软件服务器性能分析的计算复杂性感知模型

Vipul Mathur, V. Apte
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引用次数: 10

摘要

排队模型通常用于分析软件系统的性能。然而,与通常的假设相反,软件服务器完成作业所需的时间可能取决于服务器中活动会话的总数。我们提出了一个队列模型,该模型显式地考虑了服务器中算法所占用的时间,该时间随用户数量而变化。该模型分析地预测了这类系统的响应时间和“饱和数”。我们通过仿真验证了我们的模型,并通过提出一种启发式技术来“发现”服务器软件中算法的复杂性,进一步证明了它的实用性,仅从响应时间测量。我们将发现技术应用于web服务器测试平台,发现我们可以相当准确地将处理时间的渐近行为识别为用户数量的函数。结果表明,这有望成为许多“黑盒分析”技术之一,在现实世界中经常被发现是必要的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A computational complexity-aware model for performance analysis of software servers
Queueing models are routinely used to analyze the performance of software systems. However, contrary to common assumptions, the time that a software server takes to complete jobs may depend on the total number of active sessions in the server. We present a queueing model that explicitly takes into account the time, taken by algorithms in the server, that varies with the user population. The model analytically predicts the response time and the "saturation number" of such systems. We validate our model with simulation and further demonstrate its usefulness by suggesting a heuristic technique to "discover" the complexity of algorithms in server software, solely from response time measurement. We applied the discovery technique to a Web-server testbed, and found that we can identify the asymptotic behavior of processing time as a function of the user population with a fair amount of accuracy. The results show that this promises to be one of the many "black-box analysis" techniques, often found necessary in the real world.
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