I have a function that calculates a matrix for me but it is really slow. Even in cython it is running slow, so I was wondering if one could do anything to enhance the below code.
EDIT: I've changed or added
des = np.zeros([n-m+1,m]) to
cdef np.ndarray des = np.zeros([n-m+1,m], dtype=DTYPE) (This is faster than
Instead of saying
m/2 I've added a
cdef int m2 = m/2 but that didn't seemed to help anything.
cimport numpy as np cimport cython DTYPE = float ctypedef np.float_t DTYPE_t @cython.boundscheck(False) @cython.cdivision(True) @cython.wraparound(False) cpdef map4(np.ndarray[DTYPE_t, ndim=1] s, int m): cdef int n = len(s) cdef int i cdef int j des = np.zeros([n-m+1,m]) for j in xrange(m): for i in xrange(m/2,n-m/2-1): des[i-m/2,j] = s[i-j+m/2] return des, s, m, n