Free Curriculum • 10 Modules • 85 Lessons

Learn Quantitative
Finance

A progressive curriculum that takes you from zero to quant. visual learning, hands-on Python code, real case studies from the V7 engine, and the same techniques behind 59.2% win rate across 4,505 trades.

From Zero to Quant

A structured learning path designed by a practicing quant. Every concept builds on the last.

I

Beginner

Level 1

Foundation concepts — no prior quant knowledge needed

II

Intermediate

Level 2

Statistical methods, Python for finance, feature engineering

III

Advanced

Level 3

Machine learning, model building, backtesting frameworks

IV

Expert

Level 4

Production systems, risk management, FTMO compliance

V

Master

Level 5

Research, alpha generation, original strategy development

10
Modules
85
Lessons
85
Code Examples
119+
Quiz Questions

10 Modules. 85 Lessons. Zero Fluff.

each module builds on the last. start from foundations, end at production live trading. every lesson has code, formulas, quizzes, and assignments.

FNDBeginner

Foundations

What is quant trading, risk fundamentals, statistical thinking, Python basics, and market microstructure.

STABeginner–Intermediate

Statistics

Hypothesis testing, time series, feature engineering, alpha concepts, and position sizing.

MLIntermediate

ML Pipeline

The 3-layer ML pipeline, entry gates, exit management, supervised learning, and tree models.

DLIntermediate–Advanced

Deep Learning

Neural networks, LSTMs, ensembles, model selection, and feature importance — applied to markets.

RSKIntermediate–Advanced

Risk Management

VaR, Expected Shortfall, Monte Carlo, drawdown protection, stress testing, and regulatory frameworks.

VALAdvanced

Validation

Walk-forward, PBO, backtesting, sensitivity analysis, documentation, and regulatory compliance.

ALPAdvanced

Alpha & Signals

Information coefficient, signal decay, alt data, factor models, regime detection, and alpha research.

ARBAdvanced

StatArb

Pairs trading, cointegration, Kalman filters, spread modeling, and portfolio neutrality.

DRVAdvanced–Expert

Derivatives

Black-Scholes, volatility surfaces, Monte Carlo pricing, Greeks, exotics, and stochastic calculus.

PRDAdvanced–Expert

Production

Data pipelines, APIs, model deployment, containerization, monitoring, FTMO compliance, and portfolio construction.

Which Quant Are You?

Answer 7 quick questions and we'll match you to the career track that fits your personality, interests, and strengths.

Takes about 2 minutes • No sign-up required

Explore by Career Track

same lessons, different lenses. each track curates a learning path for a specific quant career. take the assessment quiz above to find your best match.

FNDVery High Demand

Quantitative Researcher

Discover and validate tradable alpha signals using rigorous statistical methods and machine learning.

$150K – $500K+Explore →
STAExtreme Demand

Quantitative Trader

Execute systematic trading strategies across asset classes with ML-driven decision making.

$120K – $400K+ (+ profit share)Explore →
MLVery High Demand

Quantitative Developer

Build high-performance trading infrastructure, data pipelines, and ML model deployment systems.

$130K – $350K+Explore →
DLVery High Demand

Alpha Researcher

Specialize in discovering novel alpha signals — the raw material of profitable trading strategies.

$200K – $600K+Explore →
RSKHigh Demand

Statistical Arbitrage Quant

Exploit relative mispricings between related instruments using cointegration and mean-reversion models.

$140K – $450K+Explore →
VALVery High Demand

Risk Quantitative Analyst

Model, measure, and manage financial risk using VaR, CVaR, stress testing, and Monte Carlo methods.

$120K – $300K+Explore →
ALPHigh Demand

Pricing / Derivatives Quant

Develop mathematical models for derivatives pricing, volatility surfaces, and exotic instruments.

$130K – $400K+Explore →
ARBHigh Demand

Model Validation Quant

Independently validate quantitative models to ensure accuracy, robustness, and regulatory compliance.

$110K – $280K+Explore →
DRVExtreme Demand

Quantitative Data Scientist

Apply machine learning and big data techniques to financial datasets for prediction and insight generation.

$130K – $350K+Explore →

How We Teach

ELI5

ELI5 First, Math Second

Every concept starts with a simple analogy you'd explain to a friend. Then we layer in the math. You understand the "why" before the "how."

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Real Code, Not Pseudocode

Every lesson includes runnable Python code. Not toy examples — actual implementations using the same libraries quant funds use: XGBoost, pandas, numpy, PyTorch.

VIZ

Visual Learning

Complex concepts are shown, not just told. Interactive charts, 3D surfaces, animated diagrams — because your brain processes visuals 60,000x faster than text.

Q&A

Test Your Understanding

Each lesson ends with a quiz and a hands-on assignment. no moving forward until you truly get it. this is how real quant skills are built — through practice, not passive reading.

Start Learning

Ready to think like a quant?

The same framework behind 59.2% win rate, +533.9R, and 0.08% breach probability — broken down into digestible lessons anyone can follow.

Start Lesson 1 →