• Corpus ID: 236772200

Large-scale quantum machine learning

  title={Large-scale quantum machine learning},
  author={Tobias Haug and Chris N Self and M. S. Kim},
Quantum computers promise to enhance machine learning for practical applications. Quantum machine learning for real-world data has to handle extensive amounts of high-dimensional data. However, conventional methods for measuring quantum kernels are impractical for large datasets as they scale with the square of the dataset size. Here, we measure quantum kernels using randomized measurements to gain a quadratic speedup in computation time and quickly process large datasets. Further, we… 

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  • Jindi WuZeyi TaoQun Li
  • Computer Science, Physics
    2022 IEEE International Conference on Quantum Computing and Engineering (QCE)
  • 2022
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