All Projects → mhbashari → Awesome Persian Nlp Ir

mhbashari / Awesome Persian Nlp Ir

Curated List of Persian Natural Language Processing and Information Retrieval Tools and Resources

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Awesome Persian NLP/IR, Tools And Resources Awesome

This repository is going to be a curation of every research and efforts on Persian NLP. We segmented this repo into five main sections, as listed below!

Contents

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CC0

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