I want to use vgg16 pre-trained model of keras. I have notice some strange behavior when trying to change the model.

1) I have add some layers of the per-trained model. My problem is that tensorboard is showing the layers of the model that I didn't add into the sequence model. This is strange because I have also deleted the imported model. I think this have to do with the dependency between layers so I want to remove this dependencies. How can I do this?

enter image description here

For example in this picture there is two layers that I didn't add but they are showing in the graph

vgg16_model = keras.applications.vgg16.VGG16()

cnnModel = keras.models.Sequential()

for layer in vgg16_model.layers[0:13]:

for layer in vgg16_model.layers[14:16]:

for layer in vgg16_model.layers[17:21]:

cnnModel.add(keras.layers.Dense(2048, name="compress_1"))
cnnModel.add(keras.layers.Dense(1024, name="compress_2"))
cnnModel.add(keras.layers.Dense(512, name="compress_3"))

for layer in cnnModel.layers[0:4]:
    layer.trainable = False

del vgg16_model

2) the second problem occurs when using cnnModel.pop(). In fact I have add all the layers but I do a pop to the layer I don't want before adding the next one this is the error I get.

Layer block4_conv2 has multiple inbound nodes, hence the notion of "layer output" is ill-defined. Use `get_output_at(node_index)` instead.

And this is the code I am using:

for layer in vgg16_model.layers[0:14]:


for layer in vgg16_model.layers[14:17]:


for layer in vgg16_model.layers[17:21]:

cnnModel.pop() is working the problem only occurs when trying to add the next layer.

Thank you for your help.

  • Did you solve it? i'm facing the same case
    – Luis Leal
    Aug 1, 2020 at 5:57
  • I also have the same issue. But funny thing is that, when I plot the model the discarded layers don't show up although TensorBoard still shows them. Use from tensorflow.keras.utils import plot_model plot_model(model, to_file = 'model_plot.png', show_shapes = True, show_layer_names = True) to plot the model and see. My only concern is that, I don't want the unnecessary layers increase the computational cost.
    – hafiz031
    Dec 2, 2020 at 13:30

1 Answer 1


You can try using Model instead of Sequential, like:

vgg16_model = keras.applications.vgg16.VGG16()

drop_layers = [13, 16]

input_layer = x = vgg16_model.input

for i, layer in enumerate(vgg16_model.layers[1:], 1):
    if i not in drop_layers:
        x = layer(x)

x = keras.layers.Dense(2048, name="compress_1")(x)
x = keras.layers.Dense(1024, name="compress_2")(x)
x = keras.layers.Dense(512, name="compress_3")(x)

cnnModel = keras.models.Model(inputs = input_layer, outputs = x)

for layer in cnnModel.layers[0:4]:
    layer.trainable = False

del vgg16_model
  • it didn't work. I still have the parallel layer I don't think del vgg16_model is working. Apr 5, 2018 at 19:54
  • And if you do cnnModel.summary() what do you see it?
    – ebeneditos
    Apr 5, 2018 at 19:57
  • I see the correct layers. it cannot show me the parallel layer because they are related to vgg16_model. I have also tried del layer in the loop for the two layer that I should drop but this is not working Apr 5, 2018 at 20:00
  • Thank you .. Model instead of Sequential can solve Layer block4_conv2 has multiple inbound nodes, hence the notion of "layer output" is ill-defined. Use get_output_at(node_index) instead.
    – N.IT
    Dec 16, 2018 at 17:21
  • Does this work if one of the layers requires multiple inputs? Mar 30, 2021 at 2:54

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