This month, we explore Nvidia’s A.S.A.P. (Aligning Simulation and Real-World Physics), an innovative framework that empowers humanoid robots to execute agile, full-body movements by bridging the gap between simulation and real-world physics. ASAP operates in two key stages: first, it pre-trains motion tracking policies in simulation using real human data; then, it fine-tunes these policies in the real world with delta action models, enhancing coordination and agility.
What is a ‘Delta action model’?
Because simulations don’t perfectly replicate reality, ASAP incorporates a delta action model to make precise corrections, ensuring simulated and real-world performance align seamlessly:
- It evaluates the robot’s state and movements.
- Predicts subtle adjustments needed for accuracy.
- Refines the simulator to better reflect real-world dynamics.
For instance, if the simulation overestimates motor strength, the model fine-tunes leg movement intensity to achieve a more realistic response.
Real-world deployment
After optimization, the refined policy is deployed in the real world without relying on the delta model. The outcome? More fluid, precise movements that seamlessly adapt to real-world physics.
Video Credit: Champion Edtech – checkout their excellent Youtube channel here: https://www.youtube.com/@championedtech/videos



