Implementating Spatio-Temporal Graph Convolutional Networks on Graphcore IPUs

Johannes Moe, Konstantin Pogorelov, Daniel Thilo Schroeder, J. Langguth
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引用次数: 3

Abstract

Artificial neural networks have been used for a multitude of regression tasks, and their descendants have expanded the domain to many applications such as image and speech recognition, filtering of social networks, and machine translation. While conventional and recurrent neural networks work well on data represented in Euclidean space, they struggle with data in non-Euclidean space. Graph Neural Networks (GNN) expand recurrent neural networks to directly process sparse representations of graphs, but they are computationally expensive, which invites the use of powerful hardware accelerators. In this paper, we investigate the viability of the Graphcore Intelligence Processing Unit (IPU) for efficient implementation of Spatio-Temporal Graph Convolutional Networks. The results show that IPUs are well suited for this task.
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在Graphcore ipu上实现时空图卷积网络
人工神经网络已经被用于大量的回归任务,它们的后代已经扩展到许多应用领域,如图像和语音识别、社交网络过滤和机器翻译。虽然传统和循环神经网络在欧几里得空间中表示的数据上工作得很好,但它们在处理非欧几里得空间中的数据时却很困难。图神经网络(GNN)扩展了递归神经网络来直接处理图的稀疏表示,但它们的计算成本很高,需要使用强大的硬件加速器。在本文中,我们研究了Graphcore智能处理单元(IPU)用于有效实现时空图卷积网络的可行性。结果表明,ipu非常适合这一任务。
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