CREW-Wildfire: Benchmarking Agentic Multi-Agent Collaborations at Scale

Abstract

Despite rapid progress in large language model (LLM)-based multi-agent systems, current benchmarks fall short in evaluating their scalability, robustness, and coordination capabilities in complex, dynamic, real-world tasks. Existing environments typically focus on small-scale, fully observable, or low-complexity domains, limiting their utility for developing and assessing next-generation multi-agent Agentic AI frameworks. We introduce CREW-Wildfire, an open-source benchmark designed to close this gap. Built atop the human-AI teaming CREW simulation platform, CREW-Wildfire offers procedurally generated wildfire response scenarios featuring large maps, heterogeneous agents, partial observability, stochastic dynamics, and long-horizon planning objectives. The environment supports both low-level control and high-level natural language interactions through modular Perception and Execution modules. We implement and evaluate several state-of-the-art LLM-based multi-agent Agentic AI frameworks, uncovering significant performance gaps that highlight the unsolved challenges in large-scale coordination, communication, spatial reasoning, and long-horizon planning under uncertainty. By providing more realistic complexity, scalable architecture, and behavioral evaluation metrics, CREW-Wildfire establishes a critical foundation for advancing research in scalable multi-agent Agentic intelligence. All code, environments, data, and baselines will be released to support future research in this emerging domain.

Cite

Text

Hyun et al. "CREW-Wildfire: Benchmarking Agentic Multi-Agent Collaborations at Scale." Transactions on Machine Learning Research, 2025.

Markdown

[Hyun et al. "CREW-Wildfire: Benchmarking Agentic Multi-Agent Collaborations at Scale." Transactions on Machine Learning Research, 2025.](https://mlanthology.org/tmlr/2025/hyun2025tmlr-crewwildfire/)

BibTeX

@article{hyun2025tmlr-crewwildfire,
  title     = {{CREW-Wildfire: Benchmarking Agentic Multi-Agent Collaborations at Scale}},
  author    = {Hyun, Jonathan and Waytowich, Nicholas R and Chen, Boyuan},
  journal   = {Transactions on Machine Learning Research},
  year      = {2025},
  url       = {https://mlanthology.org/tmlr/2025/hyun2025tmlr-crewwildfire/}
}