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Agentic AI Server

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An MCP server with real AI capabilities (OpenAI/Anthropic) for natural language understanding, multi-step planning, and autonomous task execution, enabling inte

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About

An MCP server with real AI capabilities (OpenAI/Anthropic) for natural language understanding, multi-step planning, and autonomous task execution, enabling intelligent file analysis, weather-based planning, and more.

README

A sophisticated Model Context Protocol (MCP) server powered by real AI capabilities. This server provides natural language processing, multi-step planning, intelligent reasoning, and autonomous task execution with OpenAI and Anthropic integration.

✨ Features

🧠 Real AI Capabilities

  • 🤖 OpenAI Integration: GPT-4o, GPT-4o-mini, GPT-3.5-turbo support
  • 🧠 Anthropic Integration: Claude 3 (Haiku, Sonnet, Opus) support
  • 🔄 Smart Fallback: Graceful degradation to mock AI if needed
  • 💰 Cost-Optimized: Recommended models for best value
  • 🔐 Secure: Environment-based API key management

🎯 Intelligent Features

  • Natural Language Understanding: True comprehension with real AI
  • Multi-Step Planning: Automatic task decomposition and execution
  • Autonomous Reasoning: Context-aware decision making
  • Memory & Context: Persistent conversation history
  • Intelligent Synthesis: Coherent responses combining multiple tools

🔧 Smart Tools

  • AI Assistant: Natural language interface powered by real AI
  • Smart File Analysis: Deep code/text analysis with AI insights
  • Weather Planner: Intelligent activity suggestions based on conditions
  • Time Intelligence: Context-aware time and date responses
  • File Operations: Enhanced with AI-powered insights

🚀 Quick Start

1. Installation

npm install

2. Configure Real AI (Recommended)

npm run setup-ai               # Interactive AI setup wizard

OR manually create .env with your API keys (see AI Setup Guide)

3. Start the Server

npm start                      # Start with real AI capabilities
npm run client              # Launch universal interactive client
npm run demo                # Try the demo mode

🎯 Architecture

This server features a clean, production-ready architecture optimized for AI capabilities:

src/
├── core/                   # 🧠 Shared AI Components
│   ├── memory.js          # Memory management system
│   ├── ai-agent.js        # AI reasoning and planning engine  
│   └── tools.js           # Shared tool definitions and execution
├── clients/               # � Smart Client Applications
│   └── universal.js       # Universal agentic AI client
└── index.js               # 🤖 Main agentic AI server

tests/                     # 🧪 Comprehensive Test Suite
├── agentic.test.js        # AI capabilities testing
└── integration.test.js    # End-to-end validation

examples/                  # 📚 Usage Examples & Demos
└── simple-client.js       # Basic client implementation

🔄 Architecture Benefits

  • 📦 Modular Design: Shared core components eliminate code duplication
  • 🧹 Clean Structure: Logical separation of servers, clients, tests, examples
  • ⚡ Optimized Performance: Lazy loading, memory management, result caching
  • 🔧 Better Maintainability: Single source of truth for AI logic and tools
  • 🧪 Comprehensive Testing: Dedicated test suite with integration coverage
  • 📚 Clear Examples: Focused examples for different use cases

📖 Usage Examples

Natural Language Interface

// Ask the AI assistant anything!
await client.callTool("ai_assistant", {
  request: "Analyze my TypeScript project and suggest architectural improvements",
  session_id: "my_session"
});

await client.callTool("ai_assistant", {
  request: "Help me organize these files using best practices",
  session_id: "my_session"
});

Smart File Analysis

await client.callTool("smart_file_analysis", {
  path: "package.json",
  analysis_type: "all"  // summary, structure, quality, security, all
});

Weather-Based Planning

await client.callTool("weather_planner", {
  city: "London",
  activity_type: "outdoor"  // outdoor, indoor, mixed
});

🧠 AI Intelligence Features

Multi-Step Planning

The AI automatically creates execution plans:

  1. Request Analysis: Understands what you want to accomplish
  2. Tool Selection: Chooses the best tools for each step
  3. Execution: Runs tools in optimal sequence
  4. Synthesis: Combines results into intelligent responses

Example Planning Process

User: "Analyze my project and suggest improvements"

AI Reasoning: "User wants project analysis. I should read files, analyze structure, and provide insights."

Execution Plan:
1. list_files (get project structure)
2. read_file (analyze key files like package.json)
3. ai_analyze_content (provide intelligent insights)

Result: Comprehensive analysis with specific recommendations

Memory & Context

  • Session-based memory: Remembers your conversation
  • Context awareness: Understands your project and preferences
  • Learning: Improves responses based on your interactions

🔧 Available Tools

🤖 AI-Powered Tools

Tool Description Example Usage
ai_assistant Natural language interface for complex tasks "Help me refactor this code"
smart_file_analysis AI-powered file analysis with insights Analyze code quality, structure, security
weather_planner Weather-based activity planning Get activity suggestions for any city

📁 File Operations

Tool Description
read_file Read file contents with AI analysis
write_file Write content to files
list_files List directory contents with intelligent categorization
get_weather Basic weather information

📚 AI Resources

Access advanced AI capabilities:

  • ai://conversation-history - Your conversation memory
  • ai://capabilities - Full AI feature documentation
  • ai://reasoning-engine - How the AI makes decisions
  • weather://cities - Available weather locations

