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A Survey of Machine Learning Assisted Continuous-Variable Quantum Key Distribution

Nathan K. Long, Robert Malaney, Kenneth J. Grant

2023Information15 citationsDOIOpen Access PDF

Abstract

Continuous-variable quantum key distribution (CV-QKD) shows potential for the rapid development of an information-theoretic secure global communication network; however, the complexities of CV-QKD implementation remain a restrictive factor. Machine learning (ML) has recently shown promise in alleviating these complexities. ML has been applied to almost every stage of CV-QKD protocols, including ML-assisted phase error estimation, excess noise estimation, state discrimination, parameter estimation and optimization, key sifting, information reconciliation, and key rate estimation. This survey provides a comprehensive analysis of the current literature on ML-assisted CV-QKD. In addition, the survey compares the ML algorithms assisting CV-QKD with the traditional algorithms they aim to augment, as well as providing recommendations for future directions for ML-assisted CV-QKD research.

Topics & Concepts

Quantum key distributionKey (lock)Computer scienceEstimationEstimation of distribution algorithmVariable (mathematics)Continuous variableNoise (video)AlgorithmQuantumArtificial intelligenceStatisticsMathematicsEngineeringComputer securitySystems engineeringPhysicsQuantum mechanicsImage (mathematics)Mathematical analysisQuantum Information and CryptographyQuantum Computing Algorithms and ArchitectureWireless Communication Security Techniques
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