Quantum Neural Networks

FOCUS · K73 · ID: 1067462






Presentations

  • ORAL

    Presenters

    • Fangjun Hu

      • Princeton University

    Authors

    • Fangjun Hu

      • Princeton University
    • Gerasimos M Angelatos

      • BBN Technology - Massachusetts
      • Princeton University
    • Saeed A Khan

      • Princeton University
    • Marti Vives

      • Q-CTL
      • Q-CTRL
    • Esin Tureci

      • Princeton University
    • Leon Y Bello

      • Princeton
      • Princeton University
    • Graham E Rowlands

      • BBN Technology - Massachusetts
      • Raytheon BBN Technologies
    • Guilhem J Ribeill

      • Raytheon BBN
      • Raytheon BBN Technologies
    • Hakan E Tureci

      • Princeton University

    View abstract →

  • ORAL

    Presenters

    • Gerasimos M Angelatos

      • BBN Technology - Massachusetts
      • Princeton University

    Authors

    • Gerasimos M Angelatos

      • BBN Technology - Massachusetts
      • Princeton University
    • Fangjun Hu

      • Princeton University
    • Saeed A Khan

      • Princeton University
    • Marti Vives

      • Q-CTL
      • Q-CTRL
    • Esin Tureci

      • Princeton University
    • Leon Y Bello

      • Princeton
      • Princeton University
    • Graham E Rowlands

      • BBN Technology - Massachusetts
      • Raytheon BBN Technologies
    • Guilhem J Ribeill

      • Raytheon BBN
      • Raytheon BBN Technologies
    • Hakan E Tureci

      • Princeton University

    View abstract →

  • ORAL

    Publication: Ameneyro, B., Siopsis, G., and Maroulas, V.. Quantum Persistent Homology for Time Series. ACM/IEEE International Workshop on Quantum Computing 2022.

    Presenters

    • Bernardo Ameneyro

      • University of Tennessee, Knoxville

    Authors

    • Bernardo Ameneyro

      • University of Tennessee, Knoxville
    • George Siopsis

      • University of Tennessee
    • Vasileios Maroulas

      • University of Tennessee

    View abstract →

  • ORAL

    Publication: Quantum machine learning
    J Biamonte, P Wittek, N Pancotti, P Rebentrost, N Wiebe, and S Lloyd
    Nature 549, 195–202 (2017) 10.1038/nature23474

    Ion-native variational ansatz for quantum approximate optimization
    D Rabinovich, S Adhikary, E Campos, V Akshay, E Anikin, R Sengupta, O Lakhmanskaya, K Lakhmanskiy, and J Biamonte
    Physical Review A 106, 032418 (2022) 10.1103/PhysRevA.106.032418

    Progress towards analytically optimal angles in quantum approximate optimisation
    D Rabinovich, R Sengupta, E Campos, V Akshay, and J Biamonte
    Mathematics 10, 2601 (2022) 10.3390/math10152601

    Reachability deficits implicit in quantum approximate optimization of graph problems
    V Akshay, H Philathong, I Zacharov, and J Biamonte
    Quantum 5, 532 (2021) 10.22331/q-2021-08-30-532

    Parameter concentrations in quantum approximate optimization
    V Akshay, D Rabinovich, E Campos, and J Biamonte
    (Letter) Physical Review A 104, L010401 (2021) 10.1103/PhysRevA.104.L010401

    Universal variational quantum computation
    J Biamonte
    (Letter) Physical Review A 103, L030401 (2021) 10.1103/PhysRevA.103.L030401

    Quantum machine learning tensor network states
    A Kardashin, A Uvarov, and J Biamonte
    Frontiers in Physics 8, 586374 (2021) 10.3389/fphy.2020.586374

    Variational simulation of Schwinger's Hamiltonian with polarization qubits
    O Borzenkova, G Struchalin, A Kardashin, V Krasnikov, N Skryabin, S Straupe, S Kulik, and J Biamonte
    Applied Physics Letters 118, 144002 (2021) 10.1063/5.0043322

    Abrupt transitions in variational quantum circuit training
    E Campos, A Nasrallah, and J Biamonte
    Physical Review A 103, 032607 (2021) 10.1103/PhysRevA.103.032607

