

617: Causal Modeling and Sequence Data
Oct 11, 2022
Dr. Sean Taylor, Co-Founder of Motif Analytics, discusses causal modeling, large-scale experimentation, Bayesian parameter searches, and the relationship between causality and sequence analytics. He shares insights from his work at Lyft, the importance of causal modeling in decision-making, and tools like Facebook's Prophet for forecasting. Sean also talks about his PhD in Information Systems and what he looks for in data science hires.
Chapters
Transcript
Episode notes
1 2 3 4 5 6 7 8
Intro
00:00 • 2min
Exploring Sequence Analytics and Causal Modeling
02:17 • 12min
Exploring the Link Between Causality and Sequence Analytics
14:24 • 3min
Delving into Causality and Marketplace Efficiency at Lyft
17:09 • 14min
Exploring the Significance of Causal Modeling in Business Decision-Making
31:14 • 4min
The Importance of Causal Modeling in Data Science
35:21 • 15min
Qualities of a Great Employee and Evolution of Information Systems
50:36 • 17min
Exploring Causal Modeling and Sequence Data
01:07:57 • 2min