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Does nltk have some serialization format for writing out tokenized text ? I have a 175mb text file and getting it into the nltk.Text object takes me 4 minutes (on a macbook retina -- i.e., cutting edge processor, 8 gigs of ram and a SSD). Loading the raw file from disk is instantaneous almost.

The functions that do the work are as follows :

def _load_all_text(self):
    if not self._text_loaded:
        file = open("all_posts","r")
        self._text = file.read()
        self._text_loaded = True

def nltk_text(self):
    return nltk.Text(nltk.word_tokenize(self._text))

I can't believe it takes 4 minutes to get done, I guess it's because of the python garbage collector and the list object, which nltk builds on. I don't know much about pickling, would pickling the list do the trick (--i.e., the list in question is the result of word_tokenise)?

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I may be wrong here, but tokenization is simply splitting words into smaller bits, so it looks like you could just store it in plain text after tokenization, no? –  Qnan Sep 28 '12 at 10:05
Depends on the format, if I write it out as plaintext I'd have to tokenize it yet again. –  Hassan Syed Sep 28 '12 at 13:28
Why? I mean if I take a sentence like Don't panic!, tokenize it and store the result in plain text, the next time I load it it will still be tokenized, like Do n't panic ! –  Qnan Sep 28 '12 at 13:45
I suspect the problem is with the python runtime environment (data structures and garbage collector) rather than with the actual tokenization. Furthermore, I suspect a tokenizer would still perform a linear scan over the text, therefore the fact that some of the words have been split won't make much of a difference ? –  Hassan Syed Oct 2 '12 at 14:57
why would you have to run the tokenizer on an already tokenized text?.. –  Qnan Oct 2 '12 at 15:06

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