BigSpa:云端高效的过程间静态分析引擎

Zhiqiang Zuo, Rong Gu, Xi Jiang, Zhaokang Wang, Yihua Huang, Linzhang Wang, Xuandong Li
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引用次数: 9

摘要

静态程序分析广泛应用于各个应用领域,解决了许多实际问题。尽管研究人员在静态分析方面取得了重大成就,但在大规模的现代软件上进行复杂的程序间分析仍然具有很大的挑战性。潜在的原因是大规模现代软件的过程间分析是高度计算和内存密集型的,导致了较差的可伸缩性。我们的目标是通过为复杂的静态分析提出一种新颖的大数据解决方案来解决可扩展性问题。具体而言,我们提出了一种基于cfl可达性的过程间分析的数据并行算法和连接-进程-过滤计算模型,并开发了一个高效的云分布式静态分析引擎BigSpa。我们的实验证实,在集群上运行的BigSpa可以在数百万行代码上执行精确的过程间分析,并且运行速度比现有的最先进的分析工具快一个数量级或更快。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BigSpa: An Efficient Interprocedural Static Analysis Engine in the Cloud
Static program analysis is widely used in various application areas to solve many practical problems. Although researchers have made significant achievements in static analysis, it is still too challenging to perform sophisticated interprocedural analysis on large-scale modern software. The underlying reason is that interprocedural analysis for large-scale modern software is highly computation-and memory-intensive, leading to poor scalability. We aim to tackle the scalability problem by proposing a novel big data solution for sophisticated static analysis. Specifically, we propose a data-parallel algorithm and a join-process-filter computation model for the CFL-reachability based interprocedural analysis and develop an efficient distributed static analysis engine in the cloud, called BigSpa. Our experiments validated that BigSpa running on a cluster scales greatly to perform precise interprocedural analyses on millions of lines of code, and runs an order of magnitude or more faster than the existing state-of-the-art analysis tools.
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