Home /Research /mjlab: A Lightweight Framework for GPU-Accelerated Robot Learning
MANIPULATION

mjlab: A Lightweight Framework for GPU-Accelerated Robot Learning

Kevin Zakka, Qiayuan Liao, Brent Yi, Louis Le Lay, Koushil Sreenath, Pieter Abbeel

Year
2026
Access
Open access

Abstract

We present mjlab, a lightweight, open-source framework for robot learning that combines GPU-accelerated simulation with composable environments and minimal setup friction. mjlab adopts the manager-based API introduced by Isaac Lab, where users compose modular building blocks for observations, rewards, and events, and pairs it with MuJoCo Warp for GPU-accelerated physics. The result is a framework installable with a single command, requiring minimal dependencies, and providing direct access to native MuJoCo data structures. mjlab ships with reference implementations of velocity tracking, motion imitation, and manipulation tasks.

Keywords

cs.RO

Related papers

Browse all MANIPULATION papers