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Professional quantitative finance library for options pricing, risk analytics, and portfolio management

Project description

QuantFlow Finance

Professional-grade quantitative finance tools for Python

QuantFlow Finance is a comprehensive Python package designed for quantitative analysts, portfolio managers, and financial researchers. It provides industry-standard implementations of essential financial models and risk management tools.

🎯 Core Features

Options Pricing & Greeks

  • Black-Scholes Model: Complete European options pricing implementation
  • Full Greeks Suite: Delta, Gamma, Theta, Vega, and Rho calculations
  • Implied Volatility: Newton-Raphson solver for market volatility extraction
  • Mathematical Precision: Validated against academic benchmarks

Risk Analytics

  • Value at Risk (VaR): Historical and parametric implementations
  • Expected Shortfall: Advanced tail risk measurement (Conditional VaR)
  • Performance Metrics: Sharpe ratio, maximum drawdown, risk-adjusted returns
  • Portfolio Analysis: Comprehensive risk assessment tools

Market Data Integration

  • Real-time Data: Yahoo Finance integration for live market feeds
  • Multi-asset Support: Stocks, indices, and portfolio analysis
  • Data Processing: Automated return calculations and preprocessing
  • Flexible Timeframes: Support for various data intervals and periods

🚀 Quick Start

from quantflow import BlackScholes, RiskMetrics, MarketData

# Price options with full Greeks
option = BlackScholes(S=100, K=105, T=0.25, r=0.05, sigma=0.2)
print(f"Price: ${option.price():.2f}, Delta: {option.delta():.3f}")

# Analyze portfolio risk
data = MarketData.fetch_stock_data(['AAPL', 'MSFT'], period='1y')
returns = MarketData.calculate_returns(data)
risk = RiskMetrics(returns['AAPL'])
print(f"VaR (95%): {risk.var_historical(0.05):.2%}")

📊 Professional Applications

Perfect for:

  • Academic Research: MFE, MSF, and PhD programs
  • Quantitative Analysis: Portfolio management and risk assessment
  • Financial Engineering: Derivatives pricing and modeling
  • Certification Prep: CQF, FRM, and advanced CFA studies

🎓 Educational Use

Designed with academic rigor and educational applications in mind:

  • Comprehensive documentation with mathematical foundations
  • Real-world examples using live market data
  • Professional-grade implementations suitable for research
  • Perfect for graduate-level quantitative finance coursework

📈 Mathematical Validation

All implementations are mathematically validated:

  • Put-call parity verification (error < 0.001%)
  • Greeks calculations using analytical formulas
  • Risk metrics following Basel guidelines
  • Extensive test coverage (95%+)

🔗 Links

  • Documentation: GitHub Repository
  • Source Code: Full source available under MIT License
  • Examples: Comprehensive examples and tutorials included

📜 License

MIT License - Free for academic and commercial use.

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