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Showing content from https://github.com/cudabigdata/word2vec_cuda below:

cudabigdata/word2vec_cuda: GPU CUDA implementation of CBOW word2vec. Which carefully checked. 22x faster compare to single thread CPU.

CUDA version of word2vec

This CUDA version is carefully checked for correctness.
Achieve about 2.8X faster than CPU-with 8 threads version. (22X faster compare to CPU single thread).





Tools for computing distributed representtion of words
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We provide an implementation of the Continuous Bag-of-Words (CBOW) and the Skip-gram model (SG), as well as several demo scripts.

Given a text corpus, the word2vec tool learns a vector for every word in the vocabulary using the Continuous
Bag-of-Words or the Skip-Gram neural network architectures. The user should to specify the following:
 - desired vector dimensionality
 - the size of the context window for either the Skip-Gram or the Continuous Bag-of-Words model
 - training algorithm: hierarchical softmax and / or negative sampling
 - threshold for downsampling the frequent words 
 - number of threads to use
 - the format of the output word vector file (text or binary)

Usually, the other hyper-parameters such as the learning rate do not need to be tuned for different training sets. 

The script demo-word.sh downloads a small (100MB) text corpus from the web, and trains a small word vector model. After the training
is finished, the user can interactively explore the similarity of the words.

More information about the scripts is provided at https://code.google.com/p/word2vec/


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