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MUTutor: An LLM-based Support Tool for Teaching Assistants with Continuous Feedback in Asynchronous Q&A
The Hong Kong University of Science and Technology Department of Computer Science and Engineering Final Year Thesis Oral Defense Title: "MUTutor: An LLM-based Support Tool for Teaching Assistants with Continuous Feedback in Asynchronous Q&A" by GUO Bingcan Abstract: Asynchronous Questioning & Answering(Q&A) is a crucial resource for university students seeking assistance with lecture material, assignments, and course logistics from instructors and teaching assistants(TAs) beyond scheduled lecture hours. This interaction not only helps students but also allows TAs to develop skills in teaching and employing proper pedagogies, gain experience communicating with students, and deepen their grasp of the subject knowledge. Nonetheless, since TAs are often students who need to balance their research or coursework with TA responsibilities, many find it challenging to devote sufficient time to answer students' inquiries thoroughly and timely reflecting on their own TA skills. To support TAs in efficiently responding to student questions and to facilitate an intuitive reflection on their TA skills, we develop MUTutor. This web-based system can provide specific insights on incoming questions and real-time feedback on TA's replies. The system harnesses the advanced capability of Large Language Models(LLMs), including text summarization, evaluation, and search functionalities, to optimize the asynchronous Q&A process for TAs in Computer Science 2(CS2) courses. Our usability testing with three novice teaching assistants for CS2 courses at HKUST indicates that MUTutors can effectively help them answer questions and receive constructive and personalized feedback to enhance their TA skills. Date : 29 April 2024 (Monday) Time : 14:00 - 14:40 Venue : Room 4472 (near lifts 25/26), HKUST Advisor : Dr. MA Xiaojuan 2nd Reader : Dr. TSOI Desmond Yau-Chat