基于静态分析推荐不必要的源代码

Roman Haas, Rainer Niedermayr, T. Roehm, S. Apel
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引用次数: 2

摘要

成熟的软件系统通常包含不再需要的代码。不必要的代码会在开发和维护期间浪费资源,例如,在为迁移或认证准备代码时。运行一个分析器可能会显示出没有在生产环境中使用的代码,但是通过这种方式获得代表性数据通常是很耗时的。我们调查了基于代码稳定性和代码中心性的静态分析方法在多大程度上能够识别不必要的代码,以及它的建议在实践中是否相关。为了研究静态方法的可行性和有效性,我们进行了一项涉及14个开源和闭源软件系统的研究。由于对于不必要的代码没有完美的oracle,我们将我们的方法的建议与历史清理操作、运行时使用数据和来自5个软件项目的25个开发人员的反馈进行了比较。我们的研究表明,从稳定性和中心性信息生成的建议指向不必要的代码。我们的结果表明,静态分析可以对不必要的代码提供快速反馈,这在实践中是有用的。
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Recommending Unnecessary Source Code Based on Static Analysis
Grown software systems often contain code that is not necessary anymore. Unnecessary code wastes resources during development and maintenance, for example, when preparing code for migration or certification. Running a profiler may reveal code that is not used in production, but it is often time-consuming to obtain representative data this way. We investigate to what extent a static analysis approach which is based on code stability and code centrality, is able to identify unnecessary code and whether its recommendations are relevant in practice. To study the feasibility and usefulness of our static approach, we conducted a study involving 14 open-source and closed-source software systems. As there is no perfect oracle for unnecessary code, we compared recommendations of our approach with historical cleanup actions, runtime usage data, and feedback from 25 developers of 5 software projects. Our study shows that recommendations generated from stability and centrality information point to unnecessary code. Our results suggest that static analysis can provide quick feedback on unnecessary code that is useful in practice.
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