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Molecular Simulation Workflows as Parallel Algorithms : The Execution Engine of Copernicus, a Distributed High-Performance Computing Platform

机译:分子模拟工作流作为并行算法:哥白尼的执行引擎,分布式高性能计算平台

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摘要

Computational chemistry and other simulation fields are critically dependent on computing resources, but few problems scale efficiently to the hundreds of thousands of processors available in current supercomputers particularly for molecular dynamics. This has turned into a bottleneck as new hardware generations primarily provide mote processing units rather than making individual units much faster, which simulation applications are addressing by increasingly focusing on sampling with algorithms such as free-energy perturbation, Markov state modeling, metadynamics, or milestoning. All these rely on combining results from multiple simulations into a single observation. They are potentially powerful approaches that aim to predict experimental observables directly, but this comes at the expense of added complexity in selecting sampling strategies and keeping track of dozens to thousands of simulations and their dependencies. Here, we describe how the distributed execution framework Copernicus allows the expression of such algorithms in generic workflows: dataflow programs. Because dataflow algorithms explicitly state dependencies of each constituent part, algorithms only need to be described on conceptual level, after which the execution is maximally parallel. The fully automated execution facilitates the optimization of these algorithms with adaptive sampling, where undersampled regions are automatically detected and targeted without user intervention. We show how several such algorithms can be formulated for computational chemistry problems, and how they are executed efficiently with many loosely coupled simulations using either distributed or parallel resources with Copernicus.
机译:计算化学和其他模拟领域严重依赖于计算资源,但是很少有问题可以有效扩展到当前超级计算机中成千上万的处理器,尤其是对于分子动力学而言。这已经成为瓶颈,因为新一代的硬件主要提供微粒处理单元,而不是使单个单元更快,仿真应用正在通过越来越关注于使用诸如自由能微扰,马尔可夫状态建模,元动力学或里程碑的算法进行采样,从而解决了仿真应用问题。 。所有这些都依赖于将来自多个模拟的结果组合到一个观察中。它们是旨在直接预测实验可观察物的潜在强大方法,但这是以选择采样策略并跟踪数十至数千个模拟及其相关性时增加复杂性为代价的。在这里,我们描述了分布式执行框架Copernicus如何在通用工作流(数据流程序)中表达这种算法。因为数据流算法明确声明了每个组成部分的依赖性,所以仅需要在概念级别上描述算法,然后最大程度地并行执行。全自动执行有助于通过自适应采样优化这些算法,在这种情况下,无需用户干预即可自动检测并确定欠采样区域。我们将展示如何为计算化学问题制定几种此类算法,以及如何使用哥白尼使用分布式或并行资源的许多松散耦合模拟有效地执行这些算法。

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