--- title: IndicVerse emoji: 🌏 colorFrom: yellow colorTo: red sdk: static pinned: true --- # 🌏 IndicVerse IndicVerse is dedicated to advancing natural language processing (NLP) capabilities for Indic languages. Our mission is to bridge the gap in NLP research for low-resource Indic languages by providing high-quality datasets, pre-trained models, and tools tailored for diverse linguistic needs. ## πŸš€ What We Do - **Datasets**: Creation and publication of datasets for various NLP tasks, including translation, classification, and generation, with a focus on Indic languages. - **Models**: Development of state-of-the-art NLP models fine-tuned for Indic languages, leveraging techniques like PEFT and LoRA. - **Research**: Conducting and sharing research to solve key challenges in Indic NLP, including transliteration, low-resource learning, and domain-specific applications. ## πŸ“š Featured Projects - **Hellaswag-Telugu**: A Telugu version of the Hellaswag dataset for advanced evaluation. - **Indic Language Translation and Transliteration**: Custom tools and APIs for translation and mixed transliteration (Telugu-English). ## πŸ› οΈ How to Contribute We welcome contributions! Whether you’re interested in annotating data, building models, or sharing insights, feel free to get in touch. ## 🌐 Links - [Hugging Face Hub](https://huggingface.co/IndicVerse) ## πŸ“œ Citation If you use our datasets or models in your research, please cite us as follows: ``` @misc{IndicVerse2024, author = {Nikhil Chowdary Paleti and Divi Eswar Chowdary}, title = {Indic Verse: Datasets and Models for Advancing Indic Languages in NLP}, year = {2024}, publisher = {Hugging Face}, url = {https://huggingface.co/IndicVerse} } ``` ---