Benchmarking Federated Learning on High-Performance Computing: Aggregation Methods and Their Impact

被引:0
|
作者
Annunziata, Daniela [1 ]
Canzaniello, Marzia [1 ]
Savoia, Martina [1 ]
Cuomo, Salvatore [1 ]
Piccialli, Francesco [1 ]
机构
[1] Univ Naples Federico II, Dept Math & Applicat R Caccioppoli, Naples, Italy
关键词
Federated learning; High-Performance Computing (HPC); Aggregation Methods; Flower Framework;
D O I
10.1109/PDP62718.2024.00036
中图分类号
TP3 [计算技术、计算机技术];
学科分类号
0812 ;
摘要
Federated Learning (FL) diverges from traditional Machine Learning (ML) models decentralizing data utilization, addressing privacy concerns. This approach involves iterative model updates, where individual devices compute gradients based on local data, share updates with a central server, and receive an improved global model. High-Performance Computing (HPC) systems enhance FL efficiency by leveraging parallel processing. In this study, we aim to explore FL efficiency using four aggregation methods on three datasets across six clients, assess metrics like global model accuracy and communication efficiency, and evaluate FL on HPC. We employ Flower, a versatile FL framework, in our experiments. Our chosen datasets include MNIST, Digits, and Semeion Handwritten Digit, distributed among two clients each. We utilize NVIDIA GPUs for computation, with aggregation methods such as FedAvg, FedProx, FedOpt, and FedYogi. Metrics include Convergence Time, Global Model Accuracy, Communication Efficiency, and HPC Throughput. The results will provide insights into FL performance, especially in HPC environments, impacting convergence, communication, and resource utilization.
引用
收藏
页码:207 / 214
页数:8
相关论文
共 50 条
  • [1] On the Dynamics of Non-IID Data in Federated Learning and High-Performance Computing
    Annunziata, Daniela
    Canzaniello, Marzia
    Chiaro, Diletta
    Izzo, Stefano
    Savoia, Martina
    Piccialli, Francesco
    2024 32ND EUROMICRO INTERNATIONAL CONFERENCE ON PARALLEL, DISTRIBUTED AND NETWORK-BASED PROCESSING, PDP 2024, 2024, : 230 - 237
  • [2] A High-Performance Federated Learning Aggregation Algorithm Based on Learning Rate Adjustment and Client Sampling
    Gao, Yulian
    Lu, Gehao
    Gao, Jimei
    Li, Jinggang
    MATHEMATICS, 2023, 11 (20)
  • [3] Performance Modelling, Benchmarking and Simulation of High-Performance Computing Systems
    Jarvis, S. A.
    COMPUTER JOURNAL, 2012, 55 (02): : 136 - 137
  • [4] Benchmarking Classification Algorithms on High-Performance Computing Clusters
    Bischl, Bernd
    Schiffner, Julia
    Weihs, Claus
    DATA ANALYSIS, MACHINE LEARNING AND KNOWLEDGE DISCOVERY, 2014, : 23 - 31
  • [5] A continuous benchmarking infrastructure for high-performance computing applications
    Alt, Christoph
    Lanser, Martin
    Plewinski, Jonas
    Janki, Atin
    Klawonn, Axel
    Koestler, Harald
    Selzer, Michael
    Ruede, Ulrich
    INTERNATIONAL JOURNAL OF PARALLEL EMERGENT AND DISTRIBUTED SYSTEMS, 2024, 39 (04) : 501 - 523
  • [6] perun: Benchmarking Energy Consumption of High-Performance Computing Applications
    Muriedas, Juan Pedro Gutierrez Hermosillo
    Fluegel, Katharina
    Debus, Charlotte
    Obermaier, Holger
    Streit, Achim
    Goetz, Markus
    EURO-PAR 2023: PARALLEL PROCESSING, 2023, 14100 : 17 - 31
  • [7] A Federated Learning Approach for Anomaly Detection in High Performance Computing
    Farooq, Emmen
    Borghesi, Andrea
    2023 IEEE 35TH INTERNATIONAL CONFERENCE ON TOOLS WITH ARTIFICIAL INTELLIGENCE, ICTAI, 2023, : 496 - 500
  • [8] The Impact of Federated Learning on Urban Computing
    Souza, Jose R. F.
    Oliveira, Sheridan Z. L. N.
    Oliveira, Helder
    JOURNAL OF INTERNET SERVICES AND APPLICATIONS, 2024, 15 (01) : 380 - 409
  • [9] The Use of The High-Performance Computing in The Learning Process
    Serik, Meruert
    Yerlanova, Gulmira
    Karelkhan, Nursaule
    Temirbekov, Nurlykhan
    INTERNATIONAL JOURNAL OF EMERGING TECHNOLOGIES IN LEARNING, 2021, 16 (17) : 240 - 254
  • [10] The ecological impact of high-performance computing in astrophysics
    Portegies Zwart, Simon
    NATURE ASTRONOMY, 2020, 4 (09) : 819 - 822