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I have a keras NN that I want to train and validate using two sets of data, and then test the ultimate performance of using a third set. In order to avoid having to rerun the training every time I restart my google colab runtime or want to change my test data, I want to save the final state of the model after training in one script and then load it again in another script.

I've looked everywhere and it seems that model.save("content/drive/My Drive/Directory/ModelName", save_format='tf') should do the trick, but even though it outputs INFO:tensorflow:Assets written to: content/drive/My Drive/Directory/ModelName/assets nothing appears in my Google Drive, so I assume it isn't actually saving.

Please can someone help me solve this issue?

Thanks in advance!

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  • Does writing some sample file to that directory work? Commented Jul 24, 2020 at 13:54
  • Yes, later on I do np.savetxt() of a file to the same directory and it saves without problems
    – Beth Long
    Commented Jul 24, 2020 at 13:59
  • 2
    You are missing the starting / in your path, it should be /content/drive/etc, not content/drive,
    – Dr. Snoopy
    Commented Jul 24, 2020 at 14:42

1 Answer 1

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The standard way of saving and retrieving your model's state after Google Colab terminated your connection is to use a feature called ModelCheckpoint. This is a callback in Keras that would run after each epoch and it will save your model for instance any time there's an improvement. Here's is the steps needed to accomplish what you want:

  1. Connect to Google Drive

Use this code in order to connect to Google Drive:

from google.colab import drive
drive.mount('/content/gdrive')
  1. Give access to Google Colab

Then you'll presented with a link that you should go to and after authorizing Google Colab by copying the given code to the text box as shown below:

Google Drive's Authorization Code

  1. Define your ModelCheckpoint

This is how you could define your ModelCheckpoint's callback:

from keras.callbacks import *

filepath="/content/gdrive/My Drive/MyCNN/epochs:{epoch:03d}-val_acc:{val_acc:.3f}.hdf5"
checkpoint = ModelCheckpoint(filepath, monitor='val_acc', verbose=1, save_best_only=True, mode='max')
callbacks_list = [checkpoint]
  1. Use it as a callback in while you're training the model

Then you need to tell your model that after each epoch run this functionality for me to save the model's state.

model.fit(X_train, y_train,
          batch_size=64,
          epochs=epochs,
          verbose=1,
          validation_data=(X_val, y_val),
          callbacks=callbacks_list)
  1. Load the model after Google Colab terminated

Finally after your session was terminated, you can load your previous model's state by simply running the following code. Don't forget to re-define your model first and only load weights at this stage.

model.load_weights('/content/gdrive/My Drive/MyCNN/epochs:047-val_acc:0.905.hdf5'

Hope that this answers your question.

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  • Extremely clear and didactic explanation! Thank you so much!
    – Beth Long
    Commented Jul 27, 2020 at 16:17

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