Our latest paper on emergent world models in large language models just got accepted at ICML 2026! 🎉 Key finding: When
Our latest paper on emergent world models in large language models just got accepted at ICML 2026! 🎉 Key finding: When you train LLMs on enough diverse data, they develop internal representations that look remarkably like simplified physics engines. This has huge implications for how we think about grounding and embodied AI.
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