The Application of Machine Learning Techniques in Software Project Management- An Examination

M. Pasupuleti
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引用次数: 4

Abstract

Planning and evaluating project management are key parts of project performance that should not be overlooked. It is difficult to succeed at project management unless you have a realistic and logical plan in place. This paper provides a comprehensive overview of papers on the application of machine learning in software project management, covering a wide range of topics. Apart from that, this study examines machine learning, software project management, and methodologies. Papers in the first category are the results of software project management studies or surveys. Papers in the third category are based on machine-learning methods and strategies applied to projects; studies on the phases and tests that are the parameters used in machine-learning management; and final classes of study results, contribution of studies to production, and promotion of machine-learning project prediction. Our work also provides a larger perspective and context, which could be useful for future project risk management research, among other things. To summarize, we have demonstrated that project risk assessment using machine learning is more effective in minimizing project losses, increasing the likelihood of project success, providing an alternative method for efficiently reducing project failure probabilities, increasing the output ratio for growth, and facilitating accuracy-based analysis of software fault prediction.   
机器学习技术在软件项目管理中的应用——考试
计划和评估项目管理是项目绩效的关键部分,不容忽视。除非你有一个现实的、合乎逻辑的计划,否则很难在项目管理中取得成功。本文提供了关于机器学习在软件项目管理中的应用的论文的全面概述,涵盖了广泛的主题。除此之外,本研究还探讨了机器学习、软件项目管理和方法论。第一类论文是软件项目管理研究或调查的结果。第三类论文基于应用于项目的机器学习方法和策略;研究机器学习管理中使用的阶段和测试参数;最后分类研究结果,研究成果对生产的贡献,促进机器学习项目预测。我们的工作还提供了一个更大的视角和背景,这可能对未来的项目风险管理研究以及其他事情有用。总之,我们已经证明,使用机器学习的项目风险评估在最小化项目损失、增加项目成功的可能性、提供有效降低项目失败概率的替代方法、增加增长的输出比率以及促进基于准确性的软件故障预测分析方面更有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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