Revolutionizing Undergraduate Learning: CourseGPT and Its Generative AI Advancements

Ahmad M. Nazar, Mohamed Y. Selim, Ashraf Gaffar, Shakil Ahmed
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Abstract

Integrating Generative AI (GenAI) into educational contexts presents a transformative potential for enhancing learning experiences. This paper introduces CourseGPT, a generative AI tool designed to support instructors and enhance the educational experiences of undergraduate students. Built on open-source Large Language Models (LLMs) from Mistral AI, CourseGPT offers continuous instructor support and regular updates to course materials, enriching the learning environment. By utilizing course-specific content, such as slide decks and supplementary readings and references, CourseGPT provides precise, dynamically generated responses to student inquiries. Unlike generic AI models, CourseGPT allows instructors to manage and control the responses, thus extending the course scope without overwhelming details. The paper demonstrates the application of CourseGPT using the CPR E 431 - Basics of Information System Security course as a pilot. This course, with its large enrollments and diverse curriculum, serves as an ideal testbed for CourseGPT. The tool aims to enhance the learning experience, accelerate feedback processes, and streamline administrative tasks. The study evaluates CourseGPT's impact on student outcomes, focusing on correctness scores, context recall, and faithfulness of responses. Results indicate that the Mixtral-8x7b model, with a higher parameter count, outperforms smaller models, achieving an 88.0% correctness score and a 66.6% faithfulness score. Additionally, feedback from former students and teaching assistants on CourseGPT's accuracy, helpfulness, and overall performance was collected. The outcomes revealed that a significant majority found CourseGPT to be highly accurate and beneficial in addressing their queries, with many praising its ability to provide timely and relevant information.
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本科生学习的革命性变革:CourseGPT 及其生成式人工智能的进步
将生成式人工智能(GenAI)融入教育情境,为提升学习体验带来了变革潜力。本文介绍了 CourseGPT,这是一种生成式人工智能工具,旨在为教师提供支持,并提升本科生的教育体验。CourseGPT 基于 Mistral AI 的开源大型语言模型(LLM),可为教师提供持续支持,并定期更新课程材料,从而丰富学习环境。通过利用特定课程内容(如幻灯片、补充读物和参考资料),CourseGPT 可针对学生的询问提供精确、动态生成的回复。与一般的人工智能模型不同,CourseGPT 允许教师管理和控制回复,从而扩展了课程范围,同时又不会使细节难以承受。本文以 CPR E 431 - 信息系统安全基础课程为试点,演示了 CourseGPT 的应用。该课程招生人数众多,课程内容丰富多样,是 CourseGPT 的理想试验平台。本研究评估了 CourseGPT 对学生成绩的影响,重点是正确率得分、上下文回忆和回答的忠实性。结果表明,参数数较多的 Mixtral-8x7b 模型优于较小的模型,正确率达到 88.0%,忠实度达到 66.6%。此外,还收集了学生和助教对 CourseGPT 的准确性、有用性和整体性能的反馈意见。结果显示,绝大多数人认为 CourseGPT 的准确性很高,对解决他们的疑问很有帮助,许多人还称赞它能及时提供相关信息。
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