Quantum bootstrapping via compressed quantum Hamiltonian learning

被引:28
|
作者
Wiebe, Nathan [1 ]
Granade, Christopher [2 ,3 ]
Cory, D. G. [3 ,4 ,5 ,6 ]
机构
[1] Microsoft Res, Quantum Architectures & Computat Grp, Redmond, WA 98052 USA
[2] Univ Waterloo, Dept Phys, Waterloo, ON N2L 3G1, Canada
[3] Univ Waterloo, Inst Quantum Comp, Waterloo, ON N2L 3G1, Canada
[4] Univ Waterloo, Dept Chem, Waterloo, ON N2L 3G1, Canada
[5] Univ Waterloo, Perimeter Inst, Waterloo, ON N2L 2Y5, Canada
[6] Canadian Inst Adv Res, Toronto, ON M5G 1Z8, Canada
来源
NEW JOURNAL OF PHYSICS | 2015年 / 17卷
基金
加拿大自然科学与工程研究理事会;
关键词
quantum information; characterization; Lieb-Robinson bounds; machine learning; quantum simulation; PROPAGATION; ALGORITHMS;
D O I
10.1088/1367-2630/17/2/022005
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
A major problem facing the development of quantum computers or large scale quantum simulators is that general methods for characterizing and controlling are intractable. We provide a new approach to this problem that uses small quantum simulators to efficiently characterize and learn control models for larger devices. Our protocol achieves this by using Bayesian inference in concert with Lieb-Robinson bounds and interactive quantum learning methods to achieve compressed simulations for characterization. We also show that the Lieb-Robinson velocity is epistemic for our protocol, meaning that information propagates at a rate that depends on the uncertainty in the system Hamiltonian. We illustrate the efficiency of our bootstrapping protocol by showing numerically that an 8 qubit Ising model simulator can be used to calibrate and control a 50 qubit Ising simulator while using only about 750 kilobits of experimental data. Finally, we provide upper bounds for the Fisher information that show that the number of experiments needed to characterize a system rapidly diverges as the duration of the experiments used in the characterization shrinks, which motivates the use of methods such as ours that do not require short evolution times.
引用
收藏
页数:21
相关论文
共 50 条
  • [21] Learning the Effective Spin Hamiltonian of a Quantum Magnet
    于思拙
    高源
    陈斌斌
    李伟
    Chinese Physics Letters, 2021, 38 (09) : 144 - 162
  • [22] Deep Reinforcement Learning for Quantum Hamiltonian Engineering
    Peng, Pai
    Huang, Xiaoyang
    Yin, Chao
    Joseph, Linta
    Ramanathan, Chandrasekhar
    Cappellaro, Paola
    PHYSICAL REVIEW APPLIED, 2022, 18 (02)
  • [23] Deep Learning Quantum States for Hamiltonian Estimation
    Ma, Xinran
    Tu, Z. C.
    Ran, Shi-Ju
    CHINESE PHYSICS LETTERS, 2021, 38 (11)
  • [24] Quantum Maximum Entropy Inference and Hamiltonian Learning
    Gao, Minbo
    Ji, Zhengfeng
    Wei, Fuchao
    arXiv,
  • [25] Learning the Effective Spin Hamiltonian of a Quantum Magnet
    Yu, Sizhuo
    Gao, Yuan
    Chen, Bin-Bin
    Li, Wei
    CHINESE PHYSICS LETTERS, 2021, 38 (09)
  • [26] Quantum Associative Memory with Quantum Neural Network via Adiabatic Hamiltonian Evolution
    Osakabe, Yoshihiro
    Akima, Hisanao
    Sakuraba, Masao
    Kinjo, Mitsunaga
    Sato, Shigeo
    IEICE TRANSACTIONS ON INFORMATION AND SYSTEMS, 2017, E100D (11) : 2683 - 2689
  • [27] Digital quantum simulation, learning of the Floquet Hamiltonian, and quantum chaos of the kicked top
    Olsacher, Tobias
    Pastori, Lorenzo
    Kokail, Christian
    Sieberer, Lukas M.
    Zoller, Peter
    JOURNAL OF PHYSICS A-MATHEMATICAL AND THEORETICAL, 2022, 55 (33)
  • [28] Bootstrapping Deconfined Quantum Tricriticality
    Chester, Shai M.
    Su, Ning
    PHYSICAL REVIEW LETTERS, 2024, 132 (11)
  • [29] Bootstrapping Matrix Quantum Mechanics
    Han, Xizhi
    Hartnoll, Sean A.
    Kruthoff, Jorrit
    PHYSICAL REVIEW LETTERS, 2020, 125 (04)
  • [30] Reinforcement Learning for Quantum Metrology via Quantum Control
    Vedaie, Seyed Shakib
    Palittapongarnpim, Pantita
    Sanders, Barry C.
    2018 IEEE PHOTONICS SOCIETY SUMMER TOPICAL MEETING SERIES (SUM), 2018, : 163 - 164