"Multiverse Simulation for AI Training"
This is a news story, published by Live Science, that relates primarily to AI news.
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physical AI systemsLive Science
•'Multiverse simulation engine' predicts every possible future to train humanoid robots and self-driving cars
77% Informative
"Cosmos" lets researchers create "world foundation models" that simulate real-world environments and the laws of physics to predict realistic outcomes.
These generative AI models can create synthetic data to train embodied or physical AI systems such as autonomous vehicles or humanoid robots.
The platform can take in text, images or videos and then generate footage to predict what comes next in a particular scenario in real time.
VR Score
86
Informative language
89
Neutral language
69
Article tone
formal
Language
English
Language complexity
70
Offensive language
not offensive
Hate speech
not hateful
Attention-grabbing headline
not detected
Known propaganda techniques
not detected
Time-value
long-living
External references
2
Source diversity
2