Parallel Quantum Signal Processing Via Polynomial Factorization
Abstract
Quantum signal processing (QSP) is a methodology for constructing polynomial transformations of a linear operator encoded in a unitary. Applied to an encoding of a state , QSP enables the evaluation of nonlinear functions of the form for a polynomial , which encompasses relevant properties like entropies and fidelity. However, QSP is a sequential algorithm: implementing a degree- polynomial necessitates queries to the encoding, equating to a query depth . Here, we reduce the depth of these property estimation algorithms by developing Parallel Quantum Signal Processing. Our algorithm parallelizes the computation of over systems and reduces the query depth to , thus enabling a family of time-space tradeoffs for QSP. This furnishes a property estimation algorithm suitable for distributed quantum computers, and is realized at the expense of increasing the number of measurements by a factor . We achieve this result by factorizing into a product of smaller polynomials of degree , which are each implemented in parallel with QSP, and subsequently multiplied together with a swap test to reconstruct . We characterize the achievable class of polynomials by appealing to the fundamental theorem of algebra, and demonstrate application to canonical problems including entropy estimation and partition function evaluation.
Cite
@article{arxiv.2409.19043,
title = {Parallel Quantum Signal Processing Via Polynomial Factorization},
author = {John M. Martyn and Zane M. Rossi and Kevin Z. Cheng and Yuan Liu and Isaac L. Chuang},
journal= {arXiv preprint arXiv:2409.19043},
year = {2025}
}