使用神经网络的云系统软件复兴

Ch. Sudhakar, Ishan Shah, T. Ramesh
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引用次数: 10

摘要

虚拟机监视器(VMM)对于云和数据中心环境非常重要。VMM长时间连续运行,因此会遇到软件老化的问题。由于软件老化,VMM经历了失败。为了防止软件老化导致的VMM故障,采用了一种主动故障管理方法——软件再生。文献中存在各种各样的软件复兴方法,大致可以分为两类,即基于模型的方法和基于测量的方法。在基于度量的方法中,通过监视资源使用统计数据来预测故障发生时间。资源使用统计数据和故障发生时间之间可能存在任何非线性关系。这种非线性函数可以用人工神经网络(ANN)逼近。将资源属性值的变化作为人工神经网络的输入,并生成新的故障时间值作为输出。实验表明,如果虚拟机的到达和离开有一定的规律,则预测更准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Software rejuvenation in cloud systems using neural networks
Virtual Machine Monitor (VMM) is very important for the cloud and data center environment. VMM runs continuously for a long time and hence encounters the problem of software aging. VMM experiences failure because of software aging. In order to prevent the VMM failure caused by software aging, a proactive fault management approach called software rejuvenation is used. There are various software rejuvenation approaches existing in literature that can be broadly categorized into two categories namely model based approaches and measurement based approaches. Time to failure is predicted in measurement based approaches by monitoring the resource usage statistics. There can be any non-linear relationship between resource usage statistics and the time to failure. Such a nonlinear function can be approximated using Artificial Neural Networks (ANN). The change in the value of attributes of resources is given as input to ANN and new value of time to failure is generated as output. Experiments shows that if there is some pattern in the arrival and departure of the VMs, then the prediction is more accurate.
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