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Towards Foundation Models with Native Multi-Agent Intelligence

Shuyue Hu
Haoyang Yan
Yiqun Zhang
Yang Chen
Dongzhan Zhou
Lei Bai
Main:8 Pages
3 Figures
Bibliography:4 Pages
2 Tables
Appendix:2 Pages
Abstract

Foundation models (FMs) are increasingly assuming the role of the "brain" of AI agents. While recent efforts have begun to equip FMs with native single-agent abilities -- such as GUI interaction or integrated tool use -- we argue that the next frontier is endowing FMs with native multi-agent intelligence. We identify four core capabilities of FMs in multi-agent contexts: understanding, planning, efficient communication, and adaptation. Contrary to assumptions about the spontaneous emergence of such abilities, we provide extensive empirical evidence across 41 large language models showing that strong single-agent performance alone does not automatically yield robust multi-agent intelligence. To address this gap, we outline key research directions -- spanning dataset construction, evaluation, training paradigms, and safety considerations -- for building FMs with native multi-agent intelligence.

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