Home Assistant MCP Server
Smart Device Control ๐ฎ ๐ก Lights: Brightness, color, RGB ๐ก๏ธ Climate: Temperature, HVAC, humidity ๐ช Covers: Position and tilt ๐ Switches: On/off ๐จ Sensors: State monitoring Intelligent Organization ๐ Grouping with context awareness. Robust Architecture ๐ ๏ธ Error handling, state validation ...
jango-blockchained
README
Home Assistant Model Context Protocol (MCP)
A standardized protocol for AI assistants to interact with Home Assistant, providing a secure, typed, and extensible interface for controlling smart home devices.
Overview
The Model Context Protocol (MCP) server acts as a bridge between AI models (like Claude, GPT, etc.) and Home Assistant, enabling AI assistants to:
- Execute commands on Home Assistant devices
- Retrieve information about the smart home
- Stream responses for long-running operations
- Validate parameters and inputs
- Provide consistent error handling
Features
- Modular Architecture - Clean separation between transport, middleware, and tools
- Typed Interface - Fully TypeScript typed for better developer experience
- Multiple Transports:
- Standard I/O (stdin/stdout) for CLI integration
- HTTP/REST API with Server-Sent Events support for streaming
- Middleware System - Validation, logging, timeout, and error handling
- Built-in Tools:
- Light control (brightness, color, etc.)
- Climate control (thermostats, HVAC)
- More to come...
- Extensible Plugin System - Easily add new tools and capabilities
- Streaming Responses - Support for long-running operations
- Parameter Validation - Using Zod schemas
- Claude & Cursor Integration - Ready-made utilities for AI assistants
Getting Started
Prerequisites
- Node.js 16+
- Home Assistant instance (or you can use the mock implementations for testing)
Installation
# Clone the repository
git clone https://github.com/your-repo/homeassistant-mcp.git
# Install dependencies
cd homeassistant-mcp
npm install
# Build the project
npm run build
Running the Server
# Start with standard I/O transport (for AI assistant integration)
npm start -- --stdio
# Start with HTTP transport (for API access)
npm start -- --http
# Start with both transports
npm start -- --stdio --http
Configuration
Configure the server using environment variables or a .env
file:
# Server configuration
PORT=3000
NODE_ENV=development
# Execution settings
EXECUTION_TIMEOUT=30000
STREAMING_ENABLED=true
# Transport settings
USE_STDIO_TRANSPORT=true
USE_HTTP_TRANSPORT=true
# Debug and logging
DEBUG_MODE=false
DEBUG_STDIO=false
DEBUG_HTTP=false
SILENT_STARTUP=false
# CORS settings
CORS_ORIGIN=*
Architecture
The MCP server is built with a layered architecture:
- Transport Layer - Handles communication protocols (stdio, HTTP)
- Middleware Layer - Processes requests through a pipeline
- Tool Layer - Implements specific functionality
- Resource Layer - Manages stateful resources
Tools
Tools are the primary way to add functionality to the MCP server. Each tool:
- Has a unique name
- Accepts typed parameters
- Returns typed results
- Can stream partial results
- Validates inputs and outputs
Example tool registration:
import { LightsControlTool } from "./tools/homeassistant/lights.tool.js";
import { ClimateControlTool } from "./tools/homeassistant/climate.tool.js";
// Register tools
server.registerTool(new LightsControlTool());
server.registerTool(new ClimateControlTool());
API
When running with HTTP transport, the server provides a JSON-RPC 2.0 API:
POST /api/mcp/jsonrpc
- Execute a toolGET /api/mcp/stream
- Connect to SSE stream for real-time updatesGET /api/mcp/info
- Get server informationGET /health
- Health check endpoint
Integration with AI Models
Claude Integration
import { createClaudeToolDefinitions } from "./mcp/index.js";
// Generate Claude-compatible tool definitions
const claudeTools = createClaudeToolDefinitions([
new LightsControlTool(),
new ClimateControlTool()
]);
// Use with Claude API
const messages = [
{ role: "user", content: "Turn on the lights in the living room" }
];
const response = await claude.messages.create({
model: "claude-3-opus-20240229",
messages,
tools: claudeTools
});
Cursor Integration
To use the Home Assistant MCP server with Cursor, add the following to your .cursor/config/config.json
file:
{
"mcpServers": {
"homeassistant-mcp": {
"command": "bash",
"args": ["-c", "cd ${workspaceRoot} && bun run dist/index.js --stdio 2>/dev/null | grep -E '\\{\"jsonrpc\":\"2\\.0\"'"],
"env": {
"NODE_ENV": "development",
"USE_STDIO_TRANSPORT": "true",
"DEBUG_STDIO": "true"
}
}
}
}
This configuration:
- Runs the MCP server with stdio transport
- Redirects all stderr output to /dev/null
- Uses grep to filter stdout for lines containing
{"jsonrpc":"2.0"
, ensuring clean JSON-RPC output
Troubleshooting Cursor Integration
If you encounter a "failed to create client" error when using the MCP server with Cursor:
-
Make sure you're using the correct command and arguments in your Cursor configuration
- The bash script approach ensures only valid JSON-RPC messages reach Cursor
- Ensure the server is built by running
bun run build
before trying to connect
-
Ensure the server is properly outputting JSON-RPC messages to stdout:
bun run dist/index.js --stdio 2>/dev/null | grep -E '\{"jsonrpc":"2\.0"' > json_only.txt
Then examine json_only.txt to verify it contains only valid JSON-RPC messages.
