Context is king: The developer perspective on the usage of static analysis tools

Carmine Vassallo, Sebastiano Panichella, Fabio Palomba, Sebastian Proksch, A. Zaidman, H. Gall
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引用次数: 87

Abstract

Automatic static analysis tools (ASATs) are tools that support automatic code quality evaluation of software systems with the aim of (i) avoiding and/or removing bugs and (ii) spotting design issues. Hindering their wide-spread acceptance are their (i) high false positive rates and (ii) low comprehensibility of the generated warnings. Researchers and ASATs vendors have proposed solutions to prioritize such warnings with the aim of guiding developers toward the most severe ones. However, none of the proposed solutions considers the development context in which an ASAT is being used to further improve the selection of relevant warnings. To shed light on the impact of such contexts on the warnings configuration, usage and adopted prioritization strategies, we surveyed 42 developers (69% in industry and 31% in open source projects) and interviewed 11 industrial experts that integrate ASATs in their workflow. While we can confirm previous findings on the reluctance of developers to configure ASATs, our study highlights that (i) 71% of developers do pay attention to different warning categories depending on the development context, and (ii) 63% of our respondents rely on specific factors (e.g., team policies and composition) when prioritizing warnings to fix during their programming. Our results clearly indicate ways to better assist developers by improving existing warning selection and prioritization strategies.
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上下文为王:开发人员对静态分析工具使用的看法
自动静态分析工具(asat)是支持软件系统的自动代码质量评估的工具,其目的是(i)避免和/或消除错误,以及(ii)发现设计问题。阻碍它们被广泛接受的是它们(i)高假阳性率和(ii)产生的警告的低可理解性。研究人员和asat供应商已经提出了解决方案,以优先考虑这些警告,目的是指导开发人员解决最严重的警告。然而,所提出的解决办法都没有考虑到利用反卫星系统进一步改进有关预警选择的发展背景。为了阐明这种环境对警告配置、使用和采用优先级策略的影响,我们调查了42名开发人员(69%来自工业,31%来自开源项目),并采访了11名将asat集成到其工作流程中的工业专家。虽然我们可以确认之前关于开发人员不愿意配置asat的发现,但我们的研究强调了(i) 71%的开发人员确实根据开发环境关注不同的警告类别,并且(ii) 63%的受访者在编程期间优先考虑要修复的警告时依赖于特定因素(例如,团队策略和组成)。我们的结果清楚地指出了通过改进现有的警告选择和优先级策略来更好地帮助开发人员的方法。
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