I am trying to use cython to possibly speed up a recursive function which performs numpy look ups to find a connected region of interest:

```
import numpy as np
cimport numpy as np
DTYPE = np.int
ctypedef np.int_t DTYPE_t
def find_ob(np.ndarray[DTYPE_t, ndim=2] ar, list point, list s):
if ar[point[0], point[1]] == 1:
s.append(point)
px = point[0]
py = point[1]
new_points = [[px-1, py], [px, py-1], [px+1, py], [px, py+1],
[px+1, py+1], [px-1, py-1]]
for i in new_points:
if i not in s:
find_ob(ar, i, s)
# From python:
ar = np.zeros((15, 15), dtype=int)
ar[2:8, 2:8] = 1
s = []
cythonmodule.find_ob(ar, point, s)
print len(s)
>>> 36
```

However, I think I am passing around a native python list and so am not getting any speedup. Do I need to convert the python list to a c array or struct or something before passing into find_ob? I have seen this: Cython recursive struct declarations but not sure what to do.

`s`

into a set, this should make things notably faster:`s = set()`

, Then`s.add(point)`

, instead of`s.append(..)`

. – Matt Nov 24 '14 at 11:16