Publication: Evaluation of Architectural Synthesis Using Generative AI: A case study on Palladio’s architecture
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2025
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The Conference of the The Association for Computer-Aided Architectural Design Research in Asia (CAADRIA)
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Jingfei Huang, "Evaluation of Architectural Synthesis Using Generative AI: A case study on Palladio’s architecture." Paper presented at The Conference of the The Association for Computer-Aided Architectural Design Research in Asia (CAADRIA), Tokyo, March 2025. 2025
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Recent advancements in multimodal Generative AI may democratize specialized architectural tasks like interpreting technical drawings and creating 3D CAD models which traditionally require expert knowledge. This paper presents a comparative evaluation study of two systems—GPT-4o and Claude 3.5—in the task of architectural 3D synthesis. It takes as a case study two buildings in Palladio’s Four Books of Architecture (1965): Villa Rotonda and Palazzo Porto. High-level architectural models and drawings of the buildings were prepared inspired by Palladio’s original text and drawing corpus. Through sequential text and image prompting, the study characterizes intrinsic abilities of the systems in (1) interpreting 2D/3D representations of buildings from drawings, (2) encoding the buildings into a CAD software script, and (3) self-improving based on outputs. While both systems successfully generate individual parts, they struggle to accurately assemble these parts into the desired spatial relationships, with Claude 3.5 showing overall better performance, especially in self-correcting its output. The study contributes to ongoing research on benchmarking the strengths and weaknesses of off-the-shelf AI systems in intelligent human tasks requiring discipline-specific knowledge. The results show the potential of language-enabled AI systems to act as collaborative technical assistants in the architectural design process.
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