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Main Authors: Zhu, Junze, Chen, Weihao, Zhang, Xuanwang, Wu, Zhen, Dai, Xinyu
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2606.01351
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author Zhu, Junze
Chen, Weihao
Zhang, Xuanwang
Wu, Zhen
Dai, Xinyu
author_facet Zhu, Junze
Chen, Weihao
Zhang, Xuanwang
Wu, Zhen
Dai, Xinyu
contents The transition from single-turn models to Multi-Agent Systems (MAS) promises enhanced problem-solving capabilities, yet the centralized orchestration topology remains a critical point of fragility. To analyze this, we propose a Mean-Field Entropy Dynamics framework, modeling the orchestration process as a system governed by the competing forces of task resolution and cumulative context loading. To facilitate validation, we introduce Inverse Workflow Generation (IWG), a multi-agent pipeline that synthesizes process-verifiable, high-complexity benchmarks with dense intermediate checkpoints. We demonstrate that our entropy dynamics model fits empirical trajectories, providing physically interpretable parameters that quantify system stability and performance collapse. Crucially, our analysis uncovers a ``Reasoning Trap": while reasoning-heavy models excel in isolated tasks, they frequently fail as orchestrators due to context squeezing. Elucidating the physical mechanisms underlying the Orchestrator and quantifying systemic uncertainty offers insights for the MASs' architectural design.
format Preprint
id arxiv_https___arxiv_org_abs_2606_01351
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Recognize Your Orchestrator: An Entropy Dynamics Perspective for LLM Multi-Agent Systems
Zhu, Junze
Chen, Weihao
Zhang, Xuanwang
Wu, Zhen
Dai, Xinyu
Artificial Intelligence
The transition from single-turn models to Multi-Agent Systems (MAS) promises enhanced problem-solving capabilities, yet the centralized orchestration topology remains a critical point of fragility. To analyze this, we propose a Mean-Field Entropy Dynamics framework, modeling the orchestration process as a system governed by the competing forces of task resolution and cumulative context loading. To facilitate validation, we introduce Inverse Workflow Generation (IWG), a multi-agent pipeline that synthesizes process-verifiable, high-complexity benchmarks with dense intermediate checkpoints. We demonstrate that our entropy dynamics model fits empirical trajectories, providing physically interpretable parameters that quantify system stability and performance collapse. Crucially, our analysis uncovers a ``Reasoning Trap": while reasoning-heavy models excel in isolated tasks, they frequently fail as orchestrators due to context squeezing. Elucidating the physical mechanisms underlying the Orchestrator and quantifying systemic uncertainty offers insights for the MASs' architectural design.
title Recognize Your Orchestrator: An Entropy Dynamics Perspective for LLM Multi-Agent Systems
topic Artificial Intelligence
url https://arxiv.org/abs/2606.01351