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15 public repositories
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Natural Language Toolkit for Indic Languages aims to provide out of the box support for various NLP tasks that an application developer might need
Updated
Apr 6, 2020
Python
Code for the ACL 2020 Paper on Schwa Deletion in Hindi and Punjabi
Updated
Jun 17, 2020
JavaScript
Arima TTS is a product of base project Arima. Arima TTS is a text to speech synthesizer for one of the world's eldest language TAMIL.
Updated
Aug 24, 2018
Scheme
lipitva is a modular and efficient javascript port of python sanscript, for indic transliteration
Updated
Jun 4, 2020
TypeScript
Keyboard friendly Ascii Language to Hindi and Indian Romanized Transliteration - Rule Based Implementation
Updated
Jan 18, 2020
HTML
Updated
Dec 2, 2018
Python
Baishakhi layout is actually developed by SNLTR, a Govt. of West Bengal sponsored organization. This layout is phonetic in nature with Normal, Shift and Right Alt modes, designed to accommodate all the Bangla alphabetical signs and symbols. I imported this keyboard for MultilingOkeyboard for android.
Laghu-Guru labelling and Chandas identification tool
Updated
May 13, 2020
HTML
Decoding scheme for katapayadi number system used by mathematicians of India
Updated
Mar 30, 2020
HTML
Story Level Analysis on Children's stories - CivicDataLab
Updated
May 27, 2019
Jupyter Notebook
Updated
Feb 20, 2017
Ruby
Updated
May 18, 2020
Python
Quillpad Server for Indian Transliteration. Live Demo:
Updated
Dec 7, 2019
Python
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It would be really fun to create a DeepMoji like model.
What about using attntion layers from huggingface models? This would really simplify a lot of work