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Main Authors: Li, Yiwei, Zhao, Huaqin, Jiang, Hanqi, Pan, Yi, Liu, Zhengliang, Wu, Zihao, Shu, Peng, Tian, Jie, Yang, Tianze, Xu, Shaochen, Lyu, Yanjun, Blenk, Parker, Pence, Jacob, Rupram, Jason, Banu, Eliza, Liu, Ninghao, Wang, Linbing, Song, Wenzhan, Zhai, Xiaoming, Song, Kenan, Zhu, Dajiang, Li, Beiwen, Wang, Xianqiao, Liu, Tianming
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.21418
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author Li, Yiwei
Zhao, Huaqin
Jiang, Hanqi
Pan, Yi
Liu, Zhengliang
Wu, Zihao
Shu, Peng
Tian, Jie
Yang, Tianze
Xu, Shaochen
Lyu, Yanjun
Blenk, Parker
Pence, Jacob
Rupram, Jason
Banu, Eliza
Liu, Ninghao
Wang, Linbing
Song, Wenzhan
Zhai, Xiaoming
Song, Kenan
Zhu, Dajiang
Li, Beiwen
Wang, Xianqiao
Liu, Tianming
author_facet Li, Yiwei
Zhao, Huaqin
Jiang, Hanqi
Pan, Yi
Liu, Zhengliang
Wu, Zihao
Shu, Peng
Tian, Jie
Yang, Tianze
Xu, Shaochen
Lyu, Yanjun
Blenk, Parker
Pence, Jacob
Rupram, Jason
Banu, Eliza
Liu, Ninghao
Wang, Linbing
Song, Wenzhan
Zhai, Xiaoming
Song, Kenan
Zhu, Dajiang
Li, Beiwen
Wang, Xianqiao
Liu, Tianming
contents The rapid advances in Large Language Models (LLMs) have the potential to transform manufacturing industry, offering new opportunities to optimize processes, improve efficiency, and drive innovation. This paper provides a comprehensive exploration of the integration of LLMs into the manufacturing domain, focusing on their potential to automate and enhance various aspects of manufacturing, from product design and development to quality control, supply chain optimization, and talent management. Through extensive evaluations across multiple manufacturing tasks, we demonstrate the remarkable capabilities of state-of-the-art LLMs, such as GPT-4V, in understanding and executing complex instructions, extracting valuable insights from vast amounts of data, and facilitating knowledge sharing. We also delve into the transformative potential of LLMs in reshaping manufacturing education, automating coding processes, enhancing robot control systems, and enabling the creation of immersive, data-rich virtual environments through the industrial metaverse. By highlighting the practical applications and emerging use cases of LLMs in manufacturing, this paper aims to provide a valuable resource for professionals, researchers, and decision-makers seeking to harness the power of these technologies to address real-world challenges, drive operational excellence, and unlock sustainable growth in an increasingly competitive landscape.
format Preprint
id arxiv_https___arxiv_org_abs_2410_21418
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Large Language Models for Manufacturing
Li, Yiwei
Zhao, Huaqin
Jiang, Hanqi
Pan, Yi
Liu, Zhengliang
Wu, Zihao
Shu, Peng
Tian, Jie
Yang, Tianze
Xu, Shaochen
Lyu, Yanjun
Blenk, Parker
Pence, Jacob
Rupram, Jason
Banu, Eliza
Liu, Ninghao
Wang, Linbing
Song, Wenzhan
Zhai, Xiaoming
Song, Kenan
Zhu, Dajiang
Li, Beiwen
Wang, Xianqiao
Liu, Tianming
Artificial Intelligence
Computation and Language
The rapid advances in Large Language Models (LLMs) have the potential to transform manufacturing industry, offering new opportunities to optimize processes, improve efficiency, and drive innovation. This paper provides a comprehensive exploration of the integration of LLMs into the manufacturing domain, focusing on their potential to automate and enhance various aspects of manufacturing, from product design and development to quality control, supply chain optimization, and talent management. Through extensive evaluations across multiple manufacturing tasks, we demonstrate the remarkable capabilities of state-of-the-art LLMs, such as GPT-4V, in understanding and executing complex instructions, extracting valuable insights from vast amounts of data, and facilitating knowledge sharing. We also delve into the transformative potential of LLMs in reshaping manufacturing education, automating coding processes, enhancing robot control systems, and enabling the creation of immersive, data-rich virtual environments through the industrial metaverse. By highlighting the practical applications and emerging use cases of LLMs in manufacturing, this paper aims to provide a valuable resource for professionals, researchers, and decision-makers seeking to harness the power of these technologies to address real-world challenges, drive operational excellence, and unlock sustainable growth in an increasingly competitive landscape.
title Large Language Models for Manufacturing
topic Artificial Intelligence
Computation and Language
url https://arxiv.org/abs/2410.21418