面向大规模JavaScript应用的可调静态分析框架(T)

Yoonseok Ko, Hongki Lee, Julian T Dolby, Sukyoung Ryu
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引用次数: 25

摘要

我们提出了一种通过调整分析可伸缩性来静态分析大规模JavaScript应用程序的新方法,可能会放弃其可靠性。对于给定的JavaScript程序的可靠静态基线分析,我们的框架允许用户定义他们感兴趣的所选执行的可靠近似,并且它派生出可以实际分析所选执行的经过调优的静态分析。通过在可伸缩性和派生分析的可靠性之间进行权衡,选择的执行作为框架的参数。我们以抽象解释的形式正式描述了我们的框架,并实现了框架的两个实例。我们通过分析大规模的实际JavaScript应用程序来评估它们,评估结果表明,该框架确实允许用户尝试不同级别的可伸缩性和可靠性。我们的实现通过派生派生分析的稀疏版本提供了额外级别的可伸缩性,并且实现是公开可用的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Practically Tunable Static Analysis Framework for Large-Scale JavaScript Applications (T)
We present a novel approach to analyze large-scale JavaScript applications statically by tuning the analysis scalability possibly giving up its soundness. For a given sound static baseline analysis of JavaScript programs, our framework allows users to define a sound approximation of selected executions that they are interested in analyzing, and it derives a tuned static analysis that can analyze the selected executions practically. The selected executions serve as parameters of the framework by taking trade-off between the scalability and the soundness of derived analyses. We formally describe our framework in abstract interpretation, and implement two instances of the framework. We evaluate them by analyzing large-scale real-world JavaScript applications, and the evaluation results show that the framework indeed empowers users to experiment with different levels of scalability and soundness. Our implementation provides an extra level of scalability by deriving sparse versions of derived analyses, and the implementation is publicly available.
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