Serper Search
Provides Google search results and AI-powered deep research using the Serper API.
Serper Search MCP Server
A Model Context Protocol server that provides Google search capabilities through the Serper API, along with an AI-powered Deep Research tool. This server enables easy integration of search and research functionality into your MCP-enabled applications.
✨ Features
- 🌐 Powerful Google search integration through Serper API
- 🔄 Rich search response data including:
- Knowledge Graph information
- Organic search results
- "People Also Ask" questions
- Related searches
- 🧠 AI-powered Deep Research tool:
- Performs multi-step, iterative research
- Generates sub-queries to explore topics thoroughly
- Synthesizes information from multiple sources
- Provides citations for all information
- Adjustable research depth levels
- Built-in quality metrics for continuous improvement
- 🛠 Configurable search parameters:
- Country targeting
- Language selection
- Result count customization
- Autocorrect options
- 🔒 Secure API key handling
- ⚡️ Rate limiting and caching support
- 📝 TypeScript support with full type definitions
- 📊 Integrated performance metrics for result optimization
🚀 Installation
- Clone the repository:
git clone https://github.com/yourusername/serper-search-server.git
cd serper-search-server
- Install dependencies:
pnpm install
- Build the server:
pnpm run build
⚙️ Configuration
-
Get your Serper API key from [Serper.dev](https://serper.de
-
Create a
.envfile in the root directory:
# Required
SERPER_API_KEY=your_api_key_here
# Optional - Advanced Quality Metrics Configuration (pre-configured by default)
USAGE_METRICS_KEY=your-custom-metrics-key # Optional
USAGE_PROJECT_ID=your-custom-project-id # Optional
METRICS_ENDPOINT=https://your-custom-host.com # Optional
DISABLE_METRICS=false # Not recommended
See TELEMETRY.md for detailed information about:
- Quality metrics collection
- Performance monitoring
- Usage analytics
- Dashboard setup
- Continuous improvement
🔌 Integration
Claude Desktop
Add the server config to your Claude Desktop configuration:
MacOS: ~/Library/Application Support/Claude/claude_desktop_config.json
Windows: %APPDATA%/Claude/claude_desktop_config.json
{
"mcpServers": {
"serper-search-server": {
"command": "/path/to/serper-search-server/build/index.js",
"env": {
"SERPER_API_KEY": "your_api_key_here"
}
}
}
}
🛠 Usage
Search Tool
The server provides a powerful search tool with the following parameters:
{
"query": string, // Search query
"numResults"?: number, // Number of results (default: 10, max: 100)
"gl"?: string, // Country code (e.g., "us", "uk")
"hl"?: string, // Language code (e.g., "en", "es")
"autocorrect"?: boolean, // Enable autocorrect (default: true)
"type"?: "search" // Search type (more types coming soon)
}
Deep Research Tool
For more comprehensive research needs, the server provides a deep research tool that performs multi-step research with the following parameters:
{
"query": string, // Research query or question
"depth"?: "basic" | "standard" | "deep", // Research depth (default: "standard")
"maxSources"?: number // Maximum sources to include (default: 10)
}
The deep research tool:
- Breaks down complex queries into focused sub-queries
- Executes multiple searches to gather comprehensive information
- Uses AI to synthesize information from multiple sources
- Formats results with proper citations and references
- Adapts its research strategy based on intermediate results
- Collects anonymous quality metrics to improve search results
Depth Levels:
- basic: Quick overview (3-5 sources, ~5 min) Good for: Simple facts, quick definitions, straightforward questions
- standard: Comprehensive analysis (5-10 sources, ~10 min) Good for: Most research needs, balanced depth and speed
- deep: Exhaustive research (10+ sources, ~15-20 min) Good for: Complex topics, academic research, thorough analysis
Search Tool Example Response
The search results include rich data:
{
"searchParameters": {
"q": "apple inc",
"gl": "us",
"hl": "en",
"autocorrect": true,
"type": "search"
},
"knowledgeGraph": {
"title": "Apple",
"type": "Technology company",
"website": "http://www.apple.com/",
"description": "Apple Inc. is an American multinational technology company...",
"attributes": {
"Headquarters": "Cupertino, CA",
"CEO": "Tim Cook (Aug 24, 2011–)",
"Founded": "April 1, 1976, Los Altos, CA"
}
},
"organic": [
{
"title": "Apple",
"link": "https://www.apple.com/",
"snippet": "Discover the innovative world of Apple...",
"position": 1
}
],
"peopleAlsoAsk": [
{
"question": "What does Apple Inc mean?",
"snippet": "Apple Inc., formerly Apple Computer, Inc....",
"link": "https://www.britannica.com/topic/Apple-Inc"
}
],
"relatedSearches": [
{
"query": "Who invented the iPhone"
}
]
}
🔍 Response Types
Knowledge Graph
Contains entity information when available:
- Title and type
- Website URL
- Description
- Key attributes
Organic Results
List of search results including:
- Title and URL
- Snippet (description)
- Position in results
- Sitelinks when available
People Also Ask
Common questions related to the search:
- Question text
- Answer snippet
- Source link
Related Searches
List of related search queries users often make.
📊 Quality Metrics
The Deep Research tool includes integrated quality metrics:
- Research process metrics
- Performance monitoring
- Issue tracking
- Usage patterns
- Result quality indicators
See TELEMETRY.md for detailed information about the metrics collected to improve search quality.
🤝 Contributing
Contributions are welcome! Please feel free to submit a Pull Request.
📝 License
This project is licensed under the MIT License - see the LICENSE file for details.
🙏 Acknowledgments
- Serper API for providing the Google search capabilities
- Model Context Protocol for the MCP framework
- PostHog for analytics capabilities
Related Servers
Embedding MCP Server
An MCP server powered by txtai for semantic search, knowledge graphs, and AI-driven text processing.
YouTube MCP Server
Search YouTube videos, retrieve transcripts, and perform semantic search over video content.
YouTube Data MCP
High-efficiency YouTube MCP server providing token-optimized, structured data for LLMs.
Library Docs MCP Server
Search and fetch documentation for popular libraries like Langchain, Llama-Index, and OpenAI using the Serper API, providing updated information for LLMs.
Releasebot
Releasebot finds and watches release note sources from hundreds of products and companies.
Simple Files Vectorstore
Provides semantic search across local files by creating vector embeddings from watched directories.
MCP Advisor
A discovery and recommendation service for exploring MCP servers using natural language queries.
ArXiv MCP Server
A flexible service for searching and analyzing academic papers on arXiv.
o3 Search
Web search using OpenAI's o3 model. Requires an OpenAI API key.
Kagi
Kagi search API integration