Predicting Gibbs-State Expectation Values with Pure Thermal Shadows

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Abstract

The preparation and computation of many properties of quantum Gibbs states is essential for algorithms such as quantum semidefinite programming and quantum Boltzmann machines. We propose a quantum algorithm that can predict M linear functions of an arbitrary Gibbs state with only O(logM) experimental measurements. Our main insight is that for sufficiently large systems we do not need to prepare the n-qubit mixed Gibbs state explicitly but, instead, we can evolve a random n-qubit pure state in imaginary time. The result then follows by constructing classical shadows of these random pure states. We propose a quantum circuit that implements this algorithm by using quantum signal processing for the imaginary time evolution. We numerically verify the efficiency of the algorithm by simulating the circuit for a ten-spin-1/2 XXZ-Heisenberg model. In addition, we show that the algorithm can be successfully employed as a subroutine for training an eight-qubit fully connected quantum Boltzmann machine.

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Coopmans, L., Kikuchi, Y., & Benedetti, M. (2023). Predicting Gibbs-State Expectation Values with Pure Thermal Shadows. PRX Quantum, 4(1). https://doi.org/10.1103/PRXQuantum.4.010305

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