Scalably learning quantum many-body Hamiltonians from dynamical data

09/28/2022
by   Frederik Wilde, et al.
0

The physics of a closed quantum mechanical system is governed by its Hamiltonian. However, in most practical situations, this Hamiltonian is not precisely known, and ultimately all there is are data obtained from measurements on the system. In this work, we introduce a highly scalable, data-driven approach to learning families of interacting many-body Hamiltonians from dynamical data, by bringing together techniques from gradient-based optimization from machine learning with efficient quantum state representations in terms of tensor networks. Our approach is highly practical, experimentally friendly, and intrinsically scalable to allow for system sizes of above 100 spins. In particular, we demonstrate on synthetic data that the algorithm works even if one is restricted to one simple initial state, a small number of single-qubit observables, and time evolution up to relatively short times. For the concrete example of the one-dimensional Heisenberg model our algorithm exhibits an error constant in the system size and scaling as the inverse square root of the size of the data set.

READ FULL TEXT
research
10/06/2022

Learning many-body Hamiltonians with Heisenberg-limited scaling

Learning a many-body Hamiltonian from its dynamics is a fundamental prob...
research
02/17/2022

Scalable approach to many-body localization via quantum data

We are interested in how quantum data can allow for practical solutions ...
research
02/14/2020

Learning models of quantum systems from experiments

An isolated system of interacting quantum particles is described by a Ha...
research
03/15/2021

Tomography of time-dependent quantum spin networks with machine learning

Interacting spin networks are fundamental to quantum computing. Data-bas...
research
04/21/2022

Dynamical simulation via quantum machine learning with provable generalization

Much attention has been paid to dynamical simulation and quantum machine...
research
07/10/2023

Heisenberg-limited Hamiltonian learning for interacting bosons

We develop a protocol for learning a class of interacting bosonic Hamilt...
research
11/07/2022

Quantum-probabilistic Hamiltonian learning for generative modelling anomaly detection

The Hamiltonian of an isolated quantum mechanical system determines its ...

Please sign up or login with your details

Forgot password? Click here to reset