GCA框架:一个基于海湾地区的数据集与用于气候决策支持的智能体流程 / GCA Framework: A Gulf-Grounded Dataset and Agentic Pipeline for Climate Decision Support
1️⃣ 一句话总结
这篇论文提出了一个专门针对海湾地区气候决策的框架,它通过整合一个本地化的多模态数据集和一个能调用地理空间分析工具的人工智能体,显著提升了大型语言模型在该区域气候问题上的准确性和实用性。
Climate decision-making in the Gulf increasingly demands systems that can translate heterogeneous scientific and policy evidence into actionable guidance, yet general-purpose large language models (LLMs) remain weak both in region-specific climate knowledge and grounded interaction with geospatial and forecasting tools. We present the GCA framework, which unifies (i) GCA-DS, a curated Gulf-focused multimodal dataset, and (ii) Gulf Climate Agent (GCA), a tool-augmented agent for climate analysis. GCA-DS comprises ~200k question-answer pairs spanning governmental policies and adaptation plans, NGO and international frameworks, academic literature, and event-driven reporting on heatwaves, dust storms, and floods, complemented with remote-sensing inputs that couple imagery with textual evidence. Building on this foundation, the GCA agent orchestrates a modular tool pipeline grounded in real-time and historical signals and geospatial processing that produces derived indices and interpretable visualizations. Finally, we benchmark open and proprietary LLMs on Gulf climate tasks and show that domain fine-tuning and tool integration substantially improve reliability over general-purpose baselines.
GCA框架:一个基于海湾地区的数据集与用于气候决策支持的智能体流程 / GCA Framework: A Gulf-Grounded Dataset and Agentic Pipeline for Climate Decision Support
这篇论文提出了一个专门针对海湾地区气候决策的框架,它通过整合一个本地化的多模态数据集和一个能调用地理空间分析工具的人工智能体,显著提升了大型语言模型在该区域气候问题上的准确性和实用性。
源自 arXiv: 2604.12306