English

Network Self-Configuration based on Fine-Tuned Small Language Models

Networking and Internet Architecture 2025-12-03 v1

Abstract

As modern networks grow in scale and complexity, manual configuration becomes increasingly inefficient and prone to human error. While intent-driven self-configuration using large language models has shown significant promise, such models remain computationally expensive, resource-intensive, and often raise privacy concerns because they typically rely on external cloud infrastructure. This work introduces SLM_netconfig, a fine-tuned small language model framework that uses an agent-based architecture and parameter-efficient adaptation techniques to translate configuration intents expressed as natural language requirements or questions into syntactically and semantically valid network configurations. The system is trained on a domain-specific dataset generated through a pipeline derived from vendor documentation, ensuring strong alignment with real-world configuration practices. Extensive evaluation shows that SLM_netconfig, when using its question-to-configuration model, achieves higher syntactic accuracy and goal accuracy than LLM-NetCFG while substantially reducing translation latency and producing concise, interpretable configurations. These results demonstrate that fine-tuned small language models, as implemented in SLM_netconfig, can deliver efficient, accurate, and privacy-preserving automated configuration generation entirely on-premise, making them a practical and scalable solution for modern autonomous network configuration.

Keywords

Cite

@article{arxiv.2512.02861,
  title  = {Network Self-Configuration based on Fine-Tuned Small Language Models},
  author = {Oscar G. Lira and Oscar M. Caicedo and Nelson L. S. Da Fonseca},
  journal= {arXiv preprint arXiv:2512.02861},
  year   = {2025}
}

Comments

16 pages, 11 figures, 3 tables

R2 v1 2026-07-01T08:05:52.366Z