分析仿真模型轮廓数据以辅助合成模型生成

Sean Kane, Sounak Gupta, P. Wilsey
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引用次数: 0

摘要

合成工作负载通常用于模拟工具,以进行性能、性能调优和可伸缩性研究。有时,这些工作负载是遵循各种分布的简单测试数据流,在其他情况下,这些工作负载是由更复杂的、可配置的系统生成的。前者的一个例子是以不同到达率的输入事件流,可用于测试事件队列数据结构的性能。后者的一个例子是PHOLD仿真模型,它通常用于对比并行仿真引擎中不同设计解决方案的性能含义。合成工作负载的主要挑战之一是设置参数,以便工作负载正确地反映实际工作负载的行为。本文从ROSS和WARPED2存储库中的多种配置和大小的多个真实世界离散事件模拟模型中收集概要数据。本文的主要重点是捕获和报告分析数据,以了解事件粒度和事件概要数据,以协助配置合成离散事件模型生成器。
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Analyzing Simulation Model Profile Data to Assist Synthetic Model Generation
Synthetic workloads are commonly used to exercise simulation tools for performance, performance tuning, and scalability studies. Sometimes these workloads are simple streams of test data following various distributions and in other cases these workloads are generated by more complex, configurable systems. An example of the former is a stream of input events at different arrival rates that might be used to test the performance of an event queue data structure. An example of the latter is the PHOLD simulation model that is often used to contrast the performance implications of different design solutions in a parallel simulation engine. One of the key challenges for synthetic workloads is the question of setting the parameters so that the workload properly reflects the behavior of actual workloads. This paper collects profile data from multiple real-world discrete-event simulation models in multiple configurations and sizes from the ROSS and WARPED2 repositories. A principle focus of this paper is the capture and reporting of profiling data to understand event granularities and event profile data to assist in the configuration of synthetic discrete event model generators.
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