I have a Word2Vec
model which is trained in Gensim
. How can I use it in Tensorflow
for Word Embeddings
. I don't want to train Embeddings from scratch in Tensorflow. Can someone tell me how to do it with some example code?
Let's assume you have a dictionary and inverse_dict list, with index in list corresponding to most common words:
vocab = {'hello': 0, 'world': 2, 'neural':1, 'networks':3}
inv_dict = ['hello', 'neural', 'world', 'networks']
Notice how the inverse_dict index corresponds to the dictionary values. Now declare your embedding matrix and get the values:
vocab_size = len(inv_dict)
emb_size = 300 # or whatever the size of your embeddings
embeddings = np.zeroes((vocab_size, emb_size))
from gensim.models.keyedvectors import KeyedVectors
model = KeyedVectors.load_word2vec_format('embeddings_file', binary=True)
for k, v in vocab.items():
embeddings[v] = model[k]
You've got your embeddings matrix. Good. Now let's assume you want to train on the sample: x = ['hello', 'world']
. But this doesn't work for our neural net. We need to integerize:
x_train = []
for word in x:
x_train.append(vocab[word]) # integerize
x_train = np.array(x_train) # make into numpy array
Now we are good to go with embedding our samples onthefly
x_model = tf.placeholder(tf.int32, shape=[None, input_size])
with tf.device("/cpu:0"):
embedded_x = tf.nn.embedding_lookup(embeddings, x_model)
Now embedded_x
goes into your convolution or whatever. I am also assuming you are not retraining the embeddings, but simply using them. Hope that helps

I'm pretty sure that the line
embeddings[v] = model[k]
should be replaced withembeddings[v] = model.word_vec(k)
– bluesummers May 2 '17 at 8:26 
I also thought of this more manual approach (i.e. iterating the whole vocabulary and looking them up one by one using
model.word_vec(k)
. But is there a way to make use oftf.nn.embedding_lookup
, which it seems would be more efficient? One post using Tensorflow with GloVe guillaumegenthial.github.io/… essentially produced a custom GloVe file which can be used to perform direct indextoembeddings lookup. I wonder if one can do something similar with Word2Vec (binary) files. – xji Jan 26 '18 at 20:33 
1@JIXiang in practice you get all the words you want from Word2Vec and save it in a numpy array, pickle, or whatever. Loading word2vec from Gensim every time is very expensive.
tf.nn.embedding_lookup
requires a matrix, so you can't usemodel.word_vec(k)
on the fly. Andtf
is more efficient. – vega Apr 13 '18 at 19:39