Decoherence dynamics estimation for superconducting gate-model quantum computers

@article{Gyongyosi2020DecoherenceDE,
  title={Decoherence dynamics estimation for superconducting gate-model quantum computers},
  author={Laszlo Gyongyosi},
  journal={Quantum Inf. Process.},
  year={2020},
  volume={19},
  pages={369}
}
  • L. Gyongyosi
  • Published 1 October 2020
  • Physics, Computer Science
  • Quantum Inf. Process.
Superconducting gate-model quantum computer architectures provide an implementable model for practical quantum computations in the NISQ (noisy intermediate scale quantum) technology era. Due to hardware restrictions and decoherence, generating the physical layout of the quantum circuits of a gate-model quantum computer is a challenge. Here, we define a method for layout generation with a decoherence dynamics estimation in superconducting gate-model quantum computers. We propose an algorithm for… 
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