Quantum machine learning: from physics to software engineering

A Melnikov, M Kordzanganeh, A Alodjants… - Advances in Physics …, 2023 - Taylor & Francis
Quantum machine learning is a rapidly growing field at the intersection of quantum
technology and artificial intelligence. This review provides a two-fold overview of several key …

Machine-learning quantum states in the NISQ era

G Torlai, RG Melko - Annual Review of Condensed Matter …, 2020 - annualreviews.org
We review the development of generative modeling techniques in machine learning for the
purpose of reconstructing real, noisy, many-qubit quantum states. Motivated by its …

Midcircuit Operations Using the omg Architecture in Neutral Atom Arrays

JW Lis, A Senoo, WF McGrew, F Rönchen, A Jenkins… - Physical Review X, 2023 - APS
Midcircuit operations, such as qubit state measurement or reset, are central to many tasks in
quantum information science, including quantum computing, entanglement generation, and …

Telecom-wavelength quantum repeater node based on a trapped-ion processor

V Krutyanskiy, M Canteri, M Meraner, J Bate… - Physical Review Letters, 2023 - APS
A quantum repeater node is presented based on trapped ions that act as single-photon
emitters, quantum memories, and an elementary quantum processor. The node's ability to …

An open-system quantum simulator with trapped ions

JT Barreiro, M Müller, P Schindler, D Nigg, T Monz… - Nature, 2011 - nature.com
The control of quantum systems is of fundamental scientific interest and promises powerful
applications and technologies. Impressive progress has been achieved in isolating quantum …

Efficient tomography of a quantum many-body system

BP Lanyon, C Maier, M Holzäpfel, T Baumgratz… - Nature Physics, 2017 - nature.com
Quantum state tomography is the standard technique for estimating the quantum state of
small systems. But its application to larger systems soon becomes impractical as the …

Quantum tomography via compressed sensing: error bounds, sample complexity and efficient estimators

ST Flammia, D Gross, YK Liu, J Eisert - New Journal of Physics, 2012 - iopscience.iop.org
Intuitively, if a density operator has small rank, then it should be easier to estimate from
experimental data, since in this case only a few eigenvectors need to be learned. We prove …

Implementation of a Toffoli gate with superconducting circuits

A Fedorov, L Steffen, M Baur, MP da Silva, A Wallraff - Nature, 2012 - nature.com
The Toffoli gate is a three-quantum-bit (three-qubit) operation that inverts the state of a target
qubit conditioned on the state of two control qubits. It makes universal reversible classical …

Experimental realization of non-Abelian non-adiabatic geometric gates

AA Abdumalikov Jr, JM Fink, K Juliusson, M Pechal… - Nature, 2013 - nature.com
The geometric aspects of quantum mechanics are emphasized most prominently by the
concept of geometric phases, which are acquired whenever a quantum system evolves …

How to use neural networks to investigate quantum many-body physics

J Carrasquilla, G Torlai - PRX Quantum, 2021 - APS
Over the past few years, machine learning has emerged as a powerful computational tool to
tackle complex problems in a broad range of scientific disciplines. In particular, artificial …