Predicting circuit success rates with artificial neural networks
ORAL
Abstract
Artificial neural networks are powerful tools for modelling highly non-linear functions. When provided with enough data, they can learn otherwise intractable mappings between high-dimensional vector spaces, such as the vector space of 5x515 images, and class or numerical labels. In this work, we leverage this capability by training several state-of-the-art neural network models to predict the success rate of running circuits on several IBM devices. Our networks achieve similar or better accuracy than non-neural network models based on per gate error rates. We also present results from training networks on simulated data generated by non-Markovian error models, a promising future use case.
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Presenters
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Daniel Hothem
Sandia National Laboratories
Authors
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Daniel Hothem
Sandia National Laboratories
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Kevin C Young
Sandia National Laboratories
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Thomas Catanach
Sandia National Laboratories
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Timothy J Proctor
Sandia National Laboratories