PROJECT OVERVIEW
The quantum approximate optimization algorithm (QAOA) has proved to be an effective classical-quantum algorithm serving multiple purposes, from solving combinatorial optimization problems to finding the ground state of many-body quantum systems. Since the QAOA is an Ansatz-dependent algorithm, there is always a need to design Ansätze for better optimization. To this end, we propose a digitized version of the QAOA enhanced via the use of shortcuts to adiabaticity. Specifically, we use a counterdiabatic (CD) driving term to design a better Ansatz, along with the Hamiltonian and mixing terms, enhancing the global performance. We apply our digitized-CD QAOA to Ising models, classical optimization problems, and the 𝑃-spin model, demonstrating that it outperforms the standard QAOA in all cases we study.
DETAILS
- Research Type Article
- RESEARCH YEAR 2022
- Journal Name Physical Review Research
- Authors P. Chandarana, N. N. Hegade, K. Paul, F. Albarrán-Arriagada, Enrique Solano, A. del Campo, and X. Chen
- DOI 10.1103/PhysRevResearch.4.013141