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MAURO PATERNOSTRO

Experimental property-reconstruction in a photonic quantum extreme learning machine

  • Authors: Suprano, A.; Zia, D.; Innocenti, L.; Lorenzo, S.; Cimini, V.; Giordani, T.; Palmisano, I.; Polino, E.; Spagnolo, N.; Sciarrino, F.; Palma, G.M.; Ferraro, A.; Paternostro, M.
  • Publication year: 2024
  • Type: Articolo in rivista
  • OA Link: http://hdl.handle.net/10447/627414

Abstract

Recent developments have led to the possibility of embedding machine learning tools into experi- mental platforms to address key problems, including the characterization of the properties of quantum states. Leveraging on this, we implement a quantum extreme learning machine in a photonic platform to achieve resource-efficient and accurate characterization of the polarization state of a photon. The underlying reservoir dynamics through which such input state evolves is implemented using the coined quantum walk of high-dimensional photonic orbital angular momentum, and performing projective measurements over a fixed basis. We demonstrate how the reconstruction of an unknown polarization state does not need a careful characterization of the measurement apparatus and is robust to experimental imperfections, thus representing a promising route for resource-economic state characterisation