Offline Q&A over Wikipedia ZIM files – full‑text + semantic search using TurboRag. Zero internet required after setup. Run on low‑CPU, low‑RAM devices. using llama.cpp
-
Updated
Jun 7, 2026 - Python
Offline Q&A over Wikipedia ZIM files – full‑text + semantic search using TurboRag. Zero internet required after setup. Run on low‑CPU, low‑RAM devices. using llama.cpp
Offline CRUD + semantic search agent for ZIM archives (Kiwix format). Read, write, edit, delete articles, build vector indexes, and serve via MCP – all offline, low‑resource.
Run offline RAG engines on CPU and RAM using quantized vector indexing, LLM quantization tools, and multi-language support.
Add a description, image, and links to the gemma-embedding-300m topic page so that developers can more easily learn about it.
To associate your repository with the gemma-embedding-300m topic, visit your repo's landing page and select "manage topics."