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.