Journal
QUANTUM INFORMATION PROCESSING
Volume 19, Issue 8, Pages -Publisher
SPRINGER
DOI: 10.1007/s11128-020-02729-y
Keywords
Quantum machine learning; Quantum computing; Quantum gates; Quantum algorithms
Funding
- Air Force Office of Scientific Research
- Army Research Office
- National Science Foundation
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Current implementations of quantum logic gates can be highly faulty and introduce errors. In order to correct these errors, it is necessary to first identify the faulty gates. We demonstrate a procedure to diagnose where gate faults occur in a circuit by using a hybridized quantum-and-classical K-Nearest-Neighbors (KNN) machine-learning technique. We accomplish this task using a diagnostic circuit and selected input qubits to obtain the fidelity between a set of output states and reference states. The outcomes of the circuit can then be stored to be used for a classical KNN algorithm. We numerically demonstrate an ability to locate a faulty gate in circuits with over 30 gates and up to nine qubits with over 90% accuracy.
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