I have a function that takes an image represented in a numpy ndarray as a parameter.
This ndarray consists of a *list* x *list* x *list* item (line x pixels x pixel) and needs to be transformed to a *list* x *list* x *tuple* in regular list format (thus no longer as an ndarray).

thus for instance the contents of this variable may look like

```
[[[0,0,0],[1,0,1],[2,4,5]],[[3,4,5],[1,7,4],[1,3,5]],[[2,4,2],[1,6,7],[1,9,0]]]
```

and should be turned into:

```
[[(0,0,0),(1,0,1),(2,4,5)],[(3,4,5),(1,7,4),(1,3,5)],[(2,4,2),(1,6,7),(1,9,0)]]
```

The (cython) code segment below does exactly this, but takes around 800ms for an image of 1024x768 to complete.

```
import numpy as np
cimport numpy as np
DTYPE = np.int
ctypedef np.int_t DTYPE_t
def convertToBackdrop(np.ndarray arr3d):
agc = arr3d.swapaxes(0,1).tolist()
agc = [map(tuple,line) for line in agc]
return agc
```

My quesion is: in what ways could I make this code more (time-)efficient? I have searched if there is cdef for list, but have not found any leads. I hope I'm not asking for the impossible if I'd like to get it under 100 ms completion time. Thanks in advance for any suggestions.

`totuple()`

method. Out of interest, what is the costly part of the method, the`tolist()`

or the list comp? – Lattyware Jun 21 '12 at 11:22