Connect your local documents, code, PDFs, images, audio, and video directly to Claude, Cursor, or VS Code using Google's gemini-embedding-2-preview model and a strictly local ChromaDB vector database.
Unlike text-only local RAG tools, this server keeps one local memory layer across text, visual PDF pages, images, audio, and video, then returns exact file paths and page or chunk context back to your agent.
- One embedding space across modalities: Search code, PDFs, images, audio, and video from the same memory layer.
- Local-first persistence: Your index stays in
~/.gemini_mcp_db, not in a hosted vector database. - Agent-friendly retrieval: Search results include exact paths, types, modalities, and page-aware context.
- Zero-config by default: The server uses built-in guardrails and sensible indexing defaults so most users do not need a config file.
Find the PDF page that explains our design tokens.Search my image library for screenshots of dashboards with dark sidebars.Find the audio or video clip where we talked about pricing changes.Search only my work docs folder for onboarding notes about incident response.Give me the surrounding context for result 2 so I can cite the original file correctly.
| Feature | Description |
|---|---|
| π§ Unified Multimodal Search | Stores text, visual PDF pages, images, audio, and video in one local semantic memory so a single query can retrieve across modalities. |
| π Visual PDF Retrieval | Renders PDFs page-by-page as images for Gemini Embedding 2 while retaining extracted text for agent-readable citations and context. |
| π― Precision Retrieval Controls | Supports compact filters for scope, path prefix, type, extension, and modality so agents can search precisely without heavy configuration. |
| π Preview Before Indexing | preview_directory() shows what will be indexed, grouped by modality and skip reason, before the scan runs. |
| π§Ύ Context-Aware Results | get_result_context() returns neighboring chunks or pages so agents can inspect exact source material after search. |
| π‘οΈ Local Privacy + Guardrails | Uses a local ChromaDB store, skips junk folders by default, blocks dangerous root scans, and handles deduplication and ghost-file cleanup automatically. |
We support two ways to run this server: Zero-Install (Recommended) or Local Developer Clone.
Make sure you have uv installed on your machine (pip install uv).
You can point your AI assistant to run the server directly from GitHub without ever cloning the repository locally. uvx acts like npx for Python, downloading and caching the server in a secure ephemeral environment automatically.
PyPI is configured as the long-term stable distribution channel for tagged releases. Until the first PyPI publish completes, use the pinned Git release-tag install below.
For a stable install, pin to a release tag:
uvx --from git+https://github.com/AlaeddineMessadi/gemini-embedding-2-mcp-server.git@<release-tag> gemini-embedding-2-mcpExample:
uvx --from git+https://github.com/AlaeddineMessadi/gemini-embedding-2-mcp-server.git@v1.2.1 gemini-embedding-2-mcpFor an edge install, omit the tag and track the latest main branch state.
Once PyPI publishing is live, the stable install command becomes:
uvx gemini-embedding-2-mcp-serverTo power the embedding model, you need a free API key from Google.
- Go to Google AI Studio.
- Click Create API key.
- Copy the key and use it in your client configurations below as
GEMINI_API_KEY.
You can attach this server to the Claude Code CLI natively. Run the following command in your terminal:
claude mcp add gemini-embedding-2-mcp \
--env GEMINI_API_KEY="your-api-key-here" \
-- uvx --from git+https://github.com/AlaeddineMessadi/gemini-embedding-2-mcp-server.git@v1.2.1 gemini-embedding-2-mcpOpen your Claude Desktop config file (usually ~/Library/Application Support/Claude/claude_desktop_config.json on macOS) and add:
{
"mcpServers": {
"gemini-embedding-2-mcp": {
"command": "uvx",
"args": [
"--from",
"git+https://github.com/AlaeddineMessadi/gemini-embedding-2-mcp-server.git@v1.2.1",
"gemini-embedding-2-mcp"
],
"env": {
"GEMINI_API_KEY": "your-api-key-here"
}
}
}
}- Go to Settings > Features > MCP
- Click + Add new MCP server
- Choose command as the type.
