Noise fingerprints in quantum computers: Machine learning software tools

02/09/2022
by   Stefano Martina, et al.
0

In this paper we present the high-level functionalities of a quantum-classical machine learning software, whose purpose is to learn the main features (the fingerprint) of quantum noise sources affecting a quantum device, as a quantum computer. Specifically, the software architecture is designed to classify successfully (more than 99 different quantum devices with similar technical specifications, or distinct time-dependences of a noise fingerprint in single quantum machines.

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