Good and Bad News for Noisy Variational Quantum Algorithms – Part II

ORAL

Abstract

The quantum approximate optimization algorithm (QAOA) is an appealing proposal to solve NP problems on noisy intermediate-scale quantum (NISQ) hardware. Making NISQ implementations of the QAOA resilient to noise requires short ansatz circuits with as few CNOT gates as possible. In this talk, we present Dynamic-ADAPT-QAOA. Our algorithm significantly reduces the circuit depth and the CNOT count of standard ADAPT-QAOA, a leading proposal for near-term implementations of the QAOA. Throughout our algorithm, the decision to apply CNOT-intensive operations is made dynamically, based on algorithmic benefits. Using density-matrix simulations, we benchmark the noise resilience of ADAPT-QAOA and Dynamic-ADAPT-QAOA. We compute the gate-error probability p below which these algorithms provide, on average, more accurate solutions than the classical, polynomial-time approximation algorithm by Goemans and Williamson. For small systems with 6−10 qubits, we show that p > 0.001 for Dynamic-ADAPT-QAOA. Compared to standard ADAPT-QAOA, this constitutes an order-of-magnitude improvement in noise resilience. This improvement should make Dynamic-ADAPT-QAOA viable for implementations on superconducting NISQ hardware, even in the absence of error mitigation.

* Hitachi Europe

Publication: https://arxiv.org/abs/2309.00047

Presenters

  • Christopher K Long

    The University of Cambridge

Authors

  • Christopher K Long

    The University of Cambridge

  • Nikola Yanakiev

    The University of Cambridge, University of Cambridge

  • Crispin H Barnes

    Cavendish Laboratory, University of Cambridge, The University of Cambridge, University of Cambridge, Univ of Cambridge

  • Normann Mertig

    Hitachi Europe, Hitachi Cambridge Laboratory

  • David R Arvidsson-Shukur

    Hitachi Cambridge Laboratory