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Parallel Quantum Signal Processing Via Polynomial Factorization

Quantum Physics 2025-08-28 v2

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 ρ\rho, QSP enables the evaluation of nonlinear functions of the form tr(P(ρ))\text{tr}(P(\rho)) for a polynomial P(x)P(x), which encompasses relevant properties like entropies and fidelity. However, QSP is a sequential algorithm: implementing a degree-dd polynomial necessitates dd queries to the encoding, equating to a query depth dd. Here, we reduce the depth of these property estimation algorithms by developing Parallel Quantum Signal Processing. Our algorithm parallelizes the computation of tr(P(ρ))\text{tr} (P(\rho)) over kk systems and reduces the query depth to d/kd/k, 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 O(poly(d)2O(k))O( \text{poly}(d) 2^{O(k)} ). We achieve this result by factorizing P(x)P(x) into a product of kk smaller polynomials of degree O(d/k)O(d/k), which are each implemented in parallel with QSP, and subsequently multiplied together with a swap test to reconstruct P(x)P(x). 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.

Keywords

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}
}