-
Make sure grep is installed on your system (it should be available by default on most systems)
-
Try rebuilding the server with:
bun run build
-
Enable debug mode by setting
DEBUG_STDIO=true
in the environment variables
If the issue persists, you can try:
- Restarting Cursor
- Clearing Cursor's cache (Help > Developer > Clear Cache and Reload)
- Using a similar approach with Node.js:
{ "command": "bash", "args": ["-c", "cd ${workspaceRoot} && node dist/index.js --stdio 2>/dev/null | grep -E '\\{\"jsonrpc\":\"2\\.0\"'"] }
License
MIT
Contributing
Contributions are welcome! Please feel free to submit a Pull Request.
MCP Server for Home Assistant ๐ ๐ค
Overview ๐
MCP (Model Context Protocol) Server is my lightweight integration tool for Home Assistant, providing a flexible interface for device management and automation. It's designed to be fast, secure, and easy to use. Built with Bun for maximum performance.
Core Features โจ
- ๐ Basic device control via REST API
- ๐ก WebSocket/Server-Sent Events (SSE) for state updates
- ๐ค Simple automation rule management
- ๐ JWT-based authentication
- ๐ Standard I/O (stdio) transport for integration with Claude and other AI assistants
Why Bun? ๐
I chose Bun as the runtime for several key benefits:
-
โก Blazing Fast Performance
- Up to 4x faster than Node.js
- Built-in TypeScript support
- Optimized file system operations
-
๐ฏ All-in-One Solution
- Package manager (faster than npm/yarn)
- Bundler (no webpack needed)
- Test runner (built-in testing)
- TypeScript transpiler
-
๐ Built-in Features
- SQLite3 driver
- .env file loading
- WebSocket client/server
- File watcher
- Test runner
-
๐พ Resource Efficient
- Lower memory usage
- Faster cold starts
- Better CPU utilization
-
๐ Node.js Compatibility
- Runs most npm packages
- Compatible with Express/Fastify
- Native Node.js APIs
Prerequisites ๐
- ๐ Bun runtime (v1.0.26+)
- ๐ก Home Assistant instance
- ๐ณ Docker (optional, recommended for deployment)
- ๐ฅ๏ธ Node.js 18+ (optional, for speech features)
- ๐ฎ NVIDIA GPU with CUDA support (optional, for faster speech processing)
Quick Start ๐
- Clone my repository:
git clone https://github.com/jango-blockchained/homeassistant-mcp.git
cd homeassistant-mcp
- Set up the environment:
# Make my setup script executable
chmod +x scripts/setup-env.sh
# Run setup (defaults to development)
./scripts/setup-env.sh
# Or specify an environment:
NODE_ENV=production ./scripts/setup-env.sh
# Force override existing files:
./scripts/setup-env.sh --force
- Configure your settings:
- Edit
.env
file with your Home Assistant details - Required: Add your
HASS_TOKEN
(long-lived access token)
- Build and launch with Docker:
# Standard build
./docker-build.sh
# Launch:
docker compose up -d
Docker Build Options ๐ณ
My Docker build script (docker-build.sh
) supports different configurations:
1. Standard Build
./docker-build.sh
- Basic MCP server functionality
- REST API and WebSocket support
- No speech features
2. Speech-Enabled Build
./docker-build.sh --speech
- Includes wake word detection
- Speech-to-text capabilities
- Pulls required images:
onerahmet/openai-whisper-asr-webservice
rhasspy/wyoming-openwakeword
3. GPU-Accelerated Build
./docker-build.sh --speech --gpu
- All speech features
- CUDA GPU acceleration
- Optimized for faster processing
- Float16 compute type for better performance
Build Features
- ๐ Automatic resource allocation
- ๐พ Memory-aware building
- ๐ CPU quota management
- ๐งน Automatic cleanup
- ๐ Detailed build logs
- ๐ Build summary and status
Environment Configuration ๐ง
I've implemented a hierarchical configuration system:
File Structure ๐
.env.example
- My template with all options.env
- Your configuration (copy from .env.example)- Environment overrides:
.env.dev
- Development settings.env.prod
- Production settings.env.test
- Test settings
Loading Priority โก
Files load in this order:
.env
(base config)- Environment-specific file:
NODE_ENV=development
โ.env.dev
NODE_ENV=production
โ.env.prod
NODE_ENV=test
โ.env.test
Later files override earlier ones.
