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README.md
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---
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language:
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- fa
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pipeline_tag: feature-extraction
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---
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This is the original fasttext embedding model for Persian from [here](https://fasttext.cc/docs/en/crawl-vectors.html#models) loaded and converted using Gensim and exported to Hezar compatible format.
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For more info, see [here](https://fasttext.cc/docs/en/support.html).
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In order to use this model in Hezar you can simply use this piece of code:
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```bash
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pip install hezar
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```
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```python
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from hezar import Embedding
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fasttext = Embedding.load("hezarai/fasttext-fa-300")
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# Get embedding vector
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vector = fasttext("هزار")
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# Find the word that doesn't match with the rest
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doesnt_match = fasttext.doesnt_match(["خانه", "اتاق", "ماشین"])
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# Find the top-n most similar words to the given word
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most_similar = fasttext.most_similar("هزار", top_n=5)
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# Find the cosine similarity value between two words
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similarity = fasttext.similarity("مهندس", "دکتر")
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```
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