Kesina Baral, Rasika Mohod, Jennifer Flamm, S. Goldrich, P. Ammann
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引用次数: 1
Abstract
Goldrich and Flamm developed the MITRE Automated Test Decision Framework (ATDF) to help MITRE government sponsors (and, via sharing on GitHub, development organizations in general) move from manually tested legacy software towards automated test, continuous integration, continuous deployment, and, ultimately, DevOps. Often such legacy systems comprise multiple components with manual test procedures. The objective of the empirical study described in this paper is to determine whether ATDF usefully ranks components with respect to Return on Investment (ROI) when introducing automated tests. ROI is simply the ratio of profit to cost. When adding automated tests, what will be the profit that these tests will carry? What is the cost or level of effort to engineer a sufficient set of automated tests? Our evaluation approach models ROI using static defect counts identified by SonarLint and estimated cost to complete testing. We found positive Pearson correlations between normalized ATDF rankings versus the normalized rankings of our evaluation approach. We reject the null hypothesis that there is no correlation between the two rankings.
Goldrich和Flamm开发了MITRE自动化测试决策框架(Automated Test Decision Framework, ATDF),以帮助MITRE政府赞助者(以及通过GitHub上的分享,一般的开发组织)从手工测试的遗留软件转向自动化测试、持续集成、持续部署,并最终实现DevOps。通常,这样的遗留系统包含多个具有手动测试过程的组件。本文中描述的实证研究的目的是确定在引入自动化测试时,ATDF是否有效地根据投资回报率(ROI)对组件进行排名。ROI是简单的利润与成本之比。当添加自动化测试时,这些测试将带来什么利润?设计一组足够的自动化测试的成本或工作水平是多少?我们的评估方法使用由SonarLint识别的静态缺陷计数和完成测试的估计成本来建模ROI。我们发现标准化的ATDF排名与我们评估方法的标准化排名之间存在正的Pearson相关性。我们拒绝两个排名之间没有相关性的零假设。