基于端到端测量的IT系统排队模型参数推断

Zhen Liu, L. Wynter, Cathy H. Xia, Fan Zhang
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引用次数: 80

摘要

性能建模在信息技术(IT)基础设施和应用程序的设计、工程和优化中变得越来越重要。然而,建模工作本身是耗时的,并且不仅需要对系统有很好的了解,还需要对建模技术有很好的了解。对复杂IT系统建模的最大挑战之一在于模型参数的校准,例如各种工作类别的服务需求。我们提出了一种利用推理技术在排队网络框架中解决这一问题的方法。这是通过一个数学规划公式来完成的,我们提出了一个高效和鲁棒的求解方法。必要的输入数据是端到端的测量,通常很容易获得。我们方法的鲁棒性意味着推断模型在存在噪声数据的情况下表现良好,并且能够检测和去除离群数据集。我们用实际IT实践中的数据进行了数值实验,以证明我们的框架和算法的前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parameter inference of queueing models for IT systems using end-to-end measurements
Performance modeling has become increasingly important in the design, engineering and optimization of information technology (IT) infrastructures and applications. However, modeling work itself is time consuming and requires a good knowledge not only of the system, but also of modeling techniques. One of the biggest challenges in modeling complex IT systems consists in the calibration of model parameters, such as the service requirements of various job classes. We present an approach for solving this problem in the queueing network framework using inference techniques. This is done through a mathematical programming formulation, for which we propose an efficient and robust solution method. The necessary input data are end-to-end measurements which are usually easy to obtain. The robustness of our method means that the inferred model performs well in the presence of noisy data and further, is able to detect and remove outlying data sets. We present numerical experiments using data from real IT practice to demonstrate the promise of our framework and algorithm.
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