from numpy import * m = array([[1,0], [2,3]]) I would like to compute the element-wise log2(m), but only in the places where m is not 0. In those places, I would like to have 0 as a result.
I am now fighting against:
RuntimeWarning: divide by zero encountered in log2 Try 1: using where
res = where(m != 0, log2(m), 0) which computes me the correct result, but I still get logged a RuntimeWarning: divide by zero encountered in log2. It looks like (and syntactically it is quite obvious) numpy still computes log2(m) on the full matrix and only afterwards where picks the values to keep.
I would like to avoid this warning.
Try 2: using masks
from numpy import ma res = ma.filled(log2(ma.masked_equal(m, 0)), 0) Sure masking away the zeros will prevent log2 to get applied to them, won't it? Unfortunately not: We still get RuntimeWarning: divide by zero encountered in log2.
Even though the matrix is masked, log2 still seems to be applied to every element.
How can I efficiently compute the element-wise log of a numpy array without getting division-by-zero warnings?
seterr, but that doesn't look like a clean solution.Any ideas?
We can use masked arrays for this:
>>> from numpy import * >>> m = array([[1,0], [2,3]]) >>> x = ma.log(m) >>> print x.filled(0) [[ 0. 0. ] [ 0.69314718 1.09861229]]
Another option is to use the where parameter of numpy's ufuncs:
m = np.array([[1., 0], [2, 3]]) res = np.log2(m, out=np.zeros_like(m), where=(m!=0)) No RuntimeWarning is raised, and zeros are introduced where the log is not computed.
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