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Building a Classification System for Failed Test Reports: Industrial Experience

机译:建立不合格测试报告的分类系统:行业经验

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Running complex test suites against a financial transaction system produces huge amounts of responses, both expected and unexpected. In this article, we outline our experience of using ML for reliable automatic extraction of "that" unexpected response from a big number of same type messages produced a by system under test. We describe classification approaches and data manipulations we have tried, and explain the final choices. Also we outline business constraints and final design decisions for the resultant tool.We also address the task of classifying difference patterns between expected and actual responses in attempt to provide automated pre-judgement on a reason for test failure. We outline clustering considerations and results achieved.
机译:针对金融交易系统运行复杂的测试套件会产生大量的预期和意外响应。在本文中,我们概述了使用ML从受测系统产生的大量相同类型消息中可靠地自动提取“该”意外响应的经验。我们描述了我们尝试过的分类方法和数据操作,并解释了最终的选择。我们还概述了最终工具的业务约束和最终设计决策。我们还解决了对预期响应与实际响应之间的差异模式进行分类的任务,以尝试针对测试失败的原因提供自动的预判断。我们概述了聚类考虑因素和取得的成果。

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