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Cython error message: Buffer has wrong number of dimensions (expected 1, got 2)

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?

-
Which line causes the exception? I see one potential problem - beta is defined as 1-dimensional, but its value is given as 2-dimensional (dimensions of size 1 still count as dimensions) – DaveP Mar 29 '12 at 1:57
Thank you for your answer. I defined beta as 1-dimensional because it is a vector, is that wrong? I thought that ndim=1 was for objects that had only one axis, ndim=2 for two-dimensional arrays, ndim=3 for 3-dimensional arrays, etc… – brodrigues Mar 29 '12 at 14:55
The value which you assign to beta, np.zeros([ncolx,1]) is actually a 2-dimensional array. Having a second dimension of length one is not the same thing as being a one-dimensional array. – DaveP Mar 29 '12 at 23:33

2 Answers

regarding your speed have a look @ http://simula.no/research/sc/publications/Simula.SC.578/simula_pdf_file :

Trying to vectorize the code also resulted in very poor performance, for the same reasons. Vectorization uses slicing, and slices are Python objects not implemented in Cython.

DeVectorizing your code will probably speed things up.

-
Thank you for you're answer. So when using cython, doing dot products and such is not a god idea? – brodrigues Mar 30 '12 at 18:15

What do these 2 lines actually do?

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

It assigns the `np.float` (Python-)type to a variable called `DTYPE` and declares a C type definition (ctypedef).

Using the `ctypedef` keyword in Cython will make it add the C/C++ `typedef` statement with the given types in the compiled Cython-code.

A `typedef`-fed type equals the type it was defined from, but the compiler will warn you when giving it a value of another type (even it's the type it was defined from).

When using Cython, you should have a little understanding of C or C++.

-
Thank you for your answers. However, I don't understand what you mean by «declares a C type definition» and why it's useful. – brodrigues Mar 30 '12 at 18:17
@cbrunos I've edited my answer. – Niklas R Apr 2 '12 at 7:53