English

When One LLM Drools, Multi-LLM Collaboration Rules

Computation and Language 2025-02-10 v1

Abstract

This position paper argues that in many realistic (i.e., complex, contextualized, subjective) scenarios, one LLM is not enough to produce a reliable output. We challenge the status quo of relying solely on a single general-purpose LLM and argue for multi-LLM collaboration to better represent the extensive diversity of data, skills, and people. We first posit that a single LLM underrepresents real-world data distributions, heterogeneous skills, and pluralistic populations, and that such representation gaps cannot be trivially patched by further training a single LLM. We then organize existing multi-LLM collaboration methods into a hierarchy, based on the level of access and information exchange, ranging from API-level, text-level, logit-level, to weight-level collaboration. Based on these methods, we highlight how multi-LLM collaboration addresses challenges that a single LLM struggles with, such as reliability, democratization, and pluralism. Finally, we identify the limitations of existing multi-LLM methods and motivate future work. We envision multi-LLM collaboration as an essential path toward compositional intelligence and collaborative AI development.

Keywords

Cite

@article{arxiv.2502.04506,
  title  = {When One LLM Drools, Multi-LLM Collaboration Rules},
  author = {Shangbin Feng and Wenxuan Ding and Alisa Liu and Zifeng Wang and Weijia Shi and Yike Wang and Zejiang Shen and Xiaochuang Han and Hunter Lang and Chen-Yu Lee and Tomas Pfister and Yejin Choi and Yulia Tsvetkov},
  journal= {arXiv preprint arXiv:2502.04506},
  year   = {2025}
}
R2 v1 2026-06-28T21:35:29.748Z