Research
Researchers train JEPA world model on Super Mario Bros
A team built LeMario, a JEPA-based world model trained on Super Mario Bros gameplay, demonstrating how self-supervised learning can predict game dynamics without labeled action data.
1 min read
SourceHacker News · Front Page
Researchers have trained a JEPA (Joint-Embedding Predictive Architecture) world model on Super Mario Bros, creating a system called LeMario that learns to predict game state transitions from raw pixel input without explicit action labels. The project demonstrates how self-supervised learning can ext...
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