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Scalable extraction of error models from the output of error detection circuits

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arxiv 1405.1454 v1 pith:OQANANRT submitted 2014-05-06 quant-ph

Scalable extraction of error models from the output of error detection circuits

classification quant-ph
keywords errorquantuminformationdetectionmethodsaccuratebenchmarkingcircuits
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Accurate methods of assessing the performance of quantum gates are extremely important. Quantum process tomography and randomized benchmarking are the current favored methods. Quantum process tomography gives detailed information, but significant approximations must be made to reduce this information to a form quantum error correction simulations can use. Randomized benchmarking typically outputs just a single number, the fidelity, giving no information on the structure of errors during the gate. Neither method is optimized to assess gate performance within an error detection circuit, where gates will be actually used in a large-scale quantum computer. Specifically, the important issues of error composition and error propagation lie outside the scope of both methods. We present a fast, simple, and scalable method of obtaining exactly the information required to perform effective quantum error correction from the output of continuously running error detection circuits, enabling accurate prediction of large-scale behavior.

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Cited by 2 Pith papers

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    Neutral atom platform achieves repeated toric code syndrome extraction with qubit reloading, preserving logical information over 90 cycles and showing distance-dependent logical error suppression.

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    SCOPE harvests QEC syndromes passively to reconstruct network error maps for joint route-and-code optimization, claiming over 60% better error estimation and 30-35% lower logical error rates versus baselines in NetSqu...