QUANT-PHMLFeb 18, 2018

Deep neural decoders for near term fault-tolerant experiments

arXiv:1802.06441v2103 citations
AI Analysis

This addresses the problem of efficient error correction for near-term quantum experiments, though it appears incremental as it builds on existing decoding methods with neural enhancements.

The paper tackles the challenge of decoding quantum error-correcting codes under realistic noise in fault-tolerant devices by introducing deep neural decoders that require no prior knowledge of the noise model, achieving analysis near the pseudo-threshold regime for distance-three and five codes.

Finding efficient decoders for quantum error correcting codes adapted to realistic experimental noise in fault-tolerant devices represents a significant challenge. In this paper we introduce several decoding algorithms complemented by deep neural decoders and apply them to analyze several fault-tolerant error correction protocols such as the surface code as well as Steane and Knill error correction. Our methods require no knowledge of the underlying noise model afflicting the quantum device making them appealing for real-world experiments. Our analysis is based on a full circuit-level noise model. It considers both distance-three and five codes, and is performed near the codes pseudo-threshold regime. Training deep neural decoders in low noise rate regimes appears to be a challenging machine learning endeavour. We provide a detailed description of our neural network architectures and training methodology. We then discuss both the advantages and limitations of deep neural decoders. Lastly, we provide a rigorous analysis of the decoding runtime of trained deep neural decoders and compare our methods with anticipated gate times in future quantum devices. Given the broad applications of our decoding schemes, we believe that the methods presented in this paper could have practical applications for near term fault-tolerant experiments.

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