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I am following the tutorial about Time Series Forecasting from the TensorFlow website (https://www.tensorflow.org/tutorials/structured_data/time_series), and I am facing difficulties caused by the occurrence of the error below (which also occurs in other code snippets that run later), when I apply my input data (time series), that has 1440 points, to the code, and I change the code to forecast 300 points (OUT_STEPS = 300, label_width=OUT_STEPS, shift=OUT_STEPS, etc.), also adjusting the inputs to 300.

Executed code:

history = compile_and_fit(lstm_model, wide_window)

IPython.display.clear_output()
val_performance['LSTM'] = lstm_model.evaluate(wide_window.val)
performance['LSTM'] = lstm_model.evaluate(wide_window.test, verbose=0)

Code execution output:

/usr/local/lib/python3.7/dist-packages/keras/utils/generic_utils.py:915: RuntimeWarning: divide by zero encountered in log10
  numdigits = int(np.log10(self.target)) + 1
---------------------------------------------------------------------------
OverflowError                             Traceback (most recent call last)
<ipython-input-67-8a2e627c43f4> in <module>()
      2
      3 IPython.display.clear_output()
----> 4 val_performance['LSTM'] = lstm_model.evaluate(wide_window.val)
      5 performance['LSTM'] = lstm_model.evaluate(wide_window.test, verbose=0)

4 frames
/usr/local/lib/python3.7/dist-packages/keras/utils/generic_utils.py in update(self, current, values, finalize)
    913
    914       if self.target is not None:
--> 915         numdigits = int(np.log10(self.target)) + 1
    916         bar = ('%' + str(numdigits) + 'd/%d [') % (current, self.target)
    917         prog = float(current) / self.target

OverflowError: cannot convert float infinity to integer

I concluded that there is some dependency between the number of data entry and the number of forecast points, because if I set the number of forecast points to 300 points in the example of the TensorFlow website, with number of input like 70091 (considering df = df[5::6]), this type of error that I mentioned does not occur, but if I select only 1440 points, the same error that occurs applying my data of 1440 points also occurs. If you want you can check/edit the example code from the TensorFlow website, in which I set the input number 1440 points, and made the necessary settings to forecast 300 points, here on this Google Colab Notebook: https://colab.research.google.com/drive/1DCraelosxrRcF6VLF5Fv6Rj5hSfvr_YS?usp=sharing.

Could anyone help me with this, please?

Thanks in advance.

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1 Answer 1

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The error is caused by passing a zero value (self.target) into numdigits = int(np.log10(self.target)) + 1 this means numdigits == np.inf and you can't do int(np.inf).

I think the real issue though is caused by wide_window's shape. when you run `wide_window.val' you are getting shape (None, 300, 19) and (None, 300, 1) and I think you want it to have (32, 300, 19) and (32, 300, 1).

Hope that helps you start to track it down.

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  • Hi, @user1563247, first I'm sorry for the delay in responding, I couldn't respond earlier, although I read your comment a while ago. It's been a while since I've been working on this code, and I couldn't try to do what you suggested, but if I go back to working with this code, I'll try to do what you suggested, to see if at least this specific problem is resolved. Thank you!
    – Marco
    May 5 at 22:25
  • 1
    solution suggested has no any effect... I've described the sence of such error here - it's all about the whole ds size & window_size - hope that helps somebody
    – JeeyCi
    May 24 at 16:37

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