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High-Performance Computing Optimization for Aladyn – Adaptive Neural Network Molecular Dynamics Mini-ApplicationThis report provides a description and performance evaluation of the optimization techniques for high performance computing (HPC) implementation of the open source Computational Materials mini-application Aladyn (https://github.com/nasa/aladyn). Aladyn is a basic molecular dynamics code written in FORTRAN 2003, which is designed to demonstrate the use of adaptive neural networks (ANNs) in atomistic simulations. The role of ANNs is to efficiently reproduce the very complex energy landscape resulting from the atomic interactions in materials with the accuracy of the more expensive quantum mechanics-based calculations. The ANN is trained on a large set of atomic structures calculated using the density functional theory (DFT) method. While achieving orders of magnitude faster computational performance than DFT, the ANN-based approach was still very computationally demanding compared to the conventional approach of using empirically fitted energy functions. After its initial development, Aladyn was evaluated and optimized by experts at the NASA Advanced Supercomputing (NAS) division to exploit modern supercomputer architectures. The code has been optimized for execution on multicore central processing units (CPUs), including Intel® Skylake microarchitecture, and on graphic accelerators, such as Nvidia® V100 graphic processing units (GPUs), using Open Multi-Processing (OpenMP) and Open Accelerators (OpenACC) programming interfaces. The optimization achieved a speedup of 4.7 times the baseline version on CPU performance and an additional 2.4 times on CPU+GPU performance.




Atomistic computer simulations are a fundamental tool in materials research to model
material properties form physics-based first principles. Atomic interaction, governed by
Quantum Mechanics (QM) require sophisticated and highly computationally demanding
mathematical models to calculate [1]. Classical methods use approximate functional forms,
empirically fitted through a set of variable parameters to emulate atomic energies as direct
functions of atomic coordinates [2]. While empirical potentials are computationally much
simpler, allowing simulations of large-scale systems of up to a trillion (1012) atoms [3],
they are substantially less accurate compared to quantum calculations and applicable only
to very specific atomic configurations or predefined crystallographic phases. A recently
suggested approach is to use heuristic machine learning methods [4], such as those based
on Adaptive Neural Networks (ANNs) to predict atomic energies, after being trained on a
sufficiently large database of QM-calculated structures [5,6]. This approach reduces
significantly the computational complexity, allowing for simulations of orders of
magnitude larger systems compared to QM-based methods without compromising
accuracy. Still, compared to classical methods using empirical energy functions, ANN
methods remain two- to three orders of magnitude more computationally demanding.
Hence, the computational cost of simulations, together with the need for extensive training
of ANNs, still makes the practical implementation of ANN-based methods quite
challenging.
The purpose of the Aladyn mini-application software [7], available as open source at https://github.com/nasa/aladyn, is to be a testbed for exploring possible optimization
strategies to develop highly scalable parallel algorithms for ANN-based atomistic
simulations. Aladyn is aimed at utilizing the architecture of the high-end modern highperformance
computing (HPC) hardware based on multicore central processing units
(CPUs) equipped with graphic processing unit (GPU) accelerators. Specifically, the goal
is to optimize the performance on a single HPC compute node, before implementing
scaling to multi-node parallelization using message passing interface (MPI). At the same
time, the open source code of Aladyn can serve as a training model for students and
professors in academia.
Document ID
20190032135
Acquisition Source
Langley Research Center
Document Type
Technical Memorandum (TM)
Authors
Yamakov, Vesselin I.
(National Inst. of Aerospace Hampton, VA, United States)
Jost, Gabriele
(NASA Ames Research Center Moffett Field, CA, United States)
Kokron, Daniel
(Redline Performance Solutions Rockville, MD, United States)
Mishin, Yuri
(George Mason University Fairfax, VA, United States)
Glaessgen, Edward H.
(NASA Langley Research Center Hampton, VA, United States)
Date Acquired
October 18, 2019
Publication Date
September 1, 2019
Subject Category
Computer Programming And Software
Report/Patent Number
L-21058
NASA/TM–2019-220409
NF1676L-34220
Funding Number(s)
CONTRACT_GRANT: NNL09AA00A
WBS: 698259.02.07.07.03.01
Distribution Limits
Public
Copyright
Public Use Permitted.
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