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MuJoCo Warp (MJWarp)

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GitHub Actions Documentation License Nightly Benchmarks

MuJoCo Warp (MJWarp)

MJWarp is a GPU-optimized version of the MuJoCo physics simulator, designed for NVIDIA hardware.

MJWarp uses NVIDIA Warp to circumvent many of the sharp bits in MuJoCo MJX. MJWarp is integrated into both MJX and Newton.

MJWarp is maintained by Google DeepMind and NVIDIA.

Getting started

There are a few ways to jump into using MuJoCo Warp:

If you would like to train robot policies using MJWarp, consider using a robotics research toolkit that integrates it:

Installing

From PyPI:

pip install mujoco-warp

From source:

git clone https://github.com/google-deepmind/mujoco_warp.git
cd mujoco_warp
uv sync --all-extras

To make sure everything is working:

uv run pytest -n 8

If