Development ๐ป
# Install dependencies
bun install
# Run in development mode
bun run dev
# Run tests
bun test
# Run with hot reload
bun --hot run dev
# Build for production
bun build ./src/index.ts --target=bun
# Run production build
bun run start
Performance Comparison ๐
Operation | Bun | Node.js |
---|---|---|
Install Dependencies | ~2s | ~15s |
Cold Start | 300ms | 1000ms |
Build Time | 150ms | 4000ms |
Memory Usage | ~150MB | ~400MB |
Documentation ๐
Core Documentation
Advanced Features
- Natural Language Processing - AI-powered automation analysis and control
- Custom Prompts Guide - Create and customize AI behavior
- Extras & Tools - Additional utilities and advanced features
Client Integration ๐
Cursor Integration ๐ฑ๏ธ
Add to .cursor/config/config.json
:
{
"mcpServers": {
"homeassistant-mcp": {
"command": "bash",
"args": ["-c", "cd ${workspaceRoot} && bun run dist/index.js --stdio 2>/dev/null | grep -E '\\{\"jsonrpc\":\"2\\.0\"'"],
"env": {
"NODE_ENV": "development",
"USE_STDIO_TRANSPORT": "true",
"DEBUG_STDIO": "true"
}
}
}
}
Claude Desktop ๐ฌ
Add to your Claude config:
{
"mcpServers": {
"homeassistant-mcp": {
"command": "bun",
"args": ["run", "start", "--port", "8080"],
"env": {
"NODE_ENV": "production"
}
}
}
}
Command Line ๐ป
Windows users can use the provided script:
- Go to
scripts
directory - Run
start_mcp.cmd
Additional Features
Speech Features ๐ค
MCP Server optionally supports speech processing capabilities:
- ๐ฃ๏ธ Wake word detection ("hey jarvis", "ok google", "alexa")
- ๐ฏ Speech-to-text using fast-whisper
- ๐ Multiple language support
- ๐ GPU acceleration support
Speech Features Setup
Prerequisites
- ๐ณ Docker installed and running
- ๐ฎ NVIDIA GPU with CUDA (optional)
- ๐พ 4GB+ RAM (8GB+ recommended)
Configuration
- Enable speech in
.env
:
ENABLE_SPEECH_FEATURES=true
ENABLE_WAKE_WORD=true
ENABLE_SPEECH_TO_TEXT=true
WHISPER_MODEL_PATH=/models
WHISPER_MODEL_TYPE=base
- Choose your STT engine:
# For standard Whisper
STT_ENGINE=whisper
# For Fast Whisper (GPU recommended)
STT_ENGINE=fast-whisper
CUDA_VISIBLE_DEVICES=0 # Set GPU device
Available Models ๐ค
Choose based on your needs:
tiny.en
: Fastest, basic accuracybase.en
: Good balance (recommended)small.en
: Better accuracy, slowermedium.en
: High accuracy, resource intensivelarge-v2
: Best accuracy, very resource intensive
Launch with Speech Features
# Build with speech support
./docker-build.sh --speech
# Launch with speech features:
docker compose -f docker-compose.yml -f docker-compose.speech.yml up -d
Extra Tools ๐ ๏ธ
I've included several powerful tools in the extra/
directory to enhance your Home Assistant experience:
-
Home Assistant Analyzer CLI (
ha-analyzer-cli.ts
)- Deep automation analysis using AI models
- Security vulnerability scanning
- Performance optimization suggestions
- System health metrics
-
Speech-to-Text Example (
speech-to-text-example.ts
)- Wake word detection
- Speech-to-text transcription
- Multiple language support
- GPU acceleration support
-
Claude Desktop Setup (
claude-desktop-macos-setup.sh
)- Automated Claude Desktop installation for macOS
- Environment configuration
- MCP integration setup
See Extras Documentation for detailed usage instructions and examples.
License ๐
MIT License. See LICENSE for details.
