

Yash
13 posts

@coldifl
Co-founder Intelligence Factory (YC P26). Tech/Robots/NFL






🚨 BREAKING: Genesis AI has just launched GENE-26.5, what the company is calling the first robotic brain to give robots human-level physical manipulation capabilities. The demo video alone is extraordinary, robots cooking 20-step meals, solving Rubik's Cubes mid-air, playing piano, and conducting lab experiments with delicate instrumentation. All with human-level dexterity. @gs_ai_ has built a dexterous robotic hand that exactly mirrors the human hand, paired with a data collection glove with tactile-sensing electronic skin. When a human wears the glove, every movement maps 1:1 to the robotic hand. This closes the embodiment gap. In this case human skill transfers DIRECTLY to a robot at scale. The economics are game-changing too, the glove is 100x cheaper than typical options and delivers 5x greater data collection efficiency vs traditional teleoperation. That makes continuous large-scale robotics training viable for the first time. The company has raised $ 105M in seed funding backed by Eclipse, Khosla Ventures and Bpifrance, with Eric Schmidt and Xavier Niel among the strategic angels. And the first general-purpose robot is coming soon. Co-founded by @zhou_xian_ and @theo_gervet, this is a full-stack robotics company controlling every layer, AI, hardware, simulation, and data. That's a serious moat. ~~ ♻️ Join the weekly robotics newsletter, and never miss any news → ziegler.substack.com


Genesis AI has exited stealth for real with the announcement of GENE-26.5, a foundation model designed to achieve human-level physical manipulation. The system uses a proprietary dexterous hand and a tactile-sensing glove that is reportedly 100 times cheaper and 5 times more efficient at data collection than legacy teleoperation methods. Watch the system autonomously master tasks ranging from 20-step meal prep and wire harnessing to precision lab experiments and piano performance at 1x speed. 📽️🤖



Robotic data is insanely expensive and brutal to collect. It’s the only thing holding back general-purpose robots right now. Figure CEO @adcock_brett : "If we could get a pile of data in the helix stack, we would solve general robotics right now."







The speed & importance of hardware iteration is extremely underrated in robot learning, and Academia's pace is lagging behind here. If data the north star, then you should optimize every step to make your data better.

