Machine Learning and Economics: An Introduction
Professor Susan Athey presents a high-level overview contrasting traditional econometrics with off-the-shelf machine learning.

▶︎
Applied Machine Learning: Introduction

▶︎
14. Causal Inference, Part 1

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

▶︎
How to Answer ANY Question (Even If You Don't Know The Answer!)

▶︎
How Will Machine Learning Impact Economics? (Guido Imbens, Josh Angrist, Isaiah Andrews)

▶︎
Hajime Takeda - Introduction to Causal Inference with Machine Learning | SciPy 2024

▶︎
Artificial Intelligence: The Economic and Policy Implications - Keynote by Susan Athey

▶︎
Machine Learning Explained: A Guide to ML, AI, & Deep Learning

▶︎
Applied Machine Learning: Secret Sauce

▶︎
What is causal inference, and why should data scientists know? by Ludvig Hult

▶︎
Inside Anthropic, the $965 Billion AI Juggernaut | The Circuit

▶︎
Professor Marcos Lopez de Prado on Machine Learning in Asset Management - Kapitaleierdagen 2024

▶︎
Causal Inference - EXPLAINED!

▶︎
Stanford CS229 I Machine Learning I Building Large Language Models (LLMs)

▶︎
What is Causal Machine Learning and how does it differ from Correlational Machine Learning?

▶︎
Full Tutorial: Causal Machine Learning in Python (Feat. Uber's CausalML)

▶︎
11. Introduction to Machine Learning

▶︎
Your Path from ConsignPro to SimpleConsign

▶︎
An introduction to Causal Inference with Python – making accurate estimates of cause and effect from

▶︎
