In my code I usally use numpy arrays to interface between methods and classes. Optimizing the core parts of my program I use cython with c pointers of those numpy arrays. Unforunately, the way I'm currently declaring the arrays is quite long.
For example, let's say I have a method which should return a numpy array someArrayNumpy, but inside the function pointers *someArrayPointers should be used for speed. This is how I usually declare this:
cdef: numpy.ndarray someArrayNumpy = numpy.zeros(someArraySize) numpy.ndarray[numpy.double_t, ndim=1] someArrayBuff = someArrayNumpy double *someArrayPointers = <double *> someArrayBuff.data [... some Code ...] return someArrayNumpy
As you can see, this takes up 3 lines of code for basically one array, and often I have to declare more of those arrays.
Is there a more compact/clever way to do this? I think I am missing something.
So because it was asked by J. Martinot-Lagarde I timed C pointers and "numpy pointers". The code was basically
for ii in range(someArraySize): someArrayPointers[ii] += 1
for ii in range(someArraySize): someArrayBuff[ii] += 1
with the definitions from above, but I added "ndim=1, mode='c'" just to make sure. Results are for someArraySize = 1e8 (time in ms):
testMartinot("cPointers") 531.276941299 testMartinot("numpyPointers") 498.730182648
That's what I roughly remember from previous/different benchmarks.