Multi Agent Research System Server
БесплатноНе проверенEnables multi-agent research with web search and analysis, accessible via VS Code Copilot tools.
Описание
Enables multi-agent research with web search and analysis, accessible via VS Code Copilot tools.
README
Advanced Multi-Agent Architecture for VS Code Copilot Integration
A next-generation Model Context Protocol (MCP) server that demonstrates how to build powerful multi-agent systems with sophisticated tooling, breaking away from traditional specialized-tool-only MCP implementations.
📋 Table of Contents
- Overview
- Architecture
- Key Features
- Technology Stack
- Project Structure
- Installation
- Configuration
- Usage
- Workflow Pipeline
- VS Code Integration
- API Reference
- Examples
- Development
🎯 Overview
This project represents a paradigm shift in MCP server design. While traditional MCP servers focus on exposing simple, specialized tools, this implementation leverages multi-agent orchestration to create a sophisticated research system that can be seamlessly integrated into VS Code Copilot.
The system combines three specialized AI agents with powerful internal tools to perform comprehensive research tasks—all exposed through simple, intuitive MCP tools.
Why This Matters
- Traditional MCP: Single-purpose tools exposed directly to clients
- This Approach: Multi-agent coordination, tool orchestration, and intelligent workflow management wrapped in a clean interface
- Result: More powerful, context-aware, and reliable results delivered through familiar tools
🏗️ Architecture
System Overview
┌─────────────────────────────────────────────────────────────┐
│ VS Code Copilot │
└────────────────────────┬────────────────────────────────────┘
│
MCP Protocol (STDIO)
│
┌────────────────────────▼────────────────────────────────────┐
│ FastMCP Server (Entry Point) │
│ ┌────────────────────────────────────────────────────────┐ │
│ │ Exposed Tools: │ │
│ │ • run_research_graph(query, num_sources) │ │
│ │ • workflow_info() │ │
│ └────────────────────────────────────────────────────────┘ │
└─────┬──────────────────────────────────────────────────────┘
│
│ Invokes
│
┌─────▼────────────────────────────────────────────────────────┐
│ LangGraph Workflow (State Management) │
│ │
│ START → Research Agent → Validator Agent → Final Output → END
│ Agent Agent Agent
└────┬─────────┬──────────────┬────────────────────────────────┘
│ │ │
▼ ▼ ▼
┌──────────────────────────────────────────────────────────┐
│ Internal Tools (Not Exposed to Client) │
│ ┌────────────────┐ ┌─────────────────────────────────┐│
│ │ Web Tools │ │ LLM Agents (Groq - 70B) ││
│ │ • web_search │ │ • Research Analysis ││
│ │ • fetch_page │ │ • Validation & Scoring ││
│ │ • search_news │ │ • Report Generation ││
│ └────────────────┘ └─────────────────────────────────┘│
└──────────────────────────────────────────────────────────┘
Agent Pipeline
1. RESEARCH AGENT
├─ Performs web searches using DuckDuckGo
├─ Fetches detailed content from URLs
├─ Performs LLM-based analysis
├─ Extracts facts and insights
└─ Outputs: summary, key_facts, insights
2. VALIDATOR AGENT
├─ Evaluates research quality
├─ Scores reliability (0-100)
├─ Identifies issues and gaps
├─ Provides improvement recommendations
└─ Outputs: validation_score, reliability, status
3. FINAL OUTPUT AGENT
├─ Synthesizes all agent outputs
├─ Generates professional markdown report
├─ Organizes findings hierarchically
├─ Includes sources and recommendations
└─ Outputs: final_report (professional documentation)
✨ Key Features
🤖 Multi-Agent Orchestration
- Three Specialized Agents: Research, Validation, and Output generation
- Sequential Workflow: Each agent refines the previous agent's output
- State Preservation: TypedDict-based state management ensures data consistency
🔧 Advanced Tooling
- Web Search: DuckDuckGo integration for source discovery
- Content Extraction: Beautiful Soup-based webpage parsing
- News Search: Specialized news discovery capability
- All Internal: Tools not exposed to clients—only results are shared
🧠 Intelligent Analysis
- LLM-Powered: Groq's Llama 3.3 (70B) for accurate analysis
- Temperature Control: Optimized settings per agent (Research: 0.3, Validation: 0.2, Output: 0.4)
- JSON Parsing: Structured output with fallback mechanisms
📊 Quality Assurance
- Validation Scoring: 0-100 confidence scoring system
- Reliability Assessment: Multi-factor reliability ratings
- Error Tracking: Issue identification and recommendations
🔐 Secure Integration
- Environment Variables: API keys managed via
