
PitchLense MCP
Enables comprehensive AI-powered startup investment risk analysis across 9 categories including market, product, team, financial, customer, operational, competitive, legal, and exit risks. Provides structured risk assessments, peer benchmarking, and investment recommendations using Google Gemini AI.
README
PitchLense MCP - Professional Startup Risk Analysis Package
A comprehensive Model Context Protocol (MCP) package for analyzing startup investment risks using AI-powered assessment across multiple risk categories. Built with FastMCP and Google Gemini AI.
🚀 Features
Individual Risk Analysis Tools
- Market Risk Analyzer - TAM, growth rate, competition, differentiation
- Product Risk Analyzer - Development stage, market fit, technical feasibility, IP protection
- Team Risk Analyzer - Leadership depth, founder stability, skill gaps, credibility
- Financial Risk Analyzer - Metrics consistency, burn rate, projections, CAC/LTV
- Customer Risk Analyzer - Traction levels, churn rate, retention, customer concentration
- Operational Risk Analyzer - Supply chain, GTM strategy, efficiency, execution
- Competitive Risk Analyzer - Incumbent strength, entry barriers, defensibility
- Legal Risk Analyzer - Regulatory environment, compliance, legal disputes
- Exit Risk Analyzer - Exit pathways, sector activity, late-stage appeal
Comprehensive Analysis Tools & Data Sources
- Comprehensive Risk Scanner - Full analysis across all risk categories
- Quick Risk Assessment - Fast assessment of critical risk areas
- Peer Benchmarking - Compare metrics against sector/stage peers
- SerpAPI Google News Tool - Fetches first-page Google News with URLs and thumbnails
- Perplexity Search Tool - Answers with cited sources and URLs
📊 Risk Categories Covered
Category | Key risks |
---|---|
Market | Small/overstated TAM; weak growth; crowded space; limited differentiation; niche dependence |
Product | Early stage; unclear PMF; technical uncertainty; weak IP; poor scalability |
Team/Founder | Single-founder risk; churn; skill gaps; credibility; misaligned incentives |
Financial | Inconsistent metrics; high burn/short runway; optimistic projections; unfavorable CAC/LTV; low margins |
Customer & Traction | Low traction; high churn; low retention; no marquee customers; concentration risk |
Operational | Fragile supply chain; unclear GTM; operational inefficiency; poor execution |
Competitive | Strong incumbents; low entry barriers; weak defensibility; saturation |
Legal & Regulatory | Grey/untested areas; compliance gaps; disputes; IP risks |
Exit | Unclear pathways; low sector exit activity; weak late‑stage appeal |
🛠️ Installation
From PyPI (Recommended)
pip install pitchlense-mcp
From Source
git clone https://github.com/pitchlense/pitchlense-mcp.git
cd pitchlense-mcp
pip install -e .
Development Installation
git clone https://github.com/pitchlense/pitchlense-mcp.git
cd pitchlense-mcp
pip install -e ".[dev]"
🔑 Setup
1. Get Gemini API Key
- Visit Google AI Studio
- Create a new API key
- Copy the API key
2. Create .env
cp .env.template .env
# edit .env and fill in keys
Supported variables:
GEMINI_API_KEY=
SERPAPI_API_KEY=
PERPLEXITY_API_KEY=
🚀 Usage
Command Line Interface
Run Comprehensive Analysis
# Create sample data
pitchlense-mcp sample --output my_startup.json
# Run comprehensive analysis
pitchlense-mcp analyze --input my_startup.json --output results.json
Run Quick Assessment
pitchlense-mcp quick --input my_startup.json --output quick_results.json
Start MCP Server
pitchlense-mcp server
Python API
Basic Usage (single text input)
from pitchlense_mcp import ComprehensiveRiskScanner
# Initialize scanner (reads GEMINI_API_KEY from env if not provided)
scanner = ComprehensiveRiskScanner()
# Provide all startup info as one organized text string
startup_info = """
Name: TechFlow Solutions
Industry: SaaS/Productivity Software
Stage: Series A
Business Model:
AI-powered workflow automation for SMBs; subscription pricing.
