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Characterization Analysis of Resource Utilization Distribution

机译:资源利用分布的特征分析

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摘要

To efficiently manage resources and provide guaranteed services, today's computing systems monitor and collect a large number of resource usages, for example the average and time series of CPU utilization. However, little is known about the analytical distribution of resource usages, which are the crucial parameters to infer performance metrics defined in service level agreements (SLAs), such as response times and throughputs. In this paper, we aim to characterize the entire distribution of CPU utilization via stochastic reward models. In particular, we first study and derive the probability density function of the utilization of widely known and applied queuing systems, namely Poisson processes, Markov modulated Poisson processes and time-varying Poisson processes. Secondly, we apply our proposed analysis on characterizing the CPU usage of live production systems, and simulated queuing systems. Evaluation results show that analytical characterization of the selected queueing models can capture the utilization distribution of a wide range of real-life systems well, and we argue the robustness of our methodology to further infer system performance metrics.
机译:为了有效地管理资源并提供有保证的服务,当今的计算系统监视和收集大量资源使用情况,例如CPU利用率的平均值和时间序列。但是,对于资源使用情况的分析分布知之甚少,而资源使用情况是推断服务级别协议(SLA)中定义的性能指标(如响应时间和吞吐量)的关键参数。在本文中,我们旨在通过随机奖励模型来表征CPU使用率的整个分布。特别是,我们首先研究并推导了利用广泛使用的排队系统即泊松过程,马尔可夫调制泊松过程和时变泊松过程的概率密度函数。其次,我们将建议的分析应用于表征实时生产系统和模拟排队系统的CPU使用率。评估结果表明,所选排队模型的分析特性可以很好地捕获各种实际系统的利用率分布,并且我们认为该方法的鲁棒性可以进一步推断系统性能指标。

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