I have a model built in Keras that can be sequential or functional. Model is accessible through the model variable. I want to implement the method that would walk through the model from the output to the input and do something with the weights of the model.

Is there any way to get a predecessor layer of the specific layer? I would like to do something like this:

x = <some number>
layer_x = model.layers[x] 
predecessor_layers = ???

The solution suggested by @Mitiku returns only the input tensor but we need a predecessor layer. Predecessor layer can be found following way:

x = <some number>
layer_x = model.layers[x] 
int_node = layer_x._inbound_nodes[0]
predecessor_layers = int_node.inbound_layers[0]

In the proposed solution, we assume that the layer_x has only one predecessor layer. To get that layer we first access to the node which connects those two layers: int_node and then takes the layer which is on its input: int_node.inbound_layers[0].

Note: This solution is not nice since it access to the protected attribute but it works.

  • @rob thank you for the update. I have edited my answer.
    – Primoz
    Jan 5 '19 at 15:14
  • Sorry I was wrong about _inbound_nodes being changed (unless you are using model.get_config()). E.g. you can call model.get_config()['layers'][0]['inbound_nodes'] or model.layers[0]._inbound_nodes to get the inbound nodes. Deleting my previous comment
    – rob
    Jan 21 '19 at 20:52
  • 1
    There is a typo in the _inbound_nodes (you forgot the _). I can't edit since it's less than 6 characters. Oct 18 '19 at 16:15

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