English

Efficient estimation of Pauli channels

Quantum Physics 2022-02-23 v3

Abstract

Pauli channels are ubiquitous in quantum information, both as a dominant noise source in many computing architectures and as a practical model for analyzing error correction and fault tolerance. Here we prove several results on efficiently learning Pauli channels, and more generally the Pauli projection of a quantum channel. We first derive a procedure for learning a Pauli channel on nn qubits with high probability to a relative precision ϵ\epsilon using O(ϵ2n2n)O\bigl(\epsilon^{-2} n 2^n\bigr) measurements, which is efficient in the Hilbert space dimension. The estimate is robust to state preparation and measurement errors which, together with the relative precision, makes it especially appropriate for applications involving characterization of high-accuracy quantum gates. Next we show that the error rates for an arbitrary set of ss Pauli errors can be estimated to a relative precision ϵ\epsilon using O(ϵ4logslogs/ϵ)O\bigl(\epsilon^{-4} \log s\log s/\epsilon\bigr) measurements. Finally, we show that when the Pauli channel is given by a Markov field with at most kk-local correlations, we can learn an entire nn-qubit Pauli channel to relative precision ϵ\epsilon with only Ok(ϵ2n2logn)O_k\bigl(\epsilon^{-2} n^2 \log n \bigr) measurements, which is efficient in the number of qubits. These results enable a host of applications beyond just characterizing noise in a large-scale quantum system: they pave the way to tailoring quantum codes, optimizing decoders, and customizing fault tolerance procedures to suit a particular device.

Keywords

Cite

@article{arxiv.1907.12976,
  title  = {Efficient estimation of Pauli channels},
  author = {Steven T. Flammia and Joel J. Wallman},
  journal= {arXiv preprint arXiv:1907.12976},
  year   = {2022}
}

Comments

31 pages, 1 figure; v3 some typos fixed

R2 v1 2026-06-23T10:34:54.372Z