2

I have two packages I'd like to use, one is written in Keras1.2, and the other one in tensorflow. I'd like to use a part of the architecture that is built in tensorflow into a Keras model.

A partial solution is suggested here, but it's for a sequential model. The suggestion regarding functional models - wrapping the pre-processing in a Lambda layer - didn't work.

The following code worked:

inp = Input(shape=input_shape)
def ID(x):
    return x
lam = Lambda(ID)  
flatten = Flatten(name='flatten')
output = flatten(lam(inp))
Model(input=[inp], output=output)

But, when replacing flatten(lam(inp)) with a pre-processed output tensor flatten(lam(TF_processed_layer)), I got: "Output tensors to a Model must be Keras tensors. Found: Tensor("Reshape:0", shape=(?, ?), dtype=float32)"

  • Did you ever find an answer? – SantoshGupta7 Jan 15 at 18:57
0

You could try wrapping your input tensor into the Keras Input layer and carry on building your model from there. Like so:

inp = Input(tensor=tftensor,shape=input_shape)
def ID(x):
    return x
lam = Lambda(ID)  
flatten = Flatten(name='flatten')
output = flatten(lam(inp))
Model(input=inp, output=output)

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