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Dynamic CPU resource provisioning in virtualized servers using maximum correntropy criterion Kalman filters

机译:使用最大熵准则卡尔曼滤波器的虚拟服务器中的动态CPU资源配置

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Virtualized servers have been the key for the efficient deployment of cloud applications. As the application demand increases, it is important to dynamically adjust the CPU allocation of each component in order to save resources for other applications and keep performance high, e.g., the client mean response time (mRT) should be kept below a Quality of Service (QoS) target. In this work, a new form of Kalman filter, called the Maximum Correntropy Criterion Kalman Filter (MCC-KF), has been used in order to predict, and hence, adjust the CPU allocations of each component while the RUBiS auction site workload changes randomly as the number of clients varies. MCC-KF has shown high performance when the noise is non-Gaussian, as it is the case in the CPU usage. Numerical evaluations compare our designed framework with other current state-of-the-art using real-data via the RUBiS benchmark website deployed on a prototype Xen-virtualized cluster.
机译:虚拟服务器已成为有效部署云应用程序的关键。随着应用需求的增加,动态调整每个组件的CPU分配非常重要,这样可以节省其他应用的资源并保持较高的性能,例如,客户端平均响应时间(mRT)应保持在服务质量( QoS)目标。在这项工作中,一种新形式的卡尔曼滤波器(称为最大熵准则卡尔曼滤波器(MCC-KF))已用于预测,从而在RUBiS拍卖站点工作负载随机变化的同时调整每个组件的CPU分配随着客户数量的变化。当噪声为非高斯噪声时,MCC-KF表现出很高的性能,就像CPU使用率一样。数值评估通过部署在Xen虚拟集群原型上的RUBiS基准网站,使用实际数据将我们设计的框架与其他当前最新技术进行了比较。

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