Essential Causal Inference Techniques for Data Science
Data scientists often get asked questions related to causality: (1) did recent PR coverage drive sign-ups, (2) does customer support increase sales, or (3) did...
By Vinod Bakthavachalam on Coursera
About This Course
Data scientists often get asked questions related to causality: (1) did recent PR coverage drive sign-ups, (2) does customer support increase sales, or (3) did improving the recommendation model drive revenue? Supporting company stakeholders requires every data scientist to learn techniques that can answer questions like these, which are centered around issues of causality and are solved with causal inference. In this project, you will learn the high level theory and intuition behind the four main causal inference techniques of controlled regression, regression discontinuity, difference in difference, and instrumental variables as well as some techniques at the intersection of machine learning and causal inference that are useful in data science called double selection and causal forests. These will help you rigorously answer questions like those above and become a better data scientist!
Topics Covered
Frequently Asked Questions
How much does Essential Causal Inference Techniques for Data Science cost?
Visit the Essential Causal Inference Techniques for Data Science course page for current pricing and available discounts.
Who teaches Essential Causal Inference Techniques for Data Science?
Essential Causal Inference Techniques for Data Science is taught by Vinod Bakthavachalam, Coursera.
What skill level is Essential Causal Inference Techniques for Data Science for?
This course is designed for all levels learners.
Similar Courses
TensorFlow: Advanced Techniques
DeepLearning.AI
Microsoft Azure AI Fundamentals AI-900 Exam Prep
Microsoft
Data Analysts' Toolbox - Excel, Power BI, Python, & Tableau
Packt
Data Literacy: Exploring and Visualizing Data
SAS