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arxiv:2506.12473

TagRouter: Learning Route to LLMs through Tags for Open-Domain Text Generation Tasks

Published on Jun 14
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Abstract

TagRouter is a training-free method for efficient model routing that enhances the performance and cost-efficiency of open-domain text generation tasks using multiple LLMs.

AI-generated summary

Model routing allocates queries to the suitable model, improving system performance while reducing costs. However, existing routing methods face practical limitations that hinder scalability in large-scale applications and struggle to keep up with the rapid growth of the large language model (LLM) ecosystem. To tackle these challenges, we propose TagRouter, a training-free model routing method designed to optimize the synergy among multiple LLMs for open-domain text generation tasks. Experimental results demonstrate that TagRouter outperforms 13 baseline methods, increasing the accept rate of system by 6.15% and reducing costs by 17.20%, achieving optimal cost-efficiency. Our findings provides the LLM community with an efficient and scalable solution for model ensembling, offering users an evolvable "super model."

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