English

Tiny-Twin: A CPU-Native Full-stack Digital Twin for NextG Cellular Networks

Networking and Internet Architecture 2026-05-06 v2

Abstract

Modern wireless applications demand testing environments that capture the full complexity of next-generation (NextG) cellular networks. While digital twins promise realistic emulation, existing solutions often compromise on physical-layer fidelity and scalability or depend on specialized hardware. We present Tiny-Twin, a CPU-Native, full-stack digital twin framework that enables realistic, repeatable 5G experimentation on commodity CPUs. Tiny-Twin integrates time-varying multi-tap convolution with a complete 5G protocol stack, supporting plug-and-play replay of diverse channel traces. Through a redesigned software architecture and system-level optimizations, Tiny-Twin supports fine-grained convolution entirely in software. With built-in real-time RIC integration and per User Equipment(UE) channel isolation, it facilitates rigorous testing of network algorithms and protocol designs. Our evaluation shows that Tiny-Twin scales to multiple concurrent UEs while preserving protocol timing and end-to-end behavior, delivering a practical middle ground between low-fidelity simulators and high-cost hardware emulators. We release Tiny-Twin as an open-source platform to enable accessible, high-fidelity experimentation for NextG cellular research.

Keywords

Cite

@article{arxiv.2601.08217,
  title  = {Tiny-Twin: A CPU-Native Full-stack Digital Twin for NextG Cellular Networks},
  author = {Ali Mamaghani and Ushasi Ghosh and Srinivas Shakkottai and Dinesh Bharadia and Ish Kumar Jain},
  journal= {arXiv preprint arXiv:2601.08217},
  year   = {2026}
}
R2 v1 2026-07-01T09:02:07.580Z