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Cloud workload prediction based on workflow execution time discrepancies

机译:基于工作流执行时间差异的云工作负载预测

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Infrastructure as a service clouds hide the complexity of maintaining the physical infrastructure with a slight disadvantage: they also hide their internal working details. Should users need knowledge about these details e.g., to increase the reliability or performance of their applications, they would need solutions to detect behavioural changes in the underlying system. Existing runtime solutions for such purposes offer limited capabilities as they are mostly restricted to revealing weekly or yearly behavioural periodicity in the infrastructure. This article proposes a technique for predicting generic background workload by means of simulations that are capable of providing additional knowledge of the underlying private cloud systems in order to support activities like cloud orchestration or workflow enactment. Our technique uses long-running scientific workflows and their behaviour discrepancies and tries to replicate these in a simulated cloud with known (trace-based) workloads. We argue that the better we can mimic the current discrepancies the better we can tell expected workloads in the near future on the real life cloud. We evaluated the proposed prediction approach with a biochemical application on both real and simulated cloud infrastructures. The proposed algorithm has shown to produce significantly (similar to 20%) better workload predictions for the future of simulated clouds than random workload selection.
机译:作为服务云的基础设施隐藏了通过略有缺点维护物理基础设施的复杂性:它们也隐藏其内部工作细节。如果用户需要关于这些细节的知识,例如,为了提高其应用程序的可靠性或性能,他们将需要解决方案来检测底层系统中的行为变化。现有运行时解决目的的解决方案提供有限的能力,因为它们主要限于在基础设施中揭示每周或年度行为周期。本文提出了一种通过能够提供底层私有云系统的额外知识的模拟来预测通用背景工作负载的技术,以支持云编程或工作流制定等活动。我们的技术使用长期运行的科学工作流及其行为差异,并试图在具有已知(基于踪迹)工作负载的模拟云中复制这些。我们认为,我们可以模仿当前的差异越好,我们可以在不久的将来在现实生活中讲述预期工作负载。我们评估了在真实和模拟云基础设施上的生化应用程序的提出的预测方法。所提出的算法显示出显着(类似于20%)的更好的工作量预测,对于模拟云的未来而不是随机工作负载选择。

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