AI & ML interests
Tatar language, Turkic NLP, low-resource languages, machine translation, language models, linguistic resources
Recent Activity
TatarNLPWorld – Turkic NLP & Low‑Resource Languages Research Hub
TatarNLPWorld is a collaborative research initiative dedicated to advancing natural language processing for Tatar, Turkic languages, and low‑resource languages in general. We develop state‑of‑the‑art language models, machine translation systems, linguistic resources, and educational tools to empower under‑represented languages in the digital age.
🎯 Our Mission
- Build open‑source language models for Tatar and other Turkic languages.
- Create high‑quality linguistic resources (corpora, lexicons, evaluation benchmarks).
- Advance machine translation between Turkic languages and major world languages.
- Develop educational materials and interactive demos to lower the entry barrier for low‑resource NLP.
- Foster a community of researchers, developers, and native speakers working together on language technology.
🚀 Interactive Demos
Explore our live Hugging Face Spaces and try out our models directly in your browser:
🔤 Language Models
- TatarGPT Playground – Generate and analyze Tatar text with our latest causal LM.
- TurkicBERT Explorer – Masked language modelling for multiple Turkic languages.
- Multilingual Embeddings – Compare word/sentence vectors across Turkic languages.
🌐 Machine Translation
- Tatar ↔ Russian Translator – Neural translation demo.
- Turkic Multi-Way Translation – Translate between Tatar, Kazakh, Kyrgyz, and more.
- Low‑Resource MT Showcase – See how our models perform with minimal data.
📚 Linguistic Tools
- Tatar Morphological Analyzer – Interactive segmentation and POS tagging.
- Named Entity Recognition for Tatar – Identify persons, locations, organizations.
- Turkic Language Identifier – Detect which Turkic language a text is written in.
📊 Data & Benchmarks
- Tatar Corpus Explorer – Browse and query our curated text collections.
- Turkic NLP Leaderboard – Compare model performance on standard tasks.
- Annotation Tools – Help us improve datasets with your feedback.
Click on any demo to start experimenting – no installation required!
🧠 Research Focus Areas
🦜 Tatar Language Technologies
- Creation of the first large‑scale pretrained models for Tatar.
- Morphological disambiguation and syntactic parsing.
- Speech recognition and synthesis for Tatar (coming soon).
🌍 Turkic NLP
- Cross‑lingual transfer learning among Turkic languages.
- Unified tokenization and subword models for the Turkic family.
- Machine translation between Turkic languages (e.g., Tatar‑Kazakh, Tatar‑Turkish).
📉 Low‑Resource NLP
- Data augmentation and semi‑supervised learning techniques.
- Leveraging multilingual models (e.g., mT5, XLM‑R) for under‑represented languages.
- Few‑shot and zero‑shot learning for tasks like NER and sentiment analysis.
🤖 Language Models
- Pretraining from scratch and continued pretraining on Turkic corpora.
- Efficient architectures (ALBERT, DistilBERT) for low‑resource settings.
- Evaluation and bias analysis of Turkic language models.
📖 Linguistic Resources
- Corpora: News, Wikipedia, literature, web‑crawled texts.
- Lexicons: Morphological dictionaries, wordnets, sentiment lexicons.
- Benchmarks: Named entity recognition, part‑of‑speech tagging, machine translation test sets.
📦 Models & Datasets
We release all our models and datasets on Hugging Face Hub under open licenses.
| Model / Dataset | Description | Link |
|---|---|---|
| TatarBERT | BERT‑base model pretrained on 5M Tatar sentences | 🤗 Hub |
| Turkic‑mT5 | Multilingual T5 fine‑tuned on 10 Turkic languages | 🤗 Hub |
| Tatar‑MT‑TatRus | Transformer‑based translation model (Tatar ↔ Russian) | 🤗 Hub |
| Tatar‑NER | Named entity recognition model for Tatar | 🤗 Hub |
| TatarCorpus v1.0 | 200M token corpus from news, books, and Wikipedia | 🤗 Dataset |
| Turkic‑NMT‑Bench | Parallel sentences for 5 Turkic languages | 🤗 Dataset |
More models and datasets are added regularly. Follow our organization page for updates.
📚 Educational Resources
We believe in open education and reproducible research. All our tutorials and teaching materials are freely available.
- Interactive Notebooks – Hands‑on tutorials for building low‑resource NLP systems (in Python, using Hugging Face libraries).
- Video Lectures – Recorded talks on Turkic NLP, data collection, and model training.
- Course Materials – Slides, readings, and assignments from our university courses.
- Blog Posts – Deep dives into challenges and solutions for Tatar and Turkic languages.
📝 Selected Publications
- "TatarBERT: A Pretrained Language Model for the Tatar Language" – LREC 2024
- "Low‑Resource Machine Translation for Turkic Languages: A Case Study on Tatar‑Russian" – WMT 2023
- "Building a Named Entity Recognition Dataset for Tatar" – TurkLang 2023
- "Multilingual Representations for Turkic Languages: A Comparative Study" – EMNLP 2022
- "Tatar Corpus: Collection, Annotation, and Baseline Experiments" – Dialogue 2022
Full list with links to PDFs available on our Publications Page.
🤝 Get Involved
We welcome contributions from the community – whether you are a researcher, developer, student, or native speaker.
For Researchers
- Use our models and datasets in your work (and cite us!).
- Collaborate on joint papers and grant proposals.
- Contribute new benchmarks or evaluation tasks.
For Developers
- Integrate our models into your applications.
- Report bugs or suggest improvements via GitHub Issues.
- Submit pull requests to our open‑source repositories.
For Native Speakers & Linguists
- Help us validate translations and annotations.
- Share texts or corpora (with permission) to enrich our data.
- Provide feedback on model outputs to reduce errors.
For Students
- Use our demos and tutorials for learning.
- Participate in our mentorship program or summer schools.
- Start your own research project with our support.
🌐 Connect With Us
- 🤗 Hugging Face: TatarNLPWorld – Models, datasets, and spaces.
🔄 Ecosystem Integration
Our work is integrated with the broader Hugging Face ecosystem:
- Models on the Hub with easy‑to‑use pipelines.
- Datasets with streaming and evaluation scripts.
- Spaces for interactive demos and educational tools.
- Gradio apps for user‑friendly interfaces.
Empowering Tatar and Turkic languages through open science and community collaboration.