Zum Inhalt springen

MCP Server / chunkhound

chunkhound

Local first codebase intelligence

1,212von @chunkhoundMITGitHub →

Transport

stdio

Tools (6)

Approach

Capability

Maintenance

Fast

None

Scales

Re-index files

Expensive

Continuous sync

Automatic

Incremental + realtime

Dokumentation

Your AI assistant searches code but doesn't understand it. ChunkHound researches your codebase—extracting architecture, patterns, and institutional knowledge at any scale. Integrates via MCP.

Features

  • cAST Algorithm - Research-backed semantic code chunking
  • Multi-Hop Semantic Search - Discovers interconnected code relationships beyond direct matches
  • Semantic search - Natural language queries like "find authentication code"
  • Regex search - Pattern matching without API keys
  • Local-first - Your code stays on your machine
  • 32 languages with structured parsing
    • Programming (via Tree-sitter): Python, JavaScript, TypeScript, JSX, TSX, Java, Kotlin, Groovy, C, C++, C#, Go, Rust, Haskell, Swift, Bash, MATLAB, Makefile, Objective-C, PHP, Dart, Lua, Vue, Svelte, Zig
    • Configuration: JSON, YAML, TOML, HCL, Markdown
    • Text-based (custom parsers): Text files, PDF
  • MCP integration - Works with Claude, VS Code, Cursor, Windsurf, Zed, etc
  • Real-time indexing - Automatic file watching, smart diffs, seamless branch switching

Documentation

Visit chunkhound.github.io for complete guides:

Requirements

Installation

# Install uv if needed
curl -LsSf https://astral.sh/uv/install.sh | sh

# Install ChunkHound
uv tool install chunkhound

Quick Start

  1. Create .chunkhound.json in project root
{
  "embedding": {
    "provider": "voyageai",
    "api_key": "your-voyageai-key"
  },
  "llm": {
    "provider": "claude-code-cli"
  }
}

Note: Use "codex-cli" instead if you prefer Codex. Both work equally well and require no API key.

  1. Index your codebase
chunkhound index

For configuration, IDE setup, and advanced usage, see the documentation.

Why ChunkHound?

| Approach | Capability | Scale | Maintenance | |----------|------------|-------|-------------| | Keyword Search | Exact matching | Fast | None | | Traditional RAG | Semantic search | Scales | Re-index files | | Knowledge Graphs | Relationship queries | Expensive | Continuous sync | | ChunkHound | Semantic + Regex + Code Research | Automatic | Incremental + realtime |

Ideal for:

  • Large monorepos with cross-team dependencies
  • Security-sensitive codebases (local-only, no cloud)
  • Multi-language projects needing consistent search
  • Offline/air-gapped development environments

License

MIT