
ARX
61 posts




🧐 Simulation has long promised robot pretraining, but breaks at the moment of real-world deployment. 🚀 Today, we introduce SIM1: the first real-to-sim-to-real paradigm where the generative world becomes the same one as reality. SIM1 produces simulation data whose execution is directly valid in the physical world, enabling policies trained entirely in simulation to transfer zero-shot, at scale. 📈 This unlocks a new scaling law for robotics: we scale intelligence without scaling real-world data. ✨ Few demonstrations in, real-world policies out. Simulation is no longer a proxy; it is supervision itself. internrobotics.github.io/sim1.github.io/ huggingface.co/papers/2604.08…

Introducing EgoVerse: an ecosystem for robot learning from egocentric human data. Built and tested by 4 research labs + 3 industry partners, EgoVerse enables both science and scaling 1300+ hrs, 240 scenes, 2000+ tasks, and growing Dataset design, findings, and ecosystem 🧵


We’ve developed a memory system for our models that provides both short-term visual memory and long-term semantic memory. Our approach allows us to train robots to perform long and complex tasks, like cleaning up a kitchen or preparing a grilled cheese sandwich from scratch 👇









