Search-based Resource Scheduling for Bug Fixing Tasks

Junchao Xiao, W. Afzal
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引用次数: 22

Abstract

The software testing phase usually results in a large number of bugs to be fixed. The fixing of these bugs require executing certain activities (potentially concurrent) that demand resources having different competencies and workloads. Appropriate resource allocation to these bug-fixing activities can help a project manager to schedule capable resources to these activities, taking into account their availability and skill requirements for fixing different bugs. This paper presents a multi-objective search-based resource scheduling method for bug-fixing tasks. The inputs to our proposed method include i) a bug model, ii) a human resource model, iii) a capability matching method between bug-fixing activities and human resources and iv) objectives of bug-fixing. A genetic algorithm (GA) is used as a search algorithm and the output is a bug-fixing schedule, satisfying different constraints and value objectives. We have evaluated our proposed scheduling method on an industrial data set and have discussed three different scenarios. The results indicate that GA is able to effectively schedule resources by balancing different objectives. We have also compared the effectiveness of using GA with a simple hill climbing algorithm. The comparison shows that GA is able to achieve statistically better fitness values than hill-climbing.
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基于搜索的Bug修复任务资源调度
软件测试阶段通常会产生大量需要修复的错误。修复这些错误需要执行某些活动(可能是并发的),这些活动需要具有不同能力和工作负载的资源。对这些bug修复活动进行适当的资源分配可以帮助项目经理为这些活动安排有能力的资源,同时考虑到它们的可用性和修复不同bug的技能需求。提出了一种基于多目标搜索的bug修复任务资源调度方法。我们提出的方法的输入包括i) bug模型,ii)人力资源模型,iii) bug修复活动和人力资源之间的能力匹配方法,以及iv) bug修复的目标。采用遗传算法作为搜索算法,输出一个满足不同约束条件和价值目标的bug修复计划。我们在一个工业数据集上评估了我们提出的调度方法,并讨论了三种不同的场景。结果表明,遗传算法能够通过平衡不同目标来有效地调度资源。我们还比较了使用遗传算法和一个简单的爬坡算法的有效性。对比表明,遗传算法的适应度值在统计上优于爬山算法。
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