Experimental learning of quantum states

30 Nov 2017Andrea RocchettoScott AaronsonSimone SeveriniGonzalo CarvachoDavide PoderiniIris AgrestiMarco BentivegnaFabio Sciarrino

The number of parameters describing a quantum state is well known to grow exponentially with the number of particles. This scaling clearly limits our ability to do tomography to systems with no more than a few qubits and has been used to argue against the universal validity of quantum mechanics itself... (read more)

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