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Detecting Qubit-coupling Faults in Ion-trap Quantum Computers

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 Added by Yunseong Nam
 Publication date 2021
and research's language is English




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Ion-trap quantum computers offer a large number of possible qubit couplings, each of which requires individual calibration and can be misconfigured. We develop a strategy that diagnoses individual miscalibrated couplings using only log-many tests. This strategy is validated on a commercial ion-trap quantum computer, where we illustrate the process of debugging faulty quantum gates. Our methodology provides a scalable pathway towards fault detections on a larger scale ion-trap quantum computers, confirmed by simulations up to 32 qubits.



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121 - S. Blinov , B. Wu , 2021
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