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## Flagship Work
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- **KhasiBERT** β the first Khasi language transformer model.
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- **Khasi-English Semantic Search** β cross-lingual search for low-resource contexts.
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- **Northeast India Districts & Villages Dataset** β structured registry of 45,000+ villages and 100+ districts.
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## Roadmap
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- **NeoDAC Models** β lightweight, domain-aligned LLMs for governance and civic tech.
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- **Expanded Multilingual Embeddings** β covering more Northeast Indian languages.
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- **Open Agriculture & Rural Datasets** β unlocking insights for farmers, SHGs, and entrepreneurs.
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- **Applied AI Pilots** β in partnership with nonprofits and government bodies.
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## Why It Matters
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Most AI research overlooks low-resource languages and rural contexts.
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MWire Labs proves that AI can be built for the margins, not just the mainstream β starting in the Northeast and scaling across India and beyond.
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## Why It Matters
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Most AI research overlooks low-resource languages and rural contexts.
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MWire Labs proves that AI can be built for the margins, not just the mainstream β starting in the Northeast and scaling across India and beyond.
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