This is a very common use-case for me. I have a C function that returns me a pointer to doubles:
//myheader.h double *mycfuntion(...)
I know the dimensions of the data that get returned. I also know that the data are Fortran-ordered. I want to write a Cython "shim" to get the data into Python as a Numpy array:
#myshim.pyx import numpy cimport numpy as cnumpy cnumpy.import_array() cdef extern from "myheader.h" : double *mycfunction(...) def mypyfunc(...) : cdef double *data = mycfunction(...) **MAGIC** return outarray
cdef cnumpy.ndarray[ cnumpy.double_t, mode='fortran', ...] outarray
This would be the handiest way of doing things. There's something critical that I'm missing here, though, concerning how to turn the pointer
data into a buffer that I can pass to the cnumpy.ndarray constructor. I've tried:
cdef cnumpy.ndarray[ cnumpy.double_t, mode='fortran', ...] outarray cdef bytes databuffer = <char *>data outarray = numpy.ndarray(buffer=databuffer, dtype=numpy.double, ...)
This approach consistently fails with
TypeError: buffer is too small for requested array
(B) The Numpy C-API
cnumpy.PyArray_SimpleNewFromData(...) plenty from Cython. It works just fine. The problem is that it doesn't support a flags argument so I can't tell it to construct a Fortran array. The alternative that I'd used in pure C implementations is
PyArray_NewFromDescr(...). It accepts flags. This approach is long-winded and painful, and means getting some symbols from numpy via an
extern block that aren't already imported. There has got to be a better way.
I have been Googling my face off on this problem but nothing obvious has popped up. Maybe I'm an idiot. Or just sleep-depping. Cheers!