Extending the reach of quantum computing for materials science with machine learning potentials

被引:3
|
作者
Schuhmacher, Julian [1 ,2 ]
Mazzola, Guglielmo [1 ]
Tacchino, Francesco [1 ]
Dmitriyeva, Olga [3 ]
Bui, Tai [4 ]
Huang, Shanshan [4 ]
Tavernelli, Ivano [1 ]
机构
[1] IBM Res Zurich, IBM Quantum, CH-8803 Ruschlikon, Switzerland
[2] Swiss Fed Inst Technol, Inst Theoret Phys, CH-8093 Zurich, Switzerland
[3] IBM Quantum, Yorktown Hts, NY 10598 USA
[4] BP Int Ltd, Appl Sci Innovat & Engn, London, England
基金
瑞士国家科学基金会;
关键词
DENSITY-FUNCTIONAL THEORY; ERROR MITIGATION; TRANSITIONS;
D O I
10.1063/5.0099469
中图分类号
TB3 [工程材料学];
学科分类号
0805 ; 080502 ;
摘要
Solving electronic structure problems represents a promising field of application for quantum computers. Currently, much effort has been spent in devising and optimizing quantum algorithms for quantum chemistry problems featuring up to hundreds of electrons. While quantum algorithms can in principle outperform their classical equivalents, the polynomially scaling runtime, with the number of constituents, can still prevent quantum simulations of large scale systems. We propose a strategy to extend the scope of quantum computational methods to large scale simulations using a machine learning potential, trained on quantum simulation data. The challenge of applying machine learning potentials in today's quantum setting arises from the several sources of noise affecting the quantum computations of electronic energies and forces. We investigate the trainability of a machine learning potential selecting various sources of noise: statistical, optimization and hardware noise. Finally, we construct the first machine learning potential from data computed on actual IBM Quantum processors for a hydrogen molecule. This already would allow us to perform arbitrarily long and stable molecular dynamics simulations, outperforming all current quantum approaches to molecular dynamics and structure optimization. (c) 2022 Author(s).
引用
收藏
页数:16
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