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Trapped Ion Quantum Computing
Superconducting Qubits
Quantum Machine Learning
Machine Learning based Discrimination for Excited State Promoted Readout
arXiv
Authors: Utkarsh Azad, Helena Zhang
Year
2022
Paper ID
58343
Status
Preprint
Abstract Read
~2 min
Abstract Words
125
Citations
N/A
Abstract
A limiting factor for readout fidelity for superconducting qubits is the relaxation of the qubit to the ground state before the time needed for the resonator to reach its final target state. A technique known as excited state promoted (ESP) readout was proposed to reduce this effect and further improve the readout contrast on superconducting hardware. In this work, we use readout data from IBM's five-qubit quantum systems to measure the effectiveness of using deep neural networks, like feedforward neural networks, and various classification algorithms, like k-nearest neighbors, decision trees, and Gaussian naive Bayes, for single-qubit and multi-qubit discrimination. These methods were compared to standardly used linear and quadratic discriminant analysis algorithms based on their qubit-state-assignment fidelity performance, robustness to readout crosstalk, and training time.
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- A limiting factor for readout fidelity for superconducting qubits is the relaxation of the qubit to the ground state before the time needed for the resonator to reach its final...
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