Towards electronic structure-based ab-initio molecular dynamics simulations with hundreds of millions of atoms

IF 2 4区 计算机科学 Q2 COMPUTER SCIENCE, THEORY & METHODS Parallel Computing Pub Date : 2022-07-01 DOI:10.1016/j.parco.2022.102920
Robert Schade , Tobias Kenter , Hossam Elgabarty , Michael Lass , Ole Schütt , Alfio Lazzaro , Hans Pabst , Stephan Mohr , Jürg Hutter , Thomas D. Kühne , Christian Plessl
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引用次数: 12

Abstract

We push the boundaries of electronic structure-based ab-initio molecular dynamics (AIMD) beyond 100 million atoms. This scale is otherwise barely reachable with classical force-field methods or novel neural network and machine learning potentials. We achieve this breakthrough by combining innovations in linear-scaling AIMD, efficient and approximate sparse linear algebra, low and mixed-precision floating-point computation on GPUs, and a compensation scheme for the errors introduced by numerical approximations. The core of our work is the non-orthogonalized local submatrix method (NOLSM), which scales very favorably to massively parallel computing systems and translates large sparse matrix operations into highly parallel, dense matrix operations that are ideally suited to hardware accelerators. We demonstrate that the NOLSM method, which is at the center point of each AIMD step, is able to achieve a sustained performance of 324 PFLOP/s in mixed FP16/FP32 precision corresponding to an efficiency of 67.7% when running on 1536 NVIDIA A100 GPUs.

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基于电子结构的数亿原子从头算分子动力学模拟
我们推动了基于电子结构的从头算分子动力学(AIMD)的边界超过1亿个原子。这个尺度很难用经典的力场方法或新的神经网络和机器学习潜力来达到。我们通过结合线性缩放AIMD,高效和近似稀疏线性代数,gpu上的低精度和混合精度浮点计算以及数值近似引入的误差补偿方案的创新来实现这一突破。我们工作的核心是非正交局部子矩阵方法(NOLSM),它非常适合大规模并行计算系统,并将大型稀疏矩阵操作转换为高度并行,密集的矩阵操作,非常适合硬件加速器。我们证明了在每个AIMD步骤的中心点处的NOLSM方法能够在FP16/FP32混合精度下实现324 PFLOP/s的持续性能,对应于在1536 NVIDIA A100 gpu上运行时的效率为67.7%。
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来源期刊
Parallel Computing
Parallel Computing 工程技术-计算机:理论方法
CiteScore
3.50
自引率
7.10%
发文量
49
审稿时长
4.5 months
期刊介绍: Parallel Computing is an international journal presenting the practical use of parallel computer systems, including high performance architecture, system software, programming systems and tools, and applications. Within this context the journal covers all aspects of high-end parallel computing from single homogeneous or heterogenous computing nodes to large-scale multi-node systems. Parallel Computing features original research work and review articles as well as novel or illustrative accounts of application experience with (and techniques for) the use of parallel computers. We also welcome studies reproducing prior publications that either confirm or disprove prior published results. Particular technical areas of interest include, but are not limited to: -System software for parallel computer systems including programming languages (new languages as well as compilation techniques), operating systems (including middleware), and resource management (scheduling and load-balancing). -Enabling software including debuggers, performance tools, and system and numeric libraries. -General hardware (architecture) concepts, new technologies enabling the realization of such new concepts, and details of commercially available systems -Software engineering and productivity as it relates to parallel computing -Applications (including scientific computing, deep learning, machine learning) or tool case studies demonstrating novel ways to achieve parallelism -Performance measurement results on state-of-the-art systems -Approaches to effectively utilize large-scale parallel computing including new algorithms or algorithm analysis with demonstrated relevance to real applications using existing or next generation parallel computer architectures. -Parallel I/O systems both hardware and software -Networking technology for support of high-speed computing demonstrating the impact of high-speed computation on parallel applications
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