0

The following line in my Feed Forward Neural Network computes the L2 regularization term:

self.L2_reg = tt.sum([tt.sum(P ** 2) for P in self.params])

P is here a usual theano symbolical matrix variable. The memory usage increases constantly during training. The same is true for the L1 norm. However, when I don't apply any elemtwise operation at all there is no memory issue:

self.L2_reg = tt.sum([tt.sum(P) for P in self.params]) 

How can that be? I'm using theano 0.9 and Python 3.5 on a Windows machine. Thx for any help.

1

1 Answer 1

0

Theano version 0.9.0 has a known issue of memory leak. As a workaround, you can momentarily fall back to version 0.8.2 which will work right.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.