# replace floats from value a to b with value c in an large array

I have an array (2000 * 2000) with floats and I want to classify the numbers. So all numbers between 10 and 20 should be replaced with 15 and numbers between 20 - 60 should be replaced with 40 and so on.

I wrote something looping over all the rows and columns with a couple of if statements... but it takes forever to run over large arrays. Does anybody know how to speed things up?

``````for a in range(grid.shape[0]): #grid is an array
for b in range(grid.shape[1]):
for c in range(len(z)):
if z[c][0] <= grid[a][b] < z[c][1]: # z is a list containing [lower,upper,replace_value]
grid[a][b]=z[c][2]
``````
-
What version of Python is this? – Michael0x2a Jul 6 '12 at 17:49

Would something like this work for you?

``````>>> import numpy as np
>>> grid = np.random.random((5,5)) * 100
>>> z = np.array([0, 10, 20, 60, 100.])
>>> replace_value = np.array([np.nan, 5., 15., 40., 80.])

>>> grid = replace_value[z.searchsorted(grid)]
>>> print grid
[[ 15.  40.  80.  80.  15.]
[ 80.  40.  15.  80.  80.]
[ 15.  80.   5.  15.  40.]
[ 40.  80.   5.   5.  80.]
[ 40.   5.  80.   5.  40.]]
``````
-
thx! from minutes to less then a second :) – user1507422 Jul 6 '12 at 18:47