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Causal Analysis for Performance Modeling of Computer Programs

机译:计算机程序性能建模的因果分析

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摘要

Causal modeling and the accompanying learning algorithms provide useful extensions for in-depth statistical investigation and automation of performance modeling. We enlarged the scope of existing causal structure learning algorithms by using the form-free information-theoretic concept of mutual information and by introducing the complexity criterion for selecting direct relations among equivalent relations. The underlying probability distribution of experimental data is estimated by kernel density estimation. We then reported on the benefits of a dependency analysis and the decompositional capacities of causal models. Useful qualitative models, providing insight into the role of every performance factor, were inferred from experimental data. This paper reports on the results for a LU decomposition algorithm and on the study of the parameter sensitivity of the Kakadu implementation of the JPEG-2000 standard. Next, the analysis was used to search for generic performance characteristics of the applications.
机译:因果建模和随附的学习算法为深入的统计调查和性能建模的自动化提供了有用的扩展。通过使用互信息的无形式信息理论概念,并引入在等价关系之间选择直接关系的复杂性准则,我们扩大了现有因果结构学习算法的范围。实验数据的潜在概率分布通过核密度估计来估计。然后,我们报告了依赖性分析的好处以及因果模型的分解能力。从实验数据推断出有用的定性模型,可深入了解每个性能因素的作用。本文报告了LU分解算法的结果以及JPEG-2000标准的Kakadu实现的参数敏感性研究。接下来,使用该分析来搜索应用程序的通用性能特征。

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