Learning by Teaching: Engaging Students as Instructors of Large Language Models in Computer Science Education

0
citations
#337
in COLM 2025
of 418 papers
3
Top Authors
3
Data Points

Abstract

While Large Language Models (LLMs) are often used as virtual tutors in computer science (CS) education, this approach can foster passive learning and over-reliance. This paper presents a novel pedagogical paradigm that inverts this model: students act as instructors who must teach an LLM to solve problems. To facilitate this, we developed strategies for designing questions with engineered knowledge gaps that only a student can bridge, and we introduce Socrates, a system for deploying this method with minimal overhead. We evaluated our approach in an undergraduate course and found that this active-learning method led to statistically significant improvements in student performance compared to historical cohorts. Our work demonstrates a practical, cost-effective framework for using LLMs to deepen student engagement and mastery.

Citation History

Feb 12, 2026
0
Feb 13, 2026
0
Feb 13, 2026
0