Hybrid Gate-Based and Annealing Quantum Computing for Large-Size Ising
Problems
- URL: http://arxiv.org/abs/2208.03283v1
- Date: Fri, 5 Aug 2022 17:16:52 GMT
- Title: Hybrid Gate-Based and Annealing Quantum Computing for Large-Size Ising
Problems
- Authors: Chen-Yu Liu and Hsi-Sheng Goan
- Abstract summary: We propose an algorithm, called large-system sampling approximation (LSSA), to solve Ising problems with sizes up to $N_rmgb2N_rmgb$ by an $N_rmgb$-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.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- 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
$N_{\rm{gb}}2^{N_{\rm{gb}}}$ by an $N_{\rm{gb}}$-qubit gate-based quantum
computer, and with sizes up to $N_{\rm{an}}2^{N_{\rm{gb}}}$ by a hybrid
computational architecture of an $N_{\rm{an}}$-qubit quantum annealer and an
$N_{\rm{gb}}$-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
($N_{\rm{gb}}2^{2N_{\rm{gb}}}$) variables with pretty good performance by using
just a 5-qubit ($N_{\rm{gb}}$-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.
Related papers
- Sequential Quantum Computing [41.94295877935867]
We propose and experimentally demonstrate sequential quantum computing (SQC), a paradigm that utilizes multiple or heterogeneous quantum processors.<n>SQC overcomes the limitations of each type of quantum computer by combining their complementary strengths.<n>These results highlight SQC as a powerful and versatile approach for addressing complex quantum optimization problems.
arXiv Detail & Related papers (2025-06-25T17:51:29Z) - Solving the Traveling Salesman Problem via Different Quantum Computing Architectures [0.0]
We study the application of emerging photonic and quantum computing architectures to solving the Traveling Salesman Problem (TSP)
Gate-based quantum computers demonstrated accurate results for small TSP instances in simulation.
Ising-based architectures show improved scalability for larger problem sizes.
arXiv Detail & Related papers (2025-02-24T23:37:19Z) - Solving Constrained Optimization Problems Using Hybrid Qubit-Qumode Quantum Devices [7.954263125127824]
We show how to solve Quadratic Unconstrained Binary Optimization problems using hybrid qubit$qux2014$ devices.
The potential of hybrid quantum computers to tackle complex optimization problems in both academia and industry is highlighted.
arXiv Detail & Related papers (2025-01-20T20:40:58Z) - High-Entanglement Capabilities for Variational Quantum Algorithms: The Poisson Equation Case [0.07366405857677226]
This research attempts to resolve problems by utilizing the IonQ Aria quantum computer capabilities.
We propose a decomposition of the discretized equation matrix (DPEM) based on 2- or 3-qubit entanglement gates and is shown to have $O(1)$ terms with respect to system size.
We also introduce the Globally-Entangling Ansatz which reduces the parameter space of the quantum ansatz while maintaining enough expressibility to find the solution.
arXiv Detail & Related papers (2024-06-14T16:16:50Z) - Towards large-scale quantum optimization solvers with few qubits [59.63282173947468]
We introduce a variational quantum solver for optimizations over $m=mathcalO(nk)$ binary variables using only $n$ qubits, with tunable $k>1$.
We analytically prove that the specific qubit-efficient encoding brings in a super-polynomial mitigation of barren plateaus as a built-in feature.
arXiv Detail & Related papers (2024-01-17T18:59:38Z) - Single-Layer Digitized-Counterdiabatic Quantum Optimization for $p$-spin
Models [8.463477025989542]
We take advantage of a digitized-counterdiabatic quantum optimization (DCQO) algorithm to find an optimal solution of the $p$-spin model up to 4-local interactions.
By further optimizing parameters using variational methods, we solve with unit accuracy 2-spin, 3-spin, and 4-spin problems for $100%$, $93%$, and $83%$ of instances, respectively.
arXiv Detail & Related papers (2023-11-11T22:49:16Z) - Quantum Annealing for Single Image Super-Resolution [86.69338893753886]
We propose a quantum computing-based algorithm to solve the single image super-resolution (SISR) problem.
The proposed AQC-based algorithm is demonstrated to achieve improved speed-up over a classical analog while maintaining comparable SISR accuracy.
arXiv Detail & Related papers (2023-04-18T11:57:15Z) - Solving various NP-Hard problems using exponentially fewer qubits on a
Quantum Computer [0.0]
NP-hard problems are not believed to be exactly solvable through general time algorithms.
In this paper, we build upon a proprietary methodology which logarithmically scales with problem size.
These algorithms are tested on a quantum simulator with graph sizes of over a hundred nodes and on a real quantum computer up to graph sizes of 256.
arXiv Detail & Related papers (2023-01-17T16:03:33Z) - Quantum Worst-Case to Average-Case Reductions for All Linear Problems [66.65497337069792]
We study the problem of designing worst-case to average-case reductions for quantum algorithms.
We provide an explicit and efficient transformation of quantum algorithms that are only correct on a small fraction of their inputs into ones that are correct on all inputs.
arXiv Detail & Related papers (2022-12-06T22:01:49Z) - Solving Larger Optimization Problems Using Parallel Quantum Annealing [0.0]
We show that a hybrid approach combining parallel quantum annealing with graph decomposition allows one to solve larger optimization problem accurately.
We apply the approach on the Maximum Clique problem on graphs with up to 120 nodes and 6395 edges.
arXiv Detail & Related papers (2022-05-24T15:56:15Z) - A Hybrid Quantum-Classical Algorithm for Robust Fitting [47.42391857319388]
We propose a hybrid quantum-classical algorithm for robust fitting.
Our core contribution is a novel robust fitting formulation that solves a sequence of integer programs.
We present results obtained using an actual quantum computer.
arXiv Detail & Related papers (2022-01-25T05:59:24Z) - Multiple Query Optimization using a Hybrid Approach of Classical and
Quantum Computing [1.7077661158850292]
We tackle the multiple query optimization problem (MQO) which is an important NP-hard problem in the area of data-intensive problems.
We propose a novel hybrid classical-quantum algorithm to solve the MQO on a gate-based quantum computer.
Our algorithm shows a qubit efficiency of close to 99% which is almost a factor of 2 higher compared to the state of the art implementation.
arXiv Detail & Related papers (2021-07-22T08:12:49Z) - Adiabatic Quantum Graph Matching with Permutation Matrix Constraints [75.88678895180189]
Matching problems on 3D shapes and images are frequently formulated as quadratic assignment problems (QAPs) with permutation matrix constraints, which are NP-hard.
We propose several reformulations of QAPs as unconstrained problems suitable for efficient execution on quantum hardware.
The proposed algorithm has the potential to scale to higher dimensions on future quantum computing architectures.
arXiv Detail & Related papers (2021-07-08T17:59:55Z) - Space-efficient binary optimization for variational computing [68.8204255655161]
We show that it is possible to greatly reduce the number of qubits needed for the Traveling Salesman Problem.
We also propose encoding schemes which smoothly interpolate between the qubit-efficient and the circuit depth-efficient models.
arXiv Detail & Related papers (2020-09-15T18:17:27Z) - Electronic structure with direct diagonalization on a D-Wave quantum
annealer [62.997667081978825]
This work implements the general Quantum Annealer Eigensolver (QAE) algorithm to solve the molecular electronic Hamiltonian eigenvalue-eigenvector problem on a D-Wave 2000Q quantum annealer.
We demonstrate the use of D-Wave hardware for obtaining ground and electronically excited states across a variety of small molecular systems.
arXiv Detail & Related papers (2020-09-02T22:46:47Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.