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The Impact of Large Language Models on Task Automation in Manufacturing Services

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  • Jochen Wulf
  • Juerg Meierhofer

Abstract

This paper explores the potential of large language models (LLMs) for task automation in the provision of technical services in the production machinery sector. By focusing on text correction, summarization, and question answering, the study demonstrates how LLMs can enhance operational efficiency and customer support quality. Through prototyping and the analysis of real-life customer data, LLMs are shown to reliably correct errors, generate concise summaries of complex communication, and provide accurate, context-aware responses to customer inquiries. The research also integrates Retrieval Augmented Generation (RAG) to combine LLM outputs with domain-specific knowledge, enhancing precision and relevance. While the findings highlight significant efficiency gains, challenges such as knowledge hallucination and integration with human workflows remain barriers to large-scale adoption. This study contributes to the theoretical understanding and practical application of LLMs in manufacturing, paving the way for further research into scalable, domain-specific implementations.

Suggested Citation

  • Jochen Wulf & Juerg Meierhofer, 2025. "The Impact of Large Language Models on Task Automation in Manufacturing Services," Papers 2505.10581, arXiv.org.
  • Handle: RePEc:arx:papers:2505.10581
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    File URL: http://arxiv.org/pdf/2505.10581
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    References listed on IDEAS

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    1. Xu Yang & Xiao Yang & Weiqing Liu & Jinhui Li & Peng Yu & Zeqi Ye & Jiang Bian, 2023. "Leveraging Large Language Model for Automatic Evolving of Industrial Data-Centric R&D Cycle," Papers 2310.11249, arXiv.org.
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