Skild AI has developed an “omni-bodied brain” that allows a single AI model to control multiple types of robots and adapt to extreme physical damage, including continuing to operate after losing limbs. The breakthrough represents a significant step toward more generalized robotic intelligence that could work across any hardware platform, addressing a key limitation in current robotics where AI models are typically designed for specific robot types.
What you should know: The AI system can control unfamiliar robotic hardware and adapt to severe physical modifications without additional training.
- When a four-legged robot’s limbs were cut off with a chainsaw, the AI algorithm quickly adapted to continue functioning with the remaining hardware.
- The model generalizes across different robot body types, successfully controlling both two- and four-legged robots that weren’t included in its original training data.
- In one test, a quadruped robot placed on its hind legs automatically began walking upright like a humanoid after sensing ground contact beneath its rear limbs.
How it works: Skild’s approach trains a single algorithm across numerous different physical robots performing various tasks, creating what the company calls “Skild Brain.”
- The model uses in-context learning similar to large language models, breaking down complex problems and feeding solutions back into its processing loop.
- Training involves gathering data from a wide range of robot types rather than focusing on individual systems through teleoperation or simulation.
- The AI can adapt to modifications like tied-together legs, extended limbs, or deactivated motors by leveraging its broad training foundation.
In plain English: Think of traditional robot AI like a specialist doctor who only knows how to treat one type of patient. Skild’s approach is more like training a general practitioner who has seen thousands of different cases and can adapt their knowledge to handle new situations they’ve never encountered before.
Beyond walking robots: Skild is applying the same generalist approach to robot manipulation tasks.
- The company trained Skild Brain on various simulated robot arms and found it could control unfamiliar hardware while adapting to environmental changes like reduced lighting.
- Skild is already working with companies that use robot arms, according to CEO Deepak Pathak.
The big picture: Multiple companies are racing to develop more generally capable robot AI models, but Skild’s approach of generalizing across diverse hardware types sets it apart from competitors.
- Toyota Research Institute and startup Physical Intelligence are also developing generalist robot AI models.
- Pathak believes this represents the emergence of “physical superintelligence for robots,” comparing the potential breakthrough to the leap that produced modern language models and chatbots.
What they’re saying: “Any robot, any task, one brain. It is absurdly general,” Pathak explained about their omni-bodied brain concept.
- “It is so exciting to me personally, dude,” he added regarding the results, though acknowledging they might seem “creepy to some.”
Follow the money: Skild AI raised $300 million in 2024 at a $1.5 billion valuation, reflecting investor confidence in generalized robotics AI.
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