Ya Xu: Causal Inference Challenges in Industry: A perspective from experiences at LinkedIn

Subscribe to our channel to get notified when we release a new video. Like the video to tell YouTube that you want more content like this on your feed. See our website for future seminars: https://sites.google.com/view/ocis/home "Causal Inference Challenges in Industry: A perspective from experiences at LinkedIn" Ya Xu, LinkedIn Discussant: Iavor Bojinov, Harvard In this talk, we will briefly give some background how online controlled experiments are commonly used in industry, and introduce some challenges we face, and also some opportunities in novel applications. May 26, 2020

Kun Zhang: Learning and Using Causal Representations
▶︎

Kun Zhang: Learning and Using Causal Representations

Philipp Bach and Sven Klaassen: Tutorial on DoubleML for double machine learning in Python and R
▶︎

Philipp Bach and Sven Klaassen: Tutorial on DoubleML for double machine learning in Python and R

Live Lessons in Levity and Leadership: Me2We 2025 Part 1
▶︎

Live Lessons in Levity and Leadership: Me2We 2025 Part 1

How To Think SO Clearly People Assume You're Brilliant
▶︎

How To Think SO Clearly People Assume You're Brilliant

Scaling Global Organizations in the Age of AI with ServiceNow Chairman and CEO Bill McDermott
▶︎

Scaling Global Organizations in the Age of AI with ServiceNow Chairman and CEO Bill McDermott

Anish Agarwal: On Causal Inference with Temporal and Spatial Spillovers in Panel Data
▶︎

Anish Agarwal: On Causal Inference with Temporal and Spatial Spillovers in Panel Data

Your Phone Is Destroying Your Sense of Meaning | Arthur Brooks [ARC 2026]
▶︎

Your Phone Is Destroying Your Sense of Meaning | Arthur Brooks [ARC 2026]

Susan Athey: Synthetic Difference in Differences
▶︎

Susan Athey: Synthetic Difference in Differences

Dean Eckles: Policy relevance of causal quantities in networks
▶︎

Dean Eckles: Policy relevance of causal quantities in networks

The AI Skills Nobody is Teaching (And Everyone Needs) | AI Expert Ethan Mollick
▶︎

The AI Skills Nobody is Teaching (And Everyone Needs) | AI Expert Ethan Mollick

Carlos Cinelli: Long Story Short: Omitted Variable Bias in Causal Machine Learning
▶︎

Carlos Cinelli: Long Story Short: Omitted Variable Bias in Causal Machine Learning

Last Lecture Series: “How to Win Without Crushing Your Soul” - Graham Weaver
▶︎

Last Lecture Series: “How to Win Without Crushing Your Soul” - Graham Weaver

Fan Li: A tutorial on Bayesian causal inference
▶︎

Fan Li: A tutorial on Bayesian causal inference

The one skill you need to succeed in your career in a turbulent world - by Adam Grant
▶︎

The one skill you need to succeed in your career in a turbulent world - by Adam Grant

Keynote: After the AI Hype – What’s Real, and What’s Next - Richard Campbell - 2026
▶︎

Keynote: After the AI Hype – What’s Real, and What’s Next - Richard Campbell - 2026

Jim Chanos: The AI Bubble Is “Much Worse” Than Dot-Com
▶︎

Jim Chanos: The AI Bubble Is “Much Worse” Than Dot-Com

Creator of C++: Bell Labs, Negative Overhead Abstraction, Mistakes | Bjarne Stroustrup
▶︎

Creator of C++: Bell Labs, Negative Overhead Abstraction, Mistakes | Bjarne Stroustrup

Understand AI in 14 minutes – with Anthropic's Chloe Lubinski [ARC 2026]
▶︎

Understand AI in 14 minutes – with Anthropic's Chloe Lubinski [ARC 2026]

What Americans Need to Understand About China | The Ezra Klein Show
▶︎

What Americans Need to Understand About China | The Ezra Klein Show

"A.I. and Our Economic Future," Professor Chad Jones
▶︎

"A.I. and Our Economic Future," Professor Chad Jones