7

I was trying to apply transfer learning to the InceptionV3. Here is my code:

inception_model = InceptionV3(weights='imagenet',include_top=False)
output_inception = inception_model.output
output_globalavgpooling = GlobalAveragePooling2D()(output_inception)
output_dense = Dense(1024,activation='relu')(output_globalavgpooling)
predictions = Dense(1,activation='sigmoid')(output_dense)

final_model = Model(inception_model.input,output=predictions)

final_model.compile()

inception_model.summary()

When I run this code I am getting following error at the final_model = Model(inception_model.input,output=predictions) line:

TypeError: Tensor is unhashable if Tensor equality is enabled. Instead, use tensor.experimental_ref() as the key.

What should I do?

1
  • in Model() , output argument is wrong just add "s". it's outputs. Jan 1 at 19:24
3

I had a similar error. In my case it was due to using an old version of Keras and Tensorflow 2 from conda. There currently is some issues preventing the use of Tensorflow 2 with current Keras via conda.

I created a new environment and installed using according to the Keras/Tensorflow websites (CPU only version in my case):

pip install tensorflow
pip install keras
1
  • 4
    This solution works for CPU only versions. But not for GPU enabled versions
    – DotPi
    Nov 16 '19 at 13:34
2

Have you tried this?

final_model = tf.compat.v1.keras.Model(inception_model.input,output=predictions)
1

Adding to magiclantern answer, if you are using GPU then you can use the following commands.

pip install tensorflow-gpu 
pip install keras-gpu

Or if you want to use certain versions then use the following commands

pip install tensorflow-gpu==1.15.0
pip install keras-gpu==2.3.1 

This should work fine.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.