set very low values to zero in numpy

In numpy I have an array like

``````[0 +  0.5j, 0.25 + 1.2352444e-24j, 0.25+ 0j, 2.46519033e-32 + 0j]
``````

what is the fastest and easiest way to set the super low value to zero to get

``````[0 +  0.5j, 0.25 + 0j, 0.25+ 0j, 0 + 0j]
``````

efficiency is not the paramount.

-

Hmmm. I'm not super-happy with it, but this seems to work:

``````>>> a = np.array([0 +  0.5j, 0.25 + 1.2352444e-24j, 0.25+ 0j, 2.46519033e-32 + 0j])
>>> a
array([  0.00000000e+00 +5.00000000e-01j,
2.50000000e-01 +1.23524440e-24j,
2.50000000e-01 +0.00000000e+00j,   2.46519033e-32 +0.00000000e+00j])
>>> tol = 1e-16
>>> a.real[abs(a.real) < tol] = 0.0
>>> a.imag[abs(a.imag) < tol] = 0.0
>>> a
array([ 0.00+0.5j,  0.25+0.j ,  0.25+0.j ,  0.00+0.j ])
``````

and you can choose your tolerance as your problem requires. I usually use an order of magnitude or so higher than

``````>>> np.finfo(np.float).eps
2.2204460492503131e-16
``````

but it's problem-dependent.

-
I went with this because it handle both real and complex numbers, also its pretty easy and intuitive. –  Eoin Murray Jan 23 at 9:03

To set elements that are less than `eps` to zero:

``````a[np.abs(a) < eps] = 0
``````

There could be a specialized function that is more efficient.

If you want to suppress printing of small floats instead:

``````import numpy as np
a = np.array([1+1e-10j])
print a # -> [ 1. +1.00000000e-10j]

np.set_printoptions(suppress=True)
print a # -> [ 1.+0.j]
``````
-
That'll leave `0.25 +1.23524440e-24j` alone, though. –  DSM Jan 19 at 22:15
@DSM: I've added variant that suppresses small floats on print (another possible interpretation of the OPs intent) –  J.F. Sebastian Jan 19 at 22:30