- Name:
gemini-embedding - Command:
GEMINI_API_KEY="your-api-key" uvx --from git+https://github.com/AlaeddineMessadi/gemini-embedding-2-mcp-server.git@v1.2.1 gemini-embedding-2-mcp
Open your ~/.codeium/windsurf/mcp_config.json file and add:
{
"mcpServers": {
"gemini-embedding-2-mcp": {
"command": "uvx",
"args": [
"--from",
"git+https://github.com/AlaeddineMessadi/gemini-embedding-2-mcp-server.git@v1.2.1",
"gemini-embedding-2-mcp"
],
"env": {
"GEMINI_API_KEY": "your-api-key-here"
}
}
}
}Open your ~/.config/zed/settings.json and append the MCP server block:
{
"experimental.mcp": {
"gemini-embedding-2-mcp": {
"command": "uvx",
"args": [
"--from",
"git+https://github.com/AlaeddineMessadi/gemini-embedding-2-mcp-server.git@v1.2.1",
"gemini-embedding-2-mcp"
],
"env": {
"GEMINI_API_KEY": "your-api-key-here"
}
}
}
}Open ~/Library/Application Support/Code/User/globalStorage/saoudrizwan.claude-dev/settings/cline_mcp_settings.json and append:
{
"mcpServers": {
"gemini-embedding": {
"command": "uvx",
"args": [
"--from",
"git+https://github.com/AlaeddineMessadi/gemini-embedding-2-mcp-server.git@v1.2.1",
"gemini-embedding-2-mcp"
],
"env": {
"GEMINI_API_KEY": "your-api-key-here"
}
}
}
}If you want to modify the source code:
# 1. Clone the repository
git clone https://github.com/AlaeddineMessadi/gemini-embedding-2-mcp-server.git
cd gemini-embedding-2-mcp-server
# 2. Install dependencies
uv sync(If you use this method, you can add it directly to Claude Code CLI locally by running:)
claude mcp add gemini-embedding-local --env GEMINI_API_KEY="your-api-key" -- uv --directory "$(pwd)" run gemini-embedding-2-mcpIf you need a containerized MCP server for registry validation or deployment, build and run the included image:
docker build -t gemini-embedding-2-mcp-server .
docker run --rm -i \
-e GEMINI_API_KEY="your-api-key-here" \
-v "$HOME/.gemini_mcp_db:/root/.gemini_mcp_db" \
gemini-embedding-2-mcp-serverThe container communicates over standard I/O like any other local MCP server and persists ChromaDB data in the mounted volume.
Once connected, your AI assistant instantly gains the following tools:
index_directory(path: str, ignore: list = None): Scan and formally embed a completely new local folder into the DB. Safely supports wildcardignorepatterns.preview_directory(path: str, ignore: list = None): Dry-run a scan and see what would be indexed, grouped by modality and skip reason.search_my_documents(query: str, limit: int, scope: str = None, types: list[str] = None, path_prefix: str = None, extensions: list[str] = None, modalities: list[str] = None): Run semantic search with compact retrieval filters.get_result_context(source: str, locator: str = None, window: int = 1): Fetch nearby chunk or page context for a previously indexed result.list_indexed_directories(): See which directory roots the AI already knows about.sync_indexed_directories(): Automatically forces the DB to find new, updated, or recently deleted (ghost) files and cleans up vectors.remove_directory_from_index(path: str): Clears a specific trajectory of vectors.
The main search tool stays simple by default, but supports a few high-value filters when you need exactness:
scope: Limit matches to a broad directory scope such as/Users/me/workpath_prefix: Limit matches to a more exact path prefixtypes: Restrict by stored item type such astextorpdf_visual_pageextensions: Restrict by file extension such as.pdfor.mdmodalities: Restrict by modality such astext,pdf,image,audio, orvideo
gemini://database-stats: Real-time observability! Exposes the exact scale of the vector segments inside ChromaDB directly to the assistant's context.
- Architecture Deep Dive
- Ultimate Multimodality & PDF RAG
- Agentic Safety Guardrails
- Use Cases
- Result Model
- Releasing
MIT Β© Alaeddine Messadi