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 read in a sequence of numbers with

np.array(f.read().split(),dtype=np.float64)

Then I convert this to a 2-D array using np.reshape().

After this, how do to convert arr to a record array? I've tried (something like) the following:

filename = 'unstructured-file.txt'
nfields = 3
names = ('r','g','b')
with open(filename,'r') as f:
    arr = np.array(f.read().split(),dtype=np.float64)
    arr = arr.reshape(-1,nfields)
    out = np.array(arr,dtype=zip(names,['float64']*length(names))

but says TypeError: expected a readable buffer object

Any suggestions?

Edit: The main thing I want to do is to name my columns.

Instead of

out = np.array(arr,dtype=zip(names,['float64']*length(names))

If I use this,

out = np.core.records.fromrecords(arr.reshape(-1,nfields),names=','.join(names))

I can use out['r'] and so on, but out.dtype.names is None`. What is going on?

Edit2

The unstructured file looks like

 Some text
 More text
       100  1.000000E-01        46
 -1.891701E+04  1.702921E+02 -2.323660E+04  4.547841E+03 -2.778444E+04
  0.000000E+00  0.000000E+00  0.000000E+00  0.000000E+00 -2.149862E+04
  1.753467E+02  3.410277E+03 -1.034898E+05  2.778692E+04  0.000000E+00
  0.000000E+00  0.000000E+00  0.000000E+00  1.492281E+04  0.000000E+00
  0.000000E+00  0.000000E+00  9.000000E+01  9.000000E+01  9.000000E+01
  0.000000E+00 -4.774939E-01  0.000000E+00  0.000000E+00  0.000000E+00
 -2.243495E-01  3.513048E-01 -2.678782E-01  3.513048E-01 -7.155493E-01
  5.690034E-01 -2.678782E-01  5.690034E-01 -4.783123E-01  2.461974E+01
  0.000000E+00  0.000000E+00  0.000000E+00  2.461974E+01  0.000000E+00
  0.000000E+00  0.000000E+00  2.461974E+01
       200  2.000000E-01        46
 -1.891815E+04  1.421984E+02 -2.424678E+04  5.199451E+03 -2.944623E+04
  0.000000E+00  0.000000E+00  0.000000E+00  0.000000E+00 -2.174561E+04
  1.274613E+02 -6.004790E+01 -1.139308E+05  2.944807E+04  0.000000E+00
  0.000000E+00  0.000000E+00  0.000000E+00  1.445855E+04  0.000000E+00
  0.000000E+00  0.000000E+00  9.000000E+01  9.000000E+01  9.000000E+01
  0.000000E+00  7.785923E-01  0.000000E+00  0.000000E+00  0.000000E+00
  8.123304E-01  3.023486E-01 -5.891595E-01  3.023486E-01 -8.560144E-02
 -3.830618E-01 -5.891595E-01 -3.830618E-01  1.608437E+00  2.436174E+01
  0.000000E+00  0.000000E+00  0.000000E+00  2.436174E+01  0.000000E+00
  0.000000E+00  0.000000E+00  2.436174E+01
share|improve this question
add comment

1 Answer

up vote 4 down vote accepted

To convert a plain numpy array to a structured array, use view:

import numpy as np

filename = 'unstructured-file.txt'
nfields = 3
names = ('r','g','b')
with open(filename,'r') as f:
    arr = np.array(f.read().split(),dtype=np.float64)
    arr = arr.reshape(-1,nfields)
    out = arr.view(dtype=zip(names,['float64']*len(names))).copy()
share|improve this answer
    
Thanks, but I meant for the 'unstructured-file.txt' designation to indicate that it's not in a table and so does not work for this. –  crippledlambda Oct 11 '11 at 11:03
    
Can you give an example of what unstructured-file.txt looks like? –  unutbu Oct 11 '11 at 11:35
    
brilliant -- what happens if you don't use the .copy() method? Seems to still work? –  crippledlambda Oct 11 '11 at 11:54
2  
out=arr.view(...) makes out a view of arr. So modifying out would also modify arr. They share the same underlying data. I added copy() so that out would be an independent array. Both are useful; it just depends on what you want to do. –  unutbu Oct 11 '11 at 11:58
    
Great -- thanks. –  crippledlambda Oct 11 '11 at 13:21
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.