AmIWrite: Exploring Scalable One-on-One Handwriting-Based Tutoring for Mathematical Problem-Solving with an LLM-Powered AI Tutor

by | Apr 13, 2026

Authors: Ziyi Liu, Yuzhao Chen, Haoyu Ji, Runlin Duan, Zhengzhe Zhu, Xiyun Hu, Kylie Peppler, Karthik Ramani
In Proceedings of the 2026 CHI Conference on Human Factors in Computing Systems
https://doi.org/10.1145/3772318.3790935

Real-time handwriting interactions between tutors and students —where tutors observe individual problem-solving processes, provide personalized annotations, and adapt explanations based on students’ work—are fundamental to effective STEM tutoring. However, scaling such personalized handwriting-based tutoring remains challenging—human tutors cannot be available to every student on demand, and current online platforms often fail to recreate equivalent learning experiences. As an initial step toward tackling this challenge, we present AmIWrite, an LLM-powered AI tutoring system for mathematical problem-solving that provides real-time co-speech handwriting interactions on tablet devices, instantiated here as a case study in linear algebra. We conducted a within-subjects study (N = 40) comparing AmIWrite to a text-based AI tutor on two linear algebra topics. Our case study demonstrates how a multimodal AI tutor can preserve the pedagogical benefits of handwriting-based math tutoring and offer a potential path toward more scalable one-on-one STEM tutoring.

Ziyi Liu

Ziyi Liu

Ziyi Liu has been a Ph.D. student in the School of Mechanical Engineering at Purdue University since Fall 2021. He is conducting research under Professor Karthik Ramani's Convergence Design Lab. He received his Master's and Bachelor's degrees in Mechanical Engineering at Purdue University. His current research focuses on innovative human-computer interactions utilizing AR/VR, and AI in authoring/tutoring systems.