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Bibliographic Details
Main Authors: Sakurai, Akitada, Hayashi, Aoi, Munro, William John, Nemoto, Kae
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2405.14245
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author Sakurai, Akitada
Hayashi, Aoi
Munro, William John
Nemoto, Kae
author_facet Sakurai, Akitada
Hayashi, Aoi
Munro, William John
Nemoto, Kae
contents A quadrillion dimensional Hilbert space hosted by a quantum processor with over 50 physical qubits has been expected to be powerful enough to perform computational tasks ranging from simulations of many-body physics to complex financial modeling. Despite few examples and demonstrations, it is still not clear how we can utilize such a large Hilbert space as a computational resource; in particular, how a simple and small quantum system could solve non-trivial computational tasks. In this paper, we show a simple Ising model capable of performing such non-trivial computational tasks in a quantum neural network model. An Ising spin chain as small as ten qubits can solve a practical image classification task with high accuracy. To evaluate the mechanism of its computation, we examine how the symmetries of the Hamiltonian would affect its computational power. We show how the interplay between complexity and integrability/symmetries of the quantum system dictates the performance as quantum neural network.
format Preprint
id arxiv_https___arxiv_org_abs_2405_14245
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Simple Hamiltonian dynamics is a powerful quantum processing resource
Sakurai, Akitada
Hayashi, Aoi
Munro, William John
Nemoto, Kae
Quantum Physics
A quadrillion dimensional Hilbert space hosted by a quantum processor with over 50 physical qubits has been expected to be powerful enough to perform computational tasks ranging from simulations of many-body physics to complex financial modeling. Despite few examples and demonstrations, it is still not clear how we can utilize such a large Hilbert space as a computational resource; in particular, how a simple and small quantum system could solve non-trivial computational tasks. In this paper, we show a simple Ising model capable of performing such non-trivial computational tasks in a quantum neural network model. An Ising spin chain as small as ten qubits can solve a practical image classification task with high accuracy. To evaluate the mechanism of its computation, we examine how the symmetries of the Hamiltonian would affect its computational power. We show how the interplay between complexity and integrability/symmetries of the quantum system dictates the performance as quantum neural network.
title Simple Hamiltonian dynamics is a powerful quantum processing resource
topic Quantum Physics
url https://arxiv.org/abs/2405.14245