Assessing Large Language Models In Mechanical Engineering Education: A Study On Mechanics-focused Conceptual Understanding · The Large Language Model Bible Contribute to LLM-Bible

Assessing Large Language Models In Mechanical Engineering Education: A Study On Mechanics-focused Conceptual Understanding

Tian Jie, Hou Jixin, Wu Zihao, Shu Peng, Liu Zhengliang, Xiang Yujie, Gu Beikang, Filla Nicholas, Li Yiwei, Liu Ning, Chen Xianyan, Tang Keke, Liu Tianming, Wang Xianqiao. Arxiv 2024

[Paper]    
Ethics And Bias GPT Interpretability And Explainability Model Architecture Prompting

This study is a pioneering endeavor to investigate the capabilities of Large Language Models (LLMs) in addressing conceptual questions within the domain of mechanical engineering with a focus on mechanics. Our examination involves a manually crafted exam encompassing 126 multiple-choice questions, spanning various aspects of mechanics courses, including Fluid Mechanics, Mechanical Vibration, Engineering Statics and Dynamics, Mechanics of Materials, Theory of Elasticity, and Continuum Mechanics. Three LLMs, including ChatGPT (GPT-3.5), ChatGPT (GPT-4), and Claude (Claude-2.1), were subjected to evaluation against engineering faculties and students with or without mechanical engineering background. The findings reveal GPT-4’s superior performance over the other two LLMs and human cohorts in answering questions across various mechanics topics, except for Continuum Mechanics. This signals the potential future improvements for GPT models in handling symbolic calculations and tensor analyses. The performances of LLMs were all significantly improved with explanations prompted prior to direct responses, underscoring the crucial role of prompt engineering. Interestingly, GPT-3.5 demonstrates improved performance with prompts covering a broader domain, while GPT-4 excels with prompts focusing on specific subjects. Finally, GPT-4 exhibits notable advancements in mitigating input bias, as evidenced by guessing preferences for humans. This study unveils the substantial potential of LLMs as highly knowledgeable assistants in both mechanical pedagogy and scientific research.

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