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HyperTune: Dynamic Hyperparameter Tuning for Efficient Distribution of DNN Training Over Heterogeneous Systems

机译:HyperTune:动态超参数调整,可在异构系统上有效分配DNN训练

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Distributed training is a novel approach to accelerating training of Deep Neural Networks (DNN), but common training libraries fall short of addressing the distributed nature of heterogeneous processors or interruption by other workloads on the shared processing nodes. This paper describes distributed training of DNN on computational storage devices (CSD), which are NAND flash-based, high-capacity data storage with internal processing engines. A CSD-based distributed architecture incorporates the advantages of federated learning in terms of performance scalability, resiliency, and data privacy by eliminating the unnecessary data movement between the storage device and the host processor. The paper also describes Stannis, a DNN training framework that improves on the shortcomings of existing distributed training frameworks by dynamically tuning the training hyperparameters in heterogeneous systems to maintain the maximum overall processing speed in term of processed images per second and energy efficiency. Experimental results on image classification training benchmarks show up to 3.1x improvement in performance and 2.45x reduction in energy consumption when using Stannis plus CSD compare to the generic systems.
机译:分布式培训是一种加速对深神经网络(DNN)培训的新方法,但常见的训练库缺乏通过共享处理节点上的其他工作负载解决异构处理器的分布式性质或中断。本文介绍了DNN在计算存储设备(CSD)上的分布式训练,它是基于NAND闪存的,高容量数据存储,具有内部处理引擎。基于CSD的分布式架构通过消除存储设备和主处理器之间的不必要的数据移动,包括在性能可伸缩性,弹性和数据隐私方面的优点。本文还描述了一个DNN培训框架,通过动态调整异构系统中的训练超参数来提高现有分布式训练框架的缺点,以维持每秒处理图像的最大总处理速度和能量效率。图像分类训练基准的实验结果显示使用Stannis Plus CSD与通用系统相比,在使用Stannis Plus CSD时的性能提高和2.45倍的能耗降低。

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