在数据隐私时代测试软件:一种平衡行为

Kunal Taneja, M. Grechanik, R. Ghani, Tao Xie
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引用次数: 34

摘要

以数据库为中心的应用程序(dca)在企业计算中很常见,它们使用重要的数据库。为了降低成本和提高质量,dca的测试越来越多地外包给测试中心。当专有dca发布时,它们的数据库也应该提供给测试工程师。然而,不同的数据隐私法律禁止组织与测试中心共享这些数据,因为数据库包含敏感信息。目前,测试是使用匿名数据执行的,这通常会导致较差的测试覆盖率(例如代码覆盖率)和较少的未发现的错误,从而降低dca的质量并消除测试外包的好处。为了解决这个问题,我们提供了一种新颖的方法,将程序分析与我们设计的新的数据隐私框架相结合,以解决软件测试的约束。使用我们的方法,组织可以在隐私级别和测试需求之间取得平衡。我们已经为我们的方法构建了一个工具,并将其应用于重要的Java dca。我们的结果表明,通过基于数据对相应dca的影响对数据进行匿名化,可以将测试覆盖率保持在更高的水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Testing software in age of data privacy: a balancing act
Database-centric applications (DCAs) are common in enterprise computing, and they use nontrivial databases. Testing of DCAs is increasingly outsourced to test centers in order to achieve lower cost and higher quality. When proprietary DCAs are released, their databases should also be made available to test engineers. However, different data privacy laws prevent organizations from sharing this data with test centers because databases contain sensitive information. Currently, testing is performed with anonymized data, which often leads to worse test coverage (such as code coverage) and fewer uncovered faults, thereby reducing the quality of DCAs and obliterating benefits of test outsourcing. To address this issue, we offer a novel approach that combines program analysis with a new data privacy framework that we design to address constraints of software testing. With our approach, organizations can balance the level of privacy with needs of testing. We have built a tool for our approach and applied it to nontrivial Java DCAs. Our results show that test coverage can be preserved at a higher level by anonymizing data based on their effect on corresponding DCAs.
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