What AI Speaks for Your Community: Polling AI Agents for Public Opinion on Data Center Projects
Zhifeng Wu, Yuelin Han, Shaolei Ren

TL;DR
This paper presents an AI agent polling framework using large language models to assess community opinions on data center projects, aiming to improve early-stage planning and social responsibility in AI infrastructure development.
Contribution
It introduces a scalable AI-based polling method that captures local community opinions on data centers, addressing limitations of traditional polling methods.
Findings
Water consumption and utility costs are primary concerns.
Tax revenue is perceived as a key benefit.
Opinions vary significantly by LLM and regional context.
Abstract
The intense computational demands of AI, especially large foundation models, are driving a global boom in data centers. These facilities bring both tangible benefits and potential environmental burdens to local communities. However, the planning processes for data centers often fail to proactively integrate local public opinion in advance, largely because traditional polling is expensive or is conducted too late to influence decisions. To address this gap, we introduce an AI agent polling framework, leveraging large language models to assess community opinion on data centers and guide responsible development of AI. Our experiments reveal water consumption and utility costs as primary concerns, while tax revenue is a key perceived benefit. Furthermore, our cross-model and cross-regional analyses show opinions vary significantly by LLM and regional context. Finally, agent responses show…
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Taxonomy
TopicsMobile Crowdsensing and Crowdsourcing · ICT in Developing Communities · Ethics and Social Impacts of AI
