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I wrote out a matrix in Fortran as follows:

real(kind=kind(0.0d0)), dimension(256,256,256) :: dense



I want to read this back into Python. Everything I've seen is for 2D NxN arrays not 3D arrays. In Matlab I can read it as:

fid =    fopen(nfilename,'rb');
mesh_raw = fread(fid,ndim*ndim*ndim,'double');
mesh_reshape = reshape(mesh_raw,[ndim ndim ndim]);

I just need the equivalent in Python - presumably there is a similar load/reshape tool available. If there is a more friendly compact way to write it out for Python to understand, I am open to suggestions. It will presumably look something this: . I am just unfamiliar with the equivalent syntax for my case. A good reference would suffice. Thanks.

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struct.unpack seems like the way to go but I'm not sure what to do for my case. – Griff Dec 11 '12 at 19:57
Do any of these methods using scipy/numpy help you? – Jonas Wielicki Dec 11 '12 at 20:02
You will find the solution here:… – milancurcic Dec 11 '12 at 20:10
up vote 7 down vote accepted

Using IRO-bot's link I modified/made this for my script (nothing but numpy magic):

def readslice(inputfilename,ndim):
    shape = (ndim,ndim,ndim)
    fd = open(fname, 'rb')
    data = np.fromfile(file=fd, dtype=np.double).reshape(shape)
    return data

I did a mean,max,min & sum on the cube and it matches my fortran code. Thanks for your help.

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Just make sure you take into account array dimension ordering difference between Fortran (column major) and Python (row major). – milancurcic Dec 11 '12 at 21:11
Isn't there a command to tell it to reorder as fortran at the end of .reshape(shape)? – Griff Dec 12 '12 at 0:51
In the case of Fortran array being declared as dimension(im,jm,km), you would want to read it from Python as np.fromfile(file=fd, dtype=np.double).reshape((km,jm,im)). In the case of im=jm=km, you don't need any extra steps, but remember that last index varies fastest. – milancurcic Dec 12 '12 at 4:06

I can't see anything but a direct read working here. Python doesn't do a great job of 2-D arrays, let alone 3-d, but this bit of code should work.

for x in range(0,ndim):
    for y in range(0,ndim):
        for z in range(0,ndim):
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