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Adaptive Resource Utilization Prediction System for Infrastructure as a Service Cloud

机译:基础设施即服务云的自适应资源利用预测系统

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摘要

Infrastructure as a Service (IaaS) cloud provides resources as a service from a pool of compute, network, and storage resources. Cloud providers can manage their resource usage by knowing future usage demand from the current and past usage patterns of resources. Resource usage prediction is of great importance for dynamic scaling of cloud resources to achieve efficiency in terms of cost and energy consumption while keeping quality of service. The purpose of this paper is to present a real-time resource usage prediction system. The system takes real-time utilization of resources and feeds utilization values into several buffers based on the type of resources and time span size. Buffers are read by R language based statistical system. These buffers' data are checked to determine whether their data follows Gaussian distribution or not. In case of following Gaussian distribution, Autoregressive Integrated Moving Average (ARIMA) is applied; otherwise Autoregressive Neural Network (AR-NN) is applied. In ARIMA process, a model is selected based on minimum Akaike Information Criterion (AIC) values. Similarly, in AR-NN process, a network with the lowest Network Information Criterion (NIC) value is selected. We have evaluated our system with real traces of CPU utilization of an IaaS cloud of one hundred and twenty servers.
机译:基础架构即服务(IaaS)云从计算,网络和存储资源池中提供资源即服务。云提供商可以通过从当前和过去的资源使用模式了解未来的使用需求来管理其资源使用。资源使用率预测对于动态扩展云资源以实现成本和能耗方面的效率同时保持服务质量至关重要。本文的目的是提出一种实时资源使用预测系统。系统获取资源的实时利用率,并根据资源的类型和时间跨度大小将利用率值输入几个缓冲区。缓冲区由基于R语言的统计系统读取。检查这些缓冲区的数据以确定它们的数据是否遵循高斯分布。在遵循高斯分布的情况下,将应用自回归综合移动平均值(ARIMA);否则,将应用自回归神经网络(AR-NN)。在ARIMA过程中,将基于最小的Akaike信息准则(AIC)值选择模型。同样,在AR-NN过程中,将选择具有最低网络信息标准(NIC)值的网络。我们已经对120个服务器的IaaS云的CPU利用率进行了真实的跟踪评估。

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