I have a pre-trained Keras model that takes inputs of an arbitrary dimension and outputs a single classification result. I do not need to train the model any further so I would be happy to convert all its trainable variables to constants. I do however need to use the model inside a Tensorflow graph, in the training of another model.

Essentially I want the pre-trained Keras model to act as an input-output operation without any gradients being applied. I have the pre-saved Keras model weights in a h5 file and can load these without a problem, and then use them to initialise the layers in the model.

What I am currently doing is the following:

```
class myKerasModel(Model):
def __init__(self, shape, trainable=True):
self.layers = [
Dense(100, activation='relu', kernel_initializer='random_uniform', bias_initializer='zeros', trainable=trainable)
]
inputs = Input(shape)
Model.__init__(self, inputs=inputs, outputs=outputs)
def apply_model_to_tensor(self, tensor):
model = Sequential()
model.add(InputLayer(input_tensor=tensor))
for layer in self.layers:
model.add(layer)
model.trainable = False
return model
```

After training the model and saving the weights in `weights.h5`

, I load the model weights and then try to apply the model with the loaded weights to a Tensor in a Tensorflow session:

```
test_input_tensor = ... # Some Tensorflow tensor of a specified shape (a variable)
mod = myKerasModel(shape, trainable=False)
mod.load_weights('weights.h5')
model = mod.apply_model_to_tensor(test_input_tensor)
# Now use model.output
```

The problem is, I do not think that the weights of `model`

are the same as those of `mod`

, even though the layers were instance variables and so they are essentially the same object. I am confused about this. Also, the `model`

when inspected in Tensorboard is attached to `gradient`

, even though I have set trainable to False. I think that this might just be because of the way Keras creates models though, but correct me if I'm wrong.

Is there a way to load the `model`

into a Tensorflow graph with the correct weights and connect it to an arbitrary input tensor?