
Zero-Shot Auto-Labeling: The End of Annotation for Computer Vision with Jason Corso - #735
The TWIML AI Podcast (formerly This Week in Machine Learning & Artificial Intelligence)
00:00
Exploring Agentic Behaviors in Machine Learning and Their Practical Implications
This chapter explores the integration of agentic behaviors in machine learning, particularly regarding the evolution of cost functions through user feedback. It highlights current research in semi-supervised learning, the reduction of human labeling, and the anticipation for improved AI and computer vision applications.
Transcript
Play full episode