2024
DOI: 10.1007/s00784-024-05968-w
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Performance of large language artificial intelligence models on solving restorative dentistry and endodontics student assessments

Paul Künzle,
Sebastian Paris

Abstract: Objectives The advent of artificial intelligence (AI) and large language model (LLM)-based AI applications (LLMAs) has tremendous implications for our society. This study analyzed the performance of LLMAs on solving restorative dentistry and endodontics (RDE) student assessment questions. Materials and methods 151 questions from a RDE question pool were prepared for prompting using LLMAs from OpenAI (ChatGPT-3.5,-4.0 and -4.0o) and Google (Gemini 1… Show more

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