Realisation of experiments even on small and medium-scale quantum computers requires an optimisation of several parameters to achieve high-fidelity operations. As the size of the quantum register increases, the characterisation of quantum states becomes more difficult since the number of parameters to be measured grows as well and finding efficient observables in order to estimate the parameters of the model becomes a crucial task. Here we propose a method relying on application of Bayesian inference that can be used to determine systematic, unknown phase shifts of multi-qubit states. This method offers important advantages as compared to Ramsey-type protocols. First, application of Bayesian inference allows the selection of an adaptive bas...
In this work we combine two distinct machine learning methodologies, sequential Monte Carlo and Baye...
An important step in building a quantum computer is calibrating experimentally implemented quantum g...
This Mathematica file (in .nb format) is the code we used in the Section "Adaptive Technique" of our...
Realisation of experiments even on small and medium-scale quantum computers requires an optimisation...
Performing experiments on small-scale quantum computers is certainly a challenging endeavor. Many pa...
Achieving precise control over quantum systems has groundbreaking ap-plications, such as simulating ...
Phase-estimation protocols provide a fundamental benchmark for the field of quantum metrology. The l...
Phase estimation represents a significant example to test the application of quantum theory for enha...
Quantum parameter estimation offers solid conceptual grounds for the design of sensors enjoying quan...
The accurate estimation of quantum observables is a critical task in science. With progress on the h...
We consider the generic form of a two-mode bosonic state $|\Psi_n\rangle$ with finite Fock expansion...
Quantum state tomography (QST) is essential for characterizing unknown quantum states. Several metho...
Current quantum computers suffer from non-stationary noise channels with high error rates, which und...
Accurately inferring the state of a quantum device from the results of measurements is a crucial tas...
© 2017 IOP Publishing Ltd and Deutsche Physikalische Gesellschaft. We introduce a fast and accurate ...
In this work we combine two distinct machine learning methodologies, sequential Monte Carlo and Baye...
An important step in building a quantum computer is calibrating experimentally implemented quantum g...
This Mathematica file (in .nb format) is the code we used in the Section "Adaptive Technique" of our...
Realisation of experiments even on small and medium-scale quantum computers requires an optimisation...
Performing experiments on small-scale quantum computers is certainly a challenging endeavor. Many pa...
Achieving precise control over quantum systems has groundbreaking ap-plications, such as simulating ...
Phase-estimation protocols provide a fundamental benchmark for the field of quantum metrology. The l...
Phase estimation represents a significant example to test the application of quantum theory for enha...
Quantum parameter estimation offers solid conceptual grounds for the design of sensors enjoying quan...
The accurate estimation of quantum observables is a critical task in science. With progress on the h...
We consider the generic form of a two-mode bosonic state $|\Psi_n\rangle$ with finite Fock expansion...
Quantum state tomography (QST) is essential for characterizing unknown quantum states. Several metho...
Current quantum computers suffer from non-stationary noise channels with high error rates, which und...
Accurately inferring the state of a quantum device from the results of measurements is a crucial tas...
© 2017 IOP Publishing Ltd and Deutsche Physikalische Gesellschaft. We introduce a fast and accurate ...
In this work we combine two distinct machine learning methodologies, sequential Monte Carlo and Baye...
An important step in building a quantum computer is calibrating experimentally implemented quantum g...
This Mathematica file (in .nb format) is the code we used in the Section "Adaptive Technique" of our...