Expand this Topic clickable element to expand a topic
Skip to content
Optica Publishing Group

Finding Broken Gates in Quantum Circuits–Exploiting Hybrid Machine Learning

Not Accessible

Your library or personal account may give you access

Abstract

We demonstrate a procedure to diagnose where gate faults occur in a circuit by using a hybridized quantum-and-classical machine-learning technique, using a diagnostic circuit and selected inputs. We numerically demonstrate an accuracy of over 90%.

© 2020 The Author(s)

PDF Article  |   Presentation Video
More Like This
A quantum autoencoder: using machine learning to compress qutrits

Alex Pepper, Nora Tischler, and Geoff J. Pryde
C12C_5 Conference on Lasers and Electro-Optics/Pacific Rim (CLEO/PR) 2020

Merging Machine Learning with Quantum Photonics: Rapid classification of quantum sources

Zhaxylyk Kudyshev, Simeon Bogdanov, Theodor Isacsson, Alexander V. Kildishev, Alexandra Boltasseva, and Vladimir M. Shalaev
FM4C.4 CLEO: QELS_Fundamental Science (CLEO:FS) 2020

Machine Learning Assisted Quantum Photonics

Zhaxylyk Kudyshev, Simeon Bogdanov, Theodor Isacsson, Alexander V. Kildishev, Alexandra Boltasseva, and Vladimir M. Shalaev
QM6B.3 Quantum 2.0 (QUANTUM) 2020

Presentation Video

Presentation video access is available to:

  1. Optica Publishing Group subscribers
  2. Technical meeting attendees
  3. Optica members who wish to use one of their free downloads. Please download the article first. After downloading, please refresh this page.

Contact your librarian or system administrator
or
Log in to access Optica Member Subscription or free downloads


More Like This
A quantum autoencoder: using machine learning to compress qutrits

Alex Pepper, Nora Tischler, and Geoff J. Pryde
C12C_5 Conference on Lasers and Electro-Optics/Pacific Rim (CLEO/PR) 2020

Merging Machine Learning with Quantum Photonics: Rapid classification of quantum sources

Zhaxylyk Kudyshev, Simeon Bogdanov, Theodor Isacsson, Alexander V. Kildishev, Alexandra Boltasseva, and Vladimir M. Shalaev
FM4C.4 CLEO: QELS_Fundamental Science (CLEO:FS) 2020

Machine Learning Assisted Quantum Photonics

Zhaxylyk Kudyshev, Simeon Bogdanov, Theodor Isacsson, Alexander V. Kildishev, Alexandra Boltasseva, and Vladimir M. Shalaev
QM6B.3 Quantum 2.0 (QUANTUM) 2020

Unsupervised Machine Learning Control of Quantum Gates in Gate-Model Quantum Computers

Laszlo Gyongyosi and Sandor Imre
FTh1B.3 Frontiers in Optics (FiO) 2018

Photonic Quantum Programmable Gate Arrays

Ben Bartlett and Shanhui Fan
JM4G.8 CLEO: Applications and Technology (CLEO:A&T) 2020

Select as filters


Select Topics Cancel
© Copyright 2024 | Optica Publishing Group. All Rights Reserved