World-Class Causal Inference Curriculum

Understand Why Things Happen. Not Just How.

From Pearl's DAGs to the potential outcomes framework β€” master the science of causation through 88 rigorously designed lessons, live interactive simulations, and an AI tutor that knows causal inference inside out.

88+
Lessons
15+
Domains
50+
Methods
5
Curriculum Tracks

Curriculum

Five tracks. One complete education.

A structured path from first principles to frontier methods β€” or jump to the track that matches your level.

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Foundations
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Basics
🎯
Identification
πŸ“Š
Estimation
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Advanced

Domain Pathways

Learn in your field.

Every method is taught through real examples from your domain β€” the same rigorous causal questions, in the context that matters to you.


Pedagogy

Designed for deep understanding,
not surface familiarity.

Every lesson follows an instructional design grounded in cognitive science and Bloom's taxonomy β€” from concrete examples to formal derivations.

01 β€” Activate
Concrete Before Abstract
Every lesson opens with a real-world scenario β€” a clinical trial, an A/B test, a policy intervention β€” before any formalism is introduced. Context first.
02 β€” Build
Incremental Complexity
Concepts layer precisely on the one before. No cognitive overload. No skipped steps. Each slide advances understanding by exactly one logical move.
03 β€” Visualise
Live DAG Interaction
Don't just read about d-separation β€” see it. Every structural concept is paired with an interactive causal graph you manipulate directly in the browser.
04 β€” Practice
Embedded Assessment
Knowledge checks, identification challenges, and estimation exercises are woven into each lesson β€” not bolted on at the end. Retrieval practice, not passive reading.
05 β€” Transfer
Cross-Domain Application
The same method is shown across healthcare, economics, and tech. Structural understanding transfers β€” you learn the causal reasoning, not just the recipe.
06 β€” Tutor
Slide-Aware AI Copilot
An AI tutor that knows exactly which slide you're on and answers questions in context β€” not generic help, but specific, grounded, Socratic guidance.

Platform

Everything you need to go from zero to research-ready.

🧠
AI Causal Copilot
A slide-aware AI tutor that answers questions in context. Ask "why does conditioning on a collider open a path?" and get an explanation grounded in what you just read.
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Interactive DAG Playground
Build any causal graph, identify adjustment sets, simulate data, and run estimation β€” all in the browser. No code required. Professional-grade tools accessible to everyone.
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Formal Notation Support
Every lesson uses consistent notation β€” Pearl's do-calculus, potential outcomes, SCMs. When you finish, you can read the primary literature with confidence.
🎯
Scenario-Based Learning
Lessons are organised by causal question, not just topic. "How do I handle time-varying confounding?" β€” find it, learn it end-to-end, apply it immediately.
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Complete Methods Library
50+ estimation methods, each with intuition, formal derivation, assumptions, and worked examples. The most comprehensive causal inference reference anywhere on the web.
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Offline PWA
Works fully offline after first load. Install on any device. Full-screen presentation mode for teaching. Designed for researchers on the go.

Methods Library

Every method. Rigorous. Practical.

50+ identification and estimation methods β€” each with formal derivation, assumptions, and domain-specific worked examples.

Backdoor Criterion Frontdoor Criterion do-Calculus IPW / IPTW G-Formula AIPW / Doubly-Robust Propensity Score Matching Difference-in-Differences Instrumental Variables Regression Discontinuity Synthetic Controls Double Machine Learning Causal Forests Marginal Structural Models Structural Nested Models Parametric G-Formula Target Trial Emulation Survival Analysis Proximal Causal Inference D-Separation Principal Stratification Bayesian Causal Inference Sensitivity Analysis Mediation Analysis Panel Data Methods Effect Modification Adaptive Experiments Policy Learning Semiparametric Theory LATE / IV-LATE Graphoids + 20 more β†’

Get Started

The most rigorous causal
inference education. Free.

No sign-up. No paywall. Just the clearest path from correlation to causation β€” built for researchers, practitioners, and curious minds.

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