Exploration of the Reform Path of C Programming Course Empowered by AI
Keywords:
AI-assisted teaching, C language, Programming, Four-in-one, Teaching reformAbstract
To address the traditional teaching dilemmas of the C programming course, this study explored the deep integration path of AI technology and the course, systematically sorted out the domestic and international research status of AI technology empowering programming course teaching, and deeply explored the innovative applications of the deep integration of AI technology and the course. Relying on the Superstar AI Workbench in the Superstar Fanya online teaching platform and the free AI tool DeepSeek large model, a "four-in-one" teaching model of "knowledge graph-guided learning, AI-assisted practice, intelligent optimization of project practice, and multi-intelligence assessment" was constructed, and the coping strategies in the course reform were discussed. The research results show that this model effectively improves the teaching efficiency and students’ programming ability, providing a practical reference for the intelligent reform of similar programming courses.
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