Neural-network quantum state tomography

ORAL

Abstract

The reconstruction of an unknown quantum state from simple experimental measurements, quantum state tomography (QST), is a fundamental tool to investigate complex quantum systems, validate quantum devices and fully exploit quantum resources. In this talk, we introduce a novel scheme for QST using machine-learning. The wavefunction of an arbitrary many-body system is parametrized with a standard neural network, which is trained on raw data to approximate both the amplitudes and the phases of the target quantum state. This approach allows one to reconstruct highly-entangled states and reproduce challenging quantities, such as entanglement entropy, from simple measurements already available in the experiments. We show the main features of the “Neural-Network QST” and demonstrate its performances on a variety of examples, ranging from the prototypical W state, to unitary dynamics and ground states of many-body Hamiltonians in one and two dimensions.

Presenters

  • Giacomo Torlai

    University of Waterloo

Authors

  • Giacomo Torlai

    University of Waterloo

  • Guglielmo Mazzola

    ETH, ITP, ETH Zurich

  • Juan Carrasquilla

    Dwave, D-Wave INC

  • Matthias Troyer

    Microsoft Research, Quantum Architectures and Computation Group, Microsoft Research, Microsoft, ITP, ETH Zurich

  • Roger Melko

    Perimeter Institute for Theoretical Physics, University of Waterloo, Univ of Waterloo

  • Giuseppe Carleo

    Institute for Theoretical Physics, ETH, ETH, ITP, ETH Zurich