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Experimental Characterizations and Analysis of Deep Learning Frameworks

机译:深度学习框架的实验表征和分析

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Big Data has fueled the wide deployment of Deep Learning (DL) in many fields, such as image classification, voice recognition and NLP. The growing number of open source DL software frameworks has put forward high demands on comparative study of their efficiency with respect to both runtime performance and accuracy. This paper presents a brief overview of our empirical evaluation of four representative DL frameworks: TensorFlow, Caffe, Torch and Theano through a comparative analysis and characterization. First, we show that the complex interactions among neural networks (NN), hyper-parameters, their specific runtime implementations and datasets are latent factors for the uncertainty of runtime performance and accuracy. Second, we characterized the CPU/GPU resource usage patterns under different configurations for different frameworks to obtain an in-depth understanding of the impact of different batch sizes. Third, we describe the data loading process of ImageNet for TensorFlow and present an experimental characterization of TensorFlow with respect to its data loading process when the dataset is too large to fit into the main memory of the CPU server. We conjecture that our experimental characterization and analysis can offer empirical guidance for users and application developers to select the right DL frameworks and configurations for their domain-specific learning tasks and datasets.
机译:大数据推动了许多领域的深度学习(DL)的广泛部署,例如图像分类,语音识别和NLP。越来越多的开源DL软件框架已经提出了对它们对运行时性能和准确性效率的比较研究的高要求。本文介绍了我们对四个代表性DL框架的实证评估:Tensorflow,Caffe,火炬和Theano通过比较分析和表征进行了简要的概述。首先,我们表明,神经网络(NN),超参数,其特定运行时实现和数据集之间的复杂交互是运行时性能和准确性的不确定性的潜在因子。其次,我们以不同的框架为不同配置的CPU / GPU资源使用模式,以获得对不同批量尺寸的影响的深入了解。第三,我们描述了Tensorflow的想象成的数据加载过程,并且当数据集太大以适合CPU服务器的主存储器时,对其数据加载过程的实验表征。我们猜测我们的实验表征和分析可以为用户和应用程序开发人员提供实证指导,以为其域特定的学习任务和数据集选择正确的DL框架和配置。

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