Generative AI-Based Virtual Assistant using Retrieval-Augmented Generation: An evaluation study for bachelor projects
Abstract
Large Language Models have been increasingly employed in the creation of Virtual Assistants due to their ability to generate human-like text and handle complex inquiries. While these models hold great promise, challenges such as hallucinations, missing information, and the difficulty of providing accurate and context-specific responses persist, particularly when applied to highly specialized content domains. In this paper, we focus on addressing these challenges by developing a virtual assistant designed to support students at Maastricht University in navigating project-specific regulations. We propose a virtual assistant based on a Retrieval-Augmented Generation system that enhances the accuracy and reliability of responses by integrating up-to-date, domain-specific knowledge. Through a robust evaluation framework and real-life testing, we demonstrate that our virtual assistant can effectively meet the needs of students while addressing the inherent challenges of applying Large Language Models to a specialized educational context. This work contributes to the ongoing discourse on improving LLM-based systems for specific applications and highlights areas for further research.
Cite
@article{arxiv.2604.25924,
title = {Generative AI-Based Virtual Assistant using Retrieval-Augmented Generation: An evaluation study for bachelor projects},
author = {Dumitru Verşebeniuc and Martijn Elands and Sara Falahatkar and Chiara Magrone and Mohammad Falah and Martijn Boussé and Aki Härmä},
journal= {arXiv preprint arXiv:2604.25924},
year = {2026}
}
Comments
Accepted at BNAIC/BeNeLearn 2024, to appear in Springer CCIS series. 15 pages + refs. Code and survey available at https://github.com/DikaVer/maastricht_university_generative_virtual_assistant