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 would like to read a netcdf file using python. This file contain a netcdf variable in the double format.

I know that this quantity should be complex and I know that the last argument is always 2 numbers (real and im).

I would like to read the nedcdf variable IN AN EFFICIENT WAY and allocate it to a complex python/numpy variable.

For the moment I have the following INEFFICIENT program that work:

import numpy as N
self.EIG2D = N.zeros((self.nkpt,self.nband,3,self.natom,3,self.natom),dtype=complex)
EIG2Dtmp = root.variables['second_derivative_eigenenergies'][:,:,:,:,:,:,:] #number_of_atoms, 
                                   # number_of_cartesian_directions, number_of_atoms, number_of_cartesian_directions,
                                   # number_of_kpoints, product_mband_nsppol, cplex
for ikpt in N.arange(nkpt):
  for iband in N.arange(nband):
    for icart in N.arange(3):
      for iatom in N.arange(natom):
        for jcart in N.arange(0,3):
          for jatom in N.arange(natom):
            self.EIG2D[ikpt,iband,icart,iatom,jcart,jatom] = complex(EIG2Dtmp[iatom,icart,jatom,jcart,ikpt,iband,0],\
                                                                     EIG2Dtmp[iatom,icart,jatom,jcart,ikpt,iband,1])

How to make this more efficient ?

Thank you in advance,

Samuel.

share|improve this question
    
Look into the netCDF4-python module. Are you looping over every index of the EIG2Dtmp array? If so, you can just do self.EIG2D = root.variables[:] rather than looping through everything. –  Spencer Hill May 29 '14 at 14:59
    
I'm not. There are 7 arguments to EIG2Dtmp and 6 to self.EIG2D. The missing one beeing simply the real and im part. –  sponce May 29 '14 at 15:04
2  
I see. The accepted answer to this question seems to be exactly what you need. –  Spencer Hill May 29 '14 at 17:31
    
It is worth looking at the rest of the answers to that question. Depending on the array ordering, a simple "complex view" on the same array may suffice, as described in another answer (I unfortunately do not know how to link to a specific answer) –  eickenberg May 29 '14 at 18:33
    
@Spencer Hill: It seems to work: numpy.vectorize(complex)(Data[...,0], Data[...,1]). The only issue for me is that I also need to change the ordering A[a,b,c] ==> A[c,b,a] but I should probably made a new thread for that I guess. Thanks a lot ! –  sponce May 29 '14 at 21:18

1 Answer 1

up vote 1 down vote accepted

Thanks to Spencer Hill, the solution for me was

self.EIG2D = numpy.vectorize(complex)(EIG2Dtmp[...,0], EIG2Dtmp[...,1])

You can also refer to Numpy: Creating a complex array from 2 real ones?

share|improve this answer

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.