Traylinx Search Engine MCP Server

Traylinx Search Engine MCP Server

traylinx

Research & Data
Visit Server

README

Traylinx Search Engine MCP Server

smithery badge

A Model Context Protocol (MCP) server that acts as a bridge to the deployed Agentic Search API. It allows MCP clients like Claude Desktop and Cursor to utilize intelligent search capabilities with both text summaries and structured data (HTML, images, and more).

Tools

search

Perform a web search using Traylinx's API, which provides detailed and contextually relevant results with citations. By default, no time filtering is applied to search results.

Inputs:

  • query (string): The search query to perform.
  • search_recency_filter (string, optional): Filter search results by recency. Options: "month", "week", "day", "hour". If not specified, no time filtering is applied.

How it Works

  1. You configure this MCP server with your Agentic Search API URL and API Key (via environment variables passed by the client config).
  2. An MCP client (e.g., Claude) sends a tool call to this server with a search query and optional recency filter.
  3. This MCP server makes a request to the Agentic Search API with the query and authorization header.
  4. It parses the rich response (text, HTML, search results, media, news) and returns structured content to the MCP client.

Installation

Prerequisites

  • Node.js >= 18.0.0
  • An API Key from Traylinx.com

Step 1: Get an API Key from Traylinx

  1. Visit traylinx.com and sign up for an account
  2. Navigate to the developer dashboard/API section
  3. Generate your API key for the Agentic Search API
  4. Keep this key secure - you'll need it for configuration

Step 2: Set Up the MCP Server

# Clone the repository
git clone https://github.com/traylinx/traylinx-search-engine-mcp-server.git
cd traylinx-search-engine-mcp-server

# Install dependencies
npm install

# Build the project
npm run build

Step 3: Configure Your MCP Client

For Claude Desktop

Edit your claude_desktop_config.json file:

{
  "mcpServers": {
    "traylinx-search-engine-mcp-server": {
      "command": "node",
      "args": ["path/to/traylinx-search-engine-mcp-server/dist/index.js"],
      "env": {
        "AGENTIC_SEARCH_API_KEY": "sk-lf-xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx",
        "AGENTIC_SEARCH_API_URL": "https://agentic-search-engines-n3n7u.ondigitalocean.app",
        "LOG_LEVEL": "INFO"
      }
    }
  }
}

You can access this file at:

  • macOS: ~/Library/Application Support/Claude/claude_desktop_config.json
  • Windows: %APPDATA%\Claude\claude_desktop_config.json

For Cursor

Edit your mcp.json file:

{
  "traylinx-search-engine-mcp-server": {
    "env": {
      "AGENTIC_SEARCH_API_KEY": "sk-lf-xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx",
      "AGENTIC_SEARCH_API_URL": "https://agentic-search-engines-n3n7u.ondigitalocean.app",
      "LOG_LEVEL": "INFO"
    },
    "command": "node",
    "args": ["path/to/traylinx-search-engine-mcp-server/dist/index.js"]
  }
}

IMPORTANT: Replace the placeholder API key with your actual key from Traylinx.com

Verification

  1. After configuring your MCP client, restart it completely.
  2. Start a new chat and instruct it to use the tool:
    • "Use the search tool to find information about quantum computing."
    • "Search for the latest news about artificial intelligence and filter by last week."
    • "Extract text and HTML from the URL https://traylinx.com"
  3. When the client requests permission, grant it.
  4. You should receive a response containing both text content and potentially structured data.

Advanced Usage

The Traylinx Search Engine MCP Server supports multiple response types:

  • Text Content: Standard markdown text summarizing the search results
  • Embedded HTML: For URL extractions, the server can return the scraped HTML
  • Search Items: Structured search results with title, URL, and snippet
  • Media Items: Images, videos, and other media found during the search
  • News Articles: Recent news with thumbnails and metadata
  • Raw API Response: Complete response data for advanced use cases

Using the Recency Filter

To filter search results by recency:

// Example from Claude Desktop
Use the search tool to find recent news about SpaceX with results from the last day only.

// Example from a custom client
{
  "name": "search",
  "arguments": {
    "query": "SpaceX launches",
    "search_recency_filter": "week"
  }
}

Features

  • Rich Content Types: Returns multiple content types beyond just text
  • Time Filtering: Filter results by recency (month, week, day, hour)
  • Secure API Key Handling: API key stays in environment variables
  • Configurable Endpoint: Easily switch between API endpoints if needed
  • Full MCP Compliance: Implements all required MCP server methods

Deployment

Smithery.ai Deployment

This MCP server can be deployed to Smithery.ai:

  1. Create/login to your Smithery account
  2. Click "Deploy a New MCP Server"
  3. Enter ID: traylinx-search-engine-mcp-server
  4. Use base directory: . (dot for root)
  5. Click "Create"

Once deployed, you can reference this server in Claude's web interface by using:

Use the traylinx-search-engine-mcp-server to search for [your query]

Note: You'll need to provide your AGENTIC_SEARCH_API_KEY as an environment variable in the Smithery deployment settings.

Troubleshooting

If you encounter issues:

  1. Check your API key is correctly set in the configuration
  2. Ensure the MCP client has been fully restarted after configuration
  3. Verify network connectivity to the Agentic Search API
  4. Set LOG_LEVEL to DEBUG for more detailed logs

For additional support, contact the API provider at support@traylinx.com

License

This project is licensed under the MIT License - see the LICENSE file for details.

Recommended Servers

Crypto Price & Market Analysis MCP Server

Crypto Price & Market Analysis MCP Server

A Model Context Protocol (MCP) server that provides comprehensive cryptocurrency analysis using the CoinCap API. This server offers real-time price data, market analysis, and historical trends through an easy-to-use interface.

Featured
TypeScript
MCP PubMed Search

MCP PubMed Search

Server to search PubMed (PubMed is a free, online database that allows users to search for biomedical and life sciences literature). I have created on a day MCP came out but was on vacation, I saw someone post similar server in your DB, but figured to post mine.

Featured
Python
dbt Semantic Layer MCP Server

dbt Semantic Layer MCP Server

A server that enables querying the dbt Semantic Layer through natural language conversations with Claude Desktop and other AI assistants, allowing users to discover metrics, create queries, analyze data, and visualize results.

Featured
TypeScript
mixpanel

mixpanel

Connect to your Mixpanel data. Query events, retention, and funnel data from Mixpanel analytics.

Featured
TypeScript
Sequential Thinking MCP Server

Sequential Thinking MCP Server

This server facilitates structured problem-solving by breaking down complex issues into sequential steps, supporting revisions, and enabling multiple solution paths through full MCP integration.

Featured
Python
Nefino MCP Server

Nefino MCP Server

Provides large language models with access to news and information about renewable energy projects in Germany, allowing filtering by location, topic (solar, wind, hydrogen), and date range.

Official
Python
Vectorize

Vectorize

Vectorize MCP server for advanced retrieval, Private Deep Research, Anything-to-Markdown file extraction and text chunking.

Official
JavaScript
Mathematica Documentation MCP server

Mathematica Documentation MCP server

A server that provides access to Mathematica documentation through FastMCP, enabling users to retrieve function documentation and list package symbols from Wolfram Mathematica.

Local
Python
kb-mcp-server

kb-mcp-server

An MCP server aimed to be portable, local, easy and convenient to support semantic/graph based retrieval of txtai "all in one" embeddings database. Any txtai embeddings db in tar.gz form can be loaded

Local
Python
Research MCP Server

Research MCP Server

The server functions as an MCP server to interact with Notion for retrieving and creating survey data, integrating with the Claude Desktop Client for conducting and reviewing surveys.

Local
Python