PDF Reader MCP Server (@shtse8/pdf-reader-mcp)

PDF Reader MCP Server (@shtse8/pdf-reader-mcp)

An MCP server built with Node.js/TypeScript that allows AI agents to securely read PDF files (local or URL) and extract text, metadata, or page counts. Uses pdf-parse.

shtse8

Research & Data
Visit Server

README

PDF Reader MCP Server (@sylphlab/pdf-reader-mcp)

<!-- Status Badges Area -->

CI/CD Pipeline codecov npm version Docker Pulls License: MIT

<!-- End Status Badges Area -->

Empower your AI agents (like Cline) with the ability to securely read and extract information (text, metadata, page count) from PDF files within your project context using a single, flexible tool.

Installation

Using npm (Recommended)

Install as a dependency in your MCP host environment or project:

pnpm add @sylphlab/pdf-reader-mcp # Or npm install / yarn add

Configure your MCP host (e.g., mcp_settings.json) to use npx:

{
  "mcpServers": {
    "pdf-reader-mcp": {
      "command": "npx",
      "args": ["@sylphlab/pdf-reader-mcp"],
      "name": "PDF Reader (npx)"
    }
  }
}

(Ensure the host sets the correct cwd for the target project)

Using Docker

Pull the image:

docker pull sylphlab/pdf-reader-mcp:latest

Configure your MCP host to run the container, mounting your project directory to /app:

{
  "mcpServers": {
    "pdf-reader-mcp": {
      "command": "docker",
      "args": [
        "run",
        "-i",
        "--rm",
        "-v",
        "/path/to/your/project:/app", // Or use "$PWD:/app", "%CD%:/app", etc.
        "sylphlab/pdf-reader-mcp:latest"
      ],
      "name": "PDF Reader (Docker)"
    }
  }
}

Local Build (For Development)

  1. Clone: git clone https://github.com/sylphlab/pdf-reader-mcp.git
  2. Install: cd pdf-reader-mcp && pnpm install
  3. Build: pnpm run build
  4. Configure MCP Host:
    {
      "mcpServers": {
        "pdf-reader-mcp": {
          "command": "node",
          "args": ["/path/to/cloned/repo/pdf-reader-mcp/build/index.js"],
          "name": "PDF Reader (Local Build)"
        }
      }
    }
    
    (Ensure the host sets the correct cwd for the target project)

Quick Start

Assuming the server is running and configured in your MCP host:

MCP Request (Get metadata and page 2 text from a local PDF):

{
  "tool_name": "read_pdf",
  "arguments": {
    "sources": [
      {
        "path": "./documents/my_report.pdf",
        "pages": [2]
      }
    ],
    "include_metadata": true,
    "include_page_count": false, // Default is true, explicitly false here
    "include_full_text": false // Ignored because 'pages' is specified
  }
}

Expected Response Snippet:

{
  "results": [
    {
      "source": "./documents/my_report.pdf",
      "success": true,
      "data": {
        "page_texts": [
          { "page": 2, "text": "Text content from page 2..." }
        ],
        "info": { ... },
        "metadata": { ... }
        // num_pages not included as requested
      }
    }
  ]
}

Why Choose This Project?

  • 🛡️ Secure: Confines file access strictly to the project root directory.
  • 🌐 Flexible: Handles both local relative paths and public URLs.
  • 🧩 Consolidated: A single read_pdf tool serves multiple extraction needs (full text, specific pages, metadata, page count).
  • ⚙️ Structured Output: Returns data in a predictable JSON format, easy for agents to parse.
  • 🚀 Easy Integration: Designed for seamless use within MCP environments via npx or Docker.
  • ✅ Robust: Uses pdfjs-dist for reliable parsing and Zod for input validation.

Performance Advantages

Initial benchmarks using Vitest on a sample PDF show efficient handling of various operations:

Scenario Operations per Second (hz) Relative Speed
Handle Non-Existent File ~12,933 Fastest
Get Full Text ~5,575
Get Specific Page (Page 1) ~5,329
Get Specific Pages (Pages 1 & 2) ~5,242
Get Metadata & Page Count ~4,912 Slowest

(Higher hz indicates better performance. Results may vary based on PDF complexity and environment.)

See the Performance Documentation for more details and future plans.

Features

  • Read full text content from PDF files.
  • Read text content from specific pages or page ranges.
  • Read PDF metadata (author, title, creation date, etc.).
  • Get the total page count of a PDF.
  • Process multiple PDF sources (local paths or URLs) in a single request.
  • Securely operates within the defined project root.
  • Provides structured JSON output via MCP.
  • Available via npm and Docker Hub.

Design Philosophy

The server prioritizes security through context confinement, efficiency via structured data transfer, and simplicity for easy integration into AI agent workflows. It aims for minimal dependencies, relying on the robust pdfjs-dist library.

See the full Design Philosophy documentation.

Comparison with Other Solutions

Compared to direct file access (often infeasible) or generic filesystem tools, this server offers PDF-specific parsing capabilities. Unlike external CLI tools (e.g., pdftotext), it provides a secure, integrated MCP interface with structured output, enhancing reliability and ease of use for AI agents.

See the full Comparison documentation.

Future Plans (Roadmap)

  • Documentation:
    • Finalize all documentation sections (Guide, API, Design, Comparison).
    • Resolve TypeDoc issue and generate API documentation.
    • Add more examples and advanced usage patterns.
    • Implement PWA support and mobile optimization for the docs site.
    • Add share buttons and growth metrics to the docs site.
  • Benchmarking:
    • Conduct comprehensive benchmarks with diverse PDF files (size, complexity).
    • Measure memory usage.
    • Compare URL vs. local file performance.
  • Core Functionality:
    • Explore potential optimizations for very large PDF files.
    • Investigate options for extracting images or annotations (longer term).
  • Testing:
    • Increase test coverage towards 100% where practical.
    • Add runtime tests once feasible.

Documentation

For detailed usage, API reference, and guides, please visit the Full Documentation Website (Link to be updated upon deployment).

Community & Support

  • Found a bug or have a feature request? Please open an issue on GitHub Issues.
  • Want to contribute? We welcome contributions! Please see CONTRIBUTING.md.
  • Star & Watch: If you find this project useful, please consider starring ⭐ and watching 👀 the repository on GitHub to show your support and stay updated!

License

This project is licensed under the MIT License.

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