I am using a Python (via `ctypes`

) wrapped C library to run a series of computation. At different stages of the running, I want to get data into Python, and specifically `numpy`

arrays.

The wrapping I am using does two different types of return for array data (which is of particular interest to me):

: When I do`ctypes`

Array`type(x)`

(where x is the`ctypes`

array, I get a`<class 'module_name.wrapper_class_name.c_double_Array_12000'>`

in return. I know that this data is a copy of the internal data from the documentation and I am able to get it into a`numpy`

array easily:`>>> np.ctypeslib.as_array(x)`

This returns a 1D `numpy`

array of the data.

: In this case from the library's documentation, I understand that I am getting a pointer to the data stored and used directly to the library. Whey I do`ctype`

pointer to data`type(y)`

(where y is the pointer) I get`<class 'module_name.wrapper_class_name.LP_c_double'>`

. With this case I am still able to index through the data like`y[0][2]`

, but I was only able to get it into numpy via a super awkward:`>>> np.frombuffer(np.core.multiarray.int_asbuffer( ctypes.addressof(y.contents), array_length*np.dtype(float).itemsize))`

I found this in an old `numpy`

mailing list thread from Travis Oliphant, but not in the `numpy`

documentation. If instead of this approach I try as above I get the following:

```
>>> np.ctypeslib.as_array(y)
...
... BUNCH OF STACK INFORMATION
...
AttributeError: 'LP_c_double' object has no attribute '__array_interface__'
```

**Is this np.frombuffer approach the best or only way to do this? I am open to other suggestions but must would still like to use numpy as I have a lot of other post-processing code that relies on numpy functionality that I want to use with this data**.

`ctype`

array. Any recommendations? – dtlussier Dec 4 '10 at 20:09`numpy.ctypeslib.ndpointer`

as argument type to the ctypes wrapper of your function. (If this is not clear, just ask...) – Sven Marnach Dec 4 '10 at 20:46