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.
from: http://www.denizyuret.com/2014/11/some-starting-points-for-deep-learning.html
开始学习深度学习和循环神经网络Some starting points for deep learning and RNNs
原文:http://www.cnblogs.com/GarfieldEr007/p/5328609.html