Constrained quantum optimization for extractive summarization on a trapped-ion quantum computer

ORAL

Abstract

Realizing the potential of near-term quantum computers to solve industry-relevant constrained optimization problems is a promising path to quantum advantage. In this work, we consider the extractive summarization constrained-optimization problem and demonstrate the largest-to-date execution of a quantum optimization algorithm that natively preserves constraints on quantum hardware. We report results with the Quantum Alternating Operator Ansatz algorithm with a Hamming-weight-preserving XY mixer (XY-QAOA) on trapped-ion quantum computer. We successfully execute XY-QAOA circuits that restrict the quantum evolution to the in-constraint subspace, using up to 20 qubits and a two-qubit gate depth of up to 159. We demonstrate the necessity of directly encoding the constraints into the quantum circuit by showing the trade-off between the in-constraint probability and the quality of the solution that is implicit if unconstrained quantum optimization methods are used. We show that this trade-off makes choosing good parameters difficult in general. We compare XY-QAOA to the Layer Variational Quantum Eigensolver algorithm, which has a highly expressive constant-depth circuit, and the Quantum Approximate Optimization Algorithm. We discuss the respective trade-offs of the algorithms and implications for their execution on near-term quantum hardware.

*The authors thank Tony Uttley, Brian Neyenhuis, Jenni Strabley and the whole Quantinuum team for their support and feedback, and especially for providing us preview access to the Quantinuum H1-1 upgraded to 20 qubits. The authors thank Andreas Bärtschi and Stephan Eidenbenz for the helpful discussions on the Dicke state preparation. Additionally, the authors appreciate the support of their FLARE colleagues at JPMorgan Chase. Pradeep Niroula acknowledges funding by the DoE ASCR Accelerated Research in Quantum Computing program (award No. DE-SC0020312), DoE QSA, NSL QLCI (award No. OMA-2120757), NSF PFCQC program, DoE ASCR Quantum Testbed Pathfnder program (award No. DE-SC0019040), U.S. Department of Energy Award No. DE-SC0019499, AFOSR, ARO MURI, AFOSR MURI, and DARPA SAVaNT ADVENT.

Publication: Publication in Scientific Reports of the journal family of Nature on 10/13/2022: https://www.nature.com/articles/s41598-022-20853-w
ArXiv preprint: https://arxiv.org/abs/2206.06290

Presenters

  • Romina Yalovetzky

    • JPMorgan Chase

Authors

  • Romina Yalovetzky

    • JPMorgan Chase
  • Pradeep Niroula

    • University of Maryland, College Park
  • Ruslan Shaydulin

    • JPMorgan Chase
    • JPMorgan Chase, New York, NY, USA
  • Pierre Minssen

    • JPMorgan Chase
  • Dylan Herman

    • JPMorgan Chase, New York, NY, USA
    • JPMorgan Chase
  • Shaohan Hu

    • JPMorgan Chase, New York, NY, USA
    • JPMorgan Chase
  • Marco Pistoia

    • JPMorgan Chase, New York, NY, USA
    • JPMorgan Chase
    • JP Morgan Chase