2021
DOI: 10.48550/arxiv.2109.03430
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Can Noise on Qubits Be Learned in Quantum Neural Network? A Case Study on QuantumFlow

Abstract: In the noisy intermediate-scale quantum (NISQ) era, one of the key questions is how to deal with the high noise level existing in physical quantum bits (qubits). Quantum error correction is promising but requires an extensive number (e.g., over 1,000) of physical qubits to create one "perfect" qubit, exceeding the capacity of the existing quantum computers. This paper aims to tackle the noise issue from another angle: instead of creating perfect qubits for general quantum algorithms, we investigate the potenti… Show more

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