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I'm a relatively experienced Python programmer, but haven't written any C in a very long time and am attempting to understand Cython. I'm trying to write a Cython function that will operate on a column of a NumPy recarray.

The code I have so far is below.

recarray_func.pyx:

import numpy as np
cimport numpy as np

cdef packed struct rec_cell0:
  np.float32_t f0
  np.int64_t i0, i1, i2

def sum(np.ndarray[rec_cell0, ndim=1] recarray):
    cdef Py_ssize_t i
    cdef rec_cell0 *cell
    cdef np.float32_t running_sum = 0

    for i in range(recarray.shape[0]):
        cell = &recarray[i]
        running_sum += cell.f0
    return running_sum

At the interpreter prompt:

array = np.recarray((100, ), names=['f0', 'i0', 'i1', 'i2'],
                             formats=['f4', 'i8', 'i8', 'i8'])
recarray_func.sum(array)

This simply sums the f0 column of the recarray. It compiles and runs without a problem.

My question is, how would I modify this so that it can operate on any column? In the example above, the column to sum is hard coded and accessed through dot notation. Is it possible to change the function so the column to sum is passed in as a parameter?

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2 Answers 2

I believe this should be possible using cython's memoryviews. Something along these lines should work (code not tested):

import numpy as np
cimport numpy as np

cdef packed struct rec_cell0:
  np.float32_t f0
  np.int64_t i0, i1, i2

def sum(rec_cell0[:] recview):
    cdef Py_ssize_t i
    cdef np.float32_t running_sum = 0

    for i in range(recview.shape[0]):
        running_sum += recview[i].f0
    return running_sum

Speed can probably be increased by ensuring that the record array you pass to cython is continuous. On the python (calling) side, you can use np.require, while the function signature should change to rec_cell0[::1] recview to indicate that the array can be assumed to be continuous. And as always, once the code has been tested, turning off bounds checking, wrap around etc. in cython will likely further improve speed.

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What you want requires weak typing, which C doesn't have. If all your record types are the same you might be able to pull off something like: (disclaimer I don't have Cython on this machine so I am coding blind).

import numpy as np
cimport numpy as np

cdef packed struct rec_cell0:
  np.float32_t f0
  np.int64_t i0, i1, i2

def sum(np.ndarray[rec_cell0, ndim=1] recarray, colname):
    cdef Py_ssize_t i
    cdef rec_cell0 *cell
    cdef np.float32_t running_sum = 0

    loc = recarray.dtype.fields[colname][1]

    for i in range(recarray.shape[0]):
        cell = &recarray[i]
        running_sum += *(int *)(&cell+loc);
    return running_sum
share|improve this answer
    
something like this might work -- you could pass in a fused type as the type of running_sum, and pass it in as a pointer, then the cast could be to that type. –  shaunc May 5 '12 at 4:16

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