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Main Authors: Li, Ruohao, Liu, Hongjun, Zhao, Leyi, Li, Zisu, Li, Jiawei, Jiang, Jiajun, Xu, Linning, Zhao, Chen, Fan, Mingming, Liang, Chen
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.10047
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author Li, Ruohao
Liu, Hongjun
Zhao, Leyi
Li, Zisu
Li, Jiawei
Jiang, Jiajun
Xu, Linning
Zhao, Chen
Fan, Mingming
Liang, Chen
author_facet Li, Ruohao
Liu, Hongjun
Zhao, Leyi
Li, Zisu
Li, Jiawei
Jiang, Jiajun
Xu, Linning
Zhao, Chen
Fan, Mingming
Liang, Chen
contents Large language model (LLM) agents have shown remarkable reasoning abilities. However, existing multi-agent frameworks often rely on fixed roles or centralized control, limiting scalability and adaptability in long-horizon reasoning. We introduce SwarmSys, a closed-loop framework for distributed multi-agent reasoning inspired by swarm intelligence. Coordination in SwarmSys emerges through iterative interactions among three specialized roles, Explorers, Workers, and Validators, that continuously cycle through exploration, exploitation, and validation. To enable scalable and adaptive collaboration, we integrate adaptive agent and event profiles, embedding-based probabilistic matching, and a pheromone-inspired reinforcement mechanism, supporting dynamic task allocation and self-organizing convergence without global supervision. Across symbolic reasoning, research synthesis, and scientific programming tasks, SwarmSys consistently outperforms baselines, improving both accuracy and reasoning stability. These findings highlight swarm-inspired coordination as a promising paradigm for scalable, robust, and adaptive multi-agent reasoning, suggesting that coordination scaling may rival model scaling in advancing LLM intelligence.
format Preprint
id arxiv_https___arxiv_org_abs_2510_10047
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle SwarmSys: Decentralized Swarm-Inspired Agents for Scalable and Adaptive Reasoning
Li, Ruohao
Liu, Hongjun
Zhao, Leyi
Li, Zisu
Li, Jiawei
Jiang, Jiajun
Xu, Linning
Zhao, Chen
Fan, Mingming
Liang, Chen
Artificial Intelligence
Large language model (LLM) agents have shown remarkable reasoning abilities. However, existing multi-agent frameworks often rely on fixed roles or centralized control, limiting scalability and adaptability in long-horizon reasoning. We introduce SwarmSys, a closed-loop framework for distributed multi-agent reasoning inspired by swarm intelligence. Coordination in SwarmSys emerges through iterative interactions among three specialized roles, Explorers, Workers, and Validators, that continuously cycle through exploration, exploitation, and validation. To enable scalable and adaptive collaboration, we integrate adaptive agent and event profiles, embedding-based probabilistic matching, and a pheromone-inspired reinforcement mechanism, supporting dynamic task allocation and self-organizing convergence without global supervision. Across symbolic reasoning, research synthesis, and scientific programming tasks, SwarmSys consistently outperforms baselines, improving both accuracy and reasoning stability. These findings highlight swarm-inspired coordination as a promising paradigm for scalable, robust, and adaptive multi-agent reasoning, suggesting that coordination scaling may rival model scaling in advancing LLM intelligence.
title SwarmSys: Decentralized Swarm-Inspired Agents for Scalable and Adaptive Reasoning
topic Artificial Intelligence
url https://arxiv.org/abs/2510.10047