True experimental reconstruction of quantum states and processes via convex optimization

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作者
Akshay Gaikwad
Kavita Arvind
机构
[1] Indian Institute of Science Education and Research (IISER) Mohali,Department of Physical Sciences
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NMR quantum computing; Quantum state tomography; Quantum process tomography; Constrained convex optimization;
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摘要
We use a constrained convex optimization (CCO) method to experimentally characterize arbitrary quantum states and unknown quantum processes on a two-qubit NMR quantum information processor. Standard protocols for quantum state and quantum process tomography are based on linear inversion, which often result in an unphysical density matrix and hence an invalid process matrix. The CCO method, on the other hand, produces physically valid density matrices and process matrices, with significantly improved fidelity as compared to the standard methods. We use the CCO method to estimate the Kraus operators and characterize gates in the presence of errors due to decoherence. We then assume Markovian system dynamics and use a Lindblad master equation in conjunction with the CCO method, to completely characterize the noise processes present in the NMR system.
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