A comprehensive Model Context Protocol (MCP) package for analyzing startup investment risks using AI-powered assessment across multiple risk categories. Built with FastMCP and LLM.

Add to CursorAdd to VS CodeAdd to ClaudeAdd to ChatGPTAdd to CodexAdd to Gemini

PitchLense MCP - Professional Startup Risk Analysis Package

Python VersionPython docsLicense: MITPyPI VersionBuild Status

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.

PitchLense is a comprehensive AI-powered startup analysis platform that provides detailed risk assessment and growth potential evaluation for early-stage ventures. The platform analyzes multiple dimensions of startup risk and provides actionable insights for investors, founders, and stakeholders.

πŸ”— Quick Links

YouTube TutorialAppWebsiteGitHub RepositoryMCP RepositoryPyPI PackageDocumentation

πŸ“– How to Use PitchLense

Watch our comprehensive tutorial video to learn how to use PitchLense effectively:

How to use PitchLense

Click the image above to watch the tutorial on YouTube

πŸš€ 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

πŸ“Š 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

πŸ› οΈ 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]"

πŸ”‘ Setup

1. Get Gemini API Key

  1. Visit Google AI Studio
  2. Create a new API key
  3. 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=

πŸš€ 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()

πŸ“‹ 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.

πŸ“Š 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

πŸ—οΈ Architecture

Package Structure

pitchlense-mcp/
β”œβ”€β”€ pitchlense_mcp/
β”‚   β”œβ”€β”€ __init__.py
β”‚   β”œβ”€β”€ cli.py                 # Command-line interface
β”‚   β”œβ”€β”€ core/                  # Core functionality
β”‚   β”‚   β”œβ”€β”€ __init__.py
β”‚   β”‚   β”œβ”€β”€ base.py           # Base classes
β”‚   β”‚   β”œβ”€β”€ gemini_client.py  # Gemini AI integration
β”‚   β”‚   └── comprehensive_scanner.py
β”‚   β”œβ”€β”€ models/               # Data models
β”‚   β”‚   β”œβ”€β”€ __init__.py
β”‚   β”‚   └── risk_models.py
β”‚   β”œβ”€β”€ analyzers/            # Individual risk analyzers
β”‚   β”‚   β”œβ”€β”€ __init__.py
β”‚   β”‚   β”œβ”€β”€ market_risk.py
β”‚   β”‚   β”œβ”€β”€ product_risk.py
β”‚   β”‚   β”œβ”€β”€ team_risk.py
β”‚   β”‚   β”œβ”€β”€ financial_risk.py
β”‚   β”‚   β”œβ”€β”€ customer_risk.py
β”‚   β”‚   β”œβ”€β”€ operational_risk.py
β”‚   β”‚   β”œβ”€β”€ competitive_risk.py
β”‚   β”‚   β”œβ”€β”€ legal_risk.py
β”‚   β”‚   └── exit_risk.py
β”‚   └── utils/                # Utility functions
β”œβ”€β”€ tests/                    # Test suite
β”œβ”€β”€ docs/                     # Documentation
β”œβ”€β”€ examples/                 # Example usage
β”œβ”€β”€ setup.py
β”œβ”€β”€ pyproject.toml
β”œβ”€β”€ requirements.txt
└── README.md

Key Components

  1. Base Classes (core/base.py)

    • BaseLLM - Abstract base for LLM integrations
    • BaseRiskAnalyzer - Base class for all risk analyzers
    • BaseMCPTool - Base class for MCP tools
  2. Gemini Integration (core/gemini_client.py)

    • GeminiLLM - Main LLM client
    • GeminiTextGenerator - Text generation
    • GeminiImageAnalyzer - Image analysis
    • GeminiVideoAnalyzer - Video analysis
    • GeminiAudioAnalyzer - Audio analysis
    • GeminiDocumentAnalyzer - Document analysis
  3. Risk Analyzers (analyzers/)

    • Individual analyzers for each risk category
    • Consistent interface and output format
    • Extensible architecture
  4. Models (models/risk_models.py)

    • Pydantic models for type safety
    • Structured data validation
    • Clear data contracts

πŸ”§ 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 and coverage.xml.
  • If you see errors about unknown --cov options, ensure you passed -p pytest_cov when PYTEST_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

πŸ“ 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.

  1. Fork the repository
  2. Create a feature branch
  3. Make your changes
  4. Add tests
  5. Submit a pull request

πŸ“„ License

This project is licensed under the MIT License - see the LICENSE file for details.

πŸ†˜ Support

πŸ™ 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.

MCP Server Β· Populars

MCP Server Β· New

    yoloshii

    ClawMem β€” On-device memory layer for Claude Code, OpenClaw, and Hermes agents

    On-device memory layer for AI agents. Claude Code, Hermes and OpenClaw. Hooks + MCP server + hybrid RAG search.

    Community yoloshii
    socfortress

    Velociraptor MCP Server

    Repo to hold mcp server for velociraptor

    Community socfortress
    jztan

    pdf-mcp

    MCP server that lets Claude Code and other AI agents read large PDFs without hitting context limits. Chunked reading, hybrid search, OCR, table and image extraction, SQLite cache.

    Community jztan
    softdaddy-o

    soft-ue-cli (+mcp)

    Python CLI + UE plugin that lets Claude Code (AI coding agent) control Unreal Engine in real time. Spawn actors, edit blueprints, call functions, capture screenshots, manage PIE sessions, and more -- all from the terminal. Works with UE5 editor and packaged builds via an in-process HTTP bridge.

    Community softdaddy-o
    opendatalab

    MinerU Document Explorer

    Agent-native knowledge engine with MCP tools for document indexing, wiki organization, fast retrieval and deep reading across PDF/DOCX/PPTX/Markdown

    Community opendatalab