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GreenIQ: A Deep Search Platform for Comprehensive Carbon Market Analysis and Automated Report Generation

Abstract

This study introduces GreenIQ, an AI-powered deep search platform designed to revolutionise carbon market intelligence through autonomous analysis and automated report generation. Carbon markets operate across diverse regulatory landscapes, generating vast amounts of heterogeneous data from policy documents, industry reports, academic literature, and real-time trading platforms. Traditional research approaches remain labour-intensive, slow, and difficult to scale. GreenIQ addresses these limitations through a multi-agent architecture powered by Large Language Models (LLMs), integrating five specialised AI agents: a Main Researcher Agent for intelligent information retrieval, a Report Writing Agent for structured synthesis, a Final Reviewer Agent for accuracy verification, a Data Visualisation Agent for enhanced interpretability, and a Translator Agent for multilingual adaptation. The system achieves seamless integration of structured and unstructured information with AI-driven citation verification, ensuring high transparency and reliability. GreenIQ delivers a 99.2\% reduction in processing time and a 99.7\% cost reduction compared to traditional research methodologies. A novel AI persona-based evaluation framework involving 16 domain-specific AI personas highlights its superior cross-jurisdictional analytical capabilities and regulatory insight generation. GreenIQ sets new standards in AI-driven research synthesis, policy analysis, and sustainability finance by streamlining carbon market research. It offers an efficient and scalable framework for environmental and financial intelligence, enabling more accurate, timely, and cost-effective decision-making in complex regulatory landscapes

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@article{fagbohun2025_2503.16041,
  title={ GreenIQ: A Deep Search Platform for Comprehensive Carbon Market Analysis and Automated Report Generation },
  author={ Oluwole Fagbohun and Sai Yashwanth and Akinyemi Sadeeq Akintola and Ifeoluwa Wurola and Lanre Shittu and Aniema Inyang and Oluwatimilehin Odubola and Udodirim Offia and Said Olanrewaju and Ogidan Toluwaleke and Ilemona Abutu and Taiwo Akinbolaji },
  journal={arXiv preprint arXiv:2503.16041},
  year={ 2025 }
}
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