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Main Authors: Gu, Zhouhong, Zhu, Xiaoxuan, Cai, Yin, Shen, Hao, Chen, Xingzhou, Wang, Qingyi, Li, Jialin, Shi, Xiaoran, Guo, Haoran, Huang, Wenxuan, Feng, Hongwei, Xiao, Yanghua, Ye, Zheyu, Hu, Yao, Cao, Shaosheng
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2506.15451
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author Gu, Zhouhong
Zhu, Xiaoxuan
Cai, Yin
Shen, Hao
Chen, Xingzhou
Wang, Qingyi
Li, Jialin
Shi, Xiaoran
Guo, Haoran
Huang, Wenxuan
Feng, Hongwei
Xiao, Yanghua
Ye, Zheyu
Hu, Yao
Cao, Shaosheng
author_facet Gu, Zhouhong
Zhu, Xiaoxuan
Cai, Yin
Shen, Hao
Chen, Xingzhou
Wang, Qingyi
Li, Jialin
Shi, Xiaoran
Guo, Haoran
Huang, Wenxuan
Feng, Hongwei
Xiao, Yanghua
Ye, Zheyu
Hu, Yao
Cao, Shaosheng
contents Large language model based multi-agent systems have demonstrated significant potential in social simulation and complex task resolution domains. However, current frameworks face critical challenges in system architecture design, cross-domain generalizability, and performance guarantees, particularly as task complexity and number of agents increases. We introduces AgentGroupChat-V2, a novel framework addressing these challenges through three core innovations: (1) a divide-and-conquer fully parallel architecture that decomposes user queries into hierarchical task forest structures enabling dependency management and distributed concurrent processing. (2) an adaptive collaboration engine that dynamically selects heterogeneous LLM combinations and interaction modes based on task characteristics. (3) agent organization optimization strategies combining divide-and-conquer approaches for efficient problem decomposition. Extensive experiments demonstrate AgentGroupChat-V2's superior performance across diverse domains, achieving 91.50% accuracy on GSM8K (exceeding the best baseline by 5.6 percentage points), 30.4% accuracy on competition-level AIME (nearly doubling other methods), and 79.20% pass@1 on HumanEval. Performance advantages become increasingly pronounced with higher task difficulty, particularly on Level 5 MATH problems where improvements exceed 11 percentage points compared to state-of-the-art baselines. These results confirm that AgentGroupChat-V2 provides a comprehensive solution for building efficient, general-purpose LLM multi-agent systems with significant advantages in complex reasoning scenarios. Code is available at https://github.com/MikeGu721/AgentGroupChat-V2.
format Preprint
id arxiv_https___arxiv_org_abs_2506_15451
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle AgentGroupChat-V2: Divide-and-Conquer Is What LLM-Based Multi-Agent System Need
Gu, Zhouhong
Zhu, Xiaoxuan
Cai, Yin
Shen, Hao
Chen, Xingzhou
Wang, Qingyi
Li, Jialin
Shi, Xiaoran
Guo, Haoran
Huang, Wenxuan
Feng, Hongwei
Xiao, Yanghua
Ye, Zheyu
Hu, Yao
Cao, Shaosheng
Computation and Language
Large language model based multi-agent systems have demonstrated significant potential in social simulation and complex task resolution domains. However, current frameworks face critical challenges in system architecture design, cross-domain generalizability, and performance guarantees, particularly as task complexity and number of agents increases. We introduces AgentGroupChat-V2, a novel framework addressing these challenges through three core innovations: (1) a divide-and-conquer fully parallel architecture that decomposes user queries into hierarchical task forest structures enabling dependency management and distributed concurrent processing. (2) an adaptive collaboration engine that dynamically selects heterogeneous LLM combinations and interaction modes based on task characteristics. (3) agent organization optimization strategies combining divide-and-conquer approaches for efficient problem decomposition. Extensive experiments demonstrate AgentGroupChat-V2's superior performance across diverse domains, achieving 91.50% accuracy on GSM8K (exceeding the best baseline by 5.6 percentage points), 30.4% accuracy on competition-level AIME (nearly doubling other methods), and 79.20% pass@1 on HumanEval. Performance advantages become increasingly pronounced with higher task difficulty, particularly on Level 5 MATH problems where improvements exceed 11 percentage points compared to state-of-the-art baselines. These results confirm that AgentGroupChat-V2 provides a comprehensive solution for building efficient, general-purpose LLM multi-agent systems with significant advantages in complex reasoning scenarios. Code is available at https://github.com/MikeGu721/AgentGroupChat-V2.
title AgentGroupChat-V2: Divide-and-Conquer Is What LLM-Based Multi-Agent System Need
topic Computation and Language
url https://arxiv.org/abs/2506.15451