Exploring Student Choice and the Use of Multimodal Generative AI in Programming Learning
October 06, 2025 Β· Declared Dead Β· π Technical Symposium on Computer Science Education
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Authors
Xinying Hou, Ruiwei Xiao, Runlong Ye, Michael Liut, John Stamper
arXiv ID
2510.05417
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.AI
Citations
1
Venue
Technical Symposium on Computer Science Education
Last Checked
4 months ago
Abstract
The broad adoption of Generative AI (GenAI) is impacting Computer Science education, and recent studies found its benefits and potential concerns when students use it for programming learning. However, most existing explorations focus on GenAI tools that primarily support text-to-text interaction. With recent developments, GenAI applications have begun supporting multiple modes of communication, known as multimodality. In this work, we explored how undergraduate programming novices choose and work with multimodal GenAI tools, and their criteria for choices. We selected a commercially available multimodal GenAI platform for interaction, as it supports multiple input and output modalities, including text, audio, image upload, and real-time screen-sharing. Through 16 think-aloud sessions that combined participant observation with follow-up semi-structured interviews, we investigated student modality choices for GenAI tools when completing programming problems and the underlying criteria for modality selections. With multimodal communication emerging as the future of AI in education, this work aims to spark continued exploration on understanding student interaction with multimodal GenAI in the context of CS education.
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