English

Energy-Efficient Dynamic Training and Inference for GNN-Based Network Modeling

Networking and Internet Architecture 2025-03-25 v1 Artificial Intelligence Emerging Technologies Machine Learning

Abstract

Efficient network modeling is essential for resource optimization and network planning in next-generation large-scale complex networks. Traditional approaches, such as queuing theory-based modeling and packet-based simulators, can be inefficient due to the assumption made and the computational expense, respectively. To address these challenges, we propose an innovative energy-efficient dynamic orchestration of Graph Neural Networks (GNN) based model training and inference framework for context-aware network modeling and predictions. We have developed a low-complexity solution framework, QAG, that is a Quantum approximation optimization (QAO) algorithm for Adaptive orchestration of GNN-based network modeling. We leverage the tripartite graph model to represent a multi-application system with many compute nodes. Thereafter, we apply the constrained graph-cutting using QAO to find the feasible energy-efficient configurations of the GNN-based model and deploying them on the available compute nodes to meet the network modeling application requirements. The proposed QAG scheme closely matches the optimum and offers atleast a 50% energy saving while meeting the application requirements with 60% lower churn-rate.

Keywords

Cite

@article{arxiv.2503.18706,
  title  = {Energy-Efficient Dynamic Training and Inference for GNN-Based Network Modeling},
  author = {Chetna Singhal and Yassine Hadjadj-Aoul},
  journal= {arXiv preprint arXiv:2503.18706},
  year   = {2025}
}

Comments

Accepted in IEEE WCNC 2025

R2 v1 2026-06-28T22:32:20.773Z