TY - JOUR
T1 - Unleashing the Potential of Large Language Models in Urban Data Analytics
T2 - A Review of Emerging Innovations and Future Research
AU - Jiang, Feifeng
AU - Ma, Jun
AU - Jin, Yuping
N1 - Publisher Copyright:
© 2025 by the authors.
Funding Information:
This study was supported by the Seed Fund for Collaborative Research (No. 2207101592) from The University of Hong Kong.
PY - 2025/12
Y1 - 2025/12
N2 - This paper presents a comprehensive review of emerging innovations and future research directions leveraging Large Language Models (LLMs) for urban data analytics, examining how cities generate, structure, and use information to support planning and operational decisions. While LLMs show promise in addressing critical challenges faced by urban stakeholders—including data integration, accessibility, and cross-domain analysis—their applications and effectiveness in urban contexts remain largely unexplored and fragmented across disciplines. Through our systematic analysis of 178 papers, we examine the impact of LLMs across the four key stages of urban data analytics: collection, preprocessing, modeling, and post-analysis. Our review encompasses various urban domains, including transportation, urban planning, disaster management, and environmental monitoring, identifying how LLMs can transform analytical approaches in these fields. We identify current trends, innovative applications, and challenges in integrating LLMs into urban analytics workflows. Based on our findings, we propose a 3E framework for future research directions: Expanding information dimensions, Enhancing model capabilities, and Executing advanced applications. This framework provides a structured approach to emphasize key opportunities in the field. Our study concludes by discussing critical challenges, including hallucination, scalability, fairness, and ethical concerns, emphasizing the need for interdisciplinary collaboration to fully realize the potential of LLMs in creating smarter, more sustainable urban environments for researchers and urban practitioners working to integrate LLMs into data-driven decision processes.
AB - This paper presents a comprehensive review of emerging innovations and future research directions leveraging Large Language Models (LLMs) for urban data analytics, examining how cities generate, structure, and use information to support planning and operational decisions. While LLMs show promise in addressing critical challenges faced by urban stakeholders—including data integration, accessibility, and cross-domain analysis—their applications and effectiveness in urban contexts remain largely unexplored and fragmented across disciplines. Through our systematic analysis of 178 papers, we examine the impact of LLMs across the four key stages of urban data analytics: collection, preprocessing, modeling, and post-analysis. Our review encompasses various urban domains, including transportation, urban planning, disaster management, and environmental monitoring, identifying how LLMs can transform analytical approaches in these fields. We identify current trends, innovative applications, and challenges in integrating LLMs into urban analytics workflows. Based on our findings, we propose a 3E framework for future research directions: Expanding information dimensions, Enhancing model capabilities, and Executing advanced applications. This framework provides a structured approach to emphasize key opportunities in the field. Our study concludes by discussing critical challenges, including hallucination, scalability, fairness, and ethical concerns, emphasizing the need for interdisciplinary collaboration to fully realize the potential of LLMs in creating smarter, more sustainable urban environments for researchers and urban practitioners working to integrate LLMs into data-driven decision processes.
KW - artificial general intelligence (AGI)
KW - artificial intelligence (AI)
KW - large language models (LLMs)
KW - smart cities
KW - urban data analytics
UR - https://www.scopus.com/pages/publications/105026509213
U2 - 10.3390/smartcities8060201
DO - 10.3390/smartcities8060201
M3 - Journal article
SN - 2624-6511
VL - 8
JO - Smart Cities
JF - Smart Cities
IS - 6
M1 - 201
ER -