4.6 Article

Attention-based quantum tomography

Journal

Publisher

IOP Publishing Ltd
DOI: 10.1088/2632-2153/ac362b

Keywords

quantum state tomography; transformer; IBMQ; deep learning

Funding

  1. DOE Office of Basic Energy Sciences, Division of Materials Science and Engineering [DE-SC0018946]
  2. NSF HDR-DIRSE Award [OAC-1934714]
  3. Cornell Center for Materials Research
  4. NSF MRSEC program [DMR-1719875]
  5. Natural Sciences and Engineering Research Council of Canada (NSERC)
  6. Shared Hierarchical Academic Research Computing Network (SHARCNET)
  7. Compute Canada
  8. Google Quantum Research Award
  9. Canadian Institute for Advanced Research (CIFAR) AI chair program
  10. U.S. Department of Energy (DOE) [DE-SC0018946] Funding Source: U.S. Department of Energy (DOE)

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In this study, an attention mechanism-based generative network model is proposed for quantum state reconstruction of noisy quantum states. The research demonstrates that the model outperforms previous neural-network-based methods on identical tasks and accurately reconstructs the density matrix of a noisy quantum state realized experimentally.
With rapid progress across platforms for quantum systems, the problem of many-body quantum state reconstruction for noisy quantum states becomes an important challenge. There has been a growing interest in approaching the problem of quantum state reconstruction using generative neural network models. Here we propose the 'attention-based quantum tomography' (AQT), a quantum state reconstruction using an attention mechanism-based generative network that learns the mixed state density matrix of a noisy quantum state. AQT is based on the model proposed in 'Attention is all you need' by Vaswani et al (2017 NIPS) that is designed to learn long-range correlations in natural language sentences and thereby outperform previous natural language processing (NLP) models. We demonstrate not only that AQT outperforms earlier neural-network-based quantum state reconstruction on identical tasks but that AQT can accurately reconstruct the density matrix associated with a noisy quantum state experimentally realized in an IBMQ quantum computer. We speculate the success of the AQT stems from its ability to model quantum entanglement across the entire quantum system much as the attention model for NLP captures the correlations among words in a sentence.

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