We train convolutional neural networks to predict whether or not a set of measurements is informationally complete to uniquely reconstruct any given quantum state with no prior information. In addition, we perform fidelity benchmarking based on this measurement set without explicitly carrying out state tomography. The networks are trained to recognize the fidelity and a reliable measure for informational completeness. By gradually accumulating measurements and data, these trained convolutional networks can efficiently establish a compressive quantum-state characterization scheme by accelerating runtime computation and greatly reducing systematic drifts in experiments. We confirm the potential of this machine-learning approach by presenting ...
We revisit the application of neural networks techniques to quantum state tomography. We confirm tha...
Abstract Current algorithms for quantum state tomography (QST) are costly both on the experimental f...
We propose a series of data-centric heuristics for improving the performance of machine learning sys...
We train convolutional neural networks to predict whether or not a set of measurements is informatio...
We train convolutional neural networks to predict whether or not a set of measurements is informatio...
We use a metalearning neural-network approach to analyze data from a measured quantum state. Once ou...
We revisit the application of neural networks to quantum state tomography. We confirm that the posit...
Quantum state tomography aiming at reconstructing the density matrix of a quantum state plays an imp...
With the power to find the best fit to arbitrarily complicated symmetry, machine-learning (ML)-enhan...
The promise of quantum neural nets, which utilize quantum effects to model complex data sets, has ma...
We propose a quantum tomography scheme for pure qudit systems which adopts a certain version of rand...
Quantum computing is a new computational paradigm that promises applications in several fields, incl...
Modern day quantum simulators can prepare a wide variety of quantum states but the accurate estimati...
Quantum computing is a new computational paradigm that promises applications in several fields, incl...
© 2019 American Physical Society. We demonstrate quantum many-body state reconstruction from experim...
We revisit the application of neural networks techniques to quantum state tomography. We confirm tha...
Abstract Current algorithms for quantum state tomography (QST) are costly both on the experimental f...
We propose a series of data-centric heuristics for improving the performance of machine learning sys...
We train convolutional neural networks to predict whether or not a set of measurements is informatio...
We train convolutional neural networks to predict whether or not a set of measurements is informatio...
We use a metalearning neural-network approach to analyze data from a measured quantum state. Once ou...
We revisit the application of neural networks to quantum state tomography. We confirm that the posit...
Quantum state tomography aiming at reconstructing the density matrix of a quantum state plays an imp...
With the power to find the best fit to arbitrarily complicated symmetry, machine-learning (ML)-enhan...
The promise of quantum neural nets, which utilize quantum effects to model complex data sets, has ma...
We propose a quantum tomography scheme for pure qudit systems which adopts a certain version of rand...
Quantum computing is a new computational paradigm that promises applications in several fields, incl...
Modern day quantum simulators can prepare a wide variety of quantum states but the accurate estimati...
Quantum computing is a new computational paradigm that promises applications in several fields, incl...
© 2019 American Physical Society. We demonstrate quantum many-body state reconstruction from experim...
We revisit the application of neural networks techniques to quantum state tomography. We confirm tha...
Abstract Current algorithms for quantum state tomography (QST) are costly both on the experimental f...
We propose a series of data-centric heuristics for improving the performance of machine learning sys...