使用 LLM 驱动的工具共享制造业知识:用户研究和模型基准测试

IF 3 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Frontiers in Artificial Intelligence Pub Date : 2024-03-27 DOI:10.3389/frai.2024.1293084
Samuel Kernan Freire, Chaofan Wang, Mina Foosherian, Stefan Wellsandt, Santiago Ruiz-Arenas, Evangelos Niforatos
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引用次数: 0

摘要

自然语言处理技术的最新进展使我们能够以更智能的方式支持工厂的知识共享。在制造业中,生产线的操作变得越来越知识密集,给工厂培训和支持新操作员的能力带来了压力。本文介绍了一个基于大语言模型(LLM)的系统,该系统旨在从工厂文档中包含的大量知识和专家操作员共享的知识中检索信息。该系统旨在有效回答操作员的询问,并促进新知识的共享。我们在一家工厂开展了一项用户研究,以评估该系统的潜在影响和采用情况。研究结果表明,该系统具有若干可感知的优势,即能够更快地检索信息和更有效地解决问题。不过,这项研究也突出表明,在有人类专家可供选择的情况下,人们更倾向于从人类专家那里学习。此外,我们还对该系统的几个商业和开源 LLM 进行了基准测试。目前最先进的模型 GPT-4 的表现一直优于同类产品,而开源模型则紧随其后,鉴于其数据隐私性和定制化优势,开源模型是一个极具吸引力的选择。总之,这项工作为考虑使用 LLM 工具进行知识管理的工厂提供了初步见解和系统设计。
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Knowledge sharing in manufacturing using LLM-powered tools: user study and model benchmarking
Recent advances in natural language processing enable more intelligent ways to support knowledge sharing in factories. In manufacturing, operating production lines has become increasingly knowledge-intensive, putting strain on a factory's capacity to train and support new operators. This paper introduces a Large Language Model (LLM)-based system designed to retrieve information from the extensive knowledge contained in factory documentation and knowledge shared by expert operators. The system aims to efficiently answer queries from operators and facilitate the sharing of new knowledge. We conducted a user study at a factory to assess its potential impact and adoption, eliciting several perceived benefits, namely, enabling quicker information retrieval and more efficient resolution of issues. However, the study also highlighted a preference for learning from a human expert when such an option is available. Furthermore, we benchmarked several commercial and open-sourced LLMs for this system. The current state-of-the-art model, GPT-4, consistently outperformed its counterparts, with open-source models trailing closely, presenting an attractive option given their data privacy and customization benefits. In summary, this work offers preliminary insights and a system design for factories considering using LLM tools for knowledge management.
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来源期刊
CiteScore
6.10
自引率
2.50%
发文量
272
审稿时长
13 weeks
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