Paper ID: 2411.01765

Towards Pedagogical LLMs with Supervised Fine Tuning for Computing Education

Alexandra Vassar, Jake Renzella, Emily Ross, Andrew Taylor

This paper investigates supervised fine-tuning of large language models (LLMs) to improve their pedagogical alignment in computing education, addressing concerns that LLMs may hinder learning outcomes. The project utilised a proprietary dataset of 2,500 high quality question/answer pairs from programming course forums, and explores two research questions: the suitability of university course forums in contributing to fine-tuning datasets, and how supervised fine-tuning can improve LLMs' alignment with educational principles such as constructivism. Initial findings suggest benefits in pedagogical alignment of LLMs, with deeper evaluations required.

Submitted: Nov 4, 2024