Performance-influence models can help stakeholders understand how and where configuration options and their interactions influence the performance of a system. With this understanding, stakeholders can debug performance behavior and make deliberate configuration decisions. Current black-box techniques to build such models combine various sampling and learning strategies, resulting in tradeoffs between measurement effort, accuracy, and interpretability. We present Comprex, a white-box approach to build performance-influence models for configurable systems, combining insights of local measurements, dynamic taint analysis to track options in the implementation, compositionality, and compression of the configuration space, without relying on machine learning to extrapolate incomplete samples. Our evaluation on 4 widely-used, open-source projects demonstrates that Comprex builds similarly accurate performance-influence models to the most accurate and expensive black-box approach, but at a reduced cost and with additional benefits from interpretable and local models.
翻译:绩效影响模型可以帮助利益攸关方了解配置选项及其相互作用如何和在何处影响系统性能。根据这种理解,利益攸关方可以调试性能行为,做出审慎的配置决定。当前的构建此类模型的黑箱技术结合了各种抽样和学习战略,导致衡量努力、准确性和可解释性之间的权衡。我们介绍了Comprex,一种为可配置系统构建绩效影响模型的白箱方法,结合了对当地测量的洞察力、动态的污点分析,以跟踪配置空间的实施、构成性和压缩方面的选项,而不必依靠机器学习来推断不完整样本。我们对4个广泛使用的开放源项目的评估表明,Comprex为最准确和最昂贵的黑箱方法构建了类似的准确的绩效影响模型,但成本降低了,并且从可解释的和地方模型中获得了额外收益。