Extracting shareable knowledge concerning design-re¬lated issues from construction project documentation en¬ables the assessment of design quality and, more broadly, improvement across the industry. This study proposes a solution to automate information extraction from inspec¬tion reports in construction industry processes, with a fo¬cus on those produced by design reviews often conducted before the tendering phase. The approach is based on LLMs, prompt engineering, and few-shot learning. We evaluated three LLMs (GPT-4o, Mistral, and Llama 3) across four-shot scenarios, assessing their performance, computational cost, and time. Results show that GPT-4o achieved the highest performance while ranking second in computational cost and time.
LLM-based Processing of Design Inspection Reports as a Measure of Building Design Quality
Hamada Elshaboury, Hamada Elshaboury;Fulvio Re Cecconi, Fulvio Re Cecconi;Vincenzo Scotti, Vincenzo Scotti;Luciano Baresi, Luciano Baresi;Enrico De Angelis, Enrico De Angelis
2025-01-01
Abstract
Extracting shareable knowledge concerning design-re¬lated issues from construction project documentation en¬ables the assessment of design quality and, more broadly, improvement across the industry. This study proposes a solution to automate information extraction from inspec¬tion reports in construction industry processes, with a fo¬cus on those produced by design reviews often conducted before the tendering phase. The approach is based on LLMs, prompt engineering, and few-shot learning. We evaluated three LLMs (GPT-4o, Mistral, and Llama 3) across four-shot scenarios, assessing their performance, computational cost, and time. Results show that GPT-4o achieved the highest performance while ranking second in computational cost and time.| File | Dimensione | Formato | |
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LLM-based Processing of Design Inspection Reports As A Measure Of Building Design Quality.pdf
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