Command Palette

Search for a command to run...

UnylyUnyly
Browse all

Code Memory Rs

FreeNot checked

Enables local semantic code search across repositories using natural language, with AST-aware chunking and hybrid vector/FTS5 retrieval.

GitHubEmbed

About

Enables local semantic code search across repositories using natural language, with AST-aware chunking and hybrid vector/FTS5 retrieval.

README

Semantic code search for your local repositories, powered by SQLite Vector Search, AST-based chunking, and Parallel AI Cascading.

Find functions, classes, and logic across your codebase using natural language — 100% local, accurate, and resilient.


✨ Key Features

  • 🔍 Hybrid Search (Vector + FTS5) — Fast local semantic retrieval using sqlite-vec combined with Full-Text Search (FTS5) and Reciprocal Rank Fusion (RRF) for maximum accuracy.
  • 📦 AST-based Smart Chunking — Language-aware splitting (Python, JS, TS, Rust, Go, Java, Markdown) that preserves functional context using Tree-sitter.
  • Parallel AI Collaboration (Async Planning) — Support for non-blocking, asynchronous planning tasks that allow Worker and Mahaguru (planner) models to work in parallel.
  • 🔄 Background Indexing — High-performance, non-blocking indexing of large folders with job monitoring and status tracking.
  • 🧠 Session-based Chat Context — Automatically preserves and restores chat summaries per project to maintain context across sessions.
  • 📏 Agent Rules Sync — Synchronizes specialized Antigravity/Cursor rules based on the detected project stack.
  • 🛡️ Path Sandboxing — Secure file access with environment-based path validation.
  • 🔌 MCP Protocol — Native integration as an MCP server for Claude Desktop, Cursor, Antigravity, and more.

🔌 MCP Tools Overview

The server exposes 13 powerful tools for AI agents to interact with your codebase:

Tool Description
semantic_code_search Hybrid search (Vector + FTS5 + RRF) with heuristic re-ranking.
index_folder Initiates background indexing for a local project folder.
get_index_stats Monitors active indexing and planning (Mahaguru) jobs.
list_indexed_projects Lists all projects currently available in the index.
delete_project Removes a project and its chat context from the index.
request_mahaguru_refinement Synchronous escalation to a high-level planner (Mahaguru) model.
request_async_mahaguru_refinement Non-blocking escalation; returns a Job ID for parallel workflows.
get_planning_job_result Polls the result of an asynchronous planning/refinement job.
save_project_chat_context Persists a summary of the current session context.
get_project_chat_context Retrieves the last saved session context for a project.
sync_agent_rules Updates .agents/rules based on the project's detected stack.
maintenance_prune Removes stale entries for files that no longer exist on disk.
rebuild_index_database Factory Reset: Clears the entire database (use with caution).

🚀 Quick Start

1. Requirements

  • Rust 1.80+ (Stable toolchain via rustup).
  • sqlite-vec (Binary vec0.dylib for macOS or equivalent for your OS must be in the binary directory).

2. Build

git clone <your-repo-url> mcp-code-search
cd mcp-code-search
cargo build --release

3. Run

Mode A: MCP Server (Stdin/Stdout) Best for Claude Desktop, Cursor, and other IDE integrations.

cargo run --release -- --mcp

Mode B: HTTP Management API Runs a REST API (default on port 8000) for managing the server.

cargo run --release -- --port 8000

Mode C: CLI Indexer One-off indexing without running a server.

cargo run --release -- --index /path/to/project

🔌 IDE & Client Integration

Claude Desktop / Cursor / Antigravity

Add the following configuration to your MCP settings. Using the provided run_mcp.sh is highly recommended as it ensures the binary is built and run from the correct root with all environment variables.

macOS / Linux

{
  "mcpServers": {
    "code-memory-rs": {
      "command": "/absolute/path/to/mcp-code-search-rs/run_mcp.sh"
    }
  }
}

[!TIP] Petunjuk Integrasi (Bahasa Indonesia): Gunakan file run_mcp.sh untuk memastikan server berjalan stabil di Claude/Cursor. Skrip ini akan otomatis menjalankan cargo build jika ada perubahan kode, memastikan binary terbaru selalu digunakan. Pastikan path yang Anda masukkan adalah path absolut.


🏗️ Architecture

  • Engine: Pure Rust with tokio for async orchestration.
  • Storage: SQLite (WAL mode) for reliable persistence.
  • Search: sqlite-vec for vector embeddings + FTS5 for keyword matching, merged via Reciprocal Rank Fusion (RRF).
  • Chunking: AST-aware logic using tree-sitter to preserve logical boundaries (functions, classes).
  • Hardening: State-machine based balanced-brace JSON extraction for reliable processing of unpredictable AI outputs.
  • Safety: Environment-variable driven path sandboxing (ALLOWED_PATHS).
  • Observability: Integrated tracing spans and instrumented futures for deep visibility into async/sync execution boundaries.
  • Resilience: Robust API retry logic with exponential backoff and circuit breaking for all LLM interactions.

📁 Project Structure

mcp-code-search/
├── src/                 # Rust source (Core, API, Indexer)
├── data/                # Database and persistent state
├── docs/                # Extended documentation suite
├── bin/                 # Helper scripts and utilities
└── Cargo.toml           # Package metadata

📄 License

MIT

from github.com/juandisay/mcp-code-search-rs

Installing Code Memory Rs

This server has no published package — it is built from source. Open the repository and follow its README.

▸ github.com/juandisay/mcp-code-search-rs

FAQ

Is Code Memory Rs MCP free?

Yes, Code Memory Rs MCP is free — one-click install via Unyly at no cost.

Does Code Memory Rs need an API key?

No, Code Memory Rs runs without API keys or environment variables.

Is Code Memory Rs hosted or self-hosted?

Self-hosted: the server runs locally on your machine via the install command above.

How do I install Code Memory Rs in Claude Desktop, Claude Code or Cursor?

Open Code Memory Rs on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.

Related MCPs

Compare Code Memory Rs with

Not sure what to pick?

Find your stack in 60 seconds

Author?

Embed badge for your README

Browse similar

All development MCPs