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I have a list of form:

['a b 1 2', 'c d 3 4']

I'm ultimately trying to end up with a 4 vertical numpy arrays. E.g., ['a','c'] and [1,2]

I'm getting a little confused using the various split functions, array splits, etc..

Super noob question and this is more an exercise in doing this efficiently as possible.

Any help would be much appreciated!

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2  
Numpy arrays do not handle multiple data types in the same array, unless you are using a record array. It is also unclear what you mean by ending up with a '4 vertical numpy arrays'. Could you add more detail to your question? –  JoshAdel Aug 17 '12 at 17:55
1  
Is there any logic behind the desired result? –  user647772 Aug 17 '12 at 17:55
    
Thanks Josh. I'm looking to translate the list above (which is organized as rows) ['Apple Blue 1 6.5','Banana Red 4 7.733'] into numpy arrays with members that would have the same types ['Apple', 'Banana'] and ['Blue','Red'] and [1,4] –  DMBnyc Aug 17 '12 at 18:03
2  
in your examples did you mean [1,3]? –  Joran Beasley Aug 17 '12 at 18:34

3 Answers 3

You can read it in as a record array:

>>> A = ['a b 1 2', 'c d 3 4']
>>> from StringIO import StringIO
>>> import numpy
>>> s = StringIO('\n'.join(A))
>>> data = numpy.genfromtxt(s, dtype=[('letter1', 'S1'), ('letter2', 'S1'), ('num1', 'f8'), ('num2', 'f8')])

Then to access the columns:

>>> data['letter1']
array(['a', 'c'], 
      dtype='|S1')
>>> data['num1']
array([ 1.,  3.])

Note that this is limited to fixed-size strings. Not sure whether this is an issue for your data.

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+1 for adding the intermediate step to go from my suggestion to something functional –  JoshAdel Aug 17 '12 at 20:52

There is no functionality in numpy to split the strings in a python list of strings into separate arrays directly. If these strings are from reading in a text file with consistent column data types, consider using numpy.genfromtxt:

http://docs.scipy.org/doc/numpy/reference/generated/numpy.genfromtxt.html

Edit or you can coerce you array into a format that np.genfromtxt can read as jterrace notes in his response.

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+1 for genfromtxt –  jterrace Aug 17 '12 at 21:15
  A = ['a b 1 2', 'c d 3 4']
  filter(lambda x:x[0].strip() or x[1].strip(),zip (*A))
  #[('a', 'c'), ('b', 'd'), ('1', '3'), ('2', '4')]

not numpy arrays though

[edit] assuming I understood the goal which Im not sure I did...

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