English

SLMQuant:Benchmarking Small Language Model Quantization for Practical Deployment

Machine Learning 2025-11-18 v1 Artificial Intelligence

Abstract

Despite the growing interest in Small Language Models (SLMs) as resource-efficient alternatives to Large Language Models (LLMs), their deployment on edge devices remains challenging due to unresolved efficiency gaps in model compression. While quantization has proven effective for LLMs, its applicability to SLMs is significantly underexplored, with critical questions about differing quantization bottlenecks and efficiency profiles. This paper introduces SLMQuant, the first systematic benchmark for evaluating LLM compression techniques when applied to SLMs. Through comprehensive multi-track evaluations across diverse architectures and tasks, we analyze how state-of-the-art quantization methods perform on SLMs. Our findings reveal fundamental disparities between SLMs and LLMs in quantization sensitivity, demonstrating that direct transfer of LLM-optimized techniques leads to suboptimal results due to SLMs' unique architectural characteristics and training dynamics. We identify key factors governing effective SLM quantization and propose actionable design principles for SLM-tailored compression. SLMQuant establishes a foundational framework for advancing efficient SLM deployment on low-end devices in edge applications, and provides critical insights for deploying lightweight language models in resource-constrained scenarios.

Keywords

Cite

@article{arxiv.2511.13023,
  title  = {SLMQuant:Benchmarking Small Language Model Quantization for Practical Deployment},
  author = {Jiacheng Wang and Yejun Zeng and Jinyang Guo and Yuqing Ma and Aishan Liu and Xianglong Liu},
  journal= {arXiv preprint arXiv:2511.13023},
  year   = {2025}
}
R2 v1 2026-07-01T07:40:34.056Z