Towards Educator-Driven Tutor Authoring: Generative AI Approaches for Creating Intelligent Tutor Interfaces
Tommaso Calo, Christopher J. MacLellan

TL;DR
This paper introduces a generative AI approach using Large Language Models to assist educators in designing personalized and engaging tutor interfaces, reducing the need for specialized programming skills.
Contribution
It presents a novel method that combines AI-generated tutor layouts with active educator participation at both interface and component levels.
Findings
Potential to improve tutor interface design efficiency
Empowers educators with AI-assisted customization
Facilitates active educator involvement in design process
Abstract
Intelligent Tutoring Systems (ITSs) have shown great potential in delivering personalized and adaptive education, but their widespread adoption has been hindered by the need for specialized programming and design skills. Existing approaches overcome the programming limitations with no-code authoring through drag and drop, however they assume that educators possess the necessary skills to design effective and engaging tutor interfaces. To address this assumption we introduce generative AI capabilities to assist educators in creating tutor interfaces that meet their needs while adhering to design principles. Our approach leverages Large Language Models (LLMs) and prompt engineering to generate tutor layout and contents based on high-level requirements provided by educators as inputs. However, to allow them to actively participate in the design process, rather than relying entirely on…
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