If you want to divide data into 16 groups, having 0 degree in the middle, why are you writing `for m in range (0,3600,225)`

?

```
>>> [x/10. for x in range(0,3600,225)]
[0.0, 22.5, 45.0, 67.5, 90.0, 112.5, 135.0, 157.5, 180.0, 202.5, 225.0, 247.5,
270.0, 292.5, 315.0, 337.5]
## this sectors are not the ones you want!
```

I would say you should start with `for m in range (-1125,36000,2250)`

(note that now I am using a 100 factor instead of 10), that would give you the groups you want...

```
wind_sectors = [x/100.0 for x in range(-1125,36000,2250)]
for m in wind_sectors:
#DO THINGS
```

I have to say I don't really understand your script and the goal of it...
To deal with circle degrees, I would suggest something like:

- a condition, where you put your problematic data, i.e., the one where you have to deal with the transition around zero;
- a condition where you put all the other data.

For example, in this case, I am printing all the elements from my array that belong to each sector:

```
import numpy
def wind_sectors(a_array, nsect = 16):
step = 360./nsect
init = step/2
sectores = [x/100.0 for x in range(int(init*100),36000,int(step*100))]
a_array[a_array<0] = a_arraya_array[a_array<0]+360
for i, m in enumerate(sectores):
print 'Sector'+str(i)+'(max_threshold = '+str(m)+')'
if i == 0:
for b in a_array:
if b <= m or b > sectores[-1]:
print b
else:
for b in a_array:
if b <= m and b > sectores[i-1]:
print b
return "it works!"
# TESTING IF THE FUNCTION IS WORKING:
a = numpy.array([2,67,89,3,245,359,46,342])
print wind_sectors(a, 16)
# WITH NDARRAYS:
b = numpy.array([[250,31,27,306], [142,54,260,179], [86,93,109,311]])
print wind_sectors(b.flat[:], 16)
```

**about** `flat`

**and** `reshape`

**functions:**

```
>>> a = numpy.array([[0,1,2,3], [4,5,6,7], [8,9,10,11]])
>>> original = a.shape
>>> b = a.flat[:]
>>> c = b.reshape(original)
>>> a
array([[ 0, 1, 2, 3],
[ 4, 5, 6, 7],
[ 8, 9, 10, 11]])
>>> b
array([ 0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11])
>>> c
array([[ 0, 1, 2, 3],
[ 4, 5, 6, 7],
[ 8, 9, 10, 11]])
```

`a[numpy.where(a<0)]`

. This is exactly equivalent to`a[a<0]`

, but using`where`

will be slower, as it explicitly calculates an array of indicies instead of using a boolean array. – Joe Kington May 23 '12 at 13:52