A Case Study on Coupling OpenFOAM with Different Machine Learning Frameworks

F. Orland, Kim Sebastian Brose, Julian Bissantz, F. Ferraro, C. Terboven, C. Hasse
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Abstract

In High-Performance Computing, new use cases are currently emerging in which classical numerical simulations are coupled with machine learning as a surrogate for complex physical models that are expensive to compute. In the context of simulating reactive thermo-fluid systems, the idea to replace current state-of-the-art tabulated chemistry with machine learning inference is an active field of research. For this purpose, a simplified OpenFOAM application is coupled with an artificial neural network. In this work, we present a case study focusing solely on the performance of the coupled OpenFOAM-ML application. Our coupling approach features a heterogeneous cluster architecture combining pure CPU nodes and nodes equipped with two Nvidia V100 GPUs. We evaluate our approach by comparing the inference performance and the communication our approach induces with various machine learning frameworks. Additionally, we also compare the GPUs with NEC Vector Engine Type 10B regarding inference performance.
OpenFOAM与不同机器学习框架的耦合案例研究
在高性能计算中,新的用例正在出现,其中经典数值模拟与机器学习相结合,作为计算成本高昂的复杂物理模型的替代品。在模拟反应性热流体系统的背景下,用机器学习推理取代当前最先进的制表化学的想法是一个活跃的研究领域。为此,简化的OpenFOAM应用程序与人工神经网络相结合。在这项工作中,我们提出了一个案例研究,专注于耦合OpenFOAM-ML应用程序的性能。我们的耦合方法采用异构集群架构,将纯CPU节点和配备两个Nvidia V100 gpu的节点相结合。我们通过比较推理性能和我们的方法与各种机器学习框架的通信来评估我们的方法。此外,我们还比较了gpu与NEC矢量引擎类型10B的推理性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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