This paper presents a software framework that enables teachers to design reliable, personalised conversational agents tailored to their pedagogical goals and student learning preferences. The system combines a Retrieval-Augmented Generation (RAG) architecture with a visual configuration environment, allowing educators to up- load, validate, and organise domain-specific teaching materials into a teacher-curated content corpus. Educators can configure adap- tive tutoring strategies based on the VARK model (Visual, Auditory, Reading/Writing, Kinesthetic), allowing the conversational agents to address diverse learning preferences and educational contexts. Unlike fully autonomous or black-box educational AI systems, this approach foregrounds teacher agency and pedagogical alignment, enabling intuitive control over content and interaction style. A preliminary evaluation with university educators assessed usabil- ity (SUS), perceived utility (UTAUT), cognitive load (NASA-TLX), and creative-technical capacity (CTS), revealing promising results and informing future design directions. The system supports the development of human-centred AI tutors that are transparent, con- figurable, and grounded in teacher expertise.
A Teacher-Driven Framework for Reliable and Personalised AITutors / S. Valtolina, R.A. Matamoros Aragon, F. Epifania - In: CHItaly '25: Proceedings[s.l] : ACM, 2025. - ISBN 979-8-4007-2102-1. - pp. 1-8 (( convegno CHItaly '25 tenutosi a Salerno nel 2025 [10.1145/3750069.3750121].
A Teacher-Driven Framework for Reliable and Personalised AITutors
S. Valtolina;
2025
Abstract
This paper presents a software framework that enables teachers to design reliable, personalised conversational agents tailored to their pedagogical goals and student learning preferences. The system combines a Retrieval-Augmented Generation (RAG) architecture with a visual configuration environment, allowing educators to up- load, validate, and organise domain-specific teaching materials into a teacher-curated content corpus. Educators can configure adap- tive tutoring strategies based on the VARK model (Visual, Auditory, Reading/Writing, Kinesthetic), allowing the conversational agents to address diverse learning preferences and educational contexts. Unlike fully autonomous or black-box educational AI systems, this approach foregrounds teacher agency and pedagogical alignment, enabling intuitive control over content and interaction style. A preliminary evaluation with university educators assessed usabil- ity (SUS), perceived utility (UTAUT), cognitive load (NASA-TLX), and creative-technical capacity (CTS), revealing promising results and informing future design directions. The system supports the development of human-centred AI tutors that are transparent, con- figurable, and grounded in teacher expertise.| File | Dimensione | Formato | |
|---|---|---|---|
|
3750069.3750121.pdf
accesso aperto
Tipologia:
Publisher's version/PDF
Licenza:
Creative commons
Dimensione
420.3 kB
Formato
Adobe PDF
|
420.3 kB | Adobe PDF | Visualizza/Apri |
Pubblicazioni consigliate
I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.




