Network AI-Generated Network Design: A Diffusion Model-Based Learning Approach

Published in IEEE Network, 2023

Overview

[Network] AI-Generated Network Design: A Diffusion Model-Based Learning Approach
Fig. 1: Comparing traditional network expert design with AIGN. (a) Rule-based methods require manually building the system model, and pursue the optimal results that heavily depend on expert knowledge. (b) AIGN prioritizes the decision-making process with high rewards, and memorizes these trajectories as experiences. This allows AIGN to automatically generate various customized designs that are aligned with the intention. Source: arXiv

Abstract

The future networks pose intense demands for intelligent and customized designs to cope with the surging network scale, dynamically time-varying environments, diverse user requirements, and complicated manual configuration. However, traditional rule-based solutions heavily rely on human efforts and expertise, while data-driven intelligent algorithms still lack interpretability and generalization. In this paper, we propose the AIGN (AI-Generated Network), a novel intention-driven paradigm for network design, which allows operators to quickly generate a variety of customized network solutions and achieve expert-free problem optimization. Driven by the diffusion model-based learning approach, AIGN has great potential to learn the reward-maximizing trajectories, automatically satisfy multiple constraints, adapt to different objectives and scenarios, or even intelligently create novel designs and mechanisms unseen in existing network environments. Finally, we conduct a use case to demonstrate that AIGN can effectively guide the design of transmit power allocation in digital twin-based access networks.

Source: arXiv

Recommended citation: Yudong Huang, Minrui Xu, Xinyuan Zhang, Dusit Niyato, Zehui Xiong, Shuo Wang, and Tao Huang. (2023). "AI-Generated Network Design: A Diffusion Model-Based Learning Approach" IEEE Network.

Paper