Master Causality for Smarter Marketing Decisions

Curious about how causality drives business outcomes? This course bridges theory and practice, teaching you foundational concepts, advanced estimation methods, and their real-world applications in marketing. With hands-on tools like DiDective and MMMGPT, you’ll learn to apply causal reasoning to campaigns, media strategies, and marketing mix modeling—empowering you to make confident, data-driven decisions.

Who is this course for?

This course is designed for marketers, data professionals, and anyone curious about causality. Whether you come from a marketing background looking to sharpen your decision-making toolkit, or from data and analytics with a desire to understand how causal reasoning powers business strategy, this course welcomes you. No prior expertise in causality is required – we start from the ground up and build step by step.

What makes this course unique?

Most courses stop at theory or focus only on technical execution. This program is different.

We connect the foundations of causal inference with real-world marketing applications, showing you not just how causal methods work, but why they matter in day-to-day business decisions.

You will see how concepts like counterfactual thinking, causal graphs, estimands, and advanced estimation methods directly influence marketing effectiveness.

What will you learn?

The course takes you on a structured journey:

Foundations of Causality

Observational Studies vs RCT , Pearl’s Causal Ladder, Bradford Hill’s criteria.

Applied Marketing Mix Modeling (MMM)

Translating causal concepts into actionable marketing insights.

Graphical Models

Directed Acyclic Graphs (DAGs), SWIGs, confounders, mediators, and colliders.

Causal Estimation Techniques

Difference-in-Differences, Synthetic Control, Propensity Score Matching, Instrumental Variables, Randomized Controlled Trials, and Ghost Ads.

Estimands in Depth

Learn how to define and interpret the most important causal quantities - Average Treatment Effect (ATE), Average Treatment Effect on the Treated (ATT), Conditional ATE (CATE), and Local Average Treatment Effect (LATE) and see how each applies to marketing contexts.

How do we teach?

Every concept is paired with marketing-specific examples:
Bonus Tools - Learn by Doing
As part of the course, participants also get a chance to try two powerful Aryma Labs products for free:

DiDective

Our Difference-in-Differences app that lets you experiment with causal testing in marketing contexts.

MMMGPT

Our indegenously built RAG based knowledge assistant that answers your MMM and causality questions instantly.

By the end, you won’t just know the language of causality – you will be able to apply it confidently to marketing problems and make better causal decisions.

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