HDFL: A Heterogeneity and Client Dropout-Aware Federated Learning Framework

Syed Zawad, A. Anwar, Yi Zhou, N. Baracaldo, Feng Yan
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Abstract

Cross-device Federated Learning (FL) enables training machine learning (ML) models on private data that is heterogeneously distributed over many IoT end devices without violating privacy requirements. Clients typically vary significantly in data quality, hardware resources and stability, which results in challenges such as increased training times, higher resource costs, sub-par model performance and biased training. Existing works tend to address each of these challenges in isolation, but overlook how they might impact each other holistically. We perform a first of its kind characterization study that empirically demonstrates how these properties interact with each other to impact important performance metrics such as model error, fairness, resource cost and training time. We then propose a method called HDFL based on our observations, which is the first framework to our knowledge that comprehensively considers the multiple aforementioned important challenges of practical FL systems. We implement HDFL on a real distributed system and evaluate it on multiple benchmark datasets which show that HDFL achieves better Pareto frontier compared to both the state-of-the-practice and state-of-the-art systems with up to 4-10% better model accuracy, 33% improved good-intent fairness, 63% lower cost, and 17% faster training time.
HDFL:一个异构性和客户退学意识的联邦学习框架
跨设备联邦学习(FL)支持在私有数据上训练机器学习(ML)模型,这些私有数据异构地分布在许多物联网终端设备上,而不会违反隐私要求。客户端通常在数据质量、硬件资源和稳定性方面差异很大,这导致了诸如增加的训练时间、更高的资源成本、低于标准的模型性能和有偏差的训练等挑战。现有的作品倾向于孤立地解决这些挑战,但忽略了它们如何整体地相互影响。我们进行了首次此类表征研究,实证地展示了这些属性如何相互作用以影响重要的性能指标,如模型误差、公平性、资源成本和训练时间。然后,我们根据我们的观察提出了一种称为HDFL的方法,这是我们知识的第一个框架,全面考虑了实际FL系统的多个上述重要挑战。我们在一个真实的分布式系统上实现了HDFL,并在多个基准数据集上对其进行了评估,结果表明HDFL与现状和最先进的系统相比,达到了更好的帕累托边界,模型精度提高了4-10%,良好意图公平性提高了33%,成本降低了63%,训练时间缩短了17%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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