English

CLIMATEAGENT: Multi-Agent Orchestration for Complex Climate Data Science Workflows

Machine Learning 2025-11-26 v1

Abstract

Climate science demands automated workflows to transform comprehensive questions into data-driven statements across massive, heterogeneous datasets. However, generic LLM agents and static scripting pipelines lack climate-specific context and flexibility, thus, perform poorly in practice. We present ClimateAgent, an autonomous multi-agent framework that orchestrates end-to-end climate data analytic workflows. ClimateAgent decomposes user questions into executable sub-tasks coordinated by an Orchestrate-Agent and a Plan-Agent; acquires data via specialized Data-Agents that dynamically introspect APIs to synthesize robust download scripts; and completes analysis and reporting with a Coding-Agent that generates Python code, visualizations, and a final report with a built-in self-correction loop. To enable systematic evaluation, we introduce Climate-Agent-Bench-85, a benchmark of 85 real-world tasks spanning atmospheric rivers, drought, extreme precipitation, heat waves, sea surface temperature, and tropical cyclones. On Climate-Agent-Bench-85, ClimateAgent achieves 100% task completion and a report quality score of 8.32, outperforming GitHub-Copilot (6.27) and a GPT-5 baseline (3.26). These results demonstrate that our multi-agent orchestration with dynamic API awareness and self-correcting execution substantially advances reliable, end-to-end automation for climate science analytic tasks.

Keywords

Cite

@article{arxiv.2511.20109,
  title  = {CLIMATEAGENT: Multi-Agent Orchestration for Complex Climate Data Science Workflows},
  author = {Hyeonjae Kim and Chenyue Li and Wen Deng and Mengxi Jin and Wen Huang and Mengqian Lu and Binhang Yuan},
  journal= {arXiv preprint arXiv:2511.20109},
  year   = {2025}
}

Comments

30 pages, 6 figures, 3 tables

R2 v1 2026-07-01T07:53:53.552Z