Fast estimation of probabilities of soft deadline misses in layered software performance models

T. Zheng, C. Woodside
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引用次数: 3

Abstract

Quality of service requirements are normally given in terms of soft deadlines, such as "90% of responses should complete within one second". To estimate the probability of meeting the target delay, one must estimate the distribution of response time, or at least its tail. Exact analytic methods based on state-space analysis suffer from state explosion, and simulation, which is also feasible, is very time consuming. Rapid approximate estimation would be valuable, especially for those cases which do not demand great precision, and which require the exploration of many alternative models.This work adapts layered queueing analysis, which is highly scalable and provides variance estimates as well as mean values, to estimate soft deadline success rates. It evaluates the use of an approximate Gamma distribution fitted to the mean and variance, and its application to examples of software systems. The evaluation finds that, for a definable set of situations, the tail probabilities over 90% are estimated well within a margin of 1% accuracy, which is useful for practical purposes.
分层软件性能模型中软期限缺失概率的快速估计
服务质量要求通常以软期限给出,例如“90%的响应应在一秒钟内完成”。为了估计满足目标延迟的概率,必须估计响应时间的分布,或者至少是它的尾部。基于状态空间分析的精确解析方法存在状态爆炸的问题,而仿真虽然可行,但耗时较大。快速的近似估计是有价值的,特别是对于那些不要求很高精度的情况,以及需要探索许多替代模型的情况。这项工作采用分层排队分析,它具有高度可扩展性,并提供方差估计和平均值,以估计软截止日期成功率。它评估了拟合均值和方差的近似伽玛分布的使用,以及它在软件系统示例中的应用。评估发现,对于一组可定义的情况,超过90%的尾部概率估计在1%的精度范围内,这对于实际目的是有用的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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