Integrating artificial intelligence chatbot climate change with physics digital modules for student learning assistants
Artificial intelligence (AI) assists students in independently discovering concepts based on their interests. Learning physics concepts related to climate change has primarily concentrated on the outcome aspect, neglecting the process and concept discovery itself. Furthermore, there are still a limi...
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Published in | Multidisciplinary Science Journal Vol. 7; no. 12 |
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Main Authors | , , , , , , |
Format | Journal Article |
Language | English |
Published |
01.12.2025
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Online Access | Get full text |
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Summary: | Artificial intelligence (AI) assists students in independently discovering concepts based on their interests. Learning physics concepts related to climate change has primarily concentrated on the outcome aspect, neglecting the process and concept discovery itself. Furthermore, there are still a limited number of empirical studies that discuss the integration of AI with Physics Digital Modules, highlighting potential challenges and weaknesses. The research aims to Develoment of Integrating Artificial Intelligence Chatbot for Climate Change (AIC3) with Physics Digital Modules (PDM) for Student Learning Assistants (SLA). Applied the experimental research method to AIC3 with PDM, which involved 124 undergraduate students enrolled in the environmental physics course as learning assistants. The findings show that AIC3 with PDM is an effective intelligent student assistant for learning basic content in a responsive, interactive and simple manner. The research results AIC3 with PDM is an engaging and responsive conversational learning tool for teaching fundamental concepts and providing learning resources for education on Chatbot Climate Change. The highlights the effectiveness of integrating the Artificial Intelligence Chatbot for Climate Change with Physics Digital Modules as a valuable tool for student learning assistants. Present the research findings and discuss the opportunities for further studies, as well as the implications of using AIC3 with PDM to support inclusive learning. |
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ISSN: | 2675-1240 2675-1240 |
DOI: | 10.31893/multiscience.2025583 |