Fourier Neural Operators for Learning Dynamics in Quantum Spin Systems
- URL: http://arxiv.org/abs/2409.03302v1
- Date: Thu, 5 Sep 2024 07:18:09 GMT
- Title: Fourier Neural Operators for Learning Dynamics in Quantum Spin Systems
- Authors: Freya Shah, Taylor L. Patti, Julius Berner, Bahareh Tolooshams, Jean Kossaifi, Anima Anandkumar,
- Abstract summary: We use FNOs to model the evolution of random quantum spin systems.
We apply FNOs to a compact set of Hamiltonian observables instead of the entire $2n$ quantum wavefunction.
- Score: 77.88054335119074
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Fourier Neural Operators (FNOs) excel on tasks using functional data, such as those originating from partial differential equations. Such characteristics render them an effective approach for simulating the time evolution of quantum wavefunctions, which is a computationally challenging, yet coveted task for understanding quantum systems. In this manuscript, we use FNOs to model the evolution of random quantum spin systems, so chosen due to their representative quantum dynamics and minimal symmetry. We explore two distinct FNO architectures and examine their performance for learning and predicting time evolution using both random and low-energy input states. Additionally, we apply FNOs to a compact set of Hamiltonian observables ($\sim\text{poly}(n)$) instead of the entire $2^n$ quantum wavefunction, which greatly reduces the size of our inputs and outputs and, consequently, the requisite dimensions of the resulting FNOs. Moreover, this Hamiltonian observable-based method demonstrates that FNOs can effectively distill information from high-dimensional spaces into lower-dimensional spaces. The extrapolation of Hamiltonian observables to times later than those used in training is of particular interest, as this stands to fundamentally increase the simulatability of quantum systems past both the coherence times of contemporary quantum architectures and the circuit-depths of tractable tensor networks.
Related papers
- Neural Quantum Propagators for Driven-Dissipative Quantum Dynamics [0.0]
We develop driven neural quantum propagators (NQP), a universal neural network framework that solves driven-dissipative quantum dynamics.
NQP can handle arbitrary initial quantum states, adapt to various external fields, and simulate long-time dynamics, even when trained on far shorter time windows.
We demonstrate the effectiveness of our approach by studying the spin-boson and the three-state transition Gamma models.
arXiv Detail & Related papers (2024-10-21T15:13:17Z) - Expanding Hardware-Efficiently Manipulable Hilbert Space via Hamiltonian
Embedding [9.219297088819634]
Many promising quantum applications depend on the efficient quantum simulation of an exponentially large sparse Hamiltonian.
In this paper, we propose a technique named Hamiltonian embedding.
This technique simulates a desired sparse Hamiltonian by embedding it into the evolution of a larger and more structured quantum system.
arXiv Detail & Related papers (2024-01-16T18:19:29Z) - Quantum data learning for quantum simulations in high-energy physics [55.41644538483948]
We explore the applicability of quantum-data learning to practical problems in high-energy physics.
We make use of ansatz based on quantum convolutional neural networks and numerically show that it is capable of recognizing quantum phases of ground states.
The observation of non-trivial learning properties demonstrated in these benchmarks will motivate further exploration of the quantum-data learning architecture in high-energy physics.
arXiv Detail & Related papers (2023-06-29T18:00:01Z) - Quantum Simulations in Effective Model Spaces (I): Hamiltonian
Learning-VQE using Digital Quantum Computers and Application to the
Lipkin-Meshkov-Glick Model [0.0]
We introduce an iterative hybrid-classical-quantum algorithm, Hamiltonian learning variational quantum eigensolver (HL-VQE)
HL-VQE is found to provide an exponential improvement in Lipkin-Meshkov-Glick model calculations.
This work constitutes a step in the development of entanglement-driven quantum algorithms for the description of nuclear systems.
arXiv Detail & Related papers (2023-01-14T21:10:02Z) - Towards Neural Variational Monte Carlo That Scales Linearly with System
Size [67.09349921751341]
Quantum many-body problems are central to demystifying some exotic quantum phenomena, e.g., high-temperature superconductors.
The combination of neural networks (NN) for representing quantum states, and the Variational Monte Carlo (VMC) algorithm, has been shown to be a promising method for solving such problems.
We propose a NN architecture called Vector-Quantized Neural Quantum States (VQ-NQS) that utilizes vector-quantization techniques to leverage redundancies in the local-energy calculations of the VMC algorithm.
arXiv Detail & Related papers (2022-12-21T19:00:04Z) - Entanglement Forging with generative neural network models [0.0]
We show that a hybrid quantum-classical variational ans"atze can forge entanglement to lower quantum resource overhead.
The method is efficient in terms of the number of measurements required to achieve fixed precision on expected values of observables.
arXiv Detail & Related papers (2022-05-02T14:29:17Z) - Quantum algorithms for quantum dynamics: A performance study on the
spin-boson model [68.8204255655161]
Quantum algorithms for quantum dynamics simulations are traditionally based on implementing a Trotter-approximation of the time-evolution operator.
variational quantum algorithms have become an indispensable alternative, enabling small-scale simulations on present-day hardware.
We show that, despite providing a clear reduction of quantum gate cost, the variational method in its current implementation is unlikely to lead to a quantum advantage.
arXiv Detail & Related papers (2021-08-09T18:00:05Z) - The Hintons in your Neural Network: a Quantum Field Theory View of Deep
Learning [84.33745072274942]
We show how to represent linear and non-linear layers as unitary quantum gates, and interpret the fundamental excitations of the quantum model as particles.
On top of opening a new perspective and techniques for studying neural networks, the quantum formulation is well suited for optical quantum computing.
arXiv Detail & Related papers (2021-03-08T17:24:29Z) - Solving Quantum Master Equations with Deep Quantum Neural Networks [0.0]
We use deep quantum feedforward neural networks capable of universal quantum computation to represent the mixed states for open quantum many-body systems.
Owning to the special structure of the quantum networks, this approach enjoys a number of notable features, including the absence of barren plateaus.
arXiv Detail & Related papers (2020-08-12T18:00:08Z) - Variational Monte Carlo calculations of $\mathbf{A\leq 4}$ nuclei with
an artificial neural-network correlator ansatz [62.997667081978825]
We introduce a neural-network quantum state ansatz to model the ground-state wave function of light nuclei.
We compute the binding energies and point-nucleon densities of $Aleq 4$ nuclei as emerging from a leading-order pionless effective field theory Hamiltonian.
arXiv Detail & Related papers (2020-07-28T14:52:28Z)
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.