Harnessing Large Language Models for Cognitive Assistants in Factories

Samuel Kernan Freire, Mina Foosherian, Chaofan Wang, E. Niforatos
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引用次数: 1

Abstract

As agile manufacturing expands and workforce mobility increases, the importance of efficient knowledge transfer among factory workers grows. Cognitive Assistants (CAs) with Large Language Models (LLMs), like GPT-3.5, can bridge knowledge gaps and improve worker performance in manufacturing settings. This study investigates the opportunities, risks, and user acceptance of LLM-powered CAs in two factory contexts: textile and detergent production. Several opportunities and risks are identified through a literature review, proof-of-concept implementation, and focus group sessions. Factory representatives raise concerns regarding data security, privacy, and the reliability of LLMs in high-stake environments. By following design guidelines regarding persistent memory, real-time data integration, security, privacy, and ethical concerns, LLM-powered CAs can become valuable assets in manufacturing settings and other industries.
利用大型语言模型为工厂中的认知助手服务
随着敏捷制造的扩展和劳动力流动性的增加,工厂工人之间有效知识转移的重要性日益增加。具有大型语言模型(llm)的认知助理(CAs),如GPT-3.5,可以弥合知识差距,提高制造环境中的工人绩效。本研究调查了两种工厂环境中llm驱动的ca的机会、风险和用户接受度:纺织和洗涤剂生产。通过文献回顾、概念验证实现和焦点小组会议,确定了几个机会和风险。工厂代表提出了对高风险环境中llm的数据安全性、隐私性和可靠性的担忧。通过遵循有关持久内存、实时数据集成、安全性、隐私和道德问题的设计准则,llm驱动的ca可以成为制造环境和其他行业的宝贵资产。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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