Financials:
MRR: $45k; Burn: $35k; Runway: 8 months; LTV/CAC: 13.3
Traction:
250 customers; 1,200 MAU; Churn: 5% monthly; NRR: 110%
Team:
CEO: Sarah Chen; CTO: Michael Rodriguez; Team size: 12
Market & Competition:
TAM: $12B; Competitors: Zapier, Power Automate; Growth: 15% YoY
"""
# Run comprehensive analysis
results = scanner.comprehensive_startup_risk_analysis(startup_info)
print(f"Overall Risk Level: {results['overall_risk_level']}")
print(f"Overall Risk Score: {results['overall_score']}/10")
print(f"Investment Recommendation: {results['investment_recommendation']}")
Individual Risk Analysis (text input)
from pitchlense_mcp import MarketRiskAnalyzer, GeminiLLM
# Initialize components
llm_client = GeminiLLM(api_key="your_api_key")
market_analyzer = MarketRiskAnalyzer(llm_client)
# Analyze market risks
market_results = market_analyzer.analyze(startup_info)
print(f"Market Risk Level: {market_results['overall_risk_level']}")
MCP Server Integration
The package provides a complete MCP server that can be integrated with MCP-compatible clients:
from pitchlense_mcp import ComprehensiveRiskScanner
# Start MCP server
scanner = ComprehensiveRiskScanner()
scanner.run()
📋 Input Data Format
The primary input is a single organized text string containing all startup information (details, metrics, traction, news, competitive landscape, etc.). This is the format used by all analyzers and MCP tools.
Example text input:
Name: AcmeAI
Industry: Fintech (Lending)
Stage: Seed
Summary:
Building AI-driven credit risk models for SMB lending; initial pilots with 5 lenders.
Financials:
MRR: $12k; Burn: $60k; Runway: 10 months; Gross Margin: 78%
Traction:
200 paying SMBs; 30% MoM growth; Churn: 3% monthly; CAC: $220; LTV: $2,100
Team:
Founders: Jane Doe (ex-Square), John Lee (ex-Stripe); Team size: 9
Market & Competition:
TAM: $25B; Competitors: Blend, Upstart; Advantage: faster underwriting via proprietary data partnerships
Tip: See examples/text_input_example.py
for a complete end-to-end script and JSON export of results.
📊 Output Format
All tools return structured JSON responses with:
{
"startup_name": "Startup Name",
"overall_risk_level": "low|medium|high|critical",
"overall_score": 1-10,
"risk_categories": [
{
"category_name": "Risk Category",
"overall_risk_level": "low|medium|high|critical",
"category_score": 1-10,
"indicators": [
{
"indicator": "Specific risk factor",
"risk_level": "low|medium|high|critical",
"score": 1-10,
"description": "Detailed risk description",
"recommendation": "Mitigation action"
}
],
"summary": "Category summary"
}
],
"key_concerns": ["Top 5 concerns"],
"investment_recommendation": "Investment advice",
"confidence_score": 0.0-1.0,
"analysis_metadata": {
"total_categories_analyzed": 9,
"successful_analyses": 9,
"analysis_timestamp": "2024-01-01T00:00:00Z"
}
}
🎯 Use Cases
- Investor Due Diligence - Comprehensive risk assessment for investment decisions
- Startup Self-Assessment - Identify and mitigate key risk areas
- Portfolio Risk Management - Assess risk across startup portfolio
- Accelerator/Incubator Screening - Evaluate startup applications
- M&A Risk Analysis - Assess acquisition targets
- Research & Analysis - Academic and industry research on startup risks
🏗️ Architecture
Package Structure
pitchlense-mcp/
├── pitchlense_mcp/
│ ├── __init__.py
│ ├── cli.py # Command-line interface
│ ├── core/ # Core functionality
│ │ ├── __init__.py
