Quantitative Finance & Risk Management

About Quantitative Finance

Quantitative finance (or “quant finance”) focuses on applying mathematical models and computational techniques to financial markets. It’s the backbone of pricing derivatives, building trading algorithms, and financial forecasting.

Quantitative Finance & Risk Management are two tightly connected fields that use advanced math, statistics, and programming to price assets, model markets, and manage uncertainty in financial decisions.

Asset Pricing & Derivatives

Black-Scholes model, binomial trees, Greeks

Monte Carlo simulations

Stochastic calculus (e.g., Brownian motion)

Quantitative Trading

Statistical arbitrage

Momentum and mean-reversion strategies

High-frequency and algorithmic trading

Portfolio Optimization

Modern Portfolio Theory (Markowitz)

Efficient frontier, CAPM

Risk-return tradeoffs

Financial Econometrics

Time series analysis (ARIMA, GARCH)

Volatility modeling

Factor models (e.g., Fama-French)

Machine Learning in Quant Finance

Regression, classification, reinforcement learning

Predictive modeling using financial data

Sentiment analysis from news/social media

Risk management focuses on identifying, quantifying, and mitigating risks (market, credit, operational, liquidity). It’s essential for banks, asset managers, and regulators to prevent financial loss or systemic failure.

Market Risk – Risk of losses from changes in market prices (interest rates, FX, stock prices).
Tools: Value at Risk (VaR), stress testing, scenario analysis

Credit Risk – Risk of borrower default.
Models: Credit scoring, structural models (Merton), reduced-form models

Operational Risk – Risk from system failures, fraud, or errors.
Tools: Loss distribution approach, risk control self-assessments

Liquidity Risk – Risk that an entity cannot meet its short-term obligations.
Measurement: Liquidity coverage ratio, funding gap analysis

Regulatory Risk – Risk of non-compliance with financial regulations.
Measurement: Liquidity coverage ratio, funding gap analysis

Programming: Python, R, MATLAB, SQL, C++

Libraries: NumPy, Pandas, Scikit-learn, QuantLib

Mathematics: Probability, calculus, linear algebra, optimization

Software: Bloomberg Terminal, Excel (for prototyping), RStudio, Jupyter

Career Paths