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Scaling Deep Learning Workloads: NVIDIA DGX-1/Pascal and Intel Knights Landing

机译:扩展深度学习工作量:NVIDIA DGX-1 / Pascal和英特尔骑士着陆

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Deep Learning (DL) algorithms have become ubiquitous in data analytics. As a result, major computing vendors -including NVIDIA, Intel, AMD and IBM - have architectural road-maps influenced by DL workloads. Furthermore, several vendors have recently advertised new computing products as accelerating DL workloads. Unfortunately, it is difficult for data scientists to quantify the potential of these different products. This paper provides a performance and power analysis of important DL workloads on two major parallel architectures: NVIDIA DGX-1 (eight Pascal P100 GPUs interconnected with NVLink) and Intel Knights Landing (KNL) CPUs interconnected with Intel Omni-Path. Our evaluation consists of a cross section of convolutional neural net workloads: CifarNet, CaffeNet, AlexNet and GoogleNet topologies using the Cifar10 and ImageNet datasets. The workloads are vendor optimized for each architecture. GPUs provide the highest overall raw performance. Our analysis indicates that although GPUs provide the highest overall performance, the gap can close for some convolutional networks; and KNL can be competitive when considering performance/watt. Furthermore, NVLink is critical to GPU scaling.
机译:深度学习(DL)算法在数据分析中变得普遍存在。因此,主要计算供应商 - 限制NVIDIA,英特尔,AMD和IBM - 具有受DL工作负载影响的架构路图。此外,一些供应商最近宣传了新的计算产品作为加速DL工作负载。不幸的是,数据科学家难以量化这些不同产品的潜力。本文提供了两个主要并行架构上重要的DL工作负载的性能和功率分析:NVIDIA DGX-1(与NVLINK互联的八个PASCAL P100 GPU)和英特尔骑士降落(KNL)CPU与Intel Omni-Path相互连接。我们的评估包括卷积神经网络工作负载的横截面:使用CIFAR10和ImageNet数据集的Cifarnet,Caffenet,AlexNet和Googlenet拓扑。工作负载是针对每个架构进行优化的供应商。 GPU提供最高的整体原始性能。我们的分析表明,尽管GPU提供了最高的整体性能,但间隙可以关闭一些卷积网络;在考虑性能/瓦特时,KNL可以竞争激烈。此外,NVLink对GPU缩放至关重要。

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