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I'm unable to save a Keras model as I get the error mentioned in the title. I have been using tensorflow-gpu. My model consists of 4 inputs each is a ResNet50. When I use only a single input the call back below worked perfectly, but with the multi inputs I'm getting the following error:

RuntimeError: Unable to create link (name already exists)

callbacks = [EarlyStopping(monitor='val_loss', patience=30,mode='min', min_delta=0.0001, verbose=1),
    ModelCheckpoint(checkpoint_path, monitor='val_loss',save_best_only=True, mode='min', verbose=1)
]

Now without the callback I couldn't save the model at the end of training as I got the same error, but I was able to fix that using this code found here:

from tensorflow.python.keras import backend as K

with K.name_scope(model.optimizer.__class__.__name__):
    for i, var in enumerate(model.optimizer.weights):
        name = 'variable{}'.format(i)
        model.optimizer.weights[i] = tf.Variable(var, name=name)

This code only works with single input model and put after the training function model.fit.

With the callbacks even the above code is not working. This post is somehow related to my previous one.

I have read that this issue can be fixed with tf-nightly so I tried that, but didn't work.

I have tested with a standalone code and generated data in a Google colab and it worked. So I checked the tf version, it's the same as mine 2.3.0. As for cuda, both colab and my machine is running with :

nvcc: NVIDIA (R) Cuda compiler driver
Copyright (c) 2005-2019 NVIDIA Corporation
Built on Sun_Jul_28_19:07:16_PDT_2019
Cuda compilation tools, release 10.1, V10.1.243

Could this be the issue?

Update:

Here the output error :

113/113 [==============================] - ETA: 0s - loss: 30.0107 - mae: 1.3525
Epoch 00001: val_loss improved from inf to 0.18677, saving model to saved_models/multi_channel_model.h5
Traceback (most recent call last):
  File "fine_tuning.py", line 111, in <module>
    run()
  File "fine_tuning.py", line 104, in run
    model.fit(x=train_x_list, y=train_y, validation_split=0.2,
  File "/home/abderrezzaq/.local/lib/python3.8/site-packages/tensorflow/python/keras/engine/training.py", line 108, in _method_wrapper
    return method(self, *args, **kwargs)
  File "/home/abderrezzaq/.local/lib/python3.8/site-packages/tensorflow/python/keras/engine/training.py", line 1137, in fit
    callbacks.on_epoch_end(epoch, epoch_logs)
  File "/home/abderrezzaq/.local/lib/python3.8/site-packages/tensorflow/python/keras/callbacks.py", line 412, in on_epoch_end
    callback.on_epoch_end(epoch, logs)
  File "/home/abderrezzaq/.local/lib/python3.8/site-packages/tensorflow/python/keras/callbacks.py", line 1249, in on_epoch_end
    self._save_model(epoch=epoch, logs=logs)
  File "/home/abderrezzaq/.local/lib/python3.8/site-packages/tensorflow/python/keras/callbacks.py", line 1301, in _save_model
    self.model.save(filepath, overwrite=True, options=self._options)
  File "/home/abderrezzaq/.local/lib/python3.8/site-packages/tensorflow/python/keras/engine/training.py", line 1978, in save
    save.save_model(self, filepath, overwrite, include_optimizer, save_format,
  File "/home/abderrezzaq/.local/lib/python3.8/site-packages/tensorflow/python/keras/saving/save.py", line 130, in save_model
    hdf5_format.save_model_to_hdf5(
  File "/home/abderrezzaq/.local/lib/python3.8/site-packages/tensorflow/python/keras/saving/hdf5_format.py", line 125, in save_model_to_hdf5
    save_optimizer_weights_to_hdf5_group(f, model.optimizer)
  File "/home/abderrezzaq/.local/lib/python3.8/site-packages/tensorflow/python/keras/saving/hdf5_format.py", line 593, in save_optimizer_weights_to_hdf5_group
    param_dset = weights_group.create_dataset(
  File "/home/abderrezzaq/.local/lib/python3.8/site-packages/h5py/_hl/group.py", line 139, in create_dataset
    self[name] = dset
  File "/home/abderrezzaq/.local/lib/python3.8/site-packages/h5py/_hl/group.py", line 373, in __setitem__
    h5o.link(obj.id, self.id, name, lcpl=lcpl, lapl=self._lapl)
  File "h5py/_objects.pyx", line 54, in h5py._objects.with_phil.wrapper
  File "h5py/_objects.pyx", line 55, in h5py._objects.with_phil.wrapper
  File "h5py/h5o.pyx", line 202, in h5py.h5o.link
RuntimeError: Unable to create link (name already exists)

