- Neural Networks for Machine Learning: Hinton's course at Coursera is a wonderful introduction to deep learning. I recommend lectures 11-15 that cover Hopfield nets, Boltzmann machines, sigmoid belief nets and sparse auto-encoders.
 - UFLDL tutorial: Tutorial on unsupervised feature learning and deep learning by Andrew Ng. Includes lecture notes and programming exercises. The first programming exercise shows how sparse auto-encoders can self-learn features found in the visual cortex, and the rest shows how these unsupervised features improve performance on supervised visual recognition tasks like MNIST and STL10.
 - IPAM graduate summer school on deep learning and feature learning: has video lectures by many of the leaders of the field.
 - Torch7: is a Matlab-like environment for state-of-the-art machine learning algorithms used at the IPAM summer school and several research groups on deep learning.
 - deeplearning.net lists these and many other resources.
 
May 17, 2014
How to learn about deep learning
In this post I will list resources I found useful when I was trying to find out about deep learning.  Feel free to add more in the comments.
Subscribe to:
Post Comments (Atom)
1 comment:
Super post thanks to share us
Post a Comment