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NVIDIA has published a paper on DREAMGEN – a powerful 4-step pipeline for generating synthetic data for humanoids that enables task and environment generalization. - Step 1: Fine-tune a video generation model using a small number of human teleoperation videos - Step 2: Prompt the fine-tuned model to turn...

12,074 görüntüleme • 1 yıl önce •via X (Twitter)

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J⏩ profil fotoğrafı
J⏩1 yıl önce

The complexities and sheer dirty randomness of the real world are going to eat all these bots for lunch. The 'training' is so far from reality. *Extremely* early days yet, not even remotely close to ready for the real world.

The Humanoid Hub profil fotoğrafı
The Humanoid Hub1 yıl önce

Success rate of about 45% with just 7,000 synthetic neural trajectories – it's just early days. Scaling, refinements and combining other data modalities will accelerate the march of 9s.

VistaShares profil fotoğrafı
VistaShares1 yıl önce

Discover the future of AI investing. AIS delivers exposure to the companies driving the next wave of innovation—semiconductors, data centers, and AI applications. Explore the supercycle today.

VentureMind AI profil fotoğrafı
VentureMind AI1 yıl önce

Love these steps!

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Excited to announce GR00T N1, the world’s first open foundation model for humanoid robots! We are on a mission to democratize Physical AI. The power of general robot brain, in the palm of your hand - with only 2B parameters, N1 learns from the most diverse physical action dataset ever compiled and punches above its weight: - Real humanoid teleoperation data. - Large-scale simulation data: we are open-sourcing 300K+ trajectories! - Neural trajectories: we apply SOTA video generation models to “hallucinate” new synthetic data that features accurate physics in pixels. Using Jensen’s words, “systematically infinite data”! - Latent actions: we develop novel algorithms to extract action tokens from in-the-wild human videos and neural generated videos. GR00T N1 is a single end-to-end neural net, from photons to actions: - Vision-Language Model (System 2) that interprets the physical world through vision and language instructions, enabling robots to reason about their environment and instructions, and plan the right actions. - Diffusion Transformer (System 1) that “renders” smooth and precise motor actions at 120 Hz, executing the latent plan made by System 2. We deploy N1 on GR1 robot, 1X Neo robot, and a large collection of simulation benchmarks. N1 achieves up to +30% boost in diverse manipulation tasks for household and industrial settings. While humanoid robots are the main focus of N1, our model also supports cross-embodiment. We finetune it to work on the $110 HuggingFace LeRobot SO100 robot arm! Open robot brain runs on open hardware. Sounds just right. Let’s solve robotics, together, one token at a time. Links to our Whitepaper, Github repo, HuggingFace model, and open dataset page in the thread: 🧵

Jim Fan

465,968 görüntüleme • 1 yıl önce