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Treffer: Intelligent Processing of Design Notices in Engineering Procurement Construction Projects.

Title:
Intelligent Processing of Design Notices in Engineering Procurement Construction Projects.
Source:
Buildings (2075-5309); Mar2025, Vol. 15 Issue 5, p805, 21p
Database:
Complementary Index

Weitere Informationen

The accumulation and delayed processing of notices generated during the engineering construction process have a significant impact on project settlement and, thus, project cost. Currently, there is a lack of research on intelligent notice processing. Although large language models (LLMs), such as ChatGPT, have demonstrated exceptional performance in natural language processing, their effectiveness in specific vertical fields, such as construction engineering, is limited due to a lack of specialized training. In light of this, this study proposes a knowledge-augmented language model for intelligently processing design notices in EPC (engineering–procurement–construction) projects. This method consists of the following three key components: database construction, price retrieval, and prompt development. During database construction, exception detection was introduced to ensure data quality, and an appropriate database framework was proposed. The price retrieval module features innovative retrieval rules for improved efficiency and accuracy. Prompt development was based on mainstream methods, which were tailored for this task. The result of processing notices includes cost analysis and claimability judgement. The method achieved promising results in experiments with real project data. Based on these results, the paper discusses the model's advantages, application scenarios, and input text requirements, providing insights and suggestions for future research. [ABSTRACT FROM AUTHOR]

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