Training machine learning potentials for reactive systems: A Colab tutorial on basic models

被引:3
|
作者
Pan, Xiaoliang [1 ]
Snyder, Ryan [2 ]
Wang, Jia-Ning [3 ]
Lander, Chance [1 ]
Wickizer, Carly [1 ]
Van, Richard [1 ,4 ]
Chesney, Andrew [1 ]
Xue, Yuanfei [3 ]
Mao, Yuezhi [5 ]
Mei, Ye [3 ,6 ,7 ]
Pu, Jingzhi [2 ]
Shao, Yihan [1 ]
机构
[1] Univ Oklahoma, Dept Chem & Biochem, Norman, OK 73019 USA
[2] Indiana Univ Purdue Univ, Dept Chem & Chem Biol, Indianapolis, IN 46202 USA
[3] East China Normal Univ, Sch Phys & Elect Sci, State Key Lab Precis Spect, Shanghai, Peoples R China
[4] Natl Heart Lung & Blood Inst, Lab Computat Biol, NIH, Bethesda, MD USA
[5] San Diego State Univ, Dept Chem & Biochem, San Diego, CA 92182 USA
[6] NYU, NYU ECNU Ctr Computat Chem, Shanghai, Peoples R China
[7] Shanxi Univ, Collaborat Innovat Ctr Extreme Opt, Taiyuan, Shanxi, Peoples R China
基金
美国国家卫生研究院; 美国国家科学基金会; 中国国家自然科学基金;
关键词
Gaussian process regression; machine learning potential; neural network; tutorial; QUANTUM MECHANICS/MOLECULAR MECHANICS; MOLECULAR-DYNAMICS SIMULATIONS; NEURAL-NETWORK POTENTIALS; ENERGY SURFACES; DATA-EFFICIENT; ACCURATE; IMPLEMENTATION;
D O I
10.1002/jcc.27269
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
In the last several years, there has been a surge in the development of machine learning potential (MLP) models for describing molecular systems. We are interested in a particular area of this field - the training of system-specific MLPs for reactive systems - with the goal of using these MLPs to accelerate free energy simulations of chemical and enzyme reactions. To help new members in our labs become familiar with the basic techniques, we have put together a self-guided Colab tutorial (), which we expect to be also useful to other young researchers in the community. Our tutorial begins with the introduction of simple feedforward neural network (FNN) and kernel-based (using Gaussian process regression, GPR) models by fitting the two-dimensional Muller-Brown potential. Subsequently, two simple descriptors are presented for extracting features of molecular systems: symmetry functions (including the ANI variant) and embedding neural networks (such as DeepPot-SE). Lastly, these features will be fed into FNN and GPR models to reproduce the energies and forces for the molecular configurations in a Claisen rearrangement reaction. A self-guided Colab tutorial about machine learning potential for reactive systems are presented in this work. The tutorial begins with the introduction of feedforward neural network and kernel-based models by fitting the two-dimensional Muller-Brown potential. Subsequently, two simple descriptors are presented for extracting features of molecular systems: symmetry functions and embedding neural networks. Lastly, these features will be used to reproduce the energies and forces for the molecular configurations in a Claisen rearrangement reaction.image
引用
收藏
页码:638 / 647
页数:10
相关论文
共 50 条
  • [31] Learning together: Towards foundation models for machine learning interatomic potentials with meta-learning
    Allen, Alice E. A.
    Lubbers, Nicholas
    Matin, Sakib
    Smith, Justin
    Messerly, Richard
    Tretiak, Sergei
    Barros, Kipton
    NPJ COMPUTATIONAL MATERIALS, 2024, 10 (01)
  • [32] Robust training of machine learning interatomic potentials with dimensionality reduction and stratified sampling
    Qi, Ji
    Ko, Tsz Wai
    Wood, Brandon C.
    Pham, Tuan Anh
    Ong, Shyue Ping
    NPJ COMPUTATIONAL MATERIALS, 2024, 10 (01)
  • [33] Robust training of machine learning interatomic potentials with dimensionality reduction and stratified sampling
    Ji Qi
    Tsz Wai Ko
    Brandon C. Wood
    Tuan Anh Pham
    Shyue Ping Ong
    npj Computational Materials, 10
  • [34] Efficient Training of Machine Learning Potentials by a Randomized Atomic-System Generator
    Choi, Young-Jae
    Jhi, Seung-Hoon
    JOURNAL OF PHYSICAL CHEMISTRY B, 2020, 124 (39): : 8704 - 8710
  • [35] A comparative study of machine learning models for predicting the state of reactive mixing
    Ahmmed, B.
    Mudunuru, M. K.
    Karra, S.
    James, S. C.
    Vesselinov, V. V.
    JOURNAL OF COMPUTATIONAL PHYSICS, 2021, 432
  • [36] Transition1x-a dataset for building generalizable reactive machine learning potentials
    Schreiner, Mathias
    Bhowmik, Arghya
    Vegge, Tejs
    Busk, Jonas
    Winther, Ole
    SCIENTIFIC DATA, 2022, 9 (01)
  • [37] Transition1x - a dataset for building generalizable reactive machine learning potentials
    Mathias Schreiner
    Arghya Bhowmik
    Tejs Vegge
    Jonas Busk
    Ole Winther
    Scientific Data, 9
  • [38] Synchronization of chaotic systems and their machine-learning models
    Weng, Tongfeng
    Yang, Huijie
    Gu, Changgui
    Zhang, Jie
    Small, Michael
    PHYSICAL REVIEW E, 2019, 99 (04)
  • [39] Perspective: Atomistic simulations of water and aqueous systems with machine learning potentials
    Omranpour, Amir
    Montero De Hijes, Pablo
    Behler, Joerg
    Dellago, Christoph
    JOURNAL OF CHEMICAL PHYSICS, 2024, 160 (17):
  • [40] Moroccan's Arabic Speech Training And Deploying Machine Learning Models with Teachable Machine
    Jebbar, Mostafa
    Maizate, Abderrahim
    Ait Abdelouahid, Rachida
    Procedia Computer Science, 2022, 203 : 801 - 806