开始学习深度学习和循环神经网络Some starting points for deep learning and RNNs

Posted

tags:

篇首语:本文由小常识网(cha138.com)小编为大家整理,主要介绍了开始学习深度学习和循环神经网络Some starting points for deep learning and RNNs相关的知识,希望对你有一定的参考价值。

Bengio, LeCun, Jordan, Hinton, Schmidhuber, Ng, de Freitas and OpenAI have done reddit AMA‘s.  These are nice places to start to get a Zeitgeist of the field.
 
Hinton and Ng lectures at Coursera, UFLDL, CS224d and CS231n at Stanford, the deep learning course at Udacity, and the summer school at IPAM have excellent tutorials, video lectures and programming exercises that should help you get started.
 
The online book by Nielsen, notes for CS231n, and blogs by Karpathy, Olah and Britz have clear explanations of MLPs, CNNs and RNNs.  The tutorials at UFLDL and deeplearning.net give equations and code. The encyclopaedic book by Goodfellow et al. is a good place to dive into details.  I have a draft book in progress.
 
Theano, Torch, Caffe, ConvNet, TensorFlow, MXNet, CNTK, Veles, CGT, Neon, Chainer, Blocks and Fuel, Keras, Lasagne, Mocha.jl, Deeplearning4j, DeepLearnToolbox, Currennt, Project Oxford, Autograd (for Torch), Warp-CTC are some of the many deep learning software libraries and frameworks introduced in the last 10 years.  convnet-benchmarks and deepframeworks compare the performance of many existing packages. I am working on developing an alternative, Knet.jl, written in Julia supporting CNNs and RNNs on GPUs and supporting easy development of original architectures.  More software can be found at deeplearning.net.

Deeplearning.net and homepages of Bengio, Schmidhuber have further information, background and links.
 
from: http://www.denizyuret.com/2014/11/some-starting-points-for-deep-learning.html

以上是关于开始学习深度学习和循环神经网络Some starting points for deep learning and RNNs的主要内容,如果未能解决你的问题,请参考以下文章

Keras深度学习实战(27)——循环神经详解与实现

Keras深度学习实战(27)——循环神经详解与实现

从零开始学习深度学习35. 门控循环神经网络之门控循环单元(gated recurrent unit,GRU)介绍Pytorch实现GRU并进行训练预测

深度学习基础-基于Numpy的循环神经网络(RNN)实现和反向传播训练

学习深度学习网址

动手学深度学习 v2