SimLauncher: Launching Sample-Efficient Real-world Robotic Reinforcement Learning via Simulation Pre-training
Mingdong Wu, Lehong Wu, Yizhuo Wu, Weiyao Huang, Hongwei Fan, Zheyuan Hu, Haoran Geng, Jinzhou Li, Jiahe Ying, Long Yang, Yuanpei Chen, Hao Dong

TL;DR
SimLauncher enhances real-world robotic reinforcement learning by pre-training in simulation, significantly improving sample efficiency and success rates through simulation-based bootstrapping and exploration strategies.
Contribution
It introduces a novel framework that combines simulation pre-training with real-world RL to address sample inefficiency and exploration challenges in robotic tasks.
Findings
Achieves near-perfect success rates in complex manipulation tasks.
Significantly improves sample efficiency over prior methods.
Effectively leverages simulation pre-training for real-world robotics.
Abstract
Autonomous learning of dexterous, long-horizon robotic skills has been a longstanding pursuit of embodied AI. Recent advances in robotic reinforcement learning (RL) have demonstrated remarkable performance and robustness in real-world visuomotor control tasks. However, applying RL in the real world faces challenges such as low sample efficiency, slow exploration, and significant reliance on human intervention. In contrast, simulators offer a safe and efficient environment for extensive exploration and data collection, while the visual sim-to-real gap, often a limiting factor, can be mitigated using real-to-sim techniques. Building on these, we propose SimLauncher, a novel framework that combines the strengths of real-world RL and real-to-sim-to-real approaches to overcome these challenges. Specifically, we first pre-train a visuomotor policy in the digital twin simulation environment,…
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