超要約: AIチーム(MAS)を自動で作る神技術!タスクに合わせて最適な連携してくれるってコト✨
✨ ギャル的キラキラポイント ✨ ● タスクに合わせてAIが自律的(じりつてき)にチーム組むって、まるで意識高い系の部活みたいじゃん?😎 ● 既存のやり方より、もっと自由な発想でAIチーム作れるから、めっちゃ賢くなれそう💕 ● 色んなITサービスが、もっと便利になる未来が見えちゃう🚀
詳細解説いくよ~!
背景 LLM(大規模言語モデル)って、単体(たんたい)でもスゴイけど、チーム組ませたらもっとスゴイの作れるじゃん?それがMAS!でも、チームの組み方って難しいよね…💭 今までは、決まった形(テンプレート)をちょっと変えるくらいだったけど、それじゃ限界あるよねーって話。
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Multi-agent systems (MAS) based on large language models (LLMs) have emerged as a powerful solution for dealing with complex problems across diverse domains. The effectiveness of MAS is critically dependent on its collaboration topology, which has become a focal point for automated design research. However, existing approaches are fundamentally constrained by their reliance on a template graph modification paradigm with a predefined set of agents and hard-coded interaction structures, significantly limiting their adaptability to task-specific requirements. To address these limitations, we reframe MAS design as a conditional autoregressive graph generation task, where both the system composition and structure are designed jointly. We propose ARG-Designer, a novel autoregressive model that operationalizes this paradigm by constructing the collaboration graph from scratch. Conditioned on a natural language task query, ARG-Designer sequentially and dynamically determines the required number of agents, selects their appropriate roles from an extensible pool, and establishes the optimal communication links between them. This generative approach creates a customized topology in a flexible and extensible manner, precisely tailored to the unique demands of different tasks. Extensive experiments across six diverse benchmarks demonstrate that ARG-Designer not only achieves state-of-the-art performance but also enjoys significantly greater token efficiency and enhanced extensibility. The source code of ARG-Designer is available at https://github.com/Shiy-Li/ARG-Designer.