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首页> 外文期刊>The Journal of Systems and Software >The effects of scheduling, workload type and consolidation scenarios on virtual machine performance and their prediction through optimized artificial neural networks
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The effects of scheduling, workload type and consolidation scenarios on virtual machine performance and their prediction through optimized artificial neural networks

机译:调度,工作负载类型和整合方案对虚拟机性能的影响及其通过优化的人工神经网络进行的预测

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摘要

The aim of this paper is to study and predict the effect of a number of critical parameters on the performance of virtual machines (VMs). These parameters include allocation percentages, real-time scheduling decisions and co-placement of VMs when these are deployed concurrently on the same physical node, as dictated by the server consolidation trend and the recent advances in the Cloud computing systems. Different combinations of VM workload types are investigated in relation to the aforementioned factors in order to find the optimal allocation strategies. What is more, different levels of memory sharing are applied, based on the coupling of VMs to cores on a multi-core architecture. For all the aforementioned cases, the effect on the score of specific benchmarks running inside the VMs is measured. Finally, a black box method based on genetically optimized artificial neural networks is inserted in order to investigate the degradation prediction ability a priori of the execution and is compared to the linear regression method.
机译:本文的目的是研究和预测许多关键参数对虚拟机(VM)性能的影响。这些参数包括分配百分比,实时调度决策以及将VM同时部署在同一物理节点上时的虚拟机共置,这取决于服务器整合趋势和云计算系统的最新发展。针对上述因素,研究了VM工作负载类型的不同组合,以便找到最佳分配策略。此外,基于VM与多核体系结构上的核的耦合,应用了不同级别的内存共享。对于上述所有情况,都将测量对虚拟机内部运行的特定基准的分数的影响。最后,基于遗传优化人工神经网络的黑盒方法被插入,以研究执行的先验退化预测能力,并将其与线性回归方法进行比较。

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