Optimization of Teaching Path of Artificial Intelligence Programming Course in the Context of New Engineering Construction

Under the background of new engineering construction and the requirements of new curriculum reform, the problem of using big data technology to combine with the teaching of the “Artificial Intelligence Programming” course has caused many educational researchers to focus on the problem. In this paper...

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Main Author: Wang Hongmei
Format: Article
Language:English
Published: Sciendo 2024-01-01
Series:Applied Mathematics and Nonlinear Sciences
Subjects:
Online Access:https://doi.org/10.2478/amns.2023.2.00263
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author Wang Hongmei
author_facet Wang Hongmei
author_sort Wang Hongmei
collection DOAJ
description Under the background of new engineering construction and the requirements of new curriculum reform, the problem of using big data technology to combine with the teaching of the “Artificial Intelligence Programming” course has caused many educational researchers to focus on the problem. In this paper, we propose data mining based on a clustering algorithm to build a teaching management system to optimize the teaching path of the Artificial Intelligence Programming course and build a web-based teaching management system based on clustering analysis and clustering validity index. Then the system structure and database are designed through the teaching system requirements, and the course teaching evaluation index system is built based on the teaching objectives of Artificial Intelligence Programming. Finally, the course’s teaching efficiency is analyzed using the teaching system with 20 weeks of teaching Artificial Intelligence Programming in one semester. The results show the clustering algorithm: the average course teaching efficiency is 39.95%, and the BP neural algorithm: the average course teaching efficiency is 34.71%. Genetic algorithm: the average course teaching efficiency is 33.96%. Based on the clustering algorithm teaching system improves the course teaching efficiency by 39.95% compared with the other two better performances, which is conducive to improving the quality of course teaching and teaching reform. This study provides better information technology support for new engineering construction and engineering teaching optimization and has reference guiding value for course teaching research.
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spelling doaj.art-6a4559fbb37d42ef81505034569f13692024-01-29T08:52:30ZengSciendoApplied Mathematics and Nonlinear Sciences2444-86562024-01-019110.2478/amns.2023.2.00263Optimization of Teaching Path of Artificial Intelligence Programming Course in the Context of New Engineering ConstructionWang Hongmei01Shanxi Institute of Technology, Yangquan, Shanxi, 045000, China.Under the background of new engineering construction and the requirements of new curriculum reform, the problem of using big data technology to combine with the teaching of the “Artificial Intelligence Programming” course has caused many educational researchers to focus on the problem. In this paper, we propose data mining based on a clustering algorithm to build a teaching management system to optimize the teaching path of the Artificial Intelligence Programming course and build a web-based teaching management system based on clustering analysis and clustering validity index. Then the system structure and database are designed through the teaching system requirements, and the course teaching evaluation index system is built based on the teaching objectives of Artificial Intelligence Programming. Finally, the course’s teaching efficiency is analyzed using the teaching system with 20 weeks of teaching Artificial Intelligence Programming in one semester. The results show the clustering algorithm: the average course teaching efficiency is 39.95%, and the BP neural algorithm: the average course teaching efficiency is 34.71%. Genetic algorithm: the average course teaching efficiency is 33.96%. Based on the clustering algorithm teaching system improves the course teaching efficiency by 39.95% compared with the other two better performances, which is conducive to improving the quality of course teaching and teaching reform. This study provides better information technology support for new engineering construction and engineering teaching optimization and has reference guiding value for course teaching research.https://doi.org/10.2478/amns.2023.2.00263new engineering constructionartificial intelligence programmingdata miningclustering algorithmweb-based teaching system68t05
spellingShingle Wang Hongmei
Optimization of Teaching Path of Artificial Intelligence Programming Course in the Context of New Engineering Construction
Applied Mathematics and Nonlinear Sciences
new engineering construction
artificial intelligence programming
data mining
clustering algorithm
web-based teaching system
68t05
title Optimization of Teaching Path of Artificial Intelligence Programming Course in the Context of New Engineering Construction
title_full Optimization of Teaching Path of Artificial Intelligence Programming Course in the Context of New Engineering Construction
title_fullStr Optimization of Teaching Path of Artificial Intelligence Programming Course in the Context of New Engineering Construction
title_full_unstemmed Optimization of Teaching Path of Artificial Intelligence Programming Course in the Context of New Engineering Construction
title_short Optimization of Teaching Path of Artificial Intelligence Programming Course in the Context of New Engineering Construction
title_sort optimization of teaching path of artificial intelligence programming course in the context of new engineering construction
topic new engineering construction
artificial intelligence programming
data mining
clustering algorithm
web-based teaching system
68t05
url https://doi.org/10.2478/amns.2023.2.00263
work_keys_str_mv AT wanghongmei optimizationofteachingpathofartificialintelligenceprogrammingcourseinthecontextofnewengineeringconstruction