I am not sure on how to copy over a network in Tensorflow 2.0. There are plenty of answers on how to do it in Tensorflow 1.x, but none about 2.0. Both of the networks are made through subclassing the tf.keras.Model, so I can't use the tf.keras.models.clone_model function.

I have tried different approaches outlined below but none of them seem to work.

network1 = network2
network1.weights = network2.weights

from copy import copy
network1 = copy(network2)

Some of these methods will make a reference to the current network but not actually copy it. Would appreciate all the help I can get!

  • I don't know, so I'm not posting this as an answer, but maybe copy.deepcopy() will help? – Engineero Jul 1 '19 at 20:00
  • Getting a 'can't pickle _thread.RLock objects' error on that one. – Dema Ushchapovskyy Jul 1 '19 at 20:14
  • Are you getting any errors? Can you provide errors or give more information about what happens that isn't what you want in your given examples? – Engineero Jul 2 '19 at 13:58
  • What about using model.save() and keras.models.load_model() to save the one you want to copy and then load it into a new object? Seems a little roundabout, but might work? – Engineero Jul 2 '19 at 14:27

Suppose that model_a and model_b are instantiations of the same Keras Model. Then do:

for a, b in zip(model_a.variables, model_b.variables):
  a.assign(b)  # copies the variables of model_b into model_a
| improve this answer | |

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.