│ │ ├── base.py # Base classes
│ │ ├── gemini_client.py # Gemini AI integration
│ │ └── comprehensive_scanner.py
│ ├── models/ # Data models
│ │ ├── __init__.py
│ │ └── risk_models.py
│ ├── analyzers/ # Individual risk analyzers
│ │ ├── __init__.py
│ │ ├── market_risk.py
│ │ ├── product_risk.py
│ │ ├── team_risk.py
│ │ ├── financial_risk.py
│ │ ├── customer_risk.py
│ │ ├── operational_risk.py
│ │ ├── competitive_risk.py
│ │ ├── legal_risk.py
│ │ └── exit_risk.py
│ └── utils/ # Utility functions
├── tests/ # Test suite
├── docs/ # Documentation
├── examples/ # Example usage
├── setup.py
├── pyproject.toml
├── requirements.txt
└── README.md
Key Components
-
Base Classes (
core/base.py
)BaseLLM
- Abstract base for LLM integrationsBaseRiskAnalyzer
- Base class for all risk analyzersBaseMCPTool
- Base class for MCP tools
-
Gemini Integration (
core/gemini_client.py
)GeminiLLM
- Main LLM clientGeminiTextGenerator
- Text generationGeminiImageAnalyzer
- Image analysisGeminiVideoAnalyzer
- Video analysisGeminiAudioAnalyzer
- Audio analysisGeminiDocumentAnalyzer
- Document analysis
-
Risk Analyzers (
analyzers/
)- Individual analyzers for each risk category
- Consistent interface and output format
- Extensible architecture
-
Models (
models/risk_models.py
)- Pydantic models for type safety
- Structured data validation
- Clear data contracts
🔧 Development
Setup Development Environment
git clone https://github.com/pitchlense/pitchlense-mcp.git
cd pitchlense-mcp
pip install -e ".[dev]"
pre-commit install
Run Tests
# Create and activate a virtual environment (recommended)
python3 -m venv .venv
source .venv/bin/activate
# Install dev extras (pytest, pytest-cov, linters)
pip install -e ".[dev]"
# Run tests with coverage and avoid global plugin conflicts
PYTEST_DISABLE_PLUGIN_AUTOLOAD=1 pytest -q -p pytest_cov
Notes:
- Coverage reports are written to
htmlcov/index.html
andcoverage.xml
. - If you see errors about unknown
--cov
options, ensure you passed-p pytest_cov
whenPYTEST_DISABLE_PLUGIN_AUTOLOAD=1
is set.
Example Scripts
python examples/basic_usage.py
python examples/text_input_example.py
Code Formatting
black pitchlense_mcp/
flake8 pitchlense_mcp/
mypy pitchlense_mcp/
Build Package
python -m build
📝 Notes
- All risk scores are on a 1-10 scale (1 = lowest risk, 10 = highest risk)
- Risk levels: low (1-3), medium (4-6), high (7-8), critical (9-10)
- Individual tools can be used independently or combined for comprehensive analysis
- The system handles API failures gracefully with fallback responses
- All tables and structured data are returned in JSON format
- Professional package architecture with proper separation of concerns
🤝 Contributing
We welcome contributions! Please see our Contributing Guide for details.
- Fork the repository
- Create a feature branch
- Make your changes
- Add tests
- Submit a pull request
📄 License
This project is licensed under the MIT License - see the LICENSE file for details.
🆘 Support
- Documentation: https://pitchlense-mcp.readthedocs.io/
- Issues: GitHub Issues
- Email: connectamanulla@gmail.com
🙏 Acknowledgments
- Google Gemini AI for providing the underlying AI capabilities
- FastMCP for the Model Context Protocol implementation
- The open-source community for inspiration and tools
PitchLense MCP - Making startup risk analysis accessible, comprehensive, and AI-powered.
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