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A Survey of Deep-learning Frameworks

机译:深度学习框架调查

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摘要

Deep learning is a model of machine learning loosely based on our brain. Artificial neural network has been around since the 1950s, but recent advances in hardware like graphical processing units (GPU), software like cuDNN, TensorFlow, Torch, Caffe, Theano, Deeplearning4j, etc. and new training methods have made training artificial neural networks fast and easy. In this paper, we are comparing some of the deep learning frameworks on the basis of parameters like modeling capability, interfaces available, platforms supported, parallelizing techniques supported, availability of pre-trained models, community support and documentation quality.
机译:深度学习是基于我们的大脑松散的机器学习模型。自20世纪50年代以来,人工神经网络已经存在,但最近的硬件等待如图所示,如图形处理单元(GPU),如Cudnn,Tensorflow,火炬,Caffe,Theano,Deeplearning4j等软件已经快速培训人工神经网络的培训而且很容易。在本文中,我们正在比较一些深入学习框架,如建模能力,可用接口,支持的平台,支持的平台,支持的平台,预先训练的型号,社区支持和文档质量的平台。

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