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LocalFind Gemma — AI-Powered Semantic Search and Chat for Your Local Files

**Summary:** LocalFind Gemma is a privacy-focused, fully local semantic search engine for personal files (documents, images, audio) powered by Gemma 4 via Ollama. Unlike keyword-based tools, it understands content using embeddings for multilingual search and employs Gemma 4 at three pipeline stages: indexing image captions, driving an agentic reasoning and tool-use system, and performing live image reading. All processing occurs on the user's machine with no cloud dependency, though an optional Claude Desktop integration is available.

read2 min views21 publishedMay 23, 2026

This is a submission for the Gemma 4 Challenge: Build with Gemma 4 LocalFind Gemma is a fully local, privacy-first semantic search engine for your own files — documents, images, and audio — powered by Gemma 4 running on Ollama. Most search tools match filenames or keywords. LocalFind Gemma understands content: nomic-embed-text-v2-moe embedding model supports ~100 languages in a shared vector space. Search in French, find English documents.Supported file types: PDF, DOCX, TXT, MD, CSV, JPG, PNG, GIF, BMP, WEBP, MP3, WAV, FLAC, M4A. Everything — Gemma 4, Whisper, the ChromaDB vector store — runs on your machine. No API keys, no cloud, no data leaving your device. There's also an optional Claude Desktop integration via MCP for files you're comfortable sharing with a third party. https://github.com/maliklovable1-spec/localfind-gemma Gemma 4 isn't just the chat model here — it's active at three distinct points in the pipeline:

  1. Index time: captioning every image When you sync a folder, each image is sent to Gemma 4 via Ollama's vision API. The caption is embedded and stored permanently in ChromaDB. Future searches use the stored caption; the model isn't called again unless you re-sync. This means fast search without repeated inference.
  2. Agent reasoning and tool use The conversational agent runs on gemma4:e4b (the recommended default). It decides when to search, what query to issue, and how to synthesise results into a direct answer rather than just returning file paths. I chose e4b over e2b because it follows tool-use instructions more reliably — which matters a lot in an agentic loop where the model needs to decide between search, image reading, and response synthesis. e2b is also supported for users with less RAM (~12 GB vs 16 GB).
  3. Live image reading When the agent finds an image relevant to your question, it sends the image bytes directly to Ollama's native /api/chat API with your question as context. Gemma 4 reads the image and the agent uses that to answer you. The bytes go from your disk to your local Ollama process —nowhere else. A note on audio Gemma 4 E2B and E4B natively support audio transcription at the architecture level — multilingual, up to 30 seconds, built into the model. LocalFind Gemma currently uses Whisper for audio because Ollama doesn't expose audio input via its API yet. Once Ollama ships that support
([issue #11798(https://github.com/ollama/ollama/issues/11798)), the transcription backend can
switch to Gemma 4 — the architecture is already designed with that transition in mind, though it will require some code changes depending on how Ollama exposes the audio API.
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