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im not trying to do this smart or fast, just trying to do it at all.

i have a file looks like this :

$ cat all_user_token_counts.csv  

i know its uncode utf-8 encoded because i created it, like this

    debug('opening ' + ALL_USER_TOKEN_COUNTS_FILE)
    file = codecs.open(ALL_USER_TOKEN_COUNTS_FILE, encoding="utf-8",mode= "w")
    for (user, token) in tokenizer.get_tokens_from_all_files():
        #... count tokens ..
        file.write(unicode(username +","+ token +","+ str(count) +"\r\n"))

i want to read it in to a numpy array so it looks like this, or something..

   array([[u'@5raphaels', u'in', 15],
          [u'@5raphaels', u'for', 11],
          [u'@5raphaels', u'unless', 11]], 
          dtype=('<U10', '<U10', int))

As i experiment in process of writing this question it comes to me that it may not even be possible? If so, I'd love to know!

Thanks in advance!

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realised my real problem was that i was trying to use different data types in the one array - and I dont think Numpy likes that, ultimately –  utunga May 8 '12 at 5:00

1 Answer 1

up vote 2 down vote accepted

This can be done easily with np.loadtxt:

import numpy as np
                  dtype = '|U10,<U10,int')

# [(u'@5raphaels', u'in', 15) (u'@5raphaels', u'for', 15)
#  (u'@5raphaels', u'unless', 11) (u'@5raphaels', u'you', 11)]
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