Enhancing Educational Efficiency: Generative AI Chatbots and DevOps in Education 4.0
This research paper will bring forth the innovative pedagogical approach in computer science education, which uses a combination of methodologies borrowed from Artificial Intelligence (AI) and DevOps to enhance the learning experience in Content Management Systems (CMS) Development. It has been done...
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Zusammenfassung: | This research paper will bring forth the innovative pedagogical approach in
computer science education, which uses a combination of methodologies borrowed
from Artificial Intelligence (AI) and DevOps to enhance the learning experience
in Content Management Systems (CMS) Development. It has been done over three
academic years, comparing the traditional way of teaching with the lately
introduced AI-supported techniques. This had three structured sprints, each one
of them covering the major parts of the sprint: object-oriented PHP, theme
development, and plugin development. In each sprint, the student deals with
part of the theoretical content and part of the practical task, using ChatGPT
as an auxiliary tool. In that sprint, the model will provide solutions in code
debugging and extensions of complex problems. The course includes practical
examples like code replication with PHP, functionality expansion of the CMS,
even development of custom plugins, and themes. The course practice includes
versions' control with Git repositories. Efficiency will touch the theme and
plugin output rates during development and mobile/web application development.
Comparative analysis indicates that there is a marked increase in efficiency
and shows effectiveness with the proposed AI- and DevOps-supported methodology.
The study is very informative since education in computer science and its
landscape change embodies an emerging technology that could have transformation
impacts on amplifying the potential for scalable and adaptive learning
approaches. |
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DOI: | 10.48550/arxiv.2406.15382 |