Scalable noise characterization of syndrome-extraction circuits with averaged circuit eigenvalue sampling
Evan T. Hockings, Andrew C. Doherty, Robin Harper

TL;DR
This paper introduces a scalable noise characterization protocol for syndrome extraction circuits in quantum error correction, leveraging averaged circuit eigenvalue sampling to improve noise estimation precision on large quantum devices.
Contribution
We develop a scalable noise characterization method based on ACES for syndrome extraction circuits, enabling detailed noise analysis on large quantum systems.
Findings
Protocol successfully characterizes noise in a 1000-qubit surface code circuit.
Method improves noise estimation precision with fixed experimental resources.
Numerical simulations demonstrate scalability to near-term quantum devices.
Abstract
Characterising the performance of noisy quantum circuits is central to the production of prototype quantum computers and can enable improved quantum error correction that exploits noise biases identified in a quantum device. We develop a scalable noise characterisation protocol suited to characterising the syndrome extraction circuits of quantum error correcting codes, a key component of fault-tolerant architectures. Our protocol builds upon averaged circuit eigenvalue sampling (ACES), a framework for noise characterisation experiments that simultaneously estimates the Pauli error probabilities of all gates in a Clifford circuit and captures averaged spatial correlations between gates implemented simultaneously in the layers of the circuit. By rigorously analysing the performance of noise characterisation experiments in the ACES framework, we derive a figure of merit for their expected…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Low-power high-performance VLSI design · Quantum Information and Cryptography
