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Domain Knowledge Distillation from Large Language Model: An Empirical Study in the Autonomous Driving Domain

Yun Tang, Antonio Anastasio Bruto da Costa, Xizhe Zhang, Irvine Patrick, Siddartha Khastgir, Paul Jennings

202316 citationsDOIOpen Access PDF

Abstract

Engineering knowledge-based (or expert) systems require extensive manual effort and domain knowledge. As Large Language Models (LLMs) are trained using an enormous amount of cross-domain knowledge, it becomes possible to automate such engineering processes. This paper presents an empirical automation and semi-automation framework for domain knowledge distillation using prompt engineering and the LLM ChatGPT. We assess the framework empirically in the autonomous driving domain and present our key observations. In our implementation, we construct the domain knowledge ontology by “chatting” with ChatGPT. The key finding is that while fully automated domain ontology construction is possible, human supervision and early intervention typically improve efficiency and output quality as they lessen the effects of response randomness and the butterfly effect. We, therefore, also develop a web-based distillation assistant enabling supervision and flexible intervention at runtime. We hope our findings and tools could inspire future research toward revolutionizing the engineering of knowledge-based systems across application domains.

Topics & Concepts

Domain (mathematical analysis)Computer scienceDistillationDomain modelDomain-specific languageLanguage modelDomain knowledgeArtificial intelligenceChemistryProgramming languageChromatographyMathematicsMathematical analysisTopic Modeling
Domain Knowledge Distillation from Large Language Model: An Empirical Study in the Autonomous Driving Domain | Litcius