Practical implementation of artificial intelligence for climate change mitigation in cities – priorities, collaborations and challenges
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In: Energy Research and Social Science, Vol. 131, 104498, 01.2026.
Research output: Journal contributions › Journal articles › Research › peer-review
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TY - JOUR
T1 - Practical implementation of artificial intelligence for climate change mitigation in cities – priorities, collaborations and challenges
AU - Hintz, Marie Josefine
AU - Gross, Milena
AU - Creutzig, Felix
AU - Kaack, Lynn H.
N1 - Publisher Copyright: © 2025 The Authors.
PY - 2026/1
Y1 - 2026/1
N2 - European cities are increasingly exploring artificial intelligence (AI) applications to achieve their climate goals. Yet, how European city administrations implement AI-for-climate projects remains unclear. To address this gap, we interviewed city staff and urban innovation experts (n=15 interviewees) from Amsterdam, Berlin, Copenhagen, Greater Paris, Helsinki, and Vienna about their motivations, challenges, solutions, and partnerships when deploying AI tools. We found that city administrations were driven by different priorities that extend beyond accelerating climate action, such as improving decision-making, providing better services to residents, reducing costs, and showcasing innovation. We also identified implementation challenges for city administrations, for instance, socio-technical interoperability with existing systems or increasing AI literacy among city staff who work on climate action. We characterized three implementation arrangements through which cities deployed AI, highlighting the plural roles of city administrations in shaping AI deployment. Our analysis indicates that the European Commission, start-ups, researchers, and innovation labs were key partners for implementation, unlike civil society and large technology firms. Our study also reveals substantial challenges even for large, affluent cities, creating doubt about the applicability of AI projects for climate change mitigation in small and medium-sized cities.
AB - European cities are increasingly exploring artificial intelligence (AI) applications to achieve their climate goals. Yet, how European city administrations implement AI-for-climate projects remains unclear. To address this gap, we interviewed city staff and urban innovation experts (n=15 interviewees) from Amsterdam, Berlin, Copenhagen, Greater Paris, Helsinki, and Vienna about their motivations, challenges, solutions, and partnerships when deploying AI tools. We found that city administrations were driven by different priorities that extend beyond accelerating climate action, such as improving decision-making, providing better services to residents, reducing costs, and showcasing innovation. We also identified implementation challenges for city administrations, for instance, socio-technical interoperability with existing systems or increasing AI literacy among city staff who work on climate action. We characterized three implementation arrangements through which cities deployed AI, highlighting the plural roles of city administrations in shaping AI deployment. Our analysis indicates that the European Commission, start-ups, researchers, and innovation labs were key partners for implementation, unlike civil society and large technology firms. Our study also reveals substantial challenges even for large, affluent cities, creating doubt about the applicability of AI projects for climate change mitigation in small and medium-sized cities.
KW - AI-for-climate
KW - Artificial intelligence
KW - City administrations
KW - Climate change
KW - Governance
KW - Implementation
KW - Urban
UR - http://www.scopus.com/inward/record.url?scp=105024921659&partnerID=8YFLogxK
U2 - 10.1016/j.erss.2025.104498
DO - 10.1016/j.erss.2025.104498
M3 - Journal articles
AN - SCOPUS:105024921659
VL - 131
JO - Energy Research and Social Science
JF - Energy Research and Social Science
SN - 2214-6296
M1 - 104498
ER -
