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Hamiltonian-Driven Shadow Tomography of Quantum States

19 February 2021
Hong-Ye Hu
Yi-Zhuang You
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Abstract

Classical shadow tomography provides an efficient method for predicting functions of an unknown quantum state from a few measurements of the state. It relies on a unitary channel that efficiently scrambles the quantum information of the state to the measurement basis. Facing the challenge of realizing deep unitary circuits on near-term quantum devices, we explore the scenario in which the unitary channel can be shallow and is generated by a quantum chaotic Hamiltonian via time evolution. We provide an unbiased estimator of the density matrix for all ranges of the evolution time. We analyze the sample complexity of the Hamiltonian-driven shadow tomography. For Pauli observables, we find that it can be more efficient than the unitary-2-design-based shadow tomography in a sequence of intermediate time windows that range from an order-1 scrambling time to a time scale of D1/6D^{1/6}D1/6, given the Hilbert space dimension DDD. In particular, the efficiency of predicting diagonal Pauli observables is improved by a factor of DDD without sacrificing the efficiency of predicting off-diagonal Pauli observables.

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