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Reinforcement Learning Skill

// RL training for robot control using simulation with sim-to-real transfer

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updated:March 4, 2026
SKILL.mdreadonly
SKILL.md Frontmatter
nameReinforcement Learning Skill
descriptionRL training for robot control using simulation with sim-to-real transfer
slugrl-robotics
categoryLearning
allowed-toolsBash,Read,Write,Edit,Glob,Grep

Reinforcement Learning Skill

Overview

Expert skill for training reinforcement learning agents for robot control tasks, including environment design, training pipelines, and sim-to-real transfer.

Capabilities

  • Configure Gym/Gymnasium environments for robots
  • Set up Stable Baselines3 training (PPO, SAC, TD3)
  • Implement custom observation and action spaces
  • Design reward shaping strategies
  • Configure parallel environment training
  • Implement domain randomization for sim-to-real
  • Set up curriculum learning
  • Configure vision-based RL with CNNs
  • Implement policy distillation
  • Export policies for deployment (ONNX, TorchScript)

Target Processes

  • rl-robot-control.js
  • imitation-learning.js
  • sim-to-real-validation.js
  • nn-model-optimization.js

Dependencies

  • Stable Baselines3
  • Gymnasium
  • Isaac Gym
  • rsl_rl

Usage Context

This skill is invoked when processes require RL-based robot control, learning from simulation, or transferring learned policies to real robots.

Output Artifacts

  • Gymnasium environment implementations
  • Training configurations
  • Reward function designs
  • Domain randomization configs
  • Trained policy checkpoints
  • Deployment-ready models (ONNX)