
Applied AI Research at AWS with Alex Smola - #487
The TWIML AI Podcast (formerly This Week in Machine Learning & Artificial Intelligence)
00:00
Exploring Causality in Machine Learning
This chapter investigates advanced research in causality within machine learning, focusing on practical applications and methodologies. It highlights the importance of causal models, specifically Granger causality and Judea Pearl's graphical models, in addressing system challenges like server failures and supply chain issues. The conversation emphasizes the role of machine learning in enhancing existing services, the intricacies of causal relationships, and encourages ongoing engagement with emerging developments in this field.
Transcript
Play full episode