量子纠缠的深度学习

D. Koutný, L. Ginés, M. Moczała-Dusanowska, S. Höfling, C. Schneider, A. Predojevič, M. Ježek
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引用次数: 1

摘要

检测物理系统中的量子相关性对于量子信息处理中的许多前沿应用至关重要。我们利用深度神经网络解决了从不完全测量中推断纠缠的问题。
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Deep Learning of Quantum Entanglement
Detection of quantum correlations in a physical system is paramount to many cutting-edge applications in quantum information processing. We tackle the problem of inferring the entanglement from incomplete measurements by employing deep neural networks.
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