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Deep learning of quantum entanglement from incomplete measurements

Dominik Koutný, Laia Ginés, Magdalena Moczała-Dusanowska, Sven Höfling, Christian Schneider, Ana Predojević, Miroslav Ježek

2023Science Advances41 citationsDOIOpen Access PDF

Abstract

The quantification of the entanglement present in a physical system is of paramount importance for fundamental research and many cutting-edge applications. Now, achieving this goal requires either a priori knowledge on the system or very demanding experimental procedures such as full state tomography or collective measurements. Here, we demonstrate that, by using neural networks, we can quantify the degree of entanglement without the need to know the full description of the quantum state. Our method allows for direct quantification of the quantum correlations using an incomplete set of local measurements. Despite using undersampled measurements, we achieve a quantification error of up to an order of magnitude lower than the state-of-the-art quantum tomography. Furthermore, we achieve this result using networks trained using exclusively simulated data. Last, we derive a method based on a convolutional network input that can accept data from various measurement scenarios and perform, to some extent, independently of the measurement device.

Topics & Concepts

Quantum entanglementComputer scienceA priori and a posterioriConvolutional neural networkSet (abstract data type)QuantumQuantum stateQuantum sensorAlgorithmEnhanced Data Rates for GSM EvolutionArtificial intelligenceTheoretical computer scienceStatistical physicsQuantum networkPhysicsQuantum mechanicsProgramming languageEpistemologyPhilosophyQuantum Information and CryptographyQuantum Mechanics and ApplicationsQuantum Computing Algorithms and Architecture