'Smart_aug' objective is to make data augmentation differentiable, thus allowing to learn its parameters, with 'Higher' objects, such as 'Data_aug' classes. The meta-learning of the data augmentation parameter is performed jointly with the training of the model. Thus it minimize the overhead compared to other data augmentation learning techniques.
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Harle, Antoine (Contracteur) 0d1a684aed Tests influence nb TF
2019-11-08 16:50:02 -05:00
FAR-HO Initial Commit 2019-11-08 11:28:06 -05:00
Gradient-Descent-The-Ultimate-Optimizer Initial Commit 2019-11-08 11:28:06 -05:00
higher Tests influence nb TF 2019-11-08 16:50:02 -05:00
.gitignore Initial Commit 2019-11-08 11:28:06 -05:00