Variational Quantum-Neural Hybrid Eigensolver

ORAL

Abstract

The variational quantum eigensolver (VQE) is one of the most representative quantum algorithms in the noisy intermediate-size quantum (NISQ) era, and is generally speculated to deliver one of the first quantum advantages for the ground-state simulations of some non-trivial Hamiltonians. However, short quantum coherence time and limited availability of quantum hardware resources in the NISQ hardware strongly restrain the capacity and expressiveness of VQEs. In this work, we introduce the variational quantum-neural hybrid eigensolver (VQNHE) in which the shallow-circuit quantum ansatz can be further enhanced by classical post-processing with neural networks. We show that VQNHE consistently and significantly outperforms VQE in simulating ground-state energies of quantum spins and molecules given the same amount of quantum resources. More importantly, we demonstrate that for arbitrary post-processing neural functions, VQNHE only incurs an polynomial overhead of processing time and represents the first scalable method to exponentially accelerate VQE with non-unitary post-processing that can be efficiently implemented in the NISQ era.

*This work is supported in part by the NSFC under Grant No. 11825404 (SXZ, ZQW, and HY), the CAS Strategic Priority Research Program under Grant No. XDB28000000 (HY), and Beijing Municipal Science and Technology Commission under Grant No. Z181100004218001 (HY).

Publication: arXiv:2106.05105

Presenters

  • Zhouquan Wan

    • Tsinghua University

Authors

  • Zhouquan Wan

    • Tsinghua University
  • Shixin Zhang

    • Tsinghua University
  • Chee Kong Lee

    • Massachusetts Institute of Technology MIT
  • Shengyu Zhang

    • Tencent
  • Hong Yao

    • Tsinghua University
    • Institue for Advanced Study, Tsinghua University