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I am trying to read in data from a text file using numpy.loadtxt with the converters argument. I have a mixture of columns of ints and strings. The code is:

a,b,c,d,e = np.loadtxt(infile, delimiter = ',', usecols=(0,2,5,8,9), skiprows = 1,
                           unpack = True, converters = dict(zip((0,2,5,8,9), (int,float,float,int,int))))

The data are read in correctly and unpacked correctly, but all the variables (a,b,c,d, and e) end up as floats. Am I making a mistake in the converters syntax?

Edit trying answer I tried using dtype = (int,float,float,int,int) as suggested by @joris as:

a,b,c,d,e = np.loadtxt(infile,delimiter = ',', usecols=(0,2,5,8,9), skiprows = 1, unpack = True, dtype = (int,float,float,int,int))

but I get the following error:

     41                                            skiprows = 1,
     42                                            unpack = True,
---> 43                                            dtype = (int,float,float,int,int))

/Library/Frameworks/Python.framework/Versions/2.7/lib/python2.7/site-packages/numpy/lib/npyio.pyc in loadtxt(fname, dtype, comments, delimiter, converters, skiprows, usecols, unpack)
    665     try:
    666         # Make sure we're dealing with a proper dtype

--> 667         dtype = np.dtype(dtype)
    668         defconv = _getconv(dtype)

TypeError: data type not understood
WARNING: Failure executing file: <forward_NDMMF.py>

I am using numpy v. 1.5.1

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2 Answers 2

up vote 3 down vote accepted

For specifying the type of the different columns, you can use the argument dtype instead of converters:



Apparantly, this type of dtype specification does not seem to work with loadtxt, but it works with genfromtxt (Does anybody know why this does not work work with loadtxt, or is this one of the extra capabilities of genfromtxt?)

If you want to use loadtxt, a structured dtype specification with tuples works, like [('f0', int), ('f1', float)] instead of (int, float)

But there is another problem. When working with such structured dtypes, and so structured arrays (different types for different columns), the unpack does not seem to work. At least with a simple example I tried. But that could be a bug that is already solved: http://projects.scipy.org/numpy/ticket/1458 (but for that, you have to upgrade to even 1.6).

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@joris, it seems like dtype won't accept a plain tuple of types like that. You need a record dtype. –  senderle Jun 20 '11 at 20:30
@senderle, strange, I didn't test it, but copied it straight from the numpy user manual, so I assumed it was correct –  joris Jun 20 '11 at 21:29
@senderle: with a simple example it work with a plain tuple (numpy 1.5.1) –  joris Jun 20 '11 at 21:32
@joris, oh -- right -- my version of numpy is old. Sorry! –  senderle Jun 20 '11 at 21:33
@joris - This still didn't work for me (?). See my edit above.... –  mishaF Jun 22 '11 at 10:49

My interpretation of the docs is that converters should contain functions that specifically return floats:

converters : dict, optional

A dictionary mapping column number to a function that will convert that column to a float. E.g., if column 0 is a date string: converters = {0: datestr2num}. Converters can also be used to provide a default value for missing data: converters = {3: lambda s: float(s or 0)}. Default: None.

You need to use the dtype keyword to cast those floats to ints. For example:

>>> numpy.loadtxt('th.txt', delimiter=',', usecols=(0, 2, 3), converters=dict(zip((0, 2, 3), (float, float, float))), dtype=([('i1', '<i4'), ('i2', '<f4'), ('i3', '<i4')]))
array([(1, 3.2000000476837158, 4), (1, 3.2000000476837158, 4),
       (1, 3.2000000476837158, 4), (1, 3.2000000476837158, 4),
       (1, 3.2000000476837158, 4), (1, 3.2000000476837158, 4),
       (1, 3.2000000476837158, 4), (1, 3.2000000476837158, 4),
       (1, 3.2000000476837158, 4)], 
      dtype=[('i1', '<i4'), ('f1', '<f4'), ('i2', '<i4')])

Of course we don't actually need converters in this case -- that's more for converting (say) string values like 'True' to floats and other things like that. And if you don't want a record array but a 2d array, don't pass a record format. So...

>>> numpy.loadtxt('th.txt', delimiter=',', usecols=(0, 2, 3), dtype=(int))
array([[1, 3, 4],
       [1, 3, 4],
       [1, 3, 4],
       [1, 3, 4],
       [1, 3, 4],
       [1, 3, 4],
       [1, 3, 4],
       [1, 3, 4],
       [1, 3, 4]])
>>> numpy.loadtxt('th.txt', delimiter=',', usecols=(0, 2, 3), dtype=(int))

But if you do this you can't specify format by column.

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Acutally, just passing a tuple of types (joris's answer) works for numpy 1.5.1. –  senderle Jun 20 '11 at 21:33
And also with numpy 1.4 it should work. –  joris Jun 21 '11 at 17:50
@joris, ugh, I really need to upgrade from python 2.6... –  senderle Jun 21 '11 at 17:52
I should have read the docs more closely! Specifying format by column is my ultimate goal here though. –  mishaF Jun 22 '11 at 10:37

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