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Optimal number-conserved linear encoding for practical fermionic simulation

M. H. Cheng, Yu-Cheng Chen, Qian Wang, V. Bartsch, A. C. Medina, M. S. Kim, Alice Hu, Min-Hsiu Hsieh·September 17, 2023·DOI: 10.1103/lzf5-x6hc
Physics

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Abstract

Number-conserved subspace encoding reduces resources needed for quantum simulations, but scalable complexity trade-off bounds for M modes and N particles with O(NlogM) qubits have remained unknown. We study qubit-gate-measurement trade-offs through the lens of classical/quantum error correction complexity and develop a framework of fermionic gate and measurement complexity based on classical encoder/decoder appearing in the error correction framework. We demonstrate optimal encoding with random classical parity check code and propose the Fermionic Expectation Decoder for scalable probability decoding in O(M4) bases. The protocol is tested with variational quantum eigensolver on LiH in the STO-3G and 6-31G bases, and H2 potential energy curve in the 6-311G* basis.

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