How Small Can 6G Reason? Scaling Tiny Language Models for AI-Native Networks
Mohamed Amine Ferrag, Abderrahmane Lakas, Merouane Debbah

TL;DR
This paper systematically evaluates the scaling behavior and deployment efficiency of small language models for semantic reasoning in 6G networks, highlighting that mid-scale models offer optimal balance between accuracy and resource use.
Contribution
It provides a comprehensive empirical analysis of various compact language models for 6G network reasoning, introducing the 6G-Bench benchmark and the Edge Score metric for deployment guidance.
Findings
Accuracy improves with model size but non-uniformly.
A stability transition occurs around 1-1.5B parameters.
Mid-scale models outperform larger ones in resource efficiency.
Abstract
Emerging 6G visions, reflected in ongoing standardization efforts within 3GPP, IETF, ETSI, ITU-T, and the O-RAN Alliance, increasingly characterize networks as AI-native systems in which high-level semantic reasoning layers operate above standardized control and data-plane functions. Although frontier-scale large language models (LLMs) such as Qwen2.5-7B and Olmo-3-7B demonstrate strong reasoning capability, their computational footprint limits deployment in latency-sensitive, edge-native infrastructures. This paper presents a systematic empirical study of the scaling behavior and deployment efficiency of compact language models for network-level semantic reasoning in AI-native 6G systems. Using 6G-Bench, a standardization-aligned benchmark comprising 30 decision-making tasks across five capability domains, we evaluate models ranging from 135M (SmolLM2-135M) to 7B parameters…
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Taxonomy
TopicsSoftware-Defined Networks and 5G · Advanced Neural Network Applications · IoT and Edge/Fog Computing
