Aiming to make using MCPs with RubyLLM and Ruby as easy as possible.
This project is a Ruby client for the Model Context Protocol (MCP), designed to work seamlessly with RubyLLM. This gem enables Ruby applications to connect to MCP servers and use their tools, resources and prompts as part of LLM conversations.
For a more detailed guide, see the RubyLLM::MCP docs.
Currently full support for MCP protocol version up to 2025-06-18.
RubyLLM::MCP Features
- 🔌 Multiple Transport Types: Streamable HTTP, and STDIO and legacy SSE transports
- 🛠️ Tool Integration: Automatically converts MCP tools into RubyLLM-compatible tools
- 📄 Resource Management: Access and include MCP resources (files, data) and resource templates in conversations
- 🎯 Prompt Integration: Use predefined MCP prompts with arguments for consistent interactions
- 🎛️ Client Features: Support for sampling, roots, and elicitation
- 🎨 Enhanced Chat Interface: Extended RubyLLM chat methods for seamless MCP integration
- 🔄 Multiple Client Management: Create and manage multiple MCP clients simultaneously for different servers and purposes
- 📚 Simple API: Easy-to-use interface that integrates seamlessly with RubyLLM
Installation
bundle add ruby_llm-mcp
or add this line to your application’s Gemfile:
gem 'ruby_llm-mcp'
And then execute:
bundle install
Or install it yourself as:
gem install ruby_llm-mcp
Usage
Basic Setup
First, configure your RubyLLM client and create an MCP connection:
require 'ruby_llm/mcp' # Configure RubyLLM RubyLLM.configure do |config| config.openai_api_key = "your-api-key" end # Connect to an MCP server via SSE client = RubyLLM::MCP.client( name: "my-mcp-server", transport_type: :sse, config: { url: "http://localhost:9292/mcp/sse" } ) # Or connect via stdio client = RubyLLM::MCP.client( name: "my-mcp-server", transport_type: :stdio, config: { command: "node", args: ["path/to/mcp-server.js"], env: { "NODE_ENV" => "production" } } ) # Or connect via streamable HTTP client = RubyLLM::MCP.client( name: "my-mcp-server", transport_type: :streamable, config: { url: "http://localhost:8080/mcp", headers: { "Authorization" => "Bearer your-token" } } )
Using MCP Tools with RubyLLM
# Get available tools from the MCP server tools = client.tools puts "Available tools:" tools.each do |tool| puts "- #{tool.name}: #{tool.description}" end # Create a chat session with MCP tools chat = RubyLLM.chat(model: "gpt-4") chat.with_tools(*client.tools) # Ask a question that will use the MCP tools response = chat.ask("Can you help me search for recent files in my project?") puts response
Manual Tool Execution
You can also execute MCP tools directly:
# Tools Execution tool = client.tool("search_files") # Execute a specific tool result = tool.execute( name: "search_files", parameters: { query: "*.rb", directory: "/path/to/search" } ) puts result
Working with Resources
MCP servers can provide access to resources - structured data that can be included in conversations. Resources come in two types: normal resources and resource templates.
Normal Resources
# Get available resources from the MCP server resources = client.resources puts "Available resources:" resources.each do |resource| puts "- #{resource.name}: #{resource.description}" end # Access a specific resource by name file_resource = client.resource("project_readme") content = file_resource.content puts "Resource content: #{content}" # Include a resource in a chat conversation for reference with an LLM chat = RubyLLM.chat(model: "gpt-4") chat.with_resource(file_resource) # Or add a resource directly to the conversation file_resource.include(chat) response = chat.ask("Can you summarize this README file?") puts response
Resource Templates
Resource templates are parameterized resources that can be dynamically configured:
# Get available resource templates templates = client.resource_templates log_template = client.resource_template("application_logs") # Use a template with parameters chat = RubyLLM.chat(model: "gpt-4") chat.with_resource_template(log_template, arguments: { date: "2024-01-15", level: "error" }) response = chat.ask("What errors occurred on this date?") puts response # You can also get templated content directly content = log_template.to_content(arguments: { date: "2024-01-15", level: "error" }) puts content
Working with Prompts
MCP servers can provide predefined prompts that can be used in conversations:
# Get available prompts from the MCP server prompts = client.prompts puts "Available prompts:" prompts.each do |prompt| puts "- #{prompt.name}: #{prompt.description}" prompt.arguments.each do |arg| puts " - #{arg.name}: #{arg.description} (required: #{arg.required})" end end # Use a prompt in a conversation greeting_prompt = client.prompt("daily_greeting") chat = RubyLLM.chat(model: "gpt-4") # Method 1: Ask prompt directly response = chat.ask_prompt(greeting_prompt, arguments: { name: "Alice", time: "morning" }) puts response # Method 2: Add prompt to chat and then ask chat.with_prompt(greeting_prompt, arguments: { name: "Alice", time: "morning" }) response = chat.ask("Continue with the greeting")
Development
After checking out the repo, run bundle to install dependencies. Then, run bundle exec rake to run the tests. Tests currently use bun to run test MCP servers You can also run bin/console for an interactive prompt that will allow you to experiment.
There are also examples you you can run to verify the gem is working as expected.
bundle exec ruby examples/tools/local_mcp.rb
Contributing
We welcome contributions! Bug reports and pull requests are welcome on GitHub at https://github.com/patvice/ruby_llm-mcp.
License
Released under the MIT License.