Dynamic resource scaling in cloud using neural network and black hole algorithm

J. Kumar, Ashutosh Kumar Singh
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引用次数: 36

Abstract

Cloud computing has gained much attention in recent years. In spite of several advantages, cloud computing involves a number of issues such as dynamic resource scaling and power consumption. These factors lead a cloud system to be inefficient and costly. Workload prediction is one of the factors by which the efficiency of a cloud can be improved and operational cost would be reduced. In this paper, we present a workload prediction model using neural network and black hole algorithm. The experiments were performed on the benchmark data sets of HTTP traces from NASA, Calgary and Saskatchewan web servers. We achieved an improvement on mean squared error upto 134 times over back propagation.
基于神经网络和黑洞算法的云中动态资源缩放
云计算近年来获得了很多关注。尽管云计算有一些优势,但它也涉及许多问题,例如动态资源扩展和功耗。这些因素导致云系统效率低下且成本高昂。工作负载预测是提高云计算效率和降低运营成本的因素之一。本文提出了一种基于神经网络和黑洞算法的工作负荷预测模型。实验是在NASA、Calgary和Saskatchewan网络服务器的HTTP跟踪基准数据集上进行的。与反向传播相比,我们将均方误差提高了134倍。
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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