Papers
arxiv:2505.21582

AITEE -- Agentic Tutor for Electrical Engineering

Published on May 27
· Submitted by CKnievel on May 29
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Abstract

An agent-based tutoring system for electrical engineering enhances learning through natural circuit interaction, context-retrieving generation, and guided questioning, demonstrating superior performance compared to baseline methods.

AI-generated summary

Intelligent tutoring systems combined with large language models offer a promising approach to address students' diverse needs and promote self-efficacious learning. While large language models possess good foundational knowledge of electrical engineering basics, they remain insufficiently capable of addressing specific questions about electrical circuits. In this paper, we present AITEE, an agent-based tutoring system for electrical engineering designed to accompany students throughout their learning process, offer individualized support, and promote self-directed learning. AITEE supports both hand-drawn and digital circuits through an adapted circuit reconstruction process, enabling natural interaction with students. Our novel graph-based similarity measure identifies relevant context from lecture materials through a retrieval augmented generation approach, while parallel Spice simulation further enhances accuracy in applying solution methodologies. The system implements a Socratic dialogue to foster learner autonomy through guided questioning. Experimental evaluations demonstrate that AITEE significantly outperforms baseline approaches in domain-specific knowledge application, with even medium-sized LLM models showing acceptable performance. Our results highlight the potential of agentic tutors to deliver scalable, personalized, and effective learning environments for electrical engineering education.

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Paper author Paper submitter

Excited to share AITEE! We tackled the challenge of LLMs struggling with specific electrical circuit problems. Our agentic tutor uses hand-drawn/digital circuit understanding, a novel GNN-RAG for lecture-aware context, and SPICE simulation to accurately guide students. See how we make even medium-sized LLMs effective for EE education!

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