ICNC Adaptive Resource Allocation in Quantum Key Distribution (QKD) for Federated Learning

Published in International Conference on Computing, Networking and Communications, 2023

Overview

[ICNC] Adaptive Resource Allocation in Quantum Key Distribution (QKD) for Federated Learning
Fig. 1. The QKD-secured federated learning network architecture. Source: arXiv

Abstract

Increasing privacy and security concerns in intelligence-native 6G networks require quantum key distribution-secured federated learning (QKD-FL), in which data owners connected via quantum channels can train an FL global model collaboratively without exposing their local datasets. To facilitate QKD-FL, the architectural design and routing management framework are essential. However, effective implementation is still lacking. To this end, we propose a hierarchical architecture for QKD-FL systems in which QKD resources (i.e., wavelengths) and routing are jointly optimized for FL applications. In particular, we focus on adaptive QKD resource allocation and routing for FL workers to minimize the deployment cost of QKD nodes under various uncertainties, including security requirements. The experimental results show that the proposed architecture and the resource allocation and routing model can reduce the deployment cost by 7.72\% compared to the CO-QBN algorithm.

Source: arXiv

Recommended citation: Rakpong Kaewpuang, Minrui Xu, Dusit Niyato, Han Yu, Zehui Xiong, and Xuemin Sherman Shen. (2023). "Adaptive Resource Allocation in Quantum Key Distribution (QKD) for Federated Learning" International Conference on Computing, Networking and Communications.

Paper