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Reinforcement Learning Based Multi-Tenant Secret-Key Assignment for Quantum Key Distribution Networks

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Abstract

We propose a reinforcement learning based online multi-tenant secret-key assignment algorithm for quantum key distribution networks, capable of reducing tenant-request blocking probability more than half compared to the benchmark heuristics.

© 2019 The Author(s)

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