Ultrafast Quantum Process Tomography via Continuous Measurement and Convex Optimization

ORAL

Abstract

Quantum process tomography (QPT) is an essential tool to diagnose the implementation of a dynamical map. However, the standard protocol is extremely resource intensive. For a Hilbert space of dimension $d$, it requires $d^2$ different input preparations followed by state tomography via the estimation of the expectation values of $d^2-1$ orthogonal observables. We show that when the process is nearly unitary, we can dramatically improve the efficiency and robustness of QPT through a collective continuous measurement protocol on an ensemble of identically prepared systems. Given the measurement history we obtain the process matrix via a convex program that optimizes a desired cost function. We study two estimators: least-squares and compressive sensing. Both allow rapid QPT due to the condition of complete positivity of the map; this is a powerful constraint to force the process to be physical and consistent with the data. We apply the method to a real experimental implementation, where optimal control is used to perform a unitary map on a $d=8$ dimensional system of hyperfine levels in cesium atoms, and obtain the measurement record via Faraday spectroscopy of a laser probe.

Authors

  • Charles Baldwin

    CQuIC University of New Mexico

  • Carlos Riofrio

    Free University of Berlin

  • Ivan Deutsch

    University of New Mexico, CQuIC University of New Mexico