Staleness Control for Edge Data Analytics

Atakan Aral, M. Erol-Kantarci, I. Brandić
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引用次数: 13

Abstract

A new generation of cyber-physical systems has emerged with a large number of devices that continuously generate and consume massive amounts of data in a distributed and mobile manner. Accurate and near real-time decisions based on such streaming data are in high demand in many areas of optimization for such systems. Edge data analytics bring processing power in the proximity of data sources, reduce the network delay for data transmission, allow large-scale distributed training, and consequently help meeting real-time requirements. Nevertheless, the multiplicity of data sources leads to multiple distributed machine learning models that may suffer from sub-optimal performance due to the inconsistency in their states. In this work, we tackle the insularity, concept drift, and connectivity issues in edge data analytics to minimize its accuracy handicap without losing its timeliness benefits. Thus, we propose an efficient model synchronization mechanism for distributed and stateful data analytics. Staleness Control for Edge Data Analytics (SCEDA) ensures the high adaptability of synchronization frequency in the face of an unpredictable environment by addressing the trade-off between the generality and timeliness of the model.
边缘数据分析的过期控制
新一代的网络物理系统已经出现,大量设备以分布式和移动的方式持续生成和消耗大量数据。基于这种流数据的准确和接近实时的决策在许多优化领域都有很高的需求。边缘数据分析在数据源附近带来处理能力,减少数据传输的网络延迟,允许大规模分布式训练,从而有助于满足实时需求。然而,数据源的多样性导致多个分布式机器学习模型由于其状态的不一致而可能遭受次优性能的影响。在这项工作中,我们解决了边缘数据分析中的孤立性、概念漂移和连通性问题,以尽量减少其准确性障碍,同时又不失去其及时性优势。因此,我们提出了一种有效的模型同步机制,用于分布式和有状态数据分析。边缘数据分析的陈旧控制(SCEDA)通过解决模型的通用性和及时性之间的权衡,确保了在面对不可预测的环境时同步频率的高适应性。
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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