A Self-Evolving AI Agent System for Climate Science
Abstract
Scientific progress in Earth science depends on integrating data across the planet's interconnected spheres. However, the accelerating volume and fragmentation of multi-sphere knowledge and data have surpassed human analytical capacity. This creates a major bottleneck for discovery, especially in climate science. To address this challenge, we introduce EarthLink, the first self-evolving AI agent system designed as an interactive "copilot" for Earth scientists. Through natural language interaction, EarthLink automates the entire research workflow by integrating planning, code execution, data analysis, and physical reasoning into a unified process that directly addresses this limitation. Beyond efficiency, it exhibits human-like cross-disciplinary analytical ability and achieves proficiency comparable to a junior researcher in expert evaluations on core large-scale climate tasks, including model-observation comparison and climate change understanding. When tasked with an open scientific problem, specifically the discovery of precursors of the Atlantic Ni\~no, EarthLink autonomously developed a research strategy, identified sources of predictability, verified its hypotheses with available data, and proposed a physically consistent mechanism. These emerging capabilities enable a new human-AI research paradigm. Scientists can focus on value and result judgments, while AI systems handle complex data analysis and knowledge integration. This accelerates the pace and breadth of discovery in Earth sciences. The system is accessible at our website https://earthlink.intern-ai.org.cn.
Cite
@article{arxiv.2507.17311,
title = {A Self-Evolving AI Agent System for Climate Science},
author = {Zijie Guo and Jiong Wang and Fenghua Ling and Wangxu Wei and Xiaoyu Yue and Zhe Jiang and Wanghan Xu and Jing-Jia Luo and Lijing Cheng and Yoo-Geun Ham and Fengfei Song and Pierre Gentine and Toshio Yamagata and Ben Fei and Wenlong Zhang and Xinyu Gu and Chao Li and Yaqiang Wang and Tao Chen and Wanli Ouyang and Bowen Zhou and Lei Bai},
journal= {arXiv preprint arXiv:2507.17311},
year = {2025}
}