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Here's a Timeseries notebook I used from the good work by Magnus Erik Hvass Pedersen - thanks for that:

https://colab.research.google.com/drive/1F6CuGVWN5TNgIjqxdu5glFeGBEr71TgO

I have had success running a version of this notebook via Google Colab on a GPU but when I do the same (after some modifications to make the code compatible on TPUs) I get this error:

ValueError: Error when checking input: expected input to have shape (299776, 20) but got array with shape (33309, 20)

The full stack trace can be found on the cell location https://colab.research.google.com/drive/1F6CuGVWN5TNgIjqxdu5glFeGBEr71TgO#scrollTo=wdSmXdvDw5HL.

It has been a bit of a tug-of-war to get the input/output data shapes in order but as we kept solving I/O shape issues other shape related issues started proping up.

The notebook is available for sharing and commenting.

Any thoughts will be appreciated.

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  • It appears that the initial query has been resolved by changing test set size to a smaller number ie 1344, see colab.research.google.com/drive/… among other changes to the notebook. Now I get the error AssertionError: batch_size must be divisible by strategy.num_towers (1 vs 8), batch_size has been set to 256 which is divisible by 8, so the error message isn't clear. See section Train the Recurrent Neural Network from the ToC on the left-hand panel. -- This isn't ideal I'd like to use all the data. Oct 17, 2018 at 13:51
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    Hi Mani! you should edit the question to reflect your update issue if you feel like it is similar enough to the original question.
    – d_kennetz
    Oct 17, 2018 at 14:12
  • @d_kennetz The title of the query does reflect the issue, the temporary resolution leads to a new problem, so we didn't really solve the original problem (if you see my comment above), I would like to drop the work-around and get the notebook to work. Oct 17, 2018 at 15:57
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    batch_generator is yield'ing within the for loop, where in the original notebook its yielding after the for loop. I think that might be the issue?
    – michaelb
    Oct 17, 2018 at 18:32
  • @michaelb are you saying this after running the notebook and looking at the code or just DRY run of the code. I will take a look and see if I can use your hint - thanks for that. Oct 17, 2018 at 22:16

1 Answer 1

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To solve the error ValueError: Operation 'tpu_140099307695464/VarIsInitializedOp'. Try using tf.train.RMSPropOptimizer instead of using RMSProp from tensorflow.keras.optimizers.

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  • Thanks again, it worked, the model is now training - no errors so far. Nov 22, 2018 at 1:03
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    Here's the link to the tweet and post talking about the notebooks - twitter.com/theNeomatrix369/status/1065939282265808896, thanks both @michaelb and Aman2930 for your help. You guys also helped to make this possible. Nov 27, 2018 at 18:52
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    Since this fixed your issue, would you mind choosing this as the correct answer for the benefit of future users?
    – liamdalton
    Nov 28, 2018 at 18:06

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