Resilient edge machine learning in smart city environments

Andreas Vrachimis, Stella Gkegka, Kostas Kolomvatsos
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Abstract

Distributed Machine Learning (DML) has emerged as a disruptive technology that enables the execution of Machine Learning (ML) and Deep Learning (DL) algorithms in proximity to data generation, facilitating predictive analytics services in Smart City environments. However, the real-time analysis of data generated by Smart City Edge Devices (EDs) poses significant challenges. Concept drift, where the statistical properties of data streams change over time, leads to degraded prediction performance. Moreover, the reliability of each computing node directly impacts the availability of DML systems, making them vulnerable to node failures. To address these challenges, we propose a resilience framework comprising computationally lightweight maintenance strategies that ensure continuous quality of service and availability in DML applications. We conducted a comprehensive experimental evaluation using real datasets, assessing the effectiveness and efficiency of our resilience maintenance strategies across three different scenarios. Our findings demonstrate the significance and practicality of our framework in sustaining predictive performance in smart city edge learning environments. Specifically, our enhanced model exhibited increased generalizability when confronted with concept drift. Furthermore, we achieved a substantial reduction in the amount of data transmitted over the network during the maintenance of the enhanced models, while balancing the trade-off between the quality of analytics and inter-node data communication cost.
智慧城市环境中的弹性边缘机器学习
分布式机器学习(DML)已经成为一种颠覆性技术,它使机器学习(ML)和深度学习(DL)算法能够在数据生成附近执行,从而促进智能城市环境中的预测分析服务。然而,对智慧城市边缘设备(ed)产生的数据进行实时分析带来了重大挑战。概念漂移,即数据流的统计属性随时间变化,导致预测性能下降。此外,每个计算节点的可靠性直接影响DML系统的可用性,使它们容易受到节点故障的影响。为了应对这些挑战,我们提出了一个弹性框架,包括计算轻量级维护策略,以确保DML应用程序中的持续服务质量和可用性。我们使用真实数据集进行了全面的实验评估,评估了我们的弹性维护策略在三种不同场景下的有效性和效率。我们的研究结果证明了我们的框架在智慧城市边缘学习环境中保持预测性能的重要性和实用性。具体而言,我们的增强模型在面对概念漂移时表现出更高的泛化能力。此外,在维护增强模型期间,我们实现了通过网络传输的数据量的大幅减少,同时平衡了分析质量和节点间数据通信成本之间的权衡。
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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