.env - STDIO Transport: Safe MCP communication channel
- No Data Leakage: Internal tools hidden from client
🛠️ Technology Stack
| Component | Technology | Purpose |
|---|---|---|
| Agent Framework | LangGraph | Workflow orchestration & state management |
| LLM Provider | Groq (Llama 3.3 70B) | Advanced reasoning & analysis |
| Language | Python 3.10+ | Implementation language |
| MCP Framework | FastMCP | Server protocol & tool exposure |
| HTTP Client | HTTPX | Async web requests |
| HTML Parser | BeautifulSoup 4 | Content extraction |
| Chat Models | LangChain | LLM integration abstraction |
📂 Project Structure
AgentsCrossToolMCP/
├── server.py # FastMCP server & tool definitions
├── graph_workflow.py # LangGraph workflow pipeline
├── state.py # Shared state TypedDict definition
├── requirements.txt # Python dependencies
├── pyproject.toml # Project metadata
│
├── agents/ # Multi-agent components
│ ├── __init__.py
│ ├── research_agent.py # Source discovery & analysis
│ ├── validator_agent.py # Quality validation & scoring
│ └── final_output_agent.py # Report generation
│
└── tools/ # Internal tool library
├── __init__.py
├── web_tools.py # Web search, fetch, news search
└── __pycache__/
📦 Installation
Prerequisites
- Python 3.10 or higher
- Groq API key (get one at https://console.groq.com)
- VS Code with Copilot extension
Setup Steps
Clone or download the project
cd d:\GENAI\AgentsCrossToolMCPCreate virtual environment
python -m venv .venv .\.venv\Scripts\Activate.ps1Install dependencies
pip install -r requirements.txtConfigure environment variables Create a
.envfile in the project root:GROQ_API_KEY=your_groq_api_key_hereVerify installation
python server.pyYou should see the FastMCP banner and server startup messages.
⚙️ Configuration
Environment Variables
# Required
GROQ_API_KEY=gsk_xxxxxxxxxxxxxxxxxxxxxxxxxxxx
# Optional (uses defaults if not set)
GROQ_MODEL=llama-3.3-70b-versatile # Model for all agents
RESEARCH_TEMPERATURE=0.3 # Research agent creativity
VALIDATOR_TEMPERATURE=0.2 # Validator strictness
OUTPUT_TEMPERATURE=0.4 # Output composition creativity
MCP Server Configuration
The MCP server is configured in VS Code through the settings:
{
"mcpServers": {
"my-mcp-server": {
"command": "python",
"args": ["d:\\GENAI\\AgentsCrossToolMCP\\server.py"],
"disabled": false,
"alwaysAllow": ["run_research_graph", "workflow_info"]
}
}
}
🚀 Usage
Via VS Code Copilot
Once connected, you can use the system directly in Copilot:
Example Prompt:
@my-mcp-server Use run_research_graph to research "AI safety in Large Language Models"
with 5 sources and provide a comprehensive analysis.
Copilot will:
- Call
run_research_graph(query, 5) - Display the multi-page research report
- Cite sources and validation metrics
Programmatic Usage
from server import run_research_graph
import asyncio
async def main():
result = await run_research_graph(
query="Is Indian GDP growing? Current growth rate and challenges",
num_sources=5
)
print(result)
asyncio.run(main())
Command Line
# Start the server
python server.py
# In another terminal, test via MCP client
# (Configure in VS Code settings)
🔄 Workflow Pipeline
Step-by-Step Execution
1️⃣ Initialization
- User provides query and source count
- System initializes ResearchState object
- Workflow begins
2️⃣ Research Agent Processing
Input: query, num_sources
├─ web_search(query) → 5 search results
├─ fetch_webpage(url) for top 2 results → raw content
├─ LLM Analysis with tools
└─ Output: summary, key_facts, insights
3️⃣ Validation Agent Processing
Input: research_summary, key_facts
├─ LLM Assessment of quality
├─ Scoring (0-100)
├─ Reliability rating
└─ Output: validation_score, status, issues
4️⃣ Final Output Agent Processing
Input: all previous outputs + sources
├─ Combine all findings
├─ Format as markdown report
├─ Add structure & organization
└─ Output: final_report (professional document)
5️⃣ Return to Client
- MCP server returns final_report
- Copilot displays in editor
- Sources and validation metrics included
🔌 VS Code Integration
Setup Instructions
Open VS Code Settings (
Ctrl+,)Go to MCP Servers section
Add configuration:
"mcpServers": { "my-mcp-server": { "command": "python", "args": ["d:\\GENAI\\AgentsCrossToolMCP\\server.py"], "disabled": false } }Restart VS Code
Verify in Copilot Chat:
- Open Copilot Chat (
Ctrl+L) - Type
@my-mcp-server - Should see available tools
- Open Copilot Chat (
Usage in Copilot
@my-mcp-server Can you research the latest developments in quantum computing
and provide a detailed analysis with key insights?
