Generative AI in Construction: Emerging Trends and Use Cases

Document Type

Article

Publication Date

2025

Department

Department of Civil, Environmental, and Geospatial Engineering

Abstract

The construction industry is beginning to explore generative artificial intelligence (AI) technologies to address complex data management challenges and inefficiencies within traditional workflows, particularly in design, planning, and project management. Although there is growing interest in generative AI in construction, the understanding of its trends and opportunities remains scattered. This paper investigates the current trends, applications, and research needs for generative AI in construction through a bibliometric analysis of 148 publications from Scopus and Google Scholar. The keyword co-occurrence map highlights several search clusters, with a strong focus on "Building Information Modeling (BIM)," "digital twins," "sustainability," "construction safety," "structural and architectural design," "education," and "project management." Generative AI technologies like Generative Adversarial Networks (GANs), large language models (LLMs), Generative Pre-trained Transformer (GPT), and diffusion models play critical roles in this research area. By pinpointing key research gaps, it underscores avenues for future investigation and empowers researchers to expand and refine the latest advancements in this dynamic field, propelling progress toward a more efficient, resilient, and sustainable built environment.

Publication Title

CIB Conferences

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