Fault-tolerant quantum memory using low-depth random circuit codes
Abstract
Low-depth random circuit codes possess many desirable properties for quantum error correction but have so far only been analyzed in the code capacity setting where it is assumed that encoding gates and syndrome measurements are noiseless. In this work, we design a fault-tolerant distillation protocol for preparing encoded states of one-dimensional random circuit codes even when all gates and measurements are subject to noise. This is sufficient for fault-tolerant quantum memory since these encoded states can then be used as ancillas for Steane error correction. We show through numerical simulations that our protocol can correct erasure errors up to an error rate of 2%. In addition, we also extend results in the code capacity setting by developing a maximum likelihood marginal decoder for depolarizing noise similar to work by Darmawan et al. [Phys. Rev. Res. 6, 023055 (2024)]. As in their work, we formulate the decoding problem as a tensor network contraction and show how to contract the network efficiently by exploiting the low-depth structure. Replacing the tensor network with a so-called “tropical” tensor network, we also show how to perform minimum weight decoding. With these decoders, we are able to numerically estimate the depolarizing error threshold of finite-rate random circuit codes and show that this threshold closely matches the hashing bound even when the decoding is suboptimal.
Copyright and License
Published by the American Physical Society under the terms of the Creative Commons Attribution 4.0 International license. Further distribution of this work must maintain attribution to the author(s) and the published article’s title, journal citation, and DOI.
Acknowledgement
We thank G. Sommers and D. Huse for discussions and collaborations on related work. We thank D. Gottesman for suggesting to conceptualize circuit depth as concatenation layer to help design a fault-tolerant protocol for our codes. We thank C. White for helpful comments on the manuscript. This research was supported in part by NSF QLCI Grants No. OMA-2120757 and No. NSF PHY-1748958. J.N. is supported by the National Science Foundation Graduate Research Fellowship Program under Grant No. DGE2236417.
Funding
This research was supported in part by NSF QLCI Grants No. OMA-2120757 and No. NSF PHY-1748958. J.N. is supported by the National Science Foundation Graduate Research Fellowship Program under Grant No. DGE2236417.
Data Availability
The code for performing these studies is released as open-source software [60].
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Additional details
- National Science Foundation
- OMA-2120757
- National Science Foundation
- PHY-1748958
- National Science Foundation
- DGE-2236417
- Accepted
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2024-11-24Accepted
- Caltech groups
- AWS Center for Quantum Computing, Institute for Quantum Information and Matter
- Publication Status
- Published