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This page lists resources that can be useful to the [[Comparison of deep learning software]] page.
==Deep learning software not yet covered==
This is a list of deep learning software that is not listed on the [[Comparison of deep learning software|main page]] because they lack a Wikipedia article. If you would like to see any of these pieces of software listed there, you are welcome to create a Wikipedia article for it.
* [[adnn]][https://github.com/dritchie/adnn] – Javascript neural networks
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* [[Caffe2]][https://caffe2.ai/] – Deep learning framework built on [[Caffe (software)|Caffe]], developed by [[Facebook]] in cooperation with [[NVIDIA]], [[Qualcomm]], [[Intel]], [[Amazon.com|Amazon]], and [[Microsoft]]<ref>https://caffe2.ai/blog/2017/04/18/caffe2-open-source-announcement.html</ref>
* [[CaffeOnSpark]][https://github.com/yahoo/CaffeOnSpark] – Scalable deep learning package running Caffe on [[Apache Spark|Spark]] and [[Apache Hadoop|Hadoop]] clusters with [[peer-to-peer]] communication
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* [[CNNLab]][https://arxiv.org/abs/1606.06234] – Deep learning framework using GPU and FPGA-based accelerators
* [[ConvNetJS]][http://cs.stanford.edu/people/karpathy/convnetjs/] – Javascript library for training deep learning models entirely in a web browser
* [[List of neuroimaging software|Cortex]
* [[cuDNN]][https://developer.nvidia.com/cudnn] – Optimized deep learning computation primitives implemented in CUDA
* [[CURRENNT]][https://sourceforge.net/projects/currennt/] – CUDA-accelerated toolkit for deep Long Short-Term Memory (LSTM) RNN architectures supporting large data sets not fitting into main memory.
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* [[IDLF]][https://github.com/01org/idlf] – [[Intel]]® Deep Learning Framework; supports OpenCL (deprecated)
* Intel [[Math Kernel Library]] (Intel MKL),<ref>https://software.intel.com/en-us/articles/introducing-dnn-primitives-in-intelr-mkl</ref> library of optimized math routines, including optimized deep learning computation primitives
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* [[LightNet]][https://arxiv.org/abs/1605.02766] – MATLAB-based environment for deep learning
* [[MaTEx]][https://github.com/abhinavvishnu/matex] – Distributed TensorFlow with MPI by [[PNNL]]
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* [[Pylearn2]][http://deeplearning.net/software/pylearn2/] – Machine learning library mainly built on top of Theano
* [[scikit-neuralnetwork]][https://scikit-neuralnetwork.readthedocs.org/] – Multi-layer perceptrons as a wrapper for Pylearn2
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* [[tiny-dnn]][https://github.com/nyanp/tiny-dnn] – Header only, dependency-free deep learning framework in C++11
* [[torchnet]][https://github.com/torchnet/torchnet] – Torch framework providing a set of abstractions aiming at encouraging code re-use as well as encouraging modular programming<ref>https://code.facebook.com/posts/580706092103929</ref><ref>{{cite web|author1=Ronan Collobert|author2=Laurens van der Maaten|author3=Armand Joulin|title=Torchnet: An Open-Source Platform for (Deep) Learning Research|url=https://lvdmaaten.github.io/publications/papers/Torchnet_2016.pdf|publisher=Facebook AI Research|accessdate=24 June 2016}}</ref>
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==Related software==
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* [https://github.com/jtoy/awesome-tensorflow#libraries Awesome TensorFlow – Libraries]
* [http://deep-learning.sg.tn/index.php/2-non-categorise/5-popular-deep-learning-libraries Popular Deep Learning Libraries]
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