I am a newer to tensorflow. When I training the data with cnn ,sometimes "NaN loss during training" is happened at the first batch.

> loss function is L1-norm
> GradientDescentOptimizer is used.

"bach_size" ,"learning_rate" are adjust, even learning_rate = 0 is used.

What I really confused is when all parameters fixed, the result is sometimes can run normally ,sometimes get the error "Nan" at first batch. I want to know how it happens? what factors lead to the result?

  • Welcome to stackoverflow. The best way for volunteers here to diagnose your problem is trying to reproduce it. Try to improved this question by providing a small, self-contained and reproducible example - as it stands it is too much a guesswork. – Paulo Scardine Jan 13 '17 at 13:25
  • Well, since we don't have your code it is hard to say for sure. But, most of the time there are a lot of random factors in training a neural net. Your training data is shuffled. Your initial weights are picked randomly from a distribution of some sort. Getting an occasional NaN in the loss function is not a big deal, but it might indicate that your loss function does not fit well with your data or network. – Mad Wombat Jan 13 '17 at 15:06
  • Thks @MadWombat~ you give the useful information about the factors to that may lead to this issue commonly. – judyzha Jan 16 '17 at 2:06
  • Check for NANs in your data
  • RELU activation gives sometimes NANs

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