Solving Rubik’s Cube with a robot hand
Neural networks trained in simulation via RL and automatic domain randomization solved Rubik's Cube with a robot hand, showing strong sim-to-real transfer.
Excerpt
We’ve trained a pair of neural networks to solve the Rubik’s Cube with a human-like robot hand. The neural networks are trained entirely in simulation, using the same reinforcement learning code as OpenAI Five paired with a new technique called Automatic Domain Randomization (ADR). The system can handle situations it never saw during training, such as being prodded by a stuffed giraffe. This shows that reinforcement learning isn’t just a tool for virtual tasks, but can solve physical-world problems requiring unprecedented dexterity.
Read at source: https://openai.com/index/solving-rubiks-cube