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1
- Intro & Overview
2
- Supervised Learning, Self-Supervised Learning, and Common Sense
3
- Predicting Hidden Parts from Observed Parts
4
- Self-Supervised Learning for Language vs Vision
5
- Energy-Based Models
6
- Joint-Embedding Models
7
- Contrastive Methods
8
- Latent-Variable Predictive Models and GANs
9
- Summary & Conclusion
Description:
Explore a comprehensive analysis of self-supervised learning in artificial intelligence through this 59-minute video lecture. Delve into the concepts of supervised learning, self-supervised learning, and common sense in AI systems. Examine the process of predicting hidden parts from observed parts and compare self-supervised learning applications in language and vision. Investigate energy-based models, joint-embedding models, and contrastive methods. Learn about latent-variable predictive models and GANs. Gain insights from Yann LeCun and Ishan Misra's research at Facebook AI, discussing the potential of self-supervised learning as a key approach to developing AI systems with improved background knowledge and common sense capabilities.

Self-Supervised Learning - The Dark Matter of Intelligence

Yannic Kilcher
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