Examples#
These are the end-to-end reinforcement learning (RL) training examples that ship with Genesis World. Each one is a complete pipeline: a gym-style environment, its reward terms, and the loop that trains a policy for one task. Together they show how Genesis World’s parallel simulation turns into a working policy on a concrete robot.
Read them in any order. If you are new to policy training here, start with locomotion, the smallest of the three:
Locomotion: train a Unitree Go2 quadruped to walk with PPO.
Drone hovering: train a drone to reach and hold a target position with PPO.
Manipulation: train a Franka arm to pick and place with a two-stage pipeline that combines RL and imitation learning.