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Qubit-efficient simulation of thermal states with quantum tensor networks

Yuxuan Zhang, Shahin Jahanbani, Daoheng Niu, Reza Haghshenas, A. Potter·May 12, 2022·DOI: 10.1103/physrevb.106.165126
Physics

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Abstract

We present a holographic quantum simulation algorithm to variationally prepare thermal states of d -dimensional interacting quantum many-body systems, using only enough hardware qubits to represent a ( d -1)-dimensional cross-section. This technique implements the thermal state by approximately unraveling the quantum matrix-product density operator (qMPDO) into a stochastic mixture of quantum matrix product states (sto-qMPS). The parameters of the quantum circuits generating the qMPS and of the probability distribution generating the stochastic mixture are de-termined through a variational optimization procedure. We demonstrate a small-scale proof of principle demonstration of this technique on Quantinuum’s trapped-ion quantum processor to simulate thermal properties of correlated spin-chains over a wide temperature range using only a single pair of hardware qubits. Then, through classical simulations, we explore the representational power of two versions of sto-qMPS ansatzes for larger and deeper circuits and establish empirical relationships between the circuit resources and the accuracy of the variational free-energy.

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