Gradient Dissent: Conversations on AI

Piero Molino — The Secret Behind Building Successful Open Source Projects

02.11.2021 - By Lukas BiewaldPlay

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Piero shares the story of how Ludwig was created, as well as the ins and outs of how Ludwig works and the future of machine learning with no code.

Piero is a Staff Research Scientist in the Hazy Research group at Stanford University. He is a former founding member of Uber AI, where he created Ludwig, worked on applied projects (COTA, Graph Learning for Uber Eats, Uber’s Dialogue System), and published research on NLP, Dialogue, Visualization, Graph Learning, Reinforcement Learning, and Computer Vision.

Topics covered:

0:00 Sneak peek and intro

1:24 What is Ludwig, at a high level?

4:42 What is Ludwig doing under the hood?

7:11 No-code machine learning and data types

14:15 How Ludwig started

17:33 Model performance and underlying architecture

21:52 On Python in ML

24:44 Defaults and W&B integration

28:26 Perspective on NLP after 10 years in the field

31:49 Most underrated aspect of ML

33:30 Hardest part of deploying ML models in the real world

Learn more about Ludwig: https://ludwig-ai.github.io/ludwig-docs/

Piero's Twitter: https://twitter.com/w4nderlus7

Follow Piero on Linkedin: https://www.linkedin.com/in/pieromolino/?locale=en_US

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