Data-Parallel Training of Generative Adversarial Networks on HPC Systems for HEP Simulations

S. Vallecorsa, Diana Moise, F. Carminati, G. Khattak
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引用次数: 5

Abstract

In the field of High Energy Physics (HEP), simulating the interaction of particle detector materials is a compute-intensive task, that currently uses 50% of the computing resources globally available as part of the Worldwide LCH Computing Grid (WLCG). Since some level of approximation is acceptable, it is possible to implement fast simulation simplified models that have the advantage of being less computationally intensive. In this work, we present a fast simulation approach based on Generative Adversarial Networks (GANs). The model consists of a conditional generative network that describes the detector response and a discriminative network; both networks are trained in adversarial manner. The adversarial training process is computationally intensive and the application of a distributed approach is not straightforward. We rely on the MPI-based Cray Machine Learning Plugin to efficiently train the GAN over multiple nodes and GPGPUs. We report preliminary results on the accuracy of the generated samples and on the scaling of the time to solution. We demonstrate how HPC systems could be utilized to optimize this kind of models, on account of their large computational power and highly efficient interconnect.
生成对抗网络在HPC系统上的数据并行训练
在高能物理(HEP)领域,模拟粒子探测器材料的相互作用是一项计算密集型任务,目前使用了全球50%的可用计算资源,作为全球LCH计算网格(WLCG)的一部分。由于某种程度的近似是可以接受的,因此可以实现具有较少计算密集的优点的快速模拟简化模型。在这项工作中,我们提出了一种基于生成对抗网络(GANs)的快速仿真方法。该模型由描述检测器响应的条件生成网络和判别网络组成;这两个网络都是以对抗的方式训练的。对抗训练过程是计算密集型的,分布式方法的应用也不是直截了当的。我们依靠基于mpi的Cray机器学习插件在多个节点和gpgpu上有效地训练GAN。我们报告了生成样本的准确性和解决时间的缩放的初步结果。我们展示了如何利用高性能计算系统来优化这类模型,因为它们具有强大的计算能力和高效的互连。
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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