Fine-Grained Data Selection for Improved Energy Efficiency of Federated Edge Learning

被引:27
|
作者
Albaseer, Abdullatif [1 ]
Abdallah, Mohamed [1 ]
Al-Fuqaha, Ala [1 ]
Erbad, Aiman [1 ]
机构
[1] Hamad Bin Khlifa Univ, Coll Sci & Engn, Div Informat & Comp Technol, Doha 5825, Qatar
关键词
Servers; Energy consumption; Training; Data models; Computational modeling; Resource management; Performance evaluation; Federated Edge Learning (FEEL); Edge Intelligence; Data selection; Learning Algorithm; Convergence rate; Resource allocation; COMMUNICATION;
D O I
10.1109/TNSE.2021.3100805
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
In Federated edge learning (FEEL), energy-constrained devices at the network edge consume significant energy when training and uploading their local machine learning models, leading to a decrease in their lifetime. This work proposes novel solutions for energy-efficient FEEL by jointly considering local training data, available computation, and communications resources, and deadline constraints of FEEL rounds to reduce energy consumption. This paper considers a system model where the edge server is equipped with multiple antennas employing beamforming techniques to communicate with the local users through orthogonal channels. Specifically, we consider a problem that aims to find the optimal user's resources, including the fine-grained selection of relevant training samples, bandwidth, transmission power, beamforming weights, and processing speed with the goal of minimizing the total energy consumption given a deadline constraint on the communication rounds of FEEL. Then, we devise tractable solutions by first proposing a novel fine-grained training algorithm that excludes less relevant training samples and effectively chooses only the samples that improve the model's performance. After that, we derive closed-form solutions, followed by a Golden-Section-based iterative algorithm to find the optimal computation and communication resources that minimize energy consumption. Experiments using MNIST and CIFAR-10 datasets demonstrate that our proposed algorithms considerably outperform the state-of-the-art solutions as energy consumption decreases by 79% for MNIST and 73% for CIFAR-10 datasets.
引用
收藏
页码:3258 / 3271
页数:14
相关论文
共 50 条
  • [21] Fine-Grained Visual Categorization Using Meta-learning Optimization with Sample Selection of Auxiliary Data
    Zhang, Yabin
    Tang, Hui
    Jia, Kui
    [J]. COMPUTER VISION - ECCV 2018, PT VIII, 2018, 11212 : 241 - 256
  • [22] The Fine-Grained Impact of Gaming (?) on Learning
    Gong, Yue
    Beck, Joseph E.
    Heffernan, Neil T.
    Forbes-Summers, Elijah
    [J]. INTELLIGENT TUTORING SYSTEMS, PT 1, PROCEEDINGS, 2010, 6094 : 194 - 203
  • [23] Federated News Recommendation with Fine-grained Interpolation and Dynamic Clustering
    Yu, Sanshi Lei
    Liu, Qi
    Wang, Fei
    Yu, Yang
    Chen, Enhong
    [J]. PROCEEDINGS OF THE 32ND ACM INTERNATIONAL CONFERENCE ON INFORMATION AND KNOWLEDGE MANAGEMENT, CIKM 2023, 2023, : 3073 - 3082
  • [24] Fine-grained defense methods in federated encrypted traffic classification
    Zeng, Yong
    Guo, Xiaoya
    Ma, Baihe
    Liu, Zhihong
    Ma, Jianfeng
    [J]. Xi'an Dianzi Keji Daxue Xuebao/Journal of Xidian University, 2024, 51 (01): : 157 - 164
  • [25] FINE-GRAINED LEARNING ANALYTICS DATA ACQUISITION IN THE LEARNING MANAGEMENT SYSTEM MOODLE
    Leuchter, Sandro
    [J]. 9TH INTERNATIONAL CONFERENCE ON EDUCATION AND NEW LEARNING TECHNOLOGIES (EDULEARN17), 2017, : 8658 - 8664
  • [26] Automated Fine-Grained Trust Assessment in Federated Knowledge Bases
    Nolle, Andreas
    Chekol, Melisachew Wudage
    Meilicke, Christian
    Nemirovski, German
    Stuckenschmidt, Heiner
    [J]. SEMANTIC WEB - ISWC 2017, PT I, 2017, 10587 : 490 - 506
  • [27] Energy-Efficient Device Selection in Federated Edge Learning
    Peng, Cheng
    Hu, Qin
    Chen, Jianan
    Kang, Kyubyung
    Li, Feng
    Zou, Xukai
    [J]. 30TH INTERNATIONAL CONFERENCE ON COMPUTER COMMUNICATIONS AND NETWORKS (ICCCN 2021), 2021,
  • [28] DATA ON CONSOLIDATION OF FINE-GRAINED SEDIMENTS
    CHILINGA.GV
    RIEKE, HH
    [J]. JOURNAL OF SEDIMENTARY PETROLOGY, 1968, 38 (03): : 811 - &
  • [29] Dynamic Data Sample Selection and Scheduling in Edge Federated Learning
    Serhani, Mohamed Adel
    Abreha, Haftay Gebreslasie
    Tariq, Asadullah
    Hayajneh, Mohammad
    Xu, Yang
    Hayawi, Kadhim
    [J]. IEEE OPEN JOURNAL OF THE COMMUNICATIONS SOCIETY, 2023, 4 : 2133 - 2149
  • [30] Fine-Grained RNN With Transfer Learning for Energy Consumption Estimation on EVs
    Hua, Yining
    Sevegnani, Michele
    Yi, Dewei
    Birnie, Andrew
    McAslan, Steve
    [J]. IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 2022, 18 (11) : 8182 - 8190