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Predicting Structure Clarity of software projects with Machine Learning

机译:使用机器学习预测软件项目的结构和清晰度

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The software development domain is very dynamic and only around 28% of the projects that follow project management methodologies stay on schedule. This paper shows methods that try to solve this by aiming identification of the problems encountered by team members faster. The goal of the project is to allow project managers to find meaningful insights on the clarity and structure felt by team members on the tasks they are working on. The system we developed collects data from third party tools used for the development of software projects and correlates it with the marks given by team members for Structure & Clarity daily. We built models for prediction of Structure & Clarity using Random Forest Regression, Artificial Neural Networks (ANNs) and Long Short-Term Memory (LSTM).
机译:软件开发领域非常动态,仅遵循项目管理方法的项目中约有28%保持了进度。本文展示了旨在通过更快地识别团队成员遇到的问题来尝试解决此问题的方法。该项目的目标是使项目经理可以找到有意义的见解,以了解团队成员在执行任务时所感觉到的清晰度和结构。我们开发的系统从用于软件项目开发的第三方工具收集数据,并将其与团队成员每天为“结构与清晰度”提供的标记相关联。我们使用随机森林回归,人工神经网络(ANN)和长期短期记忆(LSTM)建立了预测结构和清晰度的模型。

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