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http://dx.doi.org/10.17703/IJACT.2020.8.3.186

A Study on the Current State of Artificial Intelligence Based Coding Technologies and the Direction of Future Coding Education  

Jung, Hye-Wuk (Dept. of College of Liberal Arts and Interdisciplinary Studies, Kyonggi University)
Publication Information
International Journal of Advanced Culture Technology / v.8, no.3, 2020 , pp. 186-191 More about this Journal
Abstract
Artificial Intelligence (AI) technology is used in a variety of fields because it can make inferences and plans through learning processes. In the field of coding technologies, AI has been introduced as a tool for personalized and customized education to provide new educational environments. Also, it can be used as a virtual assistant in coding operations for easier and more efficient coding. Currently, as coding education becomes mandatory around the world, students' interest in programming is heightened. The purpose of coding education is to develop the ability to solve problems and fuse different academic fields through computational thinking and creative thinking to cultivate talented persons who can adapt well to the Fourth Industrial Revolution era. However, new non-computer science major students who take software-related subjects as compulsory liberal arts subjects at university came to experience many difficulties in these subjects, which they are experiencing for the first time. AI based coding technologies can be used to solve their difficulties and to increase the learning effect of non-computer majors who come across software for the first time. Therefore, this study examines the current state of AI based coding technologies and suggests the direction of future coding education.
Keywords
Artificial Intelligence; Coding Technologies; Coding Education; Software Education; Non-Computer Majors;
Citations & Related Records
Times Cited By KSCI : 6  (Citation Analysis)
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