I have a library in c++ and I'm trying to wrap it for python using Cython. One function returns an array of 3D vectors (float (*x)[3]) and I want to access that data from python. I was able to do so by doing something like

```
res = [
(self.thisptr.x[j][0],self.thisptr.x[j][1],self.thisptr.x[j][2])
for j in xrange(self.natoms)
]
```

but I would like to access this as a numpy array, so I tried numpy.array on that and it was much slower. I also tried

```
cdef np.ndarray res = np.zeros([self.thisptr.natoms,3], dtype=np.float)
cdef int i
for i in range(self.natoms):
res[i][0] = self.thisptr.x[i][0]
res[i][1] = self.thisptr.x[i][1]
res[i][2] = self.thisptr.x[i][2]
```

But is about three times slower than the list version.

Any suggestions on how to convert the list of vectors to an numpy array faster?

The complete code is

```
cimport cython
import numpy as np
cimport numpy as np
ctypedef np.float_t ftype_t
cdef extern from "ccxtc.h" namespace "ccxtc":
cdef cppclass xtc:
xtc(char []) except +
int next()
int natoms
float (*x)[3]
float time
cdef class pyxtc:
cdef xtc *thisptr
def __cinit__(self, char fname[]):
self.thisptr = new xtc(fname)
def __dealloc__(self):
del self.thisptr
property natoms:
def __get__(self):
return self.thisptr.natoms
property x:
def __get__(self):
cdef np.ndarray res = np.zeros([self.thisptr.natoms,3], dtype=np.float)
cdef int i
for i in range(self.natoms):
res[i][0] = self.thisptr.x[i][0]
res[i][1] = self.thisptr.x[i][1]
res[i][2] = self.thisptr.x[i][2]
return res
#return [ (self.thisptr.x[j][0],self.thisptr.x[j][1],self.thisptr.x[j][2]) for j in xrange(self.natoms)]
@cython.boundscheck(False)
def next(self):
return self.thisptr.next()
```