LGAIOct 21, 2025

Reasoning Language Model Inference Serving Unveiled: An Empirical Study

arXiv:2510.18672v13 citationsh-index: 28
Originality Incremental advance
AI Analysis

This is an incremental study that addresses deployment challenges for RLLMs in real-world scenarios, providing empirical insights for researchers and industry.

This paper tackles the unexplored problem of serving performance for reasoning large language models (RLLMs), revealing distinct differences like memory fluctuations and straggler requests compared to traditional LLMs, and finds that techniques like model quantization and speculative decoding improve efficiency with small accuracy compromises while others degrade performance.

The reasoning large language model (RLLM) has been proven competitive in solving complex reasoning tasks such as mathematics, coding, compared to general LLM. However, the serving performance and behavior of RLLM remains unexplored, which may undermine the deployment and utilization of RLLM in real-world scenario. To close this gap, in this paper, we conduct a comprehensive study of RLLM service. We first perform a pilot study on comparing the serving performance between RLLM and traditional LLM and reveal that there are several distinct differences regarding serving behavior: (1) significant memory usage and fluctuations; (2) straggler requests; (3) adaptive running time; (4) domain preference. Then we further investigate whether existing inference optimization techniques are valid for RLLM. Our main takeaways are that model quantization methods and speculative decoding can improve service system efficiency with small compromise to RLLM accuracy, while prefix caching, KV cache quantization may even degrade accuracy or serving performance for small RLLM. Lastly, we conduct evaluation under real world workload modeled by Gamma distribution to verify our findings. Empirical results of real world workload evaluation across different dataset are aligned with our main findings regarding RLLM serving. We hope our work can provide the research community and industry with insights to advance RLLM inference serving.

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