Senrui Chen, Francesco Anna Mele, Marco Fanizza, Alfred Li, Zachary Mann, Hsin-Yuan Huang, Yanbei Chen, John Preskill (Mar 20 2026).
Abstract: Continuous-variable systems enable key quantum technologies in computation, communication, and sensing. Bosonic Gaussian states emerge naturally in various such applications, including gravitational-wave and dark-matter detection. A fundamental question is how to characterize an unknown bosonic Gaussian state from as few samples as possible. Despite decades-long exploration, the ultimate efficiency limit remains unclear. In this work, we study the necessary and sufficient number of copies to learn an
n n n -mode Gaussian state, with energy less than
E E E , to
ε \varepsilon ε trace distance with high probability. We prove a lower bound of
Ω ( n 3 / ε 2 ) \Omega(n^3/\varepsilon^2) Ω ( n 3 / ε 2 ) for Gaussian measurements, matching the best known upper bound up to doubly-log energy dependence, and
Ω ( n 2 / ε 2 ) {\Omega}(n^2/\varepsilon^2) Ω ( n 2 / ε 2 ) for arbitrary measurements. We further show an upper bound of
O ~ ( n 2 / ε 2 ) \widetilde{O}(n^2/\varepsilon^2) O ( n 2 / ε 2 ) given that the Gaussian state is promised to be either pure or passive. Interestingly, while Gaussian measurements suffice for nearly optimal learning of pure Gaussian states, non-Gaussian measurements are provably required for optimal learning of passive Gaussian states. Finally, focusing on learning single-mode Gaussian states via non-entangling Gaussian measurements, we provide a nearly tight bound of
Θ ~ ( E / ε 2 ) \widetilde\Theta(E/\varepsilon^2) Θ ( E / ε 2 ) for any non-adaptive schemes, showing adaptivity is indispensable for nearly energy-independent scaling. As a byproduct, we establish sharp bounds on the trace distance between Gaussian states in terms of the total variation distance between their Wigner distributions, and obtain a nearly tight sample complexity bound for learning the Wigner distribution of any Gaussian state to
ε \varepsilon ε total variation distance. Our results greatly advance quantum learning theory in the bosonic regimes and have practical impact in quantum sensing and benchmarking applications.