The Gradient: Perspectives on AI cover image

David Pfau: Manifold Factorization and AI for Science

The Gradient: Perspectives on AI

CHAPTER

Exploring Metrics, Missing Pieces, and Scalability in AI

The chapter delves into various metrics used in AI, including hand-designed metrics and learned embeddings like SimClear, discussing challenges like in-plane and out-of-plane transformations. It also touches on the concept of something lacking in AI research, exploring motivation to find missing pieces and strategies for scaling AI beyond current limitations. The discussion extends to data generation in AI, scaling beyond self-play, large language models, and drawing inspiration for AI development from the human brain's functioning.

00:00
Transcript
Play full episode

Remember Everything You Learn from Podcasts

Save insights instantly, chat with episodes, and build lasting knowledge - all powered by AI.
App store bannerPlay store banner