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containerize-mcp-server

pjt222
Updated 2 days ago
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About

This skill packages R-based MCP servers into Docker containers for portable deployment. It handles mcptools integration, transport configuration (stdio/HTTP), and Claude Code connectivity. Use it to deploy reproducible MCP environments without local R installations or to distribute servers to other developers.

Quick Install

Claude Code

Recommended
Primary
npx skills add pjt222/agent-almanac -a claude-code
Plugin CommandAlternative
/plugin add https://github.com/pjt222/agent-almanac
Git CloneAlternative
git clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/containerize-mcp-server

Copy and paste this command in Claude Code to install this skill

Documentation

Containerize MCP Server

Package an R MCP server into a Docker container for portable deployment.

When to Use

  • Deploying an R MCP server without requiring a local R installation
  • Creating a reproducible MCP server environment
  • Running MCP servers alongside other containerized services
  • Distributing an MCP server to other developers

Inputs

  • Required: R MCP server implementation (mcptools-based or custom)
  • Required: Docker installed and running
  • Optional: Additional R packages the server needs
  • Optional: Transport mode (stdio or HTTP)

Procedure

Step 1: Create Dockerfile for MCP Server

FROM rocker/r-ver:4.5.0

# Install system dependencies
RUN apt-get update && apt-get install -y \
    libcurl4-openssl-dev \
    libssl-dev \
    libxml2-dev \
    libgit2-dev \
    libssh2-1-dev \
    git \
    curl \
    && rm -rf /var/lib/apt/lists/*

# Install R packages
RUN R -e "install.packages(c( \
    'remotes', \
    'ellmer' \
    ), repos='https://cloud.r-project.org/')"

# Install mcptools
RUN R -e "remotes::install_github('posit-dev/mcptools')"

# Set working directory
WORKDIR /workspace

# Expose MCP server ports
EXPOSE 3000 3001 3002

# Environment variables
ENV R_LIBS_USER=/workspace/renv/library
ENV RENV_PATHS_CACHE=/workspace/renv/cache

# Default: start MCP server
CMD ["R", "-e", "mcptools::mcp_server()"]

Got: A Dockerfile exists in the project root with rocker/r-ver base image, system dependencies, mcptools installation, and the MCP server as the default command.

If fail: Verify the base image tag matches your R version. If remotes::install_github fails, check that git and libgit2-dev are in the system dependencies layer.

Step 2: Create docker-compose.yml

version: '3.8'

services:
  mcp-server:
    build:
      context: .
      dockerfile: Dockerfile
    container_name: r-mcp-server
    image: r-mcp-server:latest

    volumes:
      - /path/to/projects:/workspace
      - renv-cache:/workspace/renv/cache

    stdin_open: true
    tty: true

    network_mode: "host"

    environment:
      - TERM=xterm-256color
      - R_LIBS_USER=/workspace/renv/library

    restart: unless-stopped

volumes:
  renv-cache:
    driver: local

Using network_mode: "host" ensures the MCP server ports are accessible on localhost.

Got: A docker-compose.yml file in the project root with the MCP server service, volume mounts for project files and renv cache, and stdin_open/tty enabled for stdio transport.

If fail: If volume paths are invalid, adjust /path/to/projects to the actual project directory. On Windows/WSL, use /mnt/c/... or /mnt/d/... paths.

Step 3: Build and Start

docker compose build
docker compose up -d

Got: Container starts with MCP server running.

If fail: Check logs with docker compose logs mcp-server. Common issues:

  • Missing R packages: Add to Dockerfile RUN install step
  • Port already in use: Change exposed port or stop conflicting service

Step 4: Connect Claude Code to Container

For stdio transport (container must stay running with stdin):

claude mcp add r-mcp-docker stdio "docker" "exec" "-i" "r-mcp-server" "R" "-e" "mcptools::mcp_server()"

For HTTP transport (if the MCP server supports it):

{
  "mcpServers": {
    "r-mcp-docker": {
      "type": "http",
      "url": "http://localhost:3000/mcp"
    }
  }
}

Got: Claude Code's MCP configuration includes the r-mcp-docker server entry, and claude mcp list shows the new server.

If fail: For stdio transport, ensure the container name matches (r-mcp-server) and that the container is running with docker ps. For HTTP transport, verify the port is exposed and reachable with curl http://localhost:3000/mcp.

Step 5: Verify Connection

# Check container is running
docker ps | grep mcp-server

# Test R session inside container
docker exec -it r-mcp-server R -e "sessionInfo()"

# Verify mcptools is available
docker exec -it r-mcp-server R -e "library(mcptools)"

Got: docker ps shows the r-mcp-server container running, sessionInfo() returns the expected R version, and library(mcptools) loads without error.

If fail: If the container is not running, check docker compose logs mcp-server for startup errors. If mcptools fails to load, rebuild the image to ensure the package installed correctly.

Step 6: Add Custom MCP Tools

To add project-specific MCP tools, mount your R scripts:

volumes:
  - ./mcp-tools:/mcp-tools

And load them in the CMD:

CMD ["R", "-e", "source('/mcp-tools/custom_tools.R'); mcptools::mcp_server()"]

Got: Custom R scripts are accessible inside the container at /mcp-tools/, and the MCP server loads them on startup alongside the default tools.

If fail: Verify the volume mount path is correct with docker exec -it r-mcp-server ls /mcp-tools/. If scripts fail to source, check for missing package dependencies in the custom tools.

Validation

  • Container builds without errors
  • MCP server starts inside the container
  • Claude Code can connect to the containerized server
  • MCP tools respond correctly to requests
  • Container restarts cleanly
  • Volume mounts allow access to project files

Pitfalls

  • stdin/tty requirements: MCP stdio transport requires stdin_open: true and tty: true
  • Network isolation: Default Docker networking may prevent localhost access. Use network_mode: "host" or expose specific ports.
  • Package versions: Pin mcptools to a specific commit for reproducibility
  • Large image size: mcptools + dependencies can be large. Consider multi-stage builds for production.
  • Windows Docker paths: When running Docker Desktop on Windows with WSL, path mapping differs

Related Skills

  • create-r-dockerfile - base Dockerfile patterns for R
  • setup-docker-compose - compose configuration details
  • configure-mcp-server - MCP server configuration without Docker
  • troubleshoot-mcp-connection - debugging MCP connectivity issues

GitHub Repository

pjt222/agent-almanac
Path: i18n/caveman-lite/skills/containerize-mcp-server
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