Local Rag
@TheWinci
About Local Rag
Semantic code search for AI agents — hybrid vector + BM25 with cross-encoder reranking, AST-aware chunking for 14 languages, conversation memory, code annotations, and search analytics. Zero config, zero API keys. Just bunx.
Basic information
Config
Add this server to your MCP-compatible client using the configuration below.
{
"mcpServers": {
"local-rag": {
"command": "bunx",
"args": [
"@winci/local-rag@latest",
"serve"
],
"env": {
"RAG_PROJECT_DIR": "/path/to/your/project"
}
}
}
}Tools
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Overview
What is Local Rag?
Local Rag is a persistent project memory tool for AI coding agents. It provides semantic code search, cross-session conversation memory, auto-generated project wikis, and dependency graph analysis—all running fully locally using SQLite and in-process embeddings.
How to use Local Rag?
Install with bunx mimirs init --ide <ide> (e.g., claude, cursor, windsurf, copilot, jetbrains). Ensure SQLite with extension support is installed (brew install sqlite on macOS). No API keys, cloud, or Docker required—just Bun and SQLite.
Key features of Local Rag
- Hybrid vector + BM25 search boosted by dependency graph centrality
- Cross-session conversation indexing and checkpoints
- Auto-generated structured markdown wiki with Mermaid diagrams
- Annotations attached to files or symbols surfacing in results
- Dependency graph and reverse-dependency lookup for blast radius
- Local analytics logging zero-result and low-relevance queries
Use cases of Local Rag
- Quickly find code by meaning instead of filename or keyword search
- Recover context from past sessions—discussions, decisions, and blockers
- Understand codebase structure and impact before refactoring
- Expose documentation gaps through query analytics
- Mark milestones and direction changes with searchable checkpoints
FAQ from Local Rag
What does Local Rag do that alternatives don’t?
It combines AST-aware chunking (24 languages), local embeddings, cross-session memory, and checkpoints—all in one local tool with no API keys. The table in the README shows it reduces token cost from ~380K to ~91K per prompt with 93–98% recall.
Where does my data live?
All data is stored in a .mimirs/ directory inside your project. Nothing leaves your machine—the tool is fully local and privacy-preserving.
What languages and file formats does it support?
AST-aware chunking covers 24 languages via tree-sitter (TypeScript, Python, Go, Rust, Java, C, C++, C#, Ruby, PHP, Scala, Kotlin, Lua, Zig, Elixir, Haskell, OCaml, Dart, Bash/Zsh, TOML, YAML, HTML, CSS/SCSS/LESS). Many other formats fall back to paragraph splitting.
Does Local Rag require an embedding API or cloud service?
No. Embeddings are computed in-process using Transformers.js + ONNX with the all-MiniLM-L6-v2 model. The vector store is sqlite-vec—a single .db file.
What transport and authentication does it use?
Local Rag uses stdio transport via the MCP SDK. There is no network service; authentication is not required because everything runs locally.
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