EWE: An Agentic Framework for Extreme Weather Analysis
By: Zhe Jiang , Jiong Wang , Xiaoyu Yue and more
Potential Business Impact:
Helps scientists understand storms faster.
Extreme weather events pose escalating risks to global society, underscoring the urgent need to unravel their underlying physical mechanisms. Yet the prevailing expert-driven, labor-intensive diagnostic paradigm has created a critical analytical bottleneck, stalling scientific progress. While AI for Earth Science has achieved notable advances in prediction, the equally essential challenge of automated diagnostic reasoning remains largely unexplored. We present the Extreme Weather Expert (EWE), the first intelligent agent framework dedicated to this task. EWE emulates expert workflows through knowledge-guided planning, closed-loop reasoning, and a domain-tailored meteorological toolkit. It autonomously produces and interprets multimodal visualizations from raw meteorological data, enabling comprehensive diagnostic analyses. To catalyze progress, we introduce the first benchmark for this emerging field, comprising a curated dataset of 103 high-impact events and a novel step-wise evaluation metric. EWE marks a step toward automated scientific discovery and offers the potential to democratize expertise and intellectual resources, particularly for developing nations vulnerable to extreme weather.
Similar Papers
On the Predictive Skill of Artificial Intelligence-based Weather Models for Extreme Events using Uncertainty Quantification
Atmospheric and Oceanic Physics
AI weather forecasts warn of floods and heatwaves.
Agentic AI Framework for Cloudburst Prediction and Coordinated Response
Artificial Intelligence
AI predicts sudden storms, saving lives faster.
UniExtreme: A Universal Foundation Model for Extreme Weather Forecasting
Machine Learning (CS)
Predicts dangerous weather better to keep people safe.