spanishWordEmbeddings 
 Word Embeddings
 This project generates Spanish word embeddings using fastText on large corpora.
Spanish Word Embeddings computed from large corpora and different sizes using fastText.
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last commit: over 6 years ago 
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  embeddingsfasttext-embeddingsnatural-language-processingnlpspanishspanish-language 
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