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Ensemble learning based predictive framework for virtual machine resource request prediction

机译:基于学习的虚拟机资源请求预测的基于学习的预测框架

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摘要

The cloud service providers require a large number of computing resources to provide services on-demand that consume the electricity at large and leave high carbon footprints which must be minimized. A cloud system must optimally use its resources to achieve a low operational cost without degrading the quality of services. In this context, an ensemble learning based workload forecasting method is presented that uses extreme learning machines and their corresponding forecasts are weighted by a voting engine. A metaheuristic algorithm inspired by blackhole theory is used to select the optimal weights. The accuracy of the approach is tested on CPU and memory demand requests of Google cluster trace. The method is also compared with recent existing work in the literature on CPU utilization of Google cluster and PlanetLab traces. The results validate the superiority of the approach over existing methods with an improvement up to 99.20% in root mean squared error. (C) 2020 Elsevier B.V. All rights reserved.
机译:云服务提供商需要大量的计算资源来提供按需提供的服务,该服务能够大量消耗电力,并留下必须最小化的高碳足迹。云系统必须最佳地使用其资源来实现低运营成本,而不会降低服务质量。在这种情况下,提出了一种基于集合学习的工作负载预测方法,其使用极端学习机器,并且它们的相应预测由投票引擎加权。由黑洞理论启发的一种成群质算法用于选择最佳权重。对Google集群跟踪的CPU和内存需求进行测试的准确性。该方法还与近期文献中的最近现有工作进行了比较,Google Cluster和PlanetLab痕迹的CPU利用率。结果验证了现有方法对现有方法的优越性,在根均方误差中的提高至99.20%。 (c)2020 Elsevier B.v.保留所有权利。

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