Shuvo Biswas

Work place: University of Asia Pacific/Electrical and Electronic Engineering, Dhaka, 1205, Bangladesh

E-mail: 22220004@uap-bd.edu

Website: https://orcid.org/0009-0003-8696-9014

Research Interests:

Biography

Shuvo Biswas was born in Bangladesh on July 11, 1997. Earned a Bachelor of Science in electrical and electronics engineering from Faridpur Engineering College, Faridpur, Bangladesh, in 2021. He has gained professional experience in various roles, including Junior Engineer (Electrical), Elevated BIM/CAD Operator, Electrical Site Engineer, and Assistant Design Engineer. He is currently working as an Assistant Design Engineer in Mirpur, Bangladesh. His previous research interests included building electrical design and solar technology, while his current focus lies in electronics, semiconductors, and very-large-scale integration (VLSI).

Author Articles
EduAgent: A Multimodal Chatbot Framework for Enhancing Interactive Learning in Electrical and Electronics Engineering Education

By Sayem Shahad Salman Sayeed Md Naimur Rahman Khan Sifat Shuvo Biswas Tishna Sabrina

DOI: https://doi.org/10.5815/ijmecs.2026.01.07, Pub. Date: 8 Feb. 2026

In recent days, we have largely adopted Advanced Large Language Models (LLMs) in educational settings, where we use them as content creators, teaching assistants, and interactive conversation agents. However, the responses generated by these models are often monotonous, verbose, and ambiguous, which can hinder their effectiveness in educational contexts. Addressing these shortcomings, we introduce EduAgent, a multimodal chatbot framework specifically designed to enhance interactive learning in Electrical and Electronics Engineering (EEE) education. EduAgent can respond with pedagogically enhanced answers to electronics-related queries, complemented by relevant images and detailed explanations. It is designed to provide complete, concise, step-by-step responses, ensuring that foundational knowledge is clearly mentioned before diving deep. To develop EduAgent, we constructed a dataset comprising 596 four-turn conversations and a collection of 118 images covering a wide range of EEE concepts. The conversation dataset was used to fine-tune the open-source LLMs and facilitate in-context learning. Both images and their corresponding explanations were integrated into a knowledge base for efficient retrieval. Finally, we evaluated multiple text generation and image retrieval methods using both automatic metrics and human assessments, demonstrating the effectiveness and engagement of our approach.

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