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Test Data-Driven Machine Learning Models for Reliable Quantum Circuit Output

机译:测试数据驱动的机器学习模型,用于可靠量子电路输出

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While current quantum computers, referred to as Noisy Intermediate-Scale Quantum (NISQ) computers, are expected to be beneficial for different applications, they are prone to different types of errors. In order to enhance the reliability of quantum systems, noise-aware quantum compilers are used to generate physical quantum circuits to be executed on NISQ computers. The quantum hardware is calibrated very frequently and its error rates are computed accordingly. Based on the hardware error rates, a quantum compiler allocates physical qubits and schedules quantum operations. However, error rates may change post-calibration. To incorporate dynamic error rates into quantum circuit compilation with minimum cost, we propose a Machine Learning (ML)-based scheme to detect the incorrect output of the quantum circuit and predict the Probability of Successful Trials (PST) with high accuracy. Our approach can verify the error rates of the quantum hardware and validate the correctness of the extracted quantum circuit output. We provide a case study of our ML-based reliability models using IBM Q16 Melbourne quantum computer. Our results show that the proposed scheme achieves a very high prediction accuracy.
机译:虽然当前量子计算机称为嘈杂的中间级量子(NISQ)计算机预计对不同的应用有益,但它们易于不同类型的错误。为了提高量子系统的可靠性,噪声感知量子编译器用于生成在NISQ计算机上执行的物理量子电路。量子硬件经常校准,并且相应地计算其误差率。基于硬件错误速率,量子编译器分配物理Qubits并计划量子操作。但是,错误率可能会改变后校准。为了以最小成本将动态误差率加入量子电路编译,我们提出了一种基于机器学习(ML)的方案,以检测量子电路的不正确输出,并以高精度预测成功试验(PST)的可能性。我们的方法可以验证量子硬件的误差率,并验证提取的量子电路输出的正确性。我们提供了使用IBM Q16 Melbourne Quantum Computer的基于ML的可靠性模型的案例研究。我们的结果表明,该方案实现了非常高的预测精度。

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