CLOct 22, 2025

DiSRouter: Distributed Self-Routing for LLM Selections

arXiv:2510.19208v13 citationsh-index: 13
Originality Highly original
AI Analysis

This addresses the need for flexible and scalable query routing in multi-LLM systems, offering a novel approach that shifts from centralized to distributed control.

The paper tackled the problem of routing queries to diverse Large Language Models (LLMs) by introducing DiSRouter, a distributed self-routing paradigm that outperforms existing methods in utility across various scenarios and generalizes well to out-of-domain tasks.

The proliferation of Large Language Models (LLMs) has created a diverse ecosystem of models with highly varying performance and costs, necessitating effective query routing to balance performance and expense. Current routing systems often rely on a centralized external router trained on a fixed set of LLMs, making them inflexible and prone to poor performance since the small router can not fully understand the knowledge boundaries of different LLMs. We introduce DiSRouter (Distributed Self-Router), a novel paradigm that shifts from centralized control to distributed routing. In DiSRouter, a query traverses a network of LLM agents, each independently deciding whether to answer or route to other agents based on its own self-awareness, its ability to judge its competence. This distributed design offers superior flexibility, scalability, and generalizability. To enable this, we propose a two-stage Self-Awareness Training pipeline that enhances each LLM's self-awareness. Extensive experiments demonstrate that DiSRouter significantly outperforms existing routing methods in utility across various scenarios, effectively distinguishes between easy and hard queries, and shows strong generalization to out-of-domain tasks. Our work validates that leveraging an LLM's intrinsic self-awareness is more effective than external assessment, paving the way for more modular and efficient multi-agent systems.

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