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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):

cython -a feedback

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.

share|improve this question
1  
Of what type is the 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
1  
Also as a side-note. You seem to be not returning anything at all from the function related to the loop, nor does the loop mutate anything not-local. Just a heads-up. –  Wessie Jan 6 '13 at 22:15
    
This is just a simplyfied example of a more complicated function. cells is actually a numpy ndarray of objects of calls Cell. Let's just say the Cell class has only the numpy arrays x,y and z. How can I resolve this? –  user1829358 Jan 6 '13 at 22:34
    
After some research, I can't seem to find any method of having a type that contains 3 other numpy.ndarray's and this nested structure seems to be not supported yet. Even 3 years later. –  Wessie Jan 6 '13 at 23:30

2 Answers 2

You aren't telling Cython the type of your cells argument and thus it will use the Python look up methods. Try changing the definition to the following:

def Interpolation(np.ndarray cells, int nmbcellsx):

This will tell Cython it is getting the ndarray type and thus can use C accessing.

share|improve this answer
    
Unfortunately, this does not change anything. My guess is that I've to tell cython about the exact composition of the Cell but how do I do that? Btw. you can compile the above example with "cython -a file.py" and then look at the generated file.html (line 9-12 need to become (pale) white) –  user1829358 Jan 6 '13 at 22:53

How about using Typed Memoryview?

cimport cython

cdef class cell_t:
    cdef public float[:] x, y, z

    def __init__(self, x, y, z):
        self.x = x
        self.y = y
        self.z = z


@cython.boundscheck(False) # turn of bounds-checking for entire function
def Interpolation(cell_t[:] cells, int nmbcellsx):
    cdef float[:] x,y,z
    cdef int i,j,length
    cdef cell_t cell
    for i in range(nmbcellsx):
        cell = cells[i]
        x = cell.x
        y = cell.y
        z = cell.z
        length = len(x)
        for j in range(length):
            x[j] = x[j] * y[j] * z[j]
    return 0

Here is the test code:

import numpy as np
from cells import cell_t, Interpolation

x = np.array([1,2,3], np.float32)
y = np.array([4,5,6], np.float32)
z = np.array([7,8,9], np.float32)
c1 = cell_t(x, y, z)

x = np.array([1,1,1,1,1], np.float32)
y = np.array([2,2,2,2,2], np.float32)
z = np.array([3,3,3,3,3], np.float32)
c2 = cell_t(x, y, z)

cells = np.array([c1, c2], object)

Interpolation(cells, 2)

print c1.x.base
print c2.x.base

and the output:

[  28.   80.  162.]
[ 6.  6.  6.  6.  6.]
share|improve this answer
    
Thank you, this is very close to the actual solution but there is still one minor obstacle to prallelization. Cython seems to add some checks wheter the x,y and z arrays are NOT NULL (see here). Looking at this page I can't find an option to turn this check off. Do you know if this is possible? On a side-note, the goal is to uncomment line 21. –  user1829358 Jan 7 '13 at 8:07

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