TY - JOUR
T1 - Ten Questions Concerning Large Language Models (LLMs) for Building Applications
T2 - Article No. 114260
AU - Ma, Nan
AU - Labib, Rania
AU - Amor, Robert
AU - Chong, Adrian
AU - Fan, Cheng
AU - Forth, Kasimir
AU - Fu, Xiaoqin
AU - Fuchs, Stefan
AU - Hong, Tianzhen
AU - Klimenkova, Nina
AU - Koo, Jabeom
AU - Li, Shundong
AU - McCullough, Steven
AU - Park, June
AU - Shraga, Roee
AU - Yoon, Sungmin
AU - Zhang, Liang
AU - Zhang, Yiting
PY - 2026
Y1 - 2026
N2 - Large Language Models (LLMs) are emerging as powerful AI tools capable of transforming how building information is collected, processed, analyzed, and applied across diverse research areas. Their capabilities can help building operators, facility managers and other stakeholders such as designers, architects and engineers by providing actionable insights for decision-making across planning, construction, operations, and maintenance of buildings and facilities. This paper explores ten key questions concerning the role of LLMs in shaping sustainable, intelligent, and human-centric buildings. From fundamental definitions to advanced applications, we examine how LLMs facilitate decision-making across the life cycle of buildings and energy systems. LLMs can enhance life cycle assessments (LCA), building energy simulations, and real-time data integration, empowering more efficient and adaptive human-AI environments. They can also contribute to streamlining regulatory compliance, improving post-occupancy evaluations, and fostering more inclusive and participatory design processes. Additionally, this paper addresses the ethical challenges posed by LLMs, such as bias, data privacy, and environmental impacts, and explores their potentials in advancing intelligent digital twins (DT) for ongoing building operations and maintenance. Built upon our applied research using LLMs and the review of tools, datasets, and research gaps, we provide a forward-looking perspective on how LLMs can drive innovation, collaboration, and productivity in the built environment while supporting ethical and effective implementation.
AB - Large Language Models (LLMs) are emerging as powerful AI tools capable of transforming how building information is collected, processed, analyzed, and applied across diverse research areas. Their capabilities can help building operators, facility managers and other stakeholders such as designers, architects and engineers by providing actionable insights for decision-making across planning, construction, operations, and maintenance of buildings and facilities. This paper explores ten key questions concerning the role of LLMs in shaping sustainable, intelligent, and human-centric buildings. From fundamental definitions to advanced applications, we examine how LLMs facilitate decision-making across the life cycle of buildings and energy systems. LLMs can enhance life cycle assessments (LCA), building energy simulations, and real-time data integration, empowering more efficient and adaptive human-AI environments. They can also contribute to streamlining regulatory compliance, improving post-occupancy evaluations, and fostering more inclusive and participatory design processes. Additionally, this paper addresses the ethical challenges posed by LLMs, such as bias, data privacy, and environmental impacts, and explores their potentials in advancing intelligent digital twins (DT) for ongoing building operations and maintenance. Built upon our applied research using LLMs and the review of tools, datasets, and research gaps, we provide a forward-looking perspective on how LLMs can drive innovation, collaboration, and productivity in the built environment while supporting ethical and effective implementation.
KW - building energy modeling
KW - building information modeling
KW - built environment
KW - digital twins
KW - generative AI
KW - LLMs
U2 - 10.1016/j.buildenv.2026.114260
DO - 10.1016/j.buildenv.2026.114260
M3 - Article
SN - 0360-1323
VL - 291
JO - Building and Environment
JF - Building and Environment
ER -