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Sensitivity Analysis of the Negative Selection Algorithm Applied to Anomalies Identification in Builds

机译:应用于构建中异常识别的负选择算法的敏感性分析

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The search for replacing manual processes with automated processes brings with it an increase in complexity related to its controls and monitoring. The use of builds, that is, automated software delivery processes, is a good example. Its primary objective is the construction, packaging, testing, and delivery of system versions. The execution of tests in the context of software delivery automation materializes the existing controls in the execution of manual processes and can basically result in success or failure. The failure state occurs when one or many of the steps that make up the automated process do not obtain the expected result. The software industry invests a lot of time in investigating build failures, as they can fail for reasons not directly related to the tests performed. Such failures are called anomalies. This article presents a way to automatically identify anomalies using a natural computing algorithm inspired by artificial immune systems, called the Negative Selection Algorithm (ASN), in order to obtain the correct classification of failures in builds. The focus of the article is on the sensitivity analysis of the ASN in relation to the neighborhood radius of the detectors and the number of detectors generated.
机译:搜索使用自动化流程替换手动流程带来了与其控制和监控相关的复杂性的增加。使用构建,即自动化软件交付流程,是一个很好的例子。其主要目标是系统版本的构建,包装,测试和交付。在软件交付自动化上下文中执行测试将现有的控件实现在执行手动过程中,并且可以基本上导致成功或失败。当构成自动化过程的一个或多个步骤中未获得预期结果时,会发生故障状态。软件行业在调查构建失败方面投入了大量的时间,因为由于与所执行的测试没有直接相关的原因,它们可能会失败。这种失败称为异常。本文呈现了一种方法来使用受到人工免疫系统的自然计算算法自动识别异常,称为负选择算法(ASN),以便获得构建中的错误分类。该物品的焦点是与探测器的邻域半径有关的ASN的敏感性分析和产生的探测器的数量。

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