Machine Learning for Continuous Quantum Error Correction on Superconducting Qubits
Abstract
Continuous quantum error correction has been found to have certain advantages over discrete quantum error correction, such as a reduction in hardware resources and the elimination of error mechanisms introduced by having entangling gates and ancilla qubits. We propose a machine learning algorithm for continuous quantum error correction that is based on the use of a recurrent neural network to identify bit-flip errors from continuous noisy syndrome measurements. The algorithm is designed to operate on measurement signals deviating from the ideal behavior in which the mean value corresponds to a code syndrome value and the measurement has white noise. We analyze continuous measurements taken from a superconducting architecture using three transmon qubits to identify three significant practical examples of non-ideal behavior, namely auto-correlation at temporal short lags, transient syndrome dynamics after each bit-flip, and drift in the steady-state syndrome values over the course of many experiments. Based on these real-world imperfections, we generate synthetic measurement signals from which to train the recurrent neural network, and then test its proficiency when implementing active error correction, comparing this with a traditional double threshold scheme and a discrete Bayesian classifier. The results show that our machine learning protocol is able to outperform the double threshold protocol across all tests, achieving a final state fidelity comparable to the discrete Bayesian classifier.
Cite
@article{arxiv.2110.10378,
title = {Machine Learning for Continuous Quantum Error Correction on Superconducting Qubits},
author = {Ian Convy and Haoran Liao and Song Zhang and Sahil Patel and William P. Livingston and Ho Nam Nguyen and Irfan Siddiqi and K. Birgitta Whaley},
journal= {arXiv preprint arXiv:2110.10378},
year = {2022}
}
Comments
21 pages, 12 figures