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Transforming Education with ChatGPT: Applications, Opportunities and Challenges
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2024
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Abstract
Nowadays, large language models such as ChatGPT are rapidly developing. Its powerful capabilities have led to widespread discussions about its applications in specific fields. This study explores the huge transformation of education with the deep integration of ChatGPT, with a focus on analyzing the changes it brings, technological foundations, typical application cases, and challenges it faces. Through case studies such as AsasaraBot, JeepyTA, and ChatGPT Edu, the enormous potential of ChatGPT in educational scenarios such as roles of online course assistants and language teaching robots was evaluated. ChatGPT can be made into an online course teaching assistant, answering students' questions, or a foreign language teaching teacher, improving students' language proficiency and understanding of foreign cultures. ChatGPT can also be put into use to effectively support the education industry by achieving automatic grading, instant feedback, personalized learning and so on which will accelerate the intelligent transformation of educational resources. However, this article also points out the limitations of ChatGPT and the challenges it faces concerning educational applications, such as bias issues in generating content and ethical concerns such as academic deception that Artificial Intelligence (AI) may bring. This article suggests that the education industry and technology developers work closely together to optimize the application models of AI in education and promote responsible use of AI. Through continuous efforts, ChatGPT is expected to promote a more intelligent, personalized, and equitable education system for the world.
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