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Predicting the Efficiency and Success Rate of Programming Courses in MOOC Using Machine Learning Approach for Future Employment in the IT Industry

机译:使用机器学习方法在IT行业中使用机器学习方法预测MOOC编程课程的效率和成功率

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摘要

Modern businesses and jobs in demand have witnessed the requirement of programming skills in candidates, for example, business analyst, database administrator, software engineer, software developer, and many more. Programming courses are a very influential and important part of forming the future of the IT industry. Throughout the recent years, a substantial amount of research has been conducted to improve the programming novices, but the problems are returning in every new generation and reporting high failure rates. The dataset used in this study is the 'CodeChef competition' dataset and the 'Coursera' dataset. Firstly, this research work conducts the preview analysis to understand the performance of learners in programming languages. Secondly, this work proposes a clear rationale between the popularity of MOOC courses and low completion rates. There is increasingly high enrolment in MOOC courses but with non-ideal completion rates. Finally, it builds the machine learning model and validates the accuracy of the trained model.
机译:现代企业和职位上有望候选人的编程技巧要求,例如,商业分析师,数据库管理员,软件工程师,软件开发人员等等。编程课程是形成IT行业未来的一种非常有影响力和重要的一部分。在近年来,已经进行了大量的研究,以改善编程新手,但这些问题正在返回每一代新一代并报告高故障率。本研究中使用的数据集是“Codechef竞赛”数据集和“Coursera”数据集。首先,这项研究工作进行预览分析,以了解学习者在编程语言中的表现。其次,这项工作提出了MooC课程普及与低完成率之间的明确理由。 MooC课程越来越高,但具有非理想的完成率。最后,它建立了机器学习模型,并验证了培训的模型的准确性。

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