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I am trying to load data set that looks like this:

Algeria,73.131000,6406.8166213983,0.1
Angola,51.093000,5519.1831786593,2
Argentina,75.901000,15741.0457726686,0.5
Armenia,74.241000,4748.9285847709,0.1

etc. At the end, I will need only columns 1 and 2. I won't need country names and the last column. Essentially, I need to extract 2 matrices with dimensions nx1. I know that I need to specify the data type:

data=np.loadtxt('file.txt',delimiter=',',dtype=[('f0',str),('f1',float),('f2',float),('f3',float)])

however, this produces a list of tuples

array([('', 73.131, 6406.8166213983, 0.1),
   ('', 51.093, 5519.1831786593, 2.0),`

instead of

array(['',73.131,6406.8166213983,0.1],
      ['',51.093, 5519.1831786593, 2.0],

Can somebody point out where the mistake is?

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FWIW, your output is not a list of tuples, but a structured array. Your desired output, with the empty string at the beginning of each row, isn't an option because it has mixed dtypes. Using only rows (1,2) makes this problem irrelevant, since they are both floats. –  askewchan Nov 5 '13 at 1:17
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3 Answers 3

up vote 0 down vote accepted

If you just want the first two columns you could use genfromtxt:

import numpy as np
col1 = np.genfromtxt('yourfile.txt',usecols=(0),delimiter=',',dtype=None)
col2 = np.genfromtxt('yourfile.txt',usecols=(1),delimiter=',',dtype=None)

or both together:

np.genfromtxt('yourfile.txt',usecols=(0,1),delimiter=',',dtype=None)
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Check numpy's documentation.

x, y = np.loadtxt(c, delimiter=',', usecols=(0, 2), unpack=True)

The usecols parameter should get your job done.

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This is the best answer, but with usecols=(1, 2) to match OP's request. –  askewchan Nov 5 '13 at 1:19
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Your "mistake" is that you set your own dtype. If you don't want the dtype you've set (where I see no reason why you wouldn't want it), you can use skiprows and usecols parameters of np.loadtxt() to ONLY load the columns you wish.

Your result will be a numpy array with a shape of (n, 2), not (n, 3) that you thought you'd have (where n is your number of rows).

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