abstract - abstraction class¶
The file yann.layers.abstract.py contains the definition for the abstract layer:
Todo
- LSTM / GRN layers
- An Embed layer that is going to create a new embedding space for two layer’s activations to project on to the same space and minimize its distances.
-
class
yann.layers.abstract.layer(id, type, verbose=2)[source]¶ Prototype for what a layer should look like. Every layer should inherit from this. This is a template class do not use this directly, you need to use a specific type of layer which again will be called by
yann.network.network.add_layerParameters: - id – String
- origin – String id
- type – string-
'classifier','dot-product','objective','conv_pool','input'.. .
Notes
- Use
self.type,self.origin, self.destination``,self.output,self.inference self.output_shapefor outside calls and purposes.
-
get_params(borrow=True, verbose=2)[source]¶ This method returns the parameters of the layer in a numpy ndarray format.
Parameters: - borrow – Theano borrow, default is True.
- verbose – As always
Notes
This is a slow method, because we are taking the values out of GPU. Ordinarily, I should have used get_value( borrow = True ), but I can’t do this because some parameters are theano.tensor.var.TensorVariable which needs to be run through eval.