1 hr 15 min

Rosanne Liu: Paths in AI Research and ML Collective The Gradient: Perspectives on AI

    • Technology

In episode 29 of The Gradient Podcast, we chat with Rosanne Liu. Rosanne is a research scientist in Google Brain, and co-founder and executive director of ML Collective, a nonprofit organization for open collaboration and accessible mentorship. Before that she was a founding member of Uber AI. Outside of research, she supports underrepresented communities, and organizes symposiums, workshops, and a weekly reading group “Deep Learning: Classics and Trends” since 2018. She is currently thinking deeply how to democratize AI research even further, and improve the diversity and fairness of the field, while working on multiple fronts of machine learning research including understanding training dynamics, rethinking model capacity and scaling. 
Subscribe to The Gradient Podcast:  Apple Podcasts  | Spotify | Pocket Casts | RSSFollow The Gradient on Twitter
Outline:
* (01:30) How did you go into AI / research
* (6:45) AI research: the unreasonably narrow path and how not to be miserable
* (16:30) ML Collective Overview
* (21:45) Deep Learning: Classics and Trends Reading Group
* (26:25) More details about ML Collective
* (39:35) ICLR 2022 Diversity, Equity & Inclusion
* (48:00) Narrowness vs Variety in research
* (57:20) Favorite Papers 
* (58:50) Measuring the Intrinsic Dimension of Objective Landscapes 
* (01:01:40) Natural Adversarial Objects 
* (01:03:00) Interests outside of AI - Writing
* (01:08:05) Interests outside of AI - Narrating Travels with Charley
* (01:13:22) Outro


Get full access to The Gradient at thegradientpub.substack.com/subscribe

In episode 29 of The Gradient Podcast, we chat with Rosanne Liu. Rosanne is a research scientist in Google Brain, and co-founder and executive director of ML Collective, a nonprofit organization for open collaboration and accessible mentorship. Before that she was a founding member of Uber AI. Outside of research, she supports underrepresented communities, and organizes symposiums, workshops, and a weekly reading group “Deep Learning: Classics and Trends” since 2018. She is currently thinking deeply how to democratize AI research even further, and improve the diversity and fairness of the field, while working on multiple fronts of machine learning research including understanding training dynamics, rethinking model capacity and scaling. 
Subscribe to The Gradient Podcast:  Apple Podcasts  | Spotify | Pocket Casts | RSSFollow The Gradient on Twitter
Outline:
* (01:30) How did you go into AI / research
* (6:45) AI research: the unreasonably narrow path and how not to be miserable
* (16:30) ML Collective Overview
* (21:45) Deep Learning: Classics and Trends Reading Group
* (26:25) More details about ML Collective
* (39:35) ICLR 2022 Diversity, Equity & Inclusion
* (48:00) Narrowness vs Variety in research
* (57:20) Favorite Papers 
* (58:50) Measuring the Intrinsic Dimension of Objective Landscapes 
* (01:01:40) Natural Adversarial Objects 
* (01:03:00) Interests outside of AI - Writing
* (01:08:05) Interests outside of AI - Narrating Travels with Charley
* (01:13:22) Outro


Get full access to The Gradient at thegradientpub.substack.com/subscribe

1 hr 15 min

Top Podcasts In Technology

Acquired
Ben Gilbert and David Rosenthal
Lex Fridman Podcast
Lex Fridman
All-In with Chamath, Jason, Sacks & Friedberg
All-In Podcast, LLC
Hard Fork
The New York Times
TED Radio Hour
NPR
Darknet Diaries
Jack Rhysider