2 Answers 2

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I was able to solve the issue with duplicate variable names leading to a RuntimeError when using several instances of pre-trained models and saving them to h5 by modifying a protected attribute. This is not recommended in general, but in my case, I needed a solution now, and was not concerned with future proofing. I am working with tensorflow-gpu 2.3.0 on CUDA 10.1.

I put the following before compilation, after creating the combined model my_model. Training and saving checkpoints worked as expected.

Edit: Note that in my case, upon loading the h5 file of the combined model, the same steps will have to be performed if you want to save again.

    for i, w in enumerate(my_model.weights):
        split_name = w.name.split('/')
        new_name = split_name[0] + '_' + str(i) + '/' + split_name[1] + '_' + str(i)
        my_model.weights[i]._handle_name = new_name

Modifying the optimizer.weights of the combined model, as in the suggestion you mentioned, did not help in my case. I also opted to load the pre-trained models with load_model(compile=False) to remove their optimizer weights.

Here is another discussion I found about this, with a similar "solution" in the comments.

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  • I will definitely try it and come back to you if it works for me.
    – asendjasni
    Nov 30, 2020 at 13:40
  • I tried it and it worked, but it does not save the best only, it saves all the bests?
    – asendjasni
    Dec 8, 2020 at 13:38
  • nice that it worked! If I understand the issue correctly, you have a lot of "best weight" .h5 files. The best weights are saved incrementally, i.e. every time the loss reaches a new minimum, a checkpoint is saved. The one relevant for you is the last one before training terminates. This is expected behavior of the best_only option of the ModelCheckpoint.
    – flirion
    Dec 8, 2020 at 21:43
  • Yes, in the ModelCheckpoint I have save_best_only=True.
    – asendjasni
    Dec 9, 2020 at 11:12
  • Is your code now working as expected? I am not quite sure if this would be a separate issue. If my answer solved your problem, I would appreciate you marking it as accepted :)
    – flirion
    Dec 9, 2020 at 15:37
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  1. Try with CUDA 10.1. https://www.tensorflow.org/install/gpu says "TensorFlow supports CUDA® 10.1"

  2. Something is wrong with ModelCheckpoint callback. Check checkpoint_path location Is it writeable? Also the reference says "if save_best_only=True, the latest best model according to the quantity monitored will not be overwritten." So you may want to delete the last saver model or provide new unique name in checkpoint_path every time you run model. Most likely it prevents overwriting the previous model and throws error.

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  • 1
    take compatibility recommendations seriously. With CUDA 11 + TF 2.3 0. you are in a risky territory.
    – Poe Dator
    Sep 30, 2020 at 17:25
  • I have installed the cuda 10.1. nvidia-smi gives CUDA Version: 11.1 and nvcc --version gives Cuda compilation tools, release 10.1, V10.1.243 I'm a bit confused.
    – asendjasni
    Oct 1, 2020 at 7:43
  • It appears that the version showed by nvidia-smi is not the one installed. Now I'm sure that cuda-10.1 is installed with tensorflow 2.3.0. I run my code and it seems that the modelcheckpoint is not working and gives RuntimeError: Unable to create link (name already exists)
    – asendjasni
    Oct 1, 2020 at 9:18
  • something is wrong with ModelCheckpoint callback. Check checkpoint_path location Is it writeable? Also reference says "if save_best_only=True, the latest best model according to the quantity monitored will not be overwritten." So you may want to delete the last saver model or provide new unique name in checkpoint_path every time you run model.
    – Poe Dator
    Oct 1, 2020 at 12:59
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