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I have a matrix containing complex numbers (ex. -2.2982235934153075E-11+2.1179547211742553E-9i) that I need to import to a numpy array. I've been using genfromtext(file) to parse all my other, real values, but I'm getting a nan for all complex values. Any ideas?

self.raw = (genfromtxt(self.loc, delimiter=',', skip_header=9, dtype=float))
[m,n] = shape(self.raw)
data = zeros((m, n-3))
data[:, :] = self.raw[:, 3::]

returns:

data = array([nan, nan, nan, ...])
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paste some code that you used and paste an exemplary input (preferably, part of the input file) –  Jakub M. Aug 16 '13 at 19:15

2 Answers 2

You can do:

import numpy as np
a = np.genfromtxt(filename, converters={0: lambda x: x.replace('i','j')},
                  dtype=str)
a = np.complex_(a)

Note that the converters parameter was required because your text file is using i to denote the imaginary part.

It may be easier to convert your text file externally to replace all the i by j, avoiding a complicated converters argument in case you have many columns.

If your textfile with imaginary numbers had the format:

 (-2.298223593415307508e-11+2.117954721174255306e-09j)
 (-2.298223593415307508e-11+2.117954721174255306e-09j)
 (-2.298223593415307508e-11+2.117954721174255306e-09j)
 (-2.298223593415307508e-11+2.117954721174255306e-09j)
 (-2.298223593415307508e-11+2.117954721174255306e-09j)
 (-2.298223593415307508e-11+2.117954721174255306e-09j)
 (-2.298223593415307508e-11+2.117954721174255306e-09j)

Where you could read using only:

a = np.loadtxt(filename).view(complex)

for example...

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2  
This works for a single column. It appears the data is suppose to be multi-column. I would probably externally convert the 'i'->'j' in the data file, perhaps using sed, awk, or even perl!, then read in the converted file using dtype=np.complex –  Craig J Copi Aug 16 '13 at 19:46
    
If you can convert it externally you don't need to use the converters argument for this case... –  Saullo Castro Aug 16 '13 at 19:47
1  
Right, and you wouldn't have to worry about the actual number of columns in the file. It isn't entirely clear what the constraints from the OP are. –  Craig J Copi Aug 16 '13 at 19:49
    
OP here, python seems to be reading the columns of the .csv ([m,n] =[2500, 400]) as strings. Edit: 'Python' <--- "Excel' –  1ifbyLAN2ifbyC Aug 16 '13 at 20:12
1  
@1ifbyLAN2ifbyC yes... if the file is written like (x + yj), including the brackets, it will easily read using loadtxt or genfromtxt, as examplified in the answer... –  Saullo Castro Aug 16 '13 at 20:22
up vote 0 down vote accepted

The way I ended up having to do this was to first replace('i', 'j') for all cells in the original .csv file and save the new, corrected file. Afterwards, reading the .csv with dtype=str caused errors in subsequent calculations, but it turns out you can parse the .csv with dtype=complex128, which solved all my problems. Thanks for the help on the conversion @Saullo-Castro

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