AI RESEARCH
BIM Information Extraction Through LLM-based Adaptive Exploration
arXiv CS.CL
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ArXi:2605.01698v1 Announce Type: new BIM models provide structured representations of building geometry, semantics, and topology, yet extracting specific information from them remains remarkably difficult. Current approaches translate natural language into structured queries by assuming a fixed data organization (static approach), which BIM heterogeneity eventually invalidates. We address this with a new paradigm, adaptive exploration, where an LLM-based agent iteratively executes code to extract information from a BIM model, discovering its structure at runtime instead of assuming it.