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Machine-Learning Based Performance Estimation for Distributed Parallel Applications in Virtualized Heterogeneous Clusters

机译:虚拟机异构集群中分布式并行应用的基于机器学习的性能估计

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In a virtualized heterogeneous cluster, for a distributed parallel application which runs in multiple virtual machines (VMs) concurrently, there are a huge number of possible ways to place its VMs. This paper investigates a performance estimation technique for distributed parallel applications in virtualized heterogeneous clusters. We first analyze the effects of different VM configurations on the performance of various distributed parallel applications. We then present a machine-learning based performance model for a distributed parallel application. Using a heterogeneous cluster with two different types of nodes, we show that our machine-learning based models can estimate the runtimes of distributed parallel applications with modest error rates.
机译:在虚拟化的异构群集中,对于同时在多个虚拟机(VM)中运行的分布式并行应用程序,存在大量可能的方式来放置其VM。本文研究了虚拟异构集群中分布式并行应用程序的性能评估技术。我们首先分析不同虚拟机配置对各种分布式并行应用程序性能的影响。然后,我们为分布式并行应用程序提供了一种基于机器学习的性能模型。通过使用具有两种不同类型节点的异构集群,我们证明了基于机器学习的模型可以估计具有中等错误率的分布式并行应用程序的运行时间。

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