When Quantum Federated Learning Meets Blockchain in 6G Networks
By: Dinh C. Nguyen , Md Bokhtiar Al Zami , Ratun Rahman and more
Potential Business Impact:
Makes smart devices learn together safely and fast.
Quantum federated learning (QFL) is emerging as a key enabler for intelligent, secure, and privacy-preserving model training in next-generation 6G networks. By leveraging the computational advantages of quantum devices, QFL offers significant improvements in learning efficiency and resilience against quantum-era threats. However, future 6G environments are expected to be highly dynamic, decentralized, and data-intensive, which necessitates moving beyond traditional centralized federated learning frameworks. To meet this demand, blockchain technology provides a decentralized, tamper-resistant infrastructure capable of enabling trustless collaboration among distributed quantum edge devices. This paper presents QFLchain, a novel framework that integrates QFL with blockchain to support scalable and secure 6G intelligence. In this work, we investigate four key pillars of \textit{QFLchain} in the 6G context: (i) communication and consensus overhead, (ii) scalability and storage overhead, (iii) energy inefficiency, and (iv) security vulnerability. A case study is also presented, demonstrating potential advantages of QFLchain, based on simulation, over state-of-the-art approaches in terms of training performance.
Similar Papers
Empowering AI-Native 6G Wireless Networks with Quantum Federated Learning
Networking and Internet Architecture
Makes phones smarter and safer using quantum power.
Quantum Federated Learning: A Comprehensive Survey
Machine Learning (CS)
Lets computers learn secrets without sharing data.
Scaling Trust in Quantum Federated Learning: A Multi-Protocol Privacy Design
Cryptography and Security
Keeps private data safe during AI training.