English

Rodeo Algorithm for Quantum Computing

Quantum Physics 2021-07-26 v3 Nuclear Theory Computational Physics

Abstract

We present a stochastic quantum computing algorithm that can prepare any eigenvector of a quantum Hamiltonian within a selected energy interval [Eϵ,E+ϵ][E-\epsilon, E+\epsilon]. In order to reduce the spectral weight of all other eigenvectors by a suppression factor δ\delta, the required computational effort scales as O[logδ/(pϵ)]O[|\log \delta|/(p \epsilon)], where pp is the squared overlap of the initial state with the target eigenvector. The method, which we call the rodeo algorithm, uses auxiliary qubits to control the time evolution of the Hamiltonian minus some tunable parameter EE. With each auxiliary qubit measurement, the amplitudes of the eigenvectors are multiplied by a stochastic factor that depends on the proximity of their energy to EE. In this manner, we converge to the target eigenvector with exponential accuracy in the number of measurements. In addition to preparing eigenvectors, the method can also compute the full spectrum of the Hamiltonian. We illustrate the performance with several examples. For energy eigenvalue determination with error ϵ\epsilon, the computational scaling is O[(logϵ)2/(pϵ)]O[(\log \epsilon)^2/(p \epsilon)]. For eigenstate preparation, the computational scaling is O(logΔ/p)O(\log \Delta/p), where Δ\Delta is the magnitude of the orthogonal component of the residual vector. The speed for eigenstate preparation is exponentially faster than that for phase estimation or adiabatic evolution.

Keywords

Cite

@article{arxiv.2009.04092,
  title  = {Rodeo Algorithm for Quantum Computing},
  author = {Kenneth Choi and Dean Lee and Joey Bonitati and Zhengrong Qian and Jacob Watkins},
  journal= {arXiv preprint arXiv:2009.04092},
  year   = {2021}
}

Comments

Added new material on algorithmic performance and preconditioning. 5 pages and 6 figures (main text), 2 pages and 3 figures (supplemental materials)