Benchmarking quantum logic operations relative to thresholds for fault tolerance

被引:0
作者
Akel Hashim
Stefan Seritan
Timothy Proctor
Kenneth Rudinger
Noah Goss
Ravi K. Naik
John Mark Kreikebaum
David I. Santiago
Irfan Siddiqi
机构
[1] University of California at Berkeley,Quantum Nanoelectronics Laboratory, Department of Physics
[2] University of California at Berkeley,Graduate Group in Applied Science and Technology
[3] Lawrence Berkeley National Lab,Computational Research Division
[4] Sandia National Laboratories,Quantum Performance Laboratory
[5] Sandia National Laboratories,Quantum Performance Laboratory
[6] Lawrence Berkeley National Lab,Materials Sciences Division
[7] Google Quantum AI,undefined
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npj Quantum Information | / 9卷
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摘要
Contemporary methods for benchmarking noisy quantum processors typically measure average error rates or process infidelities. However, thresholds for fault-tolerant quantum error correction are given in terms of worst-case error rates—defined via the diamond norm—which can differ from average error rates by orders of magnitude. One method for resolving this discrepancy is to randomize the physical implementation of quantum gates, using techniques like randomized compiling (RC). In this work, we use gate set tomography to perform precision characterization of a set of two-qubit logic gates to study RC on a superconducting quantum processor. We find that, under RC, gate errors are accurately described by a stochastic Pauli noise model without coherent errors, and that spatially correlated coherent errors and non-Markovian errors are strongly suppressed. We further show that the average and worst-case error rates are equal for randomly compiled gates, and measure a maximum worst-case error of 0.0197(3) for our gate set. Our results show that randomized benchmarks are a viable route to both verifying that a quantum processor’s error rates are below a fault-tolerance threshold, and to bounding the failure rates of near-term algorithms, if—and only if—gates are implemented via randomization methods which tailor noise.
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