I am using tensorflow 1.0 CPU on ubuntu and python 3.5.

I adapted an example of tensorflow to work on my own dataset https://github.com/martin-gorner/tensorflow-mnist-tutorial

It works fine as long as the number of outputs is under 10. When the number of outputs is above 10,I get the error:

InvalidArgumentError (see above for traceback): indices[1] = 10 is not in [0, 10)

[[Node: Gather_4 = Gather[Tindices=DT_INT64, 
     _device="/job:localhost/replica:0/task:0/cpu:0"](grayscale_to_rgb, ArgMax_4)]]

Any help?

  • So where's the traceback? – jwodder Mar 2 '17 at 22:59
  • would you please post/link to the code you used (changes you made)? – Harsha Pokkalla Mar 2 '17 at 23:15
  • 1
    I don't know tensorflow at all, but [0, 10) means that valid interval is left-open and right-closed, in other words valid values does not include 10. – Łukasz Rogalski Mar 3 '17 at 7:36

I also came across the same error, and after fiddling with it for 2 days I came to realize there are 2 main reasons this error was getting thrown for my code and I mentioned them below to help anyone struggling with the same problem:

  1. The dimensions of your data and your labels being different

  2. In my case, the problem was that when building my vocabulary I have indexed the words from 1 and not from 0. But the embedded layer starts indexing from 0. So it kept giving me the mentioned error. I fixed the error by indexing my vocabulary from 0.

    previous code:

    dictionary = Counter(words)
    sorted_split_words = sorted(dictionary, key=dictionary.get, reverse=True)
    vocab_to_int = {c: i for i, c in enumerate(sorted_split_words, 1)}

    to fix it I changed the last line to (removed 1):

    vocab_to_int = {c: i for i, c in enumerate(sorted_split_words)}

The index of the input word exceeds the length of the vocabulary, or the new words that are not included in the vocabulary.

Please try to enlarge vocabulary length.

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