🔗 API Reference
Tool: run_research_graph
Purpose: Execute comprehensive research workflow
Parameters:
run_research_graph(
query: str, # Research topic/question
num_sources: int = 5 # Number of sources to fetch
) -> str
Returns:
Professional markdown report containing:
- Executive Summary
- Key Findings
- Detailed Analysis
- Research Sources
- Validation Metrics
- Recommendations
Example:
report = await run_research_graph(
query="Climate change impact on agricultural productivity",
num_sources=5
)
print(report)
Tool: workflow_info
Purpose: Get information about the multi-agent system
Parameters: None
Returns:
String describing:
- Agent roles and responsibilities
- Available capabilities
- Tool information
Example:
info = await workflow_info()
print(info)
📚 Examples
Example 1: Economic Research
Query:
Query: India GDP growth rate 2024 2025 economic challenges obstacles
Sources: 5
Output includes:
- GDP growth statistics
- Economic challenges identified
- Market obstacles
- Expert recommendations
- Data reliability assessment
Example 2: Technology Trends
Query:
Query: Latest developments in quantum computing and AI integration
Sources: 8
Output includes:
- Recent breakthroughs
- Technical insights
- Industry trends
- Research opportunities
- Cross-domain applications
🧑💻 Development
Project Architecture Principles
Separation of Concerns
- Agents focus on specific tasks
- Tools handle data fetching
- Server handles protocol translation
State Immutability Pattern
- TypedDict ensures type safety
- Operator.add for message accumulation
- Clear state transitions
Error Handling
- Graceful degradation for tool failures
- LLM JSON parsing fallbacks
- Comprehensive error messages
Extensibility
- Easy to add new agents
- Simple to integrate new tools
- Flexible temperature/model parameters
Adding New Agents
- Create new agent class in
agents/ - Implement
async __call__(self, state)method - Add to graph in
graph_workflow.py - Update state.py if needed
Adding New Tools
- Create tool function in
tools/web_tools.py - Decorate with
@tool - Add to agent's
bind_tools()call - Keep tools internal (not exposed via MCP)
🐛 Troubleshooting
Issue: "GROQ_API_KEY not found"
Solution: Ensure .env file exists with valid API key
# Verify .env exists
Test-Path .\.env
# Check content (don't share publicly)
Get-Content .\.env
Issue: MCP server won't start
Solution: Check dependencies and Python version
python --version # Should be 3.10+
pip list | grep -i fastmcp
Issue: Web fetch fails (403 Forbidden)
Solution: Some websites block scraping. System handles this gracefully
- Validator agent scores lower
- System uses alternative sources
- Report still generated with available data
Issue: Slow response times
Solution: Configure fewer sources or optimize LLM
# Use fewer sources
run_research_graph(query, num_sources=3)
# Or increase timeout in web_tools.py
timeout=60.0 # Increase from 30.0
📊 Performance Metrics
Typical Execution Times
- Web Search: 2-3 seconds
- Content Fetch: 1-2 seconds per page
- Research Agent: 3-5 seconds
- Validation Agent: 2-3 seconds
- Final Output Agent: 2-3 seconds
- Total: ~10-15 seconds for 5 sources
Resource Requirements
- CPU: Minimal (network-bound)
- Memory: ~200-300 MB
- Network: Required (STDIO/HTTP requests)
- Storage: <50 MB code
🔐 Security & Privacy
- No Data Storage: Results not persisted
- API Key Protection: Via environment variables
- STDIO Transport: Encrypted by VS Code
- No Third-Party Analytics: Pure execution
- Tool Isolation: Internal tools never exposed
🌟 Why This Architecture?
Traditional MCP Limitations
User Request
↓
Tool Call
↓
Simple Result
Problems:
- No intelligence between tools
- User must coordinate multiple calls
- No quality validation
- Results not synthesized
This System's Advantages
User Request
↓
Workflow Graph
├─ Research Agent (intelligent search)
├─ Validator Agent (quality check)
└─ Final Output Agent (synthesis)
↓
Professional Report
Benefits:
- Autonomous orchestration
- Intelligent analysis layers
- Built-in quality validation
- Professional output
- Single-call interface
VSCode Copilot Conversation
Установка Multi Agent Research System Server
У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.
▸ github.com/HimanshuMohanty-Git24/AgenticXToolMCPFAQ
Multi Agent Research System Server MCP бесплатный?
Да, Multi Agent Research System Server MCP бесплатный — установка в пару кликов через Unyly без оплаты.
Нужен ли API-ключ для Multi Agent Research System Server?
Нет, Multi Agent Research System Server работает без API-ключей и переменных окружения.
Multi Agent Research System Server — hosted или self-hosted?
Доступен hosted-вариант: Unyly запускает сервер в облаке, локальная установка не обязательна.
Как установить Multi Agent Research System Server в Claude Desktop, Claude Code или Cursor?
Открой Multi Agent Research System Server на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.
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