在存在放弃、返工、错误和不确定性的情况下,一个健壮的基于搜索的项目管理方法

G. Antoniol, M. D. Penta, M. Harman
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引用次数: 64

摘要

管理一个大型软件项目涉及到最初的估计,这些估计可能是错误的,或者可能用某种程度的不确定性来表达。此外,随着项目的进展,经常需要对组成整个项目的一些工作包进行返工。其他工作包可能由于各种原因而不得不放弃。在存在这些困难的情况下,将员工分配给项目团队和团队分配给工作包远非微不足道。本文展示了遗传算法如何与排队模拟模型相结合,以鲁棒的方式解决这些问题。串联遗传算法用于搜索处理工作包的最佳顺序,以及向项目团队分配人员的最佳顺序。仿真模型通过计算项目的预计完工日期来指导搜索。返工、放弃和错误或不确定的初始估计的可能影响由单独的误差分布表征。本文介绍了将这些技术应用于从一个大型商业软件维护项目中获得的数据的结果。
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A robust search-based approach to project management in the presence of abandonment, rework, error and uncertainty
Managing a large software project involves initial estimates that may turn out to be erroneous or that might be expressed with some degree of uncertainty. Furthermore, as the project progresses, it often becomes necessary to rework some of the work packages that make up the overall project. Other work packages might have to be abandoned for a variety of reasons. In the presence of these difficulties, optimal allocation of staff to project teams and teams to work packages is far from trivial. This paper shows how genetic algorithms can be combined with a queuing simulation model to address these problems in a robust manner. A tandem genetic algorithm is used to search for the best sequence in which to process work packages and the best allocation of staff to project teams. The simulation model, that computes the project estimated completion date, guides the search. The possible impact of rework, abandonment and erroneous or uncertain initial estimates are characterised by separate error distributions. The paper presents results from the application of these techniques to data obtained from a large scale commercial software maintenance project.
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