Date
Publisher
arXiv
Generative AI (GenAI) models have broad implications for education in
general, impacting the foundations of what we teach and how we assess. This is
especially true in computing, where LLMs tuned for coding have demonstrated
shockingly good performance on the types of assignments historically used in
introductory CS (CS1) courses. As a result, CS1 courses will need to change
what skills are taught and how they are assessed. Computing education
researchers have begun to study student use of LLMs, but there remains much to
be understood about the ways that these tools affect student outcomes. In this
paper, we present the design and evaluation of a new CS1 course at a large
research-intensive university that integrates the use of LLMs as a learning
tool for students. We describe the design principles used to create our new
CS1-LLM course, our new course objectives, and evaluation of student outcomes
and perceptions throughout the course as measured by assessment scores and
surveys. Our findings suggest that 1) student exam performance outcomes,
including differences among demographic groups, are largely similar to
historical outcomes for courses without integration of LLM tools, 2) large,
open-ended projects may be particularly valuable in an LLM context, and 3)
students predominantly found the LLM tools helpful, although some had concerns
regarding over-reliance on the tools.
What is the application?
Who is the user?
Who age?
Study design
