I'm trying to code the least squares estimator in Cython for learning purposes. I got this basic version working:

```
import cython
import numpy as np
from scipy.linalg import inv
cimport numpy as np
def ols_c(np.ndarray x, np.ndarray y):
cdef int nrowx = x.shape[0]
cdef int ncolx = x.shape[1]
cdef np.ndarray beta = np.zeros([ncolx,1], dtype=float)
cdef np.ndarray a1 = np.zeros([ncolx, ncolx], dtype=float)
cdef np.ndarray a2 = np.zeros([ncolx, nrowx], dtype=float)
a1 = inv(np.dot(x.T,x))
a2 = np.dot(a1,x.T)
beta = np.dot(a2,y)
return(beta)
```

which is slightly slower than this Numpy version:

```
import numpy as np
from scipy.linalg import inv
def ols(x,y):
a1 = inv(np.dot(x.T,x))
a2 = np.dot(a1,x.T)
beta = np.dot(a2,y)
return(beta)
```

I guess this is likely due to inefficient array indexing. Following tutorials on the internet, I modified the basic Cython version like this:

```
import cython
import numpy as np
from scipy.linalg import inv
cimport numpy as np
DTYPE = np.float
ctypedef np.float_t DTYPE_t
def ols_c(np.ndarray[DTYPE_t, ndim=2] x, np.ndarray[DTYPE_t, ndim=1] y):
cdef int nrowx = x.shape[0]
cdef int ncolx = x.shape[1]
cdef np.ndarray[DTYPE_t, ndim=1] beta = np.zeros([ncolx,1], dtype=float)
cdef np.ndarray[DTYPE_t, ndim=2] a1 = np.zeros([ncolx, ncolx], dtype=float)
cdef np.ndarray[DTYPE_t, ndim=2] a2 = np.zeros([ncolx, nrowx], dtype=float)
a1 = inv(np.dot(x.T,x))
a2 = np.dot(a1,x.T)
beta = np.dot(a2,y)
return(beta)
```

But now it doesn't work, I get the following error message:

```
ValueError: Buffer has wrong number of dimensions (expected 1, got 2)
```

What causes this error? I also have some other questions:

What do these 2 lines actually do?

```
DTYPE = np.float
ctypedef np.float_t DTYPE_t
```

Also, if I understand correctly typing this cdef np.ndarray[DTYPE_t, ndim=2] x = np.zeros([ncol, nrow], dtype=float) creates a two-dimensional array x with number of columns equal to ncol and row equal to nrow, that contain floats. But what does [DTYPE_t, ndim=2] actually does? I haven't found any documentation on this.

Thank you in advance for your answers!

EDIT: looks like if I replace DTYPE_t with double and comment these two lines:

```
DTYPE = np.float
ctypedef np.float_t DTYPE_t
```

HOwever, execution is still slow. What can I do to speed things up?