Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm using

p = VN.vtk_to_numpy(data.GetCellData().GetArray('p'))

to read a 3D scalar from a .vtk file written this way :

p_x1y1z1 p_x2y1z1 p_x3y1z1 p_x4y1z1 p_x1y2z1 p_x2y2z1 p_x3y2z1 p_x4y2z1

and so on, with loops aroud x, y and z.

I'd like to fill a 3D numpy array with these data (it's a regular grid), something like p(i,j,k)=p_ijk so I can use the gradient and other operators from the numpy toolbox.

Any ideas?

Regards

share|improve this question
    
Are there any newline or is the file a giant one-liner ? Is there any header info that gives the size of the grid or do you know it beforehand ? –  Nathan Oct 15 '13 at 13:40
    
There are n lines of 9 elements (I don't know why 9). –  hiro_stack Oct 15 '13 at 14:10
add comment

1 Answer

up vote 1 down vote accepted

If I understand your situation correctly, you can just reshape it.

In [132]: p = np.array("p_x1y1z1 p_x2y1z1 p_x3y1z1 p_x4y1z1 p_x1y2z1 p_x2y2z1 p_x3y2z1 p_x4y2z1".split())

In [133]: p
Out[133]: 
array(['p_x1y1z1', 'p_x2y1z1', 'p_x3y1z1', 'p_x4y1z1', 'p_x1y2z1', 'p_x2y2z1', 'p_x3y2z1', 'p_x4y2z1'], 
      dtype='|S8')

It appears to me that your array is ordered in what numpy calls 'F' ordering:

In [168]: p.reshape(4, 2, order='F')
Out[168]: 
array([['p_x1y1z1', 'p_x1y2z1'],
       ['p_x2y1z1', 'p_x2y2z1'],
       ['p_x3y1z1', 'p_x3y2z1'],
       ['p_x4y1z1', 'p_x4y2z1']], 
      dtype='|S8')

If you have z variance, too, simply reshape to three dimensions:

In [169]: q
Out[169]: 
array(['p_x1y1z1', 'p_x2y1z1', 'p_x3y1z1', 'p_x4y1z1', 'p_x1y2z1',
       'p_x2y2z1', 'p_x3y2z1', 'p_x4y2z1', 'p_x1y1z2', 'p_x2y1z2',
       'p_x3y1z2', 'p_x4y1z2', 'p_x1y2z2', 'p_x2y2z2', 'p_x3y2z2',
       'p_x4y2z2', 'p_x1y1z3', 'p_x2y1z3', 'p_x3y1z3', 'p_x4y1z3',
       'p_x1y2z3', 'p_x2y2z3', 'p_x3y2z3', 'p_x4y2z3'], 
      dtype='|S8')

In [170]: q.reshape(4,2,3,order='F')
Out[170]: 
array([[['p_x1y1z1', 'p_x1y1z2', 'p_x1y1z3'],
        ['p_x1y2z1', 'p_x1y2z2', 'p_x1y2z3']],

       [['p_x2y1z1', 'p_x2y1z2', 'p_x2y1z3'],
        ['p_x2y2z1', 'p_x2y2z2', 'p_x2y2z3']],

       [['p_x3y1z1', 'p_x3y1z2', 'p_x3y1z3'],
        ['p_x3y2z1', 'p_x3y2z2', 'p_x3y2z3']],

       [['p_x4y1z1', 'p_x4y1z2', 'p_x4y1z3'],
        ['p_x4y2z1', 'p_x4y2z2', 'p_x4y2z3']]], 
      dtype='|S8')

This assumes x,y,z should map to i+1,j+1,k+1, as seen here:

In [175]: r = q.reshape(4,2,3,order='F')

In [176]: r[0]   #all x==1
Out[176]: 
array([['p_x1y1z1', 'p_x1y1z2', 'p_x1y1z3'],
       ['p_x1y2z1', 'p_x1y2z2', 'p_x1y2z3']], 
      dtype='|S8')

In [177]: r[:,0]  # all y==1
Out[177]: 
array([['p_x1y1z1', 'p_x1y1z2', 'p_x1y1z3'],
       ['p_x2y1z1', 'p_x2y1z2', 'p_x2y1z3'],
       ['p_x3y1z1', 'p_x3y1z2', 'p_x3y1z3'],
       ['p_x4y1z1', 'p_x4y1z2', 'p_x4y1z3']], 
      dtype='|S8')

In [178]: r[:,:,0]  #all z==1
Out[178]: 
array([['p_x1y1z1', 'p_x1y2z1'],
       ['p_x2y1z1', 'p_x2y2z1'],
       ['p_x3y1z1', 'p_x3y2z1'],
       ['p_x4y1z1', 'p_x4y2z1']], 
      dtype='|S8')
share|improve this answer
    
Thank you, it seems to be the right thing but I'm not sure the data are correctly imported as numpy arrays as I get : p = p.split() AttributeError: 'numpy.ndarray' object has no attribute 'split' when I do : p = VN.vtk_to_numpy(data.GetCellData().GetArray('p')) p = p.split() –  hiro_stack Oct 15 '13 at 14:30
    
Oh you can ignore the first line, I used that to create sample data from your string example. The p you get from your vtk_to_numpy is already an array, and that's the one I think you need to reshape. And of course, you shouldn't use 4,2,3 but instead nx, ny, nz for whatever the number of x,y,z values you have are. –  askewchan Oct 15 '13 at 14:31
    
It was the vtk_to_numpy that looked to behave in a strange way but thanks to you, everything works now. Thank you a lot ! –  hiro_stack Oct 15 '13 at 14:40
add comment

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.