I am trying to use the word2vec module from gensim natural language processing library in Python.

The docs say to initialize the model:

from gensim.models import word2vec
model = Word2Vec(sentences, size=100, window=5, min_count=5, workers=4)

What format does gensim expect for the input sentences? I have raw text

"the quick brown fox jumps over the lazy dogs"
"Then a cop quizzed Mick Jagger's ex-wives briefly."

What additional processing do I need to post into word2fec?

UPDATE: Here is what I have tried. When it loads the sentences, I get nothing.

>>> sentences = ['the quick brown fox jumps over the lazy dogs',
             "Then a cop quizzed Mick Jagger's ex-wives briefly."]
>>> x = word2vec.Word2Vec()
>>> x.build_vocab([s.encode('utf-8').split( ) for s in sentences])
>>> x.vocab

2 Answers 2


A list of utf-8 sentences. You can also stream the data from the disk.

Make sure it's utf-8, and split it:

sentences = [ "the quick brown fox jumps over the lazy dogs",
"Then a cop quizzed Mick Jagger's ex-wives briefly." ]
word2vec.Word2Vec([s.encode('utf-8').split() for s in sentences], size=100, window=5, min_count=5, workers=4)
  • actually, sentence has to be a list of words, not a string, i.e. s.encode('utf-8').split()
    – alko
    Dec 3, 2013 at 22:38
  • 1
    Whoops sorry. Updated. Thanks
    – aIKid
    Dec 3, 2013 at 22:40
  • 1
    RuntimeError: you must first build vocabulary before training the model Dec 3, 2013 at 23:12
  • 7
    Enable logging and observe what it says. Therein lies your answer. Spoiler: min_count=5.
    – Radim
    Dec 4, 2013 at 22:01
  • 2
    @alKid good answer, but it's a sequence (an iterable) of sentences = not necessarily a list. This makes a big differences when sentences is larger than RAM, i.e. streamed from disk.
    – Radim
    Dec 4, 2013 at 22:30

Like alKid pointed out, make it utf-8.

Talking about two additional things you might have to worry about.

  1. Input is too large and you're loading it from a file.
  2. Removing stop words from the sentences.

Instead of loading a big list into the memory, you can do something like:

import nltk, gensim
class FileToSent(object):    
    def __init__(self, filename):
        self.filename = filename
        self.stop = set(nltk.corpus.stopwords.words('english'))

    def __iter__(self):
        for line in open(self.filename, 'r'):
        ll = [i for i in unicode(line, 'utf-8').lower().split() if i not in self.stop]
        yield ll

And then,

sentences = FileToSent('sentence_file.txt')
model = gensim.models.Word2Vec(sentences=sentences, window=5, min_count=5, workers=4, hs=1)

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