软件项目进度和任务分配方法的系统回顾

Taskeen Fatima, F. Azam, Muhammad Waseem Anwar, Yawar Rasheed
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引用次数: 5

摘要

软件项目调度和任务分配是软件项目管理的重要组成部分,有助于软件项目的全面成功。任务调度/分配的主要目标是最小化项目的成本和时间。本文对软件行业的任务调度和任务分配进行了系统的文献综述,实际上是同类文献中的第一次。本研究详细阐述了任务分配中使用的模型,总结了解决软件项目调度问题(SPSP)的技术/机器学习算法。我们最初的搜索结果是1100篇研究文章。然而,在应用纳入和排除标准后,对23项最相关的研究进行了分离并进行了彻底的审查。综述发现,任务调度的基本模型有静态模型和动态模型两种,其中静态模型应用最为广泛。对于任务调度,主要采用进化算法,而对于任务分配,主要采用支持向量机算法。由于软件项目缺乏真实数据,大多数研究使用合成数据集进行任务分配。在审查过程中探索任务分配工具,确定了7种工具,然而,TAMRI被评为最有效的。
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A Systematic Review on Software Project Scheduling and Task Assignment Approaches
Software Project Scheduling and Task Assignment are important integral aspects of software project management and contributes to the overall success of software projects. Key objective of Task scheduling/ assignment is to minimize the cost and time of the project. This article i.e. a systematic literature review, is in-fact the first of its kind, conducted in the context of task scheduling and assignment in software industry. This study specifically elaborates the models used in task assignment and summarizes the techniques/ machine learning algorithms to solve the software project scheduling problem (SPSP). Our Initial search brought out 1100 research articles. However, after applying the inclusion and exclusion criteria, 23 most relevant researches were segregated and thereafter thoroughly reviewed. The review revealed that there are 2 types of basic models of Task Scheduling i.e. static and dynamic, however, static models are most widely used. For Task Scheduling, evolutionary algorithms, whereas, for Task Assignment, Support Vector Machine (SVM) algorithms are most widely used. Due to lack of real-world data in software projects, most of the researches utilized synthetic data sets for Task Assignment. Exploring the Task Assignment tools during the course of review process, 7 tools were identified, however, TAMRI has been graded as most efficient.
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