
页码:49 / 54
页数:6
相关论文
共 50 条
  • [1] Resource Consumption for Supporting Federated Learning in Wireless Networks
    Liu, Yi-Jing
    Qin, Shuang
    Sun, Yao
    Feng, Gang
    IEEE TRANSACTIONS ON WIRELESS COMMUNICATIONS, 2022, 21 (11) : 9974 - 9989
  • [2] Resource management at the network edge for federated learning
    Trindade, Silvana
    Bittencourt, Luiz F.
    da Fonseca, Nelson L. S.
    DIGITAL COMMUNICATIONS AND NETWORKS, 2024, 10 (03) : 765 - 782
  • [3] Resource management at the network edge for federated learning
    Silvana Trindade
    Luiz F.Bittencourt
    Nelson L.S.da Fonseca
    Digital Communications and Networks, 2024, 10 (03) : 765 - 782
  • [4] Enabling Intelligence at Network Edge Edge:An Overview of Federated Learning
    Howard H.YANG
    ZHAO Zhongyuan
    Tony Q.S.QUEK
    ZTECommunications, 2020, 18 (02) : 2 - 10
  • [5] Resource-Aware Split Federated Learning for Edge Intelligence
    Arouj, Amna
    Abdelmoniem, Ahmed M.
    Alhilal, Ahmad
    You, Linlin
    Wang, Chen
    PROCEEDINGS 2024 IEEE 3RD WORKSHOP ON MACHINE LEARNING ON EDGE IN SENSOR SYSTEMS, SENSYS-ML 2024, 2024, : 15 - 20
  • [6] iFLBC: On the Edge Intelligence Using Federated Learning Blockchain Network
    Doku, Ronald
    Rawat, Danda B.
    2020 IEEE 6TH INT CONFERENCE ON BIG DATA SECURITY ON CLOUD (BIGDATASECURITY) / 6TH IEEE INT CONFERENCE ON HIGH PERFORMANCE AND SMART COMPUTING, (HPSC) / 5TH IEEE INT CONFERENCE ON INTELLIGENT DATA AND SECURITY (IDS), 2020, : 221 - 226
  • [7] Blockchain Assisted Federated Learning for Enabling Network Edge Intelligence
    Wang, Yunxiang
    Zhou, Jianhong
    Feng, Gang
    Niu, Xianhua
    Qin, Shuang
    IEEE NETWORK, 2023, 37 (01): : 96 - 102
  • [8] Transform-Domain Federated Learning for Edge-Enabled IoT Intelligence
    Zhao, Lei
    Cai, Lin
    Lu, Wu-Sheng
    IEEE INTERNET OF THINGS JOURNAL, 2023, 10 (07) : 6205 - 6220
  • [9] An Overview of Federated Learning in Edge Intelligence
    Zhang X.
    Liu Y.
    Liu J.
    Han Y.
    Jisuanji Yanjiu yu Fazhan/Computer Research and Development, 2023, 60 (06): : 1276 - 1295
  • [10] Decentralized Edge Intelligence: A Dynamic Resource Allocation Framework for Hierarchical Federated Learning
    Lim, Wei Yang Bryan
    Ng, Jer Shyuan
    Xiong, Zehui
    Jin, Jiangming
    Zhang, Yang
    Niyato, Dusit
    Leung, Cyril
    Miao, Chunyan
    IEEE TRANSACTIONS ON PARALLEL AND DISTRIBUTED SYSTEMS, 2022, 33 (03) : 536 - 550