Publication | Open Access
Quantum process tomography via completely positive and trace-preserving projection
81
Citations
37
References
2018
Year
Quantum Process TomographyGradient DescentEngineeringQuantum MeasurementMeasurement ProblemQuantum ComputingQuantum Optimization AlgorithmQuantum SimulationQuantum ProcessQuantum EntanglementApproximation TheoryQuantum ScienceQuantum TomographyPhysicsQuantum AlgorithmInverse ProblemsComputer ScienceQuantum DecoherenceNatural Sciences
We present an algorithm for projecting superoperators onto the set of completely positive, trace-preserving maps. When combined with gradient descent of a cost function, the procedure results in an algorithm for quantum process tomography: finding the quantum process that best fits a set of sufficient observations. We compare the performance of our algorithm to the diluted iterative algorithm as well as second-order solvers interfaced with the popular cvx package for matlab, and find it to be significantly faster and more accurate while guaranteeing a physical estimate.
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