Author Bio Image

Jennifer Myers

Senior Director Deep Learning Frameworks, Artificial Intelligence Products Group

Highlights from this release include: 

* VGG16 based Fast R-CNN model using winograd kernels
* new, backward compatible, generic data loader
* C3D video loader model trained on UCF101 dataset
* Deep Dream example
* make conv layer printout more informative [#222]
* fix some examples to use new arg override capability
* improve performance for relu for small N
* better support for arbitrary batch norm layer placement
* documentation updates [#210#213#236]

As always, you can grab this release from github at: https://github.com/NervanaSystems/neon

dream_out_039

Author Bio Image

Jennifer Myers

Senior Director Deep Learning Frameworks, Artificial Intelligence Products Group

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