English

Hybrid Gate-Based and Annealing Quantum Computing for Large-Size Ising Problems

Quantum Physics 2022-08-08 v1 Mesoscale and Nanoscale Physics

Abstract

One of the major problems of most quantum computing applications is that the required number of qubits to solve a practical problem is much larger than that of today's quantum hardware. We propose an algorithm, called large-system sampling approximation (LSSA), to solve Ising problems with sizes up to Ngb2NgbN_{\rm{gb}}2^{N_{\rm{gb}}} by an NgbN_{\rm{gb}}-qubit gate-based quantum computer, and with sizes up to Nan2NgbN_{\rm{an}}2^{N_{\rm{gb}}} by a hybrid computational architecture of an NanN_{\rm{an}}-qubit quantum annealer and an NgbN_{\rm{gb}}-qubit gate-based quantum computer. By dividing the full-system problem into smaller subsystem problems, the LSSA algorithm then solves the subsystem problems by either gate-based quantum computers or quantum annealers, optimizes the amplitude contributions of the solutions of the different subsystems with the full-problem Hamiltonian by the variational quantum eigensolver (VQE) on a gate-based quantum computer, and determines the approximated ground-state configuration. We apply the level-1 approximation of LSSA to solving fully-connected random Ising problems up to 160 variables using a 5-qubit gate-based quantum computer, and solving portfolio optimization problems up to 4096 variables using a 100-qubit quantum annealer and a 7-qubit gate-based quantum computer. We demonstrate the use of the level-2 approximation of LSSA to solve the portfolio optimization problems up to 5120 (Ngb22NgbN_{\rm{gb}}2^{2N_{\rm{gb}}}) variables with pretty good performance by using just a 5-qubit (NgbN_{\rm{gb}}-qubit) gate-based quantum computer. The completely new computational concept of the hybrid gate-based and annealing quantum computing architecture opens a promising possibility to investigate large-size Ising problems and combinatorial optimization problems, making practical applications by quantum computing possible in the near future.

Keywords

Cite

@article{arxiv.2208.03283,
  title  = {Hybrid Gate-Based and Annealing Quantum Computing for Large-Size Ising Problems},
  author = {Chen-Yu Liu and Hsi-Sheng Goan},
  journal= {arXiv preprint arXiv:2208.03283},
  year   = {2022}
}

Comments

14 pages, 10 figures

R2 v1 2026-06-25T01:31:13.678Z