I'm currently trying to convert the following loops to cython:

```
cimport numpy as np
cimport cython
@cython.boundscheck(False) # turn of bounds-checking for entire function
def Interpolation(cells, int nmbcellsx):
cdef np.ndarray[float, ndim=1] x,y,z
cdef int i,j,len
for i in range(nmbcellsx):
x = cells[i].x
y = cells[i].y
z = cells[i].z
len = x.size
for j in range(len):
x[j] = x[j] * y[j] * z[j]
return 0
```

So far everything looks kind of okay, but the accesses to cells[i].* still require python calls. This prevents parallelization of the i-loop.

Here is a cython feedback (generated with cython -a):

Hence the question: How can I remove these python callbacks (i.e. such that line 9-12 become white)?

When I try to add the type of the Cell like this:

```
cimport numpy as np
cimport cython
cdef class cell_t:
cdef np.ndarray x,y,z
@cython.boundscheck(False) # turn of bounds-checking for entire function
def Interpolation(np.ndarray[cell_t,ndim=1] cells, int nmbcellsx):
cdef np.ndarray[float, ndim=1] x,y,z
cdef int i,j,len
for i in range(nmbcellsx):
x = cells[i].x
y = cells[i].y
z = cells[i].z
len = x.size
for j in range(len):
x[j] = x[j] * y[j] * z[j]
return 0
```

I receive the following cython error: dtype must be "object", numeric type or a struct (it is complaining about the cell_t within the declaration)

Thanks a lot.

`cells`

argument. If you give Cython the hint for it you might be able to make it recognize it. – Wessie Jan 6 '13 at 22:12`numpy.ndarray`

's and this nested structure seems to be not supported yet. Even 3 years later. – Wessie Jan 6 '13 at 23:30