Author ๐จโ๐ป
Created by jango-blockchained
Running with Standard I/O Transport ๐
MCP Server supports a JSON-RPC 2.0 stdio transport mode for direct integration with AI assistants like Claude:
MCP Stdio Features
โ
JSON-RPC 2.0 Compatibility: Full support for the MCP protocol standard
โ
NPX Support: Run directly without installation using npx homeassistant-mcp
โ
Auto Configuration: Creates necessary directories and default configuration
โ
Cross-Platform: Works on macOS, Linux, and Windows
โ
Claude Desktop Integration: Ready to use with Claude Desktop
โ
Parameter Validation: Automatic validation of tool parameters
โ
Error Handling: Standardized error codes and handling
โ
Detailed Logging: Logs to files without polluting stdio
Option 1: Using NPX (Easiest)
Run the MCP server directly without installation using npx:
# Basic usage
npx homeassistant-mcp
# Or with environment variables
HASS_URL=http://your-ha-instance:8123 HASS_TOKEN=your_token npx homeassistant-mcp
This will:
- Install the package temporarily
- Automatically run in stdio mode with JSON-RPC 2.0 transport
- Create a logs directory for logging
- Create a default .env file if not present
Perfect for integration with Claude Desktop or other MCP clients.
Integrating with Claude Desktop
To use MCP with Claude Desktop:
- Open Claude Desktop settings
- Go to the "Advanced" tab
- Under "MCP Server", select "Custom"
- Enter the command:
npx homeassistant-mcp
- Click "Save"
Claude will now use the MCP server for Home Assistant integration, allowing you to control your smart home directly through Claude.
Option 2: Local Installation
-
Update your
.env
file to enable stdio transport:USE_STDIO_TRANSPORT=true
-
Run the server using the stdio-start script:
./stdio-start.sh
Available options:
./stdio-start.sh --debug # Enable debug mode ./stdio-start.sh --rebuild # Force rebuild ./stdio-start.sh --help # Show help
When running in stdio mode:
- The server communicates via stdin/stdout using JSON-RPC 2.0 format
- No HTTP server is started
- Console logging is disabled to avoid polluting the stdio stream
- All logs are written to the log files in the
logs/
directory
JSON-RPC 2.0 Message Format
Request Format
{
"jsonrpc": "2.0",
"id": "unique-request-id",
"method": "tool-name",
"params": {
"param1": "value1",
"param2": "value2"
}
}
Response Format
{
"jsonrpc": "2.0",
"id": "unique-request-id",
"result": {
// Tool-specific result data
}
}
Error Response Format
{
"jsonrpc": "2.0",
"id": "unique-request-id",
"error": {
"code": -32000,
"message": "Error message",
"data": {} // Optional error details
}
}
Notification Format (Server to Client)
{
"jsonrpc": "2.0",
"method": "notification-type",
"params": {
// Notification data
}
}
Supported Error Codes
Code | Description | Meaning |
---|---|---|
-32700 | Parse error | Invalid JSON was received |
-32600 | Invalid request | JSON is not a valid request object |
-32601 | Method not found | Method does not exist or is unavailable |
-32602 | Invalid params | Invalid method parameters |
-32603 | Internal error | Internal JSON-RPC error |
-32000 | Tool execution | Error executing the tool |
-32001 | Validation error | Parameter validation failed |
Integrating with Claude Desktop
To use this MCP server with Claude Desktop:
-
Create or edit your Claude Desktop configuration:
# On macOS nano ~/Library/Application\ Support/Claude/claude_desktop_config.json # On Linux nano ~/.config/Claude/claude_desktop_config.json # On Windows notepad %APPDATA%\Claude\claude_desktop_config.json
-
Add the MCP server configuration:
{ "mcpServers": { "homeassistant-mcp": { "command": "npx", "args": ["homeassistant-mcp"], "env": { "HASS_TOKEN": "your_home_assistant_token_here", "HASS_HOST": "http://your_home_assistant_host:8123" } } } }
-
Restart Claude Desktop.
-
In Claude, you can now use the Home Assistant MCP tools.
JSON-RPC 2.0 Message Format
Usage
Using NPX (Easiest)
The simplest way to use the Home Assistant MCP server is through NPX:
# Start the server in stdio mode
npx homeassistant-mcp
This will automatically:
- Start the server in stdio mode
- Output JSON-RPC messages to stdout
- Send log messages to stderr
- Create a logs directory if it doesn't exist
You can redirect stderr to hide logs and only see the JSON-RPC output:
npx homeassistant-mcp 2>/dev/null
Manual Installation
If you prefer to install the package globally or locally:
# Install globally
npm install -g homeassistant-mcp
# Then run
homeassistant-mcp
Or install locally:
# Install locally
npm install homeassistant-mcp
# Then run using npx
npx homeassistant-mcp
Advanced Usage
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