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Quantum Computing for Large-scale Network Optimization: Opportunities and Challenges

IEEE Communications Magazine (IEEE Commun. Mag.), 2025
9 September 2025
Sebastian Macaluso
Giovanni Geraci
E. Combarro
Sergi Abadal
Ioannis Arapakis
S. Vallecorsa
Eduard Alarcón
    GNN
ArXiv (abs)PDFHTML
Main:6 Pages
4 Figures
Bibliography:1 Pages
1 Tables
Abstract

The complexity of large-scale 6G-and-beyond networks demands innovative approaches for multi-objective optimization over vast search spaces, a task often intractable. Quantum computing (QC) emerges as a promising technology for efficient large-scale optimization. We present our vision of leveraging QC to tackle key classes of problems in future mobile networks. By analyzing and identifying common features, particularly their graph-centric representation, we propose a unified strategy involving QC algorithms. Specifically, we outline a methodology for optimization using quantum annealing as well as quantum reinforcement learning. Additionally, we discuss the main challenges that QC algorithms and hardware must overcome to effectively optimize future networks.

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