I am working on a real time audio processing dynamically linked library where I have a 2 dimensional C array of floating point data which represents the audio buffer. One dimension is time (samples) and the other is channel. I would like to pass this to a python script as a numpy array for the DSP processing and then I would like to pass this back to C so the data can carry on down the processing chain in C. The member function in C++ which does the processing loo开发者_JAVA技巧ks like this:
void myEffect::process (float** inputs, float** outputs, int buffersize)
{
//Some processing stuff
}
The arrays inputs and outputs are of equal size. The integer buffersize is the number of columns in the inputs and outputs arrays. On the python side I would like the processing to be carried out by a function which looks like the following:
class myPyEffect
...
...
def process(self,inBuff):
#inBuff and outBuff should be numpy arrays
outBuff = inBuff * self.whatever # some DSP stuff
return outBuff
...
...
Now, my question is, how can I go about getting the data in and out of C in the most efficient way possible (avoiding unnecessary memory copying etc.)? So far, for simple parameter changes I have been using C-API calls like the following:
pValue = PyObject_CallMethod(pInstance, "setParameter", "(f)", value);
Do I use something similar for my numpy arrays or is there a better way? Thanks for reading.
You may be able to avoid dealing with the NumPy C API entirely. Python can call C code using the ctypes
module, and you can access pointers into the numpy data using the array's ctypes attribute.
Here's a minimal example showing the process for a 1d sum-of-squares function.
ctsquare.c
#include <stdlib.h>
float mysumsquares(float * array, size_t size) {
float total = 0.0f;
size_t idx;
for (idx = 0; idx < size; ++idx) {
total += array[idx]*array[idx];
}
return total;
}
compilation to ctsquare.so
These command lines are for OS X, your OS may vary.
$ gcc -O3 -fPIC -c ctsquare.c -o ctsquare.o
$ ld -dylib -o ctsquare.so -lc ctsquare.o
ctsquare.py
import numpy
import ctypes
# pointer to float type, for convenience
c_float_p = ctypes.POINTER(ctypes.c_float)
# load the library
ctsquarelib = ctypes.cdll.LoadLibrary("ctsquare.so")
# define the return type and arguments of the function
ctsquarelib.mysumsquares.restype = ctypes.c_float
ctsquarelib.mysumsquares.argtypes = [c_float_p, ctypes.c_size_t]
# python front-end function, takes care of the ctypes interface
def myssq(arr):
# make sure that the array is contiguous and the right data type
arr = numpy.ascontiguousarray(arr, dtype='float32')
# grab a pointer to the array's data
dataptr = arr.ctypes.data_as(c_float_p)
# this assumes that the array is 1-dimensional. 2d is more complex.
datasize = arr.ctypes.shape[0]
# call the C function
ret = ctsquarelib.mysumsquares(dataptr, datasize)
return ret
if __name__ == '__main__':
a = numpy.array([1,2,3,4])
print 'sum of squares of [1,2,3,4] =', myssq(a)
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