# Constrain values of an array

I'm trying to constrain the values of a numpy array so that no values lie between -0.5 and 0.5. So if I had an array shaped (6,2) with values like this:

``````array([[  0.49873803,  -1.66316398],
[ -0.36091764,   2.0635736 ],
[ -1.09922111,  -2.49380792],
[  0.92724579,  -5.19540319],
[  1.49726584,  -0.22718924],
[ 60.        ,  60.        ]])
``````

How can I get numpy to change the values that are from -0.5 -> 0.0 to be -0.5, and from 0.5 -> 0.0 to be 0.5 so that the example array would be:

``````array([[  0.5,  -1.66316398],
[ -0.5,   2.0635736 ],
[ -1.09922111,  -2.49380792],
[  0.92724579,  -5.19540319],
[  1.49726584,  -0.5],
[ 60.        ,  60.        ]])
``````

I tried using np.clip but that didnt work, or I couldn't figure it out, so here I am!

-

For your `a` just run:

``````a[( 0.  <= a) & (a < 0.5)] =  0.5
a[(-0.5 <  a) & (a < 0. )] = -0.5
``````

or simply:

``````np.putmask(a, np.abs(a) < .5, np.sign(a) * .5)
``````

The first one can be adjusted to handle `0.` according to your needs. The second one leaves it to `0.`

-
I think `a[(0.5 > a) & (a >= 0)] = 0.5` looks cleaner. (OP should also decide how to handle 0, I guess.) – DSM Jun 8 '12 at 13:16
@DSM - of course, this looks cleaner. – eumiro Jun 8 '12 at 13:20
Hey, Thanks eumiro this looks like it will work perfectly. – user991926 Jun 8 '12 at 13:23
I like the usage of `putmask()`. – JAB Jun 8 '12 at 13:27

Have you tried just iterating through the Array?

``````i = 0
j = 0

while ( i < len(A)):
while (j < len(i)):
if  -0.5 <= A[i][j] <= 0:
A[i][j] = -0.5
if  0 <= A[i][j] <= 0.5:
A[i][j] = 0.5
j = j + 1

i =  i +1
``````

Or something like that... forgive me if the syntax isn't all right...

-
Numpy arrays are not made for iteration. – eumiro Jun 8 '12 at 13:21