Classical shadow tomography for continuous variables quantum systems
Simon Becker, Nilanjana Datta, Ludovico Lami, Cambyse Rouz\'e

TL;DR
This paper introduces a practical continuous variable shadow tomography method for quantum systems, enabling efficient learning of state properties using Gaussian unitaries and measurements, with applications in quantum optics and information.
Contribution
It develops experimentally feasible schemes for CV shadow tomography that handle infinite-dimensional systems and nonlinear functionals, advancing quantum state characterization techniques.
Findings
Sample complexity scales polynomially with inverse accuracy and confidence
Schemes successfully learn expected values of polynomial observables
Numerical results demonstrate effectiveness on relevant quantum states
Abstract
In this article we develop a continuous variable (CV) shadow tomography scheme with wide ranging applications in quantum optics. Our work is motivated by the increasing experimental and technological relevance of CV systems in quantum information, quantum communication, quantum sensing, quantum simulations, quantum computing and error correction. We introduce two experimentally realisable schemes for obtaining classical shadows of CV (possibly non-Gaussian) quantum states using only randomised Gaussian unitaries and easily implementable Gaussian measurements such as homodyne and heterodyne detection. For both schemes, we show that samples of an unknown -mode state suffice to learn the expected value of any -local polynomial in the canonical observables of…
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Taxonomy
TopicsQuantum many-body systems · Quantum Information and Cryptography · Quantum Computing Algorithms and Architecture
