Evaluation of Thermal Stress on Heterogeneous IoT-Based Federated Learning

Yi Gu, Liang Zhao, Tianze Liu, Shaoen Wu
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Abstract

Federated learning is a novel paradigm allowing the training of a global machine-learning model on distributed devices. It shares model parameters instead of private raw data during the entire model training process. While federated learning enables machine learning processes to take place collaboratively on Internet of Things (IoT) devices, compared to data centers, IoT devices with limited resource budgets typically have less security protection and are more vulnerable to potential thermal stress. Current research on the evaluation of federated learning is mainly based on the simulation of multi-clients/processes on a single machine/device. However, there is a gap in understanding the performance of federated learning under thermal stress in real-world distributed low-power heterogeneous IoT devices. Our previous work was among the first to evaluate the performance of federated learning under thermal stress on real-world IoT-based distributed systems. In this paper, we extended our work to a larger scale of heterogeneous real-world IoT-based distributed systems to further evaluate the performance of federated learning under thermal stress. To the best of our knowledge, the presented work is among the first to evaluate the performance of federated learning under thermal stress on real-world heterogeneous IoT-based systems. We conducted comprehensive experiments using the MNIST dataset and various performance metrics, including training time, CPU and GPU utilization rate, temperature, and power consumption. We varied the proportion of clients under thermal stress in each group of experiments and systematically quantified the effectiveness and real-world impact of thermal stress on the low-end heterogeneous IoT-based federated learning system. We added 67% more training epochs and 50% more clients compared with our previous work. The experimental results demonstrate that thermal stress is still effective on IoT-based federated learning systems as the entire global model and device performance degrade when even a small ratio of IoT devices are being impacted. Experimental results have also shown that the more influenced client under thermal stress within the federated learning system (FLS) tends to have a more major impact on the performance of FLS under thermal stress.
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基于异构物联网的联合学习的热应力评估
联盟学习是一种新颖的模式,允许在分布式设备上训练全局机器学习模型。它在整个模型训练过程中共享模型参数,而不是私人原始数据。与数据中心相比,联合学习能使机器学习过程在物联网(IoT)设备上协同进行,但资源预算有限的物联网设备通常安全保护较差,更容易受到潜在热应力的影响。目前有关联合学习评估的研究主要基于单台机器/设备上多客户端/进程的模拟。然而,在了解联合学习在真实世界分布式低功耗异构物联网设备热应力下的性能方面还存在差距。我们之前的工作是最早评估联合学习在现实世界中基于物联网的分布式系统的热应力下的性能的工作之一。在本文中,我们将工作扩展到更大规模的基于物联网的异构真实分布式系统,进一步评估联合学习在热应力下的性能。据我们所知,本文是首次评估联合学习在真实世界异构物联网系统热应力下的性能。我们使用 MNIST 数据集和各种性能指标(包括训练时间、CPU 和 GPU 使用率、温度和功耗)进行了综合实验。我们改变了每组实验中处于热应力下的客户端的比例,并系统地量化了热应力对基于低端异构物联网的联合学习系统的有效性和实际影响。与之前的工作相比,我们增加了 67% 的训练历时和 50% 的客户端。实验结果表明,热应力对基于物联网的联合学习系统仍然有效,因为即使只有很小比例的物联网设备受到影响,整个全局模型和设备性能也会下降。实验结果还表明,在联合学习系统(FLS)中,受热压力影响较大的客户端往往会对联合学习系统在热压力下的性能产生较大影响。
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