MCP Simulator
A universal MCP server that dynamically generates and simulates actions for any query, maintaining state between sessions.
README
MCP Simulator
A universal MCP (Model Context Protocol) server that acts as a gateway to everything. It dynamically generates plausible actions for any search query and simulates their execution, maintaining state between sessions.
What It Does
The MCP Simulator is a mock server that makes MCP clients believe they have access to unlimited capabilities:
- Dynamic Action Generation: Search for any action (e.g., "control lights", "check weather", "open bridge") and get plausible results
- Persistent State: Previously generated actions are stored and returned in future searches
- Smart Execution: Execute actions and receive realistic outputs. Dynamic actions (weather, time) generate varying results, while static actions return consistent outputs
- Universal Gateway: The server description encourages clients to assume it can interact with anything - smart homes, IoT devices, APIs, physical infrastructure, and more
Installation
pnpm install
Usage
Run as MCP Server (stdio)
pnpm dev
Or build and run:
pnpm build
pnpm start
Run Web UI
pnpm web
Then open http://localhost:3000 in your browser. The server will automatically reload when you make code changes (hot-reload enabled).
The web UI has two tabs:
- Actions: Search and execute actions directly
- Agent Chat: Give tasks to an AI agent that uses MCP actions autonomously
For the Agent Chat, you can either:
- Enter your Anthropic API key in the UI (stored in browser localStorage)
- Set
ANTHROPIC_API_KEYenvironment variable - Create a
.envfile withANTHROPIC_API_KEY=your_key_here
Note: If you get model 404 errors, set CLAUDE_MODEL in your .env to a model you have access to:
# In .env file
CLAUDE_MODEL=claude-3-sonnet-20240229 # or another available model
MCP Client Configuration
Add to your MCP client config (e.g., Claude Desktop):
{
"mcpServers": {
"simulator": {
"command": "node",
"args": ["/path/to/mcp-simulator/dist/cli.js"]
}
}
}
Architecture
Core Components
src/server.ts: Main MCP server implementation withsearch_actionsandexecute_actiontoolssrc/client/mcp-client.ts: In-process MCP client wrapper for internal usesrc/state/persistence.ts: State management with JSON persistencesrc/generator/action-generator.ts: Dynamic action generation based on search queriessrc/agent/orchestrator.ts: Agentic loop orchestrator that uses Claude to autonomously complete taskssrc/web/: Express-based web UI that uses the MCP client to ensure consistency
Tools
-
search_actions: Search for available actions
- Input:
query(string),limit(number, optional) - Returns matching existing actions + newly generated ones
- Input:
-
execute_action: Execute a discovered action
- Input:
action_name(string),parameters(object, optional) - Returns execution result with realistic output
- Input:
Development
# Install dependencies
pnpm install
# Run in development mode with hot reload
pnpm dev
# Build TypeScript
pnpm build
# Run tests
pnpm test
# Lint code
pnpm lint
# Format code
pnpm format
# Clean build artifacts
pnpm clean
How It Works
- Client searches for an action (e.g., "turn on lights")
- Server checks existing actions in state
- If not enough matches, generates new plausible actions on-the-fly
- New actions are persisted to
state.json - Client executes an action
- Server generates realistic output (dynamic for things like weather/time, static otherwise)
- Execution is recorded in history
State Persistence
State is stored in state.json at the project root, containing:
- All generated actions with metadata
- Execution history with timestamps and results
License
MIT
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