Andrew Eddins, Tanvi Gujarati, et al.
APS March Meeting 2021
We consider the task of estimating the expectation value of an n-qubit tensor product observable in the output state of a shallow quantum circuit. This task is a cornerstone of variational quantum algorithms for optimization, machine learning, and the simulation of quantum many-body systems. Here we study its computational complexity for constant-depth quantum circuits and tensor products of single-qubit observables which are (a) close to the identity, (b) positive semidefinite, (c) arbitrary. We show that the mean value problem admits a classical approximation algorithm with polynomial runtime in case (a) and subexponential runtime in case (b). In case (c) we give a linear-time algorithm for geometrically local circuits on a two-dimensional grid, which is based on a Monte Carlo method combined with Matrix Product State techniques.
Andrew Eddins, Tanvi Gujarati, et al.
APS March Meeting 2021
Jiri Stehlik, David Zajac, et al.
APS March Meeting 2021
Guglielmo Mazzola, Simon Mathis, et al.
APS March Meeting 2021
Pauline J. Ollitrault, Abhinav Kandala, et al.
PRResearch