Assessing non-Gaussian quantum state conversion with the stellar rank
Journal article, 2026

State conversion is a fundamental task in quantum information processing. Quantum resource theories allow for analyzing and bounding conversions that use restricted sets of operations. In the context of continuous-variable systems, state conversions restricted to Gaussian operations are crucial for both fundamental and practical reasons, particularly in state preparation and quantum computing with bosonic codes. However, previous analysis did not consider the relevant case of approximate state conversion. In this work, we introduce a framework for assessing approximate Gaussian state conversion by extending the stellar rank to the approximate stellar rank, which serves as an operational measure of non-Gaussianity. We derive bounds for Gaussian state conversion and distillation under approximate and probabilistic conditions, yielding new no-go results for non-Gaussian state preparation and enabling a reliable assessment of the performance of Gaussian conversion protocols. We also provide an open-source Python library to compute stellar-rank-related quantities and to assess Gaussian conversion.

Author

Oliver Hahn

Chalmers, Microtechnology and Nanoscience (MC2), Applied Quantum Physics

University of Tokyo

Maxime Garnier

Université Paris PSL

Giulia Ferrini

Chalmers, Microtechnology and Nanoscience (MC2), Applied Quantum Physics

Alessandro Ferraro

University of Milan

Queen's University Belfast

Ulysse Chabaud

Université Paris PSL

QUANTUM

2521-327X (ISSN)

Vol. 10 2095

Subject Categories (SSIF 2025)

Other Physics Topics

DOI

10.22331/q-2026-05-05-2095

More information

Latest update

5/29/2026