Litcius/Paper detail

Quantum State Tomography with Conditional Generative Adversarial Networks

Shahnawaz Ahmed, Carlos Sánchez Muñoz, Franco Nori, Anton Frisk Kockum

2021Physical Review Letters16 citationsDOIOpen Access PDF

Abstract

Quantum state tomography (QST) is a challenging task in intermediate-scale quantum devices. Here, we apply conditional generative adversarial networks (CGANs) to QST. In the CGAN framework, two dueling neural networks, a generator and a discriminator, learn multimodal models from data. We augment a CGAN with custom neural-network layers that enable conversion of output from any standard neural network into a physical density matrix. To reconstruct the density matrix, the generator and discriminator networks train each other on data using standard gradient-based methods. We demonstrate that our QST-CGAN reconstructs optical quantum states with high fidelity, using orders of magnitude fewer iterative steps, and less data, than both accelerated projected-gradient-based and iterative maximum-likelihood estimation. We also show that the QST-CGAN can reconstruct a quantum state in a single evaluation of the generator network if it has been pretrained on similar quantum states.

Topics & Concepts

Quantum tomographyDiscriminatorGenerator (circuit theory)Quantum stateComputer scienceQuantumArtificial neural networkGenerative grammarHigh fidelityMatrix (chemical analysis)Artificial intelligenceAlgorithmPhysicsQuantum mechanicsMaterials scienceAcousticsTelecommunicationsDetectorComposite materialPower (physics)Neural Networks and Reservoir ComputingQuantum Computing Algorithms and ArchitectureQuantum Information and Cryptography