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I have this piece of code and was wondering if there was any inbuilt way to do it faster?

Words has a simple tokenized string input.

freq_unigrams = nltk.FreqDist(words)
unigram_list = []

count = 0
for x in freq_unigrams.keys():
    if count >= 1000:
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Check your indentation -- it doesn't look like it made it through the copy-paste correctly. –  Sam Mussmann Nov 22 '12 at 1:56

5 Answers 5

up vote 4 down vote accepted

Does freq_unigrams.keys() return a list? If so, how about the following:

unigram_list = freq_unigrams.keys()[:1000]

This gives you a list containing the first 1000 elements of freq_unigrams.keys(), with no looping.

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I suggest:

unigram_list = freq_unigrams.keys()
unigram_list[:] = unigram_list[:1000]

This would not make the copy that: unigram_list = freq_unigrams.keys()[:1000] does.

Although this might be better with iterators:

from itertools import islice
unigram_list[:] = islice(freq_unigrams.iterkeys(),1000)
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whether or not unigram_list[:1000] makes a copy doesn't depend on what is on the left side of =. If unigram_list is a list then slicing creates a (shallow) copy, if it is a numpy array it can create a view (no data copy). You need unigram_list[:] = only if you want to modify the list in place otherwise mere unigram_list = might be more efficient (it just binds the name to refer to the copy (a new list created by slicing the old one). –  J.F. Sebastian Nov 22 '12 at 3:07

If your intent is to get the top 1000 most frequent words in the words list you could try:

import collections

# get top words and their frequencies
most_common = collections.Counter(words).most_common(1000)
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This is theoretically more efficient:

import itertools
unigram_list = list(itertools.islice(freq_unigrams.iterkeys(), 1000))

...than working off freq_unigrams.keys(), because you're only interested in the top 1000, and not the remaining x, which the using freq_unigrams.keys() will also need to populate in the intermediate list.

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**a little late...

To take the first 1000 keys in your dictionary and assign them to a new list:

unigram_list = freq_unigrams.keys()[:1000]
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