Bucketeer Docs Local MCP Server
A local server to query Bucketeer documentation, which automatically fetches and caches content from its GitHub repository.
Bucketeer Docs Local MCP Server
Overview
This project provides a Model Context Protocol (MCP) server for Bucketeer documentation. It offers an interface for searching and retrieving content from Bucketeer's feature flag and experimentation platform documentation, enabling AI assistants to provide accurate information about Bucketeer's features and usage.
Environment Setup
Requirements
- Node.js 18+
- npm
Installation Steps
- Clone the repository:
git clone <repository-url>
cd bucketeer-docs-local-mcp-server
- Install dependencies:
npm install
- Build the project:
npm run build
- Build the document index:
npm run build:index
Starting the Server
npm start
Document Sources
The server automatically fetches and indexes documentation from the bucketeer-io/bucketeer-docs repository:
-
GitHub Repository Integration:
- Automatically fetches
.mdxfiles from thedocs/directory and all subdirectories - Processes frontmatter and markdown content for optimal search indexing
- Caches fetched content using SHA hashes and only updates when files are modified
- Supports recursive directory traversal to capture all documentation files
- Automatically fetches
-
Intelligent Indexing:
- Extracts keywords from titles, descriptions, headers, and content
- Builds searchable index with relevance scoring based on keyword matches and full-text search
- Optimized for Bucketeer-specific terminology (feature flags, experiments, SDKs, targeting, etc.)
- Handles frontmatter extraction (title, description) from MDX files
-
Cache Management:
- Files are cached locally in
files/docs/directory as JSON files - Document index is stored in
files/index/document-index.json - GitHub cache stored in
files/docs/github_cache.jsonwith SHA-based change detection - Use
npm run build:index:forceto force rebuild the entire index
- Files are cached locally in
Using with npx
First-time Setup
- Build the document index:
npx @bucketeer/docs-local-mcp-server build-index
- Use in your MCP configuration as shown in the next section.
Updating the Index
To update the documentation index (e.g., when new documentation is available):
npx @bucketeer/docs-local-mcp-server build-index --force
Cursor and Claude Desktop Configuration
Configure the MCP Server by adding the following to your mcp.json or claude_desktop_config.json file, referring to the documentation for Cursor (https://docs.cursor.com/context/model-context-protocol#configuring-mcp-servers) and Claude Desktop (https://modelcontextprotocol.io/quickstart/user):
Quick Install with Cursor Deeplink
For Cursor users, you can install the MCP server with a single click using the deeplink below:
This will automatically configure the MCP server in your Cursor settings. After clicking the link, Cursor will prompt you to install the server.
Option 1: Using npx (Recommended)
{
"mcpServers": {
"bucketeer-docs": {
"type": "stdio",
"command": "npx",
"args": ["@bucketeer/docs-local-mcp-server"]
}
}
}
Option 2: Using local installation
{
"mcpServers": {
"bucketeer-docs": {
"type": "stdio",
"command": "npm",
"args": ["start", "--prefix", "/path/to/bucketeer-docs-local-mcp-server"]
}
}
}
Usage
When the MCP server is running, the following tools are available:
1. search_docs - Search Bucketeer Documentation
- Parameter:
query(string) - The search query - Parameter:
limit(number, optional) - Maximum number of results to return (default: 5)
Example:
{
"name": "search_docs",
"arguments": {
"query": "feature flags SDK integration",
"limit": 5
}
}
Response: Returns an array of search results with title, URL, path, description, excerpt, and relevance score.
2. get_document - Get Specific Document Content
- Parameter:
path(string) - Document path obtained from search results
Example:
{
"name": "get_document",
"arguments": {
"path": "getting-started/create-feature-flag"
}
}
Response: Returns the full document content including title, description, URL, and complete markdown content.
Development Commands
npm run build- Compile TypeScript files todist/directorynpm run build:index- Build/update the document index from GitHub repositorynpm run build:index:force- Force rebuild the entire index (ignores cache)npx @bucketeer/docs-local-mcp-server build-index- Build index using npxnpx @bucketeer/docs-local-mcp-server build-index --force- Force rebuild index using npxnpm run dev:index- Build and update index in development modenpm run dev- Build and start server in development modenpm run lint- Run Biome lintingnpm run lint:fix- Run Biome linting and fix linting errors
Configuration
The server is configured via src/config/index.ts:
- siteName: "Bucketeer"
- websiteUrl: "https://docs.bucketeer.io"
- githubRepo: "https://github.com/bucketeer-io/bucketeer-docs"
- docsDirectory: "docs" (directory in GitHub repo containing documentation)
- searchLimitDefault: 5 (default number of search results)
- useGithubSource: true (always uses GitHub as source)
File Structure
files/
├── docs/ # Cached JSON files from GitHub repository
├── index/ # Document search index
│ └── document-index.json
└── [created automatically when building index]
Architecture
The server consists of several key components:
- GithubDocumentFetcher: Recursively fetches
.mdxfiles from the GitHub repository - IndexManager: Builds and manages the searchable document index
- SearchService: Provides search functionality with keyword matching and full-text search
- MCP Server: Exposes tools via the Model Context Protocol
License
Apache License 2.0, see LICENSE.
Contributing
We would ❤️ for you to contribute to Bucketeer and help improve it! Anyone can use and enjoy it!
Please follow our contribution guide here.
İlgili Sunucular
Rolli MCP
Social media search and analytics across X, Reddit, Bluesky, YouTube, LinkedIn, Facebook, Instagram, and Weibo via the Rolli IQ API
Qdrant MCP Server
Semantic code search using the Qdrant vector database and OpenAI embeddings.
Web Search
Perform Google searches and view web content with advanced bot detection avoidance.
SearXNG Bridge
A bridge server for connecting to a SearXNG metasearch engine instance.
Hermes Search
Provides full-text and semantic search over structured and unstructured data using Azure Cognitive Search.
DevRag
Free local RAG for Claude Code - Save tokens & time with vector search. Indexes markdown docs and finds relevant info without reading entire files (40x fewer tokens, 15x faster).
Search MCP Server
A server providing web and similarity search functionalities, designed for Claude Desktop. It requires external embedding and API services.
Brave Search
An MCP server for the Brave Search API, providing both web and local search capabilities.
Ebook MCP Service
Access and search EPUB ebook collections using semantic vector search.
Ticketmaster
Discover events, venues, and attractions using the Ticketmaster Discovery API.