Tensor Network enhanced Dynamic Multiproduct Formulas
Abstract
Tensor networks and quantum computation are two of the most powerful tools for the simulation of quantum many-body systems. Rather than viewing them as competing approaches, here we consider how these two methods can work in tandem. We introduce a novel algorithm that combines tensor networks and quantum computation to produce results that are more accurate than what could be achieved by either method used in isolation. Our algorithm is based on multiproduct formulas (MPF) - a technique that linearly combines Trotter product formulas to reduce algorithmic error. Our algorithm uses a quantum computer to calculate the expectation values and tensor networks to calculate the coefficients used in the linear combination. We present a detailed error analysis of the algorithm and demonstrate the full workflow on a one-dimensional quantum simulation problem on qubits using two IBM quantum computers: and .
Cite
@article{arxiv.2407.17405,
title = {Tensor Network enhanced Dynamic Multiproduct Formulas},
author = {Niall F. Robertson and Bibek Pokharel and Bryce Fuller and Eric Switzer and Oles Shtanko and Mirko Amico and Adam Byrne and Andrea D'Urbano and Salome Hayes-Shuptar and Albert Akhriev and Nathan Keenan and Sergey Bravyi and Sergiy Zhuk},
journal= {arXiv preprint arXiv:2407.17405},
year = {2025}
}