We're running an AI-authored research workshop for Northeast India's 200+ languages - and publishing everything openly
<p>At MWire Labs, we build language technology for Northeast India's indigenous languages - ASR, MT, OCR, LLMs. The region has 200+ languages. Almost none of them exist in mainstream AI datasets.<br> So we're doing something a bit unusual.</p> <p>NortheastGenAI 2026 is a virtual workshop on May 29 where every submission must be AI-generated or AI-assisted - with full disclosure of how. All reviews are AI-assisted too, followed by a human editorial check. Everything is public on OpenReview. Inspired by Agents4Science 2025 (Stanford).</p> <p>We're not claiming AI research is ready. We're asking the question openly and publishing whatever comes out.</p> <p>*<em>Three tracks:<br> *</em><br> Language, Culture & Heritage<br> Society, History & Anthropology<br> AI and Technology for NE In
At MWire Labs, we build language technology for Northeast India's indigenous languages - ASR, MT, OCR, LLMs. The region has 200+ languages. Almost none of them exist in mainstream AI datasets. So we're doing something a bit unusual.
NortheastGenAI 2026 is a virtual workshop on May 29 where every submission must be AI-generated or AI-assisted - with full disclosure of how. All reviews are AI-assisted too, followed by a human editorial check. Everything is public on OpenReview. Inspired by Agents4Science 2025 (Stanford).
We're not claiming AI research is ready. We're asking the question openly and publishing whatever comes out.
*Three tracks: * Language, Culture & Heritage Society, History & Anthropology AI and Technology for NE India
Stack we're using: OpenReview for submissions.
Keynote: Bonaventure F. P. Dossou (McGill/Mila, Masakhane) — "Doing More with Less: Efficient Methods for Low-Resource Languages"
**Key dates: **Submissions open: April 8 Deadline: May 15 Workshop: May 29
Non-archival - submit elsewhere after. northeastgenai.github.io
If you're working on low-resource NLP, indigenous language tech, or just curious - come submit or attend.
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venturereviewindiatrunk/83e9e15421782cf018dae04969a387901ba8ec1b: Fix Python refcounting bugs in profiler_python.cpp (#179285)
Use Py_XNewRef with PyDict_GetItemString to properly convert borrowed refs to strong refs owned by THPObjectPtr (fixes leak on 3.13+ where the Py_INCREF was applied to an already-owned ref from PyMapping_GetItemString, and fixes potential NULL deref on Add Py_NewRef for Py_None passed to PyTuple_SetItem (which steals refs) Wrap PyObject_Call results in THPObjectPtr to avoid leaking return values Use PyObject_CallOneArg instead of PyTuple_Pack + PyObject_Call Clear exception from PySequence_Index when gc callback not found Remove unused thread_state_ member from ThreadLocalResults Authored with Claude. Pull Request resolved: #179285 Approved by: https://github.com/Skylion007
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trunk/83e9e15421782cf018dae04969a387901ba8ec1b: Fix Python refcounting bugs in profiler_python.cpp (#179285)
Use Py_XNewRef with PyDict_GetItemString to properly convert borrowed refs to strong refs owned by THPObjectPtr (fixes leak on 3.13+ where the Py_INCREF was applied to an already-owned ref from PyMapping_GetItemString, and fixes potential NULL deref on Add Py_NewRef for Py_None passed to PyTuple_SetItem (which steals refs) Wrap PyObject_Call results in THPObjectPtr to avoid leaking return values Use PyObject_CallOneArg instead of PyTuple_Pack + PyObject_Call Clear exception from PySequence_Index when gc callback not found Remove unused thread_state_ member from ThreadLocalResults Authored with Claude. Pull Request resolved: #179285 Approved by: https://github.com/Skylion007





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