cs.AI updates on arXiv.org 10月13日 12:13
语义路由优化LLM推理效率
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本文提出一种基于语义路由的LLM推理优化方法,通过根据查询推理需求选择性应用推理,实现准确率提升10.2%,响应延迟降低47.1%,token消耗降低48.5%。

arXiv:2510.08731v1 Announce Type: cross Abstract: Large Language Models (LLMs) demonstrate substantial accuracy gains when augmented with reasoning modes such as chain-of-thought and inference-time scaling. However, reasoning also incurs significant costs in inference latency and token usage, with environmental and financial impacts, which are unnecessary for many simple prompts. We present a semantic router that classifies queries based on their reasoning requirements and selectively applies reasoning only when beneficial. Our approach achieves a 10.2 percentage point improvement in accuracy on the MMLU-Pro benchmark while reducing response latency by 47.1% and token consumption by 48.5% compared to direct inference with vLLM. These results demonstrate that semantic routing offers an effective mechanism for striking a balance between accuracy and efficiency in open-source LLM serving systems

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LLM 语义路由 推理优化 准确率 效率
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