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

Abdullatif Albaseer*, Mohamed Abdallah, Ala Al-Fuqaha, Aiman Erbad

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

35 Citations (Scopus)

Abstract

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.

Original languageEnglish
Pages (from-to)3258-3271
Number of pages14
JournalIEEE Transactions on Network Science and Engineering
Volume9
Issue number5
DOIs
Publication statusPublished - 1 Sept 2022

Keywords

  • Computational modeling
  • Convergence rate
  • Data models
  • Data selection
  • Edge Intelligence
  • Energy consumption
  • Federated Edge Learning (FEEL)
  • Learning Algorithm
  • Performance evaluation
  • Resource allocation
  • Resource management
  • Servers
  • Training

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  • EX-QNRF-NPRPS-37: Secure Federated Edge Intelligence Framework for AI-driven 6G Applications

    Abdallah, M. M. (Lead Principal Investigator), Al Fuqaha, A. (Principal Investigator), Hamood, M. (Graduate Student), Aboueleneen, N. (Graduate Student), Student-1, G. (Graduate Student), Student-2, G. (Graduate Student), Fellow-1, P. D. (Post Doctoral Fellow), Assistant-1, R. (Research Assistant), Mohamed, D. A. (Principal Investigator), Mahmoud, D. M. (Principal Investigator), Al-Dhahir, P. N. (Principal Investigator) & Khattab, P. T. (Principal Investigator)

    19/04/2130/08/24

    Project: Applied Research

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