Publication Type : Conference Paper
Publisher : IEEE
Source : Scopus
Url : https://doi.org/10.1109/NKCon62728.2024.10774900
Keywords : Information retrieval; Medical computing; Students; Textbooks; Chat-GPT4; Chatbots; Cutting edge technology; Digital assistants; Effective learning; Language model; Medical students; Research papers; Streamlit; Trulens; Medical education
Campus : Bengaluru
School : School of Computing
Department : Computer Science and Engineering
Year : 2024
Abstract : This research paper presents a novel AI tool aimed at revolutionizing medical education by addressing the specific needs of medical students, fostering effective learning, and managing stress. The implementation leverages cutting-edge technology known as Large Language Models (LLMs), with a focus on utilizing ChatGPT4, Streamlit, and Trulens. The digital assistant serves as a friendly and accurate resource, responding promptly to complex medical queries, thereby optimizing study time. The study meticulously examines the balance between technical innovation and practical benefits, emphasizing the project's goal of not only creating a sophisticated tool but also providing tangible assistance to medical students.The report outlines the successful development and deployment of the AI-powered study buddy, showcasing its potential to significantly improve learning environments, particularly in demanding fields such as medicine. Notably, the project empha-sizes the importance of groundedness in its chatbot, achieving an impressive accuracy rate of approximately 84% for a single textbook. The integration of Streamlit, ChatGPT4, and Trulens contributes to creating a seamless and user-friendly experience for medical students.This research underscores the broader implications of AI in education, demonstrating how advancements in technology can positively impact learning outcomes. By reducing the time spent on information retrieval, the AI study buddy empowers medical students to concentrate more on core learning objectives, ultimately facilitating their journey to becoming proficient and successful medical practitioners.
Cite this Research Publication : Sai Deepa Bhavani Peri, S Santhanalakshmi, Radha Radha, Chatbot to chat with medical books using Retrieval-Augmented Generation Model, Scopus, IEEE, 2024, https://doi.org/10.1109/NKCon62728.2024.10774900