AI Meets Mathematics Education: A Case Study on Supporting an Instructor in a Large Mathematics Class with Context-Aware AI

arXiv cs.AI / 3/31/2026

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Key Points

  • The paper presents a human-centered case study using a context-aware AI assistant to support an instructor in a large Calculus I course by answering students’ forum questions.
  • A lightweight language model was fine-tuned on 2,588 historical student–instructor interactions and reached 75.3% accuracy on a benchmark of 150 instructor-annotated questions.
  • In 36% of sampled cases, the AI responses were rated equal to or better than instructor answers, suggesting meaningful quality gains for scalable help.
  • A post-deployment survey of 105 students found that alignment with course materials and fast availability improved perceived usefulness, while students still trusted the system through instructor verification.
  • The authors conclude that hybrid human–AI workflows are important to ensure reliability, pedagogical fit, and safety in education support settings.

Abstract

Large-enrollment university courses face persistent challenges in providing timely and scalable instructional support. While generative AI holds promise, its effective use depends on reliability and pedagogical alignment. We present a human-centered case study of AI-assisted support in a Calculus I course, implemented in close collaboration with the course instructor. We developed a system to answer students' questions on a discussion forum, fine-tuning a lightweight language model on 2,588 historical student-instructor interactions. The model achieved 75.3% accuracy on a benchmark of 150 representative questions annotated by five instructors, and in 36% of cases, its responses were rated equal to or better than instructor answers. Post-deployment student survey (N = 105) indicated that students valued the alignment of the responses with the course materials and their immediate availability, while still relying on the instructor verification for trust. We highlight the importance of hybrid human-AI workflows for safe and effective course support.