    Training saturation in layerwise quantum approximate optimisation
    E Campos, D Rabinovich, V Akshay, and J Biamonte
    (Letter) Physical Review A 104, L030401 (2021) 10.1103/PhysRevA.104.L030401

    On barren plateaus and cost function locality in variational quantum algorithms
    A Uvarov and J Biamonte
    Journal of Physics A: Mathematical and Theoretical 54, 245–301 (2021) 10.1088/1751-8121/abfac7

    Reachability deficits in quantum approximate optimization
    V Akshay, H Philathong, M Morales, and J Biamonte
    Physical Review Letters 124, 090504 (2020) 10.1103/PhysRevLett.124.090504

    On the universality of the quantum approximate optimization algorithm
    M Morales, J Biamonte, and Z Zimborás
    Quantum Information Processing 19, 291 (2020) 10.1007/s11128-020-02748-9

    Variational quantum eigensolver for frustrated quantum systems
    A Uvarov, J Biamonte, and D Yudin
    Physical Review B 102, 075104 (2020) 10.1103/PhysRevB.102.075104

    Machine learning phase transitions with a quantum processor
    A Uvarov, A Kardashin, and J Biamonte
    Physical Review A 102, 012415 (2020) 10.1103/PhysRevA.102.012415

    Variational learning of Grover's quantum search algorithm
    M Morales, T Tlyachev, and J Biamonte
    Physical Review A 98, 062333 (2018) 10.1103/PhysRevA.98.062333

    Presenters

    • Jacob Biamonte

      • Beijing Institute of Mathematical Sciences and Applications

    Authors

    • Jacob Biamonte

      • Beijing Institute of Mathematical Sciences and Applications

    View abstract →

  • ORAL

    Presenters

    • Kaiwen Gui

      • University of Chicago

    Authors

    • Kaiwen Gui

      • University of Chicago
    • Alexander M Dalzell

      • AWS Center for Quantum Computing
    • Alessandro Achille

      • AWS AI Labs
    • Martin Suchara

      • Amazon Web Services
      • Amazon Web Service
    • Frederic T Chong

      • University of Chicago
      • Department of Computer Science, University of Chicago
      • ColdQuanta Inc.

    View abstract →

  • ORAL

    Presenters

    • Aroosa Ijaz

      • Univeristy of Waterloo

    Authors

    • Aroosa Ijaz

      • Univeristy of Waterloo
    • Jason W Rocks

      • Boston University
    • Juan Carrasquilla

      • Vector Institute for Artificial Intelligence
    • Evan Peters

      • University of Waterloo
    • Marco Cerezo

      • Los Alamos National Laboratory

    View abstract →

  • ORAL

    Publication: Information flow in parameterized quantum circuits (arXiv:2207.05149)

    Presenters

    • Lasse B Kristensen

      • University of Toronto

    Authors

    • Lasse B Kristensen

      • University of Toronto
    • Abhinav Anand

      • University of Toronto
    • Felix Frohnert

      • University of Copenhagen
    • Sukin Sim

      • Harvard
      • Zapata Computing
    • Alán Aspuru-Guzik

      • University of Toronto
      • University of Toronto, Vector Institute for Artificial Intelligence, Canadian Institute for Advanced Research Lebovic Fellow

    View abstract →

  • ORAL

    Publication: Imaginary components of out-of-time correlators and information scrambling for navigating the learning landscape of a quantum machine learning model. arXiv:2208.13384 [quant-ph]

    Presenters

    • Vinit K Singh

      • Purdue University

    Authors

    • Manas Sajjan

      • Purdue University
    • Vinit K Singh

      • Purdue University
    • Sabre Kais

      • Purdue University

    View abstract →

  • ORAL

    Publication: arXiv:2208.06198

    Presenters

    • Samuel A Wilkinson

      • Friedrich-Alexander University Erlangen-Nuremberg

    Authors

    • Samuel A Wilkinson

      • Friedrich-Alexander University Erlangen-Nuremberg
    • Michael J Hartmann

      • Friedrich-Alexander University Erlangen-Nuremberg
      • Friedrich-Alexander University Erlangen
      • Friedrich-Alexander-Universität Erlangen-Nürnberg

    View abstract →