建模雾卸载性能

A. Majeed, P. Kilpatrick, I. Spence, B. Varghese
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引用次数: 9

摘要

雾计算作为一种计算范式出现,旨在解决移动设备与远程云服务通信时的延迟、带宽和隐私问题。其概念是卸载离数据更近的计算服务。然而,在实现这一方法的过程中存在许多挑战。在卸载期间,由服务支撑的(部分)应用程序可能不可用,用户将经历停机时间。本文描述了旨在构建模型的工作,以允许基于底层和周围基础设施的度量(操作数据)来预测此类停机时间。这样的预测在Fog编排中的自动化Fog卸载和自适应决策制定的上下文中是非常宝贵的。满足四种基于容器的无状态和有状态卸载技术的模型,即保存和加载、导出和导入、推拉和实时迁移,是使用四种(线性和非线性)回归技术构建的。实验结果包括来自多个基于实验室的Fog基础设施的超过4200万个数据点。结果强调了当考虑与基础设施相关的25个度量时,可以获得合理准确的预测(通过回归模型的决定系数、平均绝对百分比误差和平均绝对误差来测量)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modelling Fog Offloading Performance
Fog computing has emerged as a computing paradigm aimed at addressing the issues of latency, bandwidth and privacy when mobile devices are communicating with remote cloud services. The concept is to offload compute services closer to the data. However many challenges exist in the realisation of this approach. During offloading, (part of) the application underpinned by the services may be unavailable, which the user will experience as down time. This paper describes work aimed at building models to allow prediction of such down time based on metrics (operational data) of the underlying and surrounding infrastructure. Such prediction would be invaluable in the context of automated Fog offloading and adaptive decision making in Fog orchestration. Models that cater for four container-based stateless and stateful offload techniques, namely Save and Load, Export and Import, Push and Pull and Live Migration, are built using four (linear and non-linear) regression techniques. Experimental results comprising over 42 million data points from multiple lab-based Fog infrastructure are presented. The results highlight that reasonably accurate predictions (measured by the coefficient of determination for regression models, mean absolute percentage error, and mean absolute error) may be obtained when considering 25 metrics relevant to the infrastructure.
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