Steven AI Talk

🚀 We are hitting the "language-only ceiling" in AI

9 min · 9 de jun de 2026
Portada del episodio 🚀 We are hitting the "language-only ceiling" in AI

Descripción

🚀 We are hitting the "language-only ceiling" in AI. To build true physical agents, models must transition from text translation to sensory fluency. The era of Native Multimodal Intelligence is here: Universal Tokens, Transfusion, and Mixture of Transformers! 👇 All my links: https://linktr.ee/learnbydoingwithsteven [https://linktr.ee/learnbydoingwithsteven] #AI #DeepLearning #MultimodalAI #MachineLearning #Robotics

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Portada del episodio Selecting the Optimal Balance for On-Device AI: The "SAGE" Model Strategy

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