I have an array which is read from a fortran subroutine as a 1D array via f2py. Then in python, that array gets reshaped:

```
a=np.zeros(nx*ny*nz)
read_fortran_array(a)
a=a.reshape(nz,ny,nx) #in fortran, the order is a(nx,ny,nz), C/Python it is reversed
```

Now I would like to pass that array back to fortran as a 3D array.

```
some_data=fortran_routine(a)
```

The problem is that f2py keeps trying to transpose a before passing to fortran_routine. fortran routine looks like:

```
subroutine fortran_routine(nx,ny,nz,a,b)
real a
real b
integer nx,ny,nz
!f2py intent(hidden) nx,ny,nz
!f2py intent(in) a
!f2py intent(out) b
...
end subroutine
```

How do I prevent all the transposing back and forth? (I'm entirely happy to use the different array indexing conventions in the two languages).

**EDIT**

It seems that `np.asfortranarray`

or `np.flags.f_contiguous`

should have some part in the solution, I just can't seem to figure out what part that is (or maybe a `ravel`

followed by a `reshape(shape,order='F')`

?

**EDIT**

It seems this post has caused some confusion. The problem here is that `f2py`

attempts to preserve the *indexing scheme* instead of the *memory layout*. So, If I have a numpy array (in C order) with shape `(nz, ny, nx)`

, then f2py tries to make the array have shape `(ny, ny, nx)`

in fortran too. If f2py were preserving *memory layout*, the array would have shape `(nz, ny, nx)`

in python and `(nx, ny ,nz)`

in fortran. I want to preserve the memory layout.