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Analytical modeling of performance indices under epistemic uncertainty applied to cloud computing systems

机译:认知不确定性下性能指标的分析建模应用于云计算系统

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The extent of epistemic uncertainty in modeling and analysis of complex systems is ever growing, mainly due to increasing levels of the openness, heterogeneity and versatility in cloud-based applications that are being adopted in critical sectors, like banking and finance. State-of-the-art approaches for model-based performance assessment do not embed such uncertainty in analytic models, hence the predicted results do not account for the parametric uncertainty. In this paper, we develop a method for incorporating epistemic uncertainty of the input parameters (i.e., the arrival rate lambda and the service rate mu) to the M/M/1 queueing models, that are commonly used to analyze system performance. We consider two steady state and average output measures: the number of entities in the system and the response time. We start with closed-form solutions for these measures that enable us to study the propagation of epistemic uncertainty in input parameters to these output measures. We demonstrate the suitability of our method for the performance analysis of a cloud-based system, where the epistemic uncertainty comes from continuous re-deployment of applications across servers of different computational capabilities. System simulation results validate the ability of our models to produce satisfactorily accurate predictions of system performance indices under epistemic uncertainty. (C) 2019 Elsevier B.V. All rights reserved.
机译:复杂系统的建模和分析中,认知不确定性的程度正在不断增长,这主要是由于银行和金融等关键行业所采用的基于云的应用程序的开放性,异构性和多功能性不断提高。基于模型的性能评估的最新方法并未在分析模型中嵌入此类不确定性,因此,预测结果并未考虑参数不确定性。在本文中,我们开发了一种将输入参数的认知不确定性(即到达率lambda和服务率mu)合并到M / M / 1排队模型中的方法,该模型通常用于分析系统性能。我们考虑两种稳态和平均输出量度:系统中实体的数量和响应时间。我们从这些措施的封闭形式解决方案开始,使我们能够研究认知不确定性在这些输出措施的输入参数中的传播。我们证明了我们的方法对基于云的系统的性能分析的适用性,其中认知不确定性来自跨计算能力不同的服务器之间的应用程序的连续重新部署。系统仿真结果验证了我们的模型在认知不确定性下产生令人满意的系统性能指标准确预测的能力。 (C)2019 Elsevier B.V.保留所有权利。

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