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Performance Characterization of State-Of-The-Art Deep Learning Workloads on an IBM 'Minsky' Platform

机译:在IBm“明斯基”平台上对最先进的深度学习工作负载的性能表征

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摘要

Deep learning algorithms are known to demand significant computing horsepower, in particular when it comes to training these models. The capability of developing new algorithms and improving the existing ones is in part determined by the speed at which these models can be trained and tested. One alternative to attain significant performance gains is through hardware acceleration. However, deep learning has evolved into a large variety of models, including but not limited to fully-connected, convolutional, recurrent and memory networks. Therefore, it appears difficult that a single solution can provide effective acceleration for this entire deep learning ecosystem. This work presents detailed characterization results of a set of archetypal state-of-the-art deep learning workloads on a last-generation IBM POWER8 system with NVIDIA Tesla P100 GPUs and NVLink interconnects. The goal is to identify the performance bottlenecks (i.e. the accelerable portions) to provide a thorough study that can guide the design of prospective acceleration platforms in a more effective manner. In addition, we analyze the role of the GPU (as one particular type of acceleration engine) and its effectiveness as a function of the size of the problem.
机译:众所周知,深度学习算法需要强大的计算能力,尤其是在训练这些模型时。开发新算法和改进现有算法的能力部分取决于训练和测试这些模型的速度。获得显着性能提升的一种替代方法是通过硬件加速。然而,深度学习已发展为多种模型,包括但不限于完全连接,卷积,循环和内存网络。因此,单个解决方案很难为整个深度学习生态系统提供有效的加速。这项工作展示了在具有NVIDIA Tesla P100 GPU和NVLink互连的上一代IBM POWER8系统上,一组原型最新的深度学习工作负载的详细表征结果。目的是确定性能瓶颈(即可加速部分),以提供透彻的研究,以更有效的方式指导预期的加速平台的设计。此外,我们分析了GPU的作用(作为一种特定类型的加速引擎)及其有效性(取决于问题大小)。

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