A scalable and fast artificial neural network syndrome decoder for
surface codes
- URL: http://arxiv.org/abs/2110.05854v5
- Date: Mon, 10 Jul 2023 05:54:58 GMT
- Title: A scalable and fast artificial neural network syndrome decoder for
surface codes
- Authors: Spiro Gicev, Lloyd C. L. Hollenberg, Muhammad Usman
- Abstract summary: We develop a scalable and fast syndrome decoder capable of decoding surface codes of arbitrary shape and size with data qubits suffering from the depolarizing error model.
Based on rigorous training over 50 million random quantum error instances, our ANN decoder is shown to work with code distances exceeding 1000.
- Score: 0.8078491757252693
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Surface code error correction offers a highly promising pathway to achieve
scalable fault-tolerant quantum computing. When operated as stabilizer codes,
surface code computations consist of a syndrome decoding step where measured
stabilizer operators are used to determine appropriate corrections for errors
in physical qubits. Decoding algorithms have undergone substantial development,
with recent work incorporating machine learning (ML) techniques. Despite
promising initial results, the ML-based syndrome decoders are still limited to
small scale demonstrations with low latency and are incapable of handling
surface codes with boundary conditions and various shapes needed for lattice
surgery and braiding. Here, we report the development of an artificial neural
network (ANN) based scalable and fast syndrome decoder capable of decoding
surface codes of arbitrary shape and size with data qubits suffering from the
depolarizing error model. Based on rigorous training over 50 million random
quantum error instances, our ANN decoder is shown to work with code distances
exceeding 1000 (more than 4 million physical qubits), which is the largest
ML-based decoder demonstration to-date. The established ANN decoder
demonstrates an execution time in principle independent of code distance,
implying that its implementation on dedicated hardware could potentially offer
surface code decoding times of O($\mu$sec), commensurate with the
experimentally realisable qubit coherence times. With the anticipated scale-up
of quantum processors within the next decade, their augmentation with a fast
and scalable syndrome decoder such as developed in our work is expected to play
a decisive role towards experimental implementation of fault-tolerant quantum
information processing.
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