Efficient near-optimal decoding of the surface code through ensembling
Abstract
We introduce harmonization, an ensembling method that combines several "noisy" decoders to generate highly accurate decoding predictions. Harmonized ensembles of MWPM-based decoders achieve lower logical error rates than their individual counterparts on repetition and surface code benchmarks, approaching maximum-likelihood accuracy at large ensemble sizes. We can use the degree of consensus among the ensemble as a confidence measure for a layered decoding scheme, in which a small ensemble flags high-risk cases to be checked by a larger, more accurate ensemble. This layered scheme can realize the accuracy improvements of large ensembles with a relatively small constant factor of computational overhead. We conclude that harmonization provides a viable path towards highly accurate real-time decoding.
Cite
@article{arxiv.2401.12434,
title = {Efficient near-optimal decoding of the surface code through ensembling},
author = {Noah Shutty and Michael Newman and Benjamin Villalonga},
journal= {arXiv preprint arXiv:2401.12434},
year = {2024}
}
Comments
13 pages, 12 figures