🎯 Example Use Cases

Project Analysis

"Analyze my Node.js project structure and suggest improvements"
→ AI reads files, analyzes dependencies, suggests organization

Weather Planning

"Plan outdoor activities in Paris considering current weather"
→ AI checks weather, suggests appropriate activities with explanations

Code Review

"Review my TypeScript code for potential issues"
→ AI analyzes code quality, security, and best practices

File Organization

"Help me organize my project files using industry standards"
→ AI analyzes structure, suggests reorganization with reasoning

🛠️ Development

Available Commands (New Architecture)

# 🚀 Server Management
npm start                    # Start optimized agentic AI server
npm run start:traditional   # Start traditional TypeScript server
npm run dev                 # Development mode - traditional server
npm run dev:agentic         # Development mode - AI server

# 👥 Client Applications  
npm run client              # Universal auto-detecting client
npm run client:simple       # Basic example client
npm run demo                # Interactive demonstration

# 🧪 Testing & Validation
npm test                    # Test traditional server
npm run test:agentic        # Test AI capabilities  
npm run test:integration    # Test server switching
npm run test:all            # Run complete test suite

# 🔧 Development Tools
npm run build               # Build TypeScript components
npm run clean               # Remove redundant files (architectural cleanup)

Server Architecture

  • agentic-server.js: Main AI-powered server
  • src/index.ts: Traditional MCP server (TypeScript)
  • Memory System: Conversation and context management
  • AI Agent: Planning and reasoning engine
  • Tool Orchestration: Intelligent multi-tool workflows

🤝 Integration

VS Code Extension

Configure in .vscode/mcp.json:

{
  "agentic-ai-server": {
    "command": "node",
    "args": ["agentic-server.js"],
    "description": "Agentic AI MCP Server with natural language processing"
  }
}

Client Development

const client = new Client({
  name: "my-agentic-client",
  version: "1.0.0"
});

// Connect to agentic server
const transport = new StdioClientTransport({
  command: "node",
  args: ["agentic-server.js"]
});

await client.connect(transport);

// Use natural language!
const result = await client.callTool("ai_assistant", {
  request: "What can you help me with?",
  session_id: "my_app"
});

📦 Dependencies

Core MCP

  • @modelcontextprotocol/sdk - MCP protocol implementation
  • zod - Schema validation

AI Capabilities

  • openai - OpenAI API integration (optional)
  • @anthropic-ai/sdk - Anthropic API integration (optional)
  • uuid - Session management

Development

  • typescript - Type safety for traditional server
  • @types/node - Node.js type definitions

🔒 Configuration

AI Providers

Set environment variables for real AI:

export OPENAI_API_KEY="your-key-here"
export ANTHROPIC_API_KEY="your-key-here"

Or use the built-in mock AI for testing (no API keys required).

🧪 Testing

Comprehensive Testing

npm run test:agentic  # Test AI capabilities
npm run test         # Test traditional tools
npm run client       # Interactive testing

Example Test Sessions

  1. Start server: npm run agentic
  2. Open client: npm run client:interactive
  3. Try: ai help me understand this project
  4. Try: ai check weather in Tokyo and suggest activities

🌟 What Makes This Agentic?

Unlike traditional tool-based MCP servers, this agentic AI version:

  • Understands Intent: Processes natural language to understand what you really want
  • Plans Autonomously: Creates multi-step execution strategies without explicit instructions
  • Reasons About Context: Makes intelligent decisions based on your situation
  • Learns and Adapts: Improves responses based on conversation history
  • Synthesizes Intelligence: Combines multiple data sources into coherent insights
  • Proactive Assistance: Suggests improvements and alternatives you might not consider

📈 Legacy Tools (Backward Compatible)

The traditional MCP server is still available at src/index.ts:

npm run build  # Build TypeScript
npm start      # Run traditional server

Traditional Tools

  • get_weather - Basic weather for cities
  • read_file - Read file contents
  • write_file - Write to files
  • list_files - List directory contents

Legacy Client Examples

npm run client           # Simple test client
npm run client:advanced  # Advanced demo client
npm run client:typed     # TypeScript client

📈 Roadmap

  • Real AI Integration: Connect OpenAI/Anthropic APIs for production use
  • Advanced Memory: Persistent storage and long-term learning
  • Plugin System: Extensible AI tool ecosystem
  • Visual Interface: Web-based chat interface for AI interactions
  • Multi-modal AI: Support for images, documents, and rich media

Transform your MCP experience from simple tool execution to intelligent AI assistance! 🚀

from github.com/BenBoBenBo/mcp-server

Install Agentic AI Server in Claude Desktop, Claude Code & Cursor

Recommended · one command, every IDE
unyly install agentic-ai-mcp-server

Installs into Claude Desktop, Claude Code, Cursor & VS Code — handles npx, uvx and build-from-source repos for you.

First time? Get the CLI: curl -fsSL https://unyly.org/install | sh

Or configure manually

Run in your terminal:

claude mcp add agentic-ai-mcp-server -- npx -y mcp-server

FAQ

Is Agentic AI Server MCP free?

Yes, Agentic AI Server MCP is free — one-click install via Unyly at no cost.

Does Agentic AI Server need an API key?

No, Agentic AI Server runs without API keys or environment variables.

Is Agentic AI Server hosted or self-hosted?

Self-hosted: the server runs locally on your machine via the install command above.

How do I install Agentic AI Server in Claude Desktop, Claude Code or Cursor?

Open Agentic AI Server on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.

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