High-precision quantum algorithms for partial differential equations
Abstract
Quantum computers can produce a quantum encoding of the solution of a system of differential equations exponentially faster than a classical algorithm can produce an explicit description. However, while high-precision quantum algorithms for linear ordinary differential equations are well established, the best previous quantum algorithms for linear partial differential equations (PDEs) have complexity , where is the error tolerance. By developing quantum algorithms based on adaptive-order finite difference methods and spectral methods, we improve the complexity of quantum algorithms for linear PDEs to be , where is the spatial dimension. Our algorithms apply high-precision quantum linear system algorithms to systems whose condition numbers and approximation errors we bound. We develop a finite difference algorithm for the Poisson equation and a spectral algorithm for more general second-order elliptic equations.
Cite
@article{arxiv.2002.07868,
title = {High-precision quantum algorithms for partial differential equations},
author = {Andrew M. Childs and Jin-Peng Liu and Aaron Ostrander},
journal= {arXiv preprint arXiv:2002.07868},
year = {2021}
}
Comments
40 pages. Corrected the dependence on the dimension of the finite difference method