@robbyant_brain: LingBot-VLA 2.0 is now open-source — our next-gen embodied foundation model. 60,000 hours of high-quality pretraining d…

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LingBot-VLA 2.0, an open-source embodied foundation model, has been released with 60,000 hours of pretraining data supporting 20 robot configurations across 17 brands, capable of sub-130ms inference on RTX 4090.

LingBot-VLA 2.0 is now open-source — our next-gen embodied foundation model. 60,000 hours of high-quality pretraining data — combining curated robotic demonstrations and egocentric human operation videos 20 robot configurations across 17 brands — Astribot, Leju, Unitree, Franka, Fourier, Realman, and more Whole-body DoF: heads, waists, dexterous hands, and mobile bases — enabling far more complex task scenarios Inference under 130ms on RTX 4090 — developer events launching soon #EmbodiedAI #Robotics #OpenSource #VLA
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Cached at: 07/07/26, 11:38 PM

LingBot-VLA 2.0 is now open-source — our next-gen embodied foundation model. 60,000 hours of high-quality pretraining data — combining curated robotic demonstrations and egocentric human operation videos 20 robot configurations across 17 brands — Astribot, Leju, Unitree, Franka, Fourier, Realman, and more Whole-body DoF: heads, waists, dexterous hands, and mobile bases — enabling far more complex task scenarios Inference under 130ms on RTX 4090 — developer events launching soon #EmbodiedAI #Robotics #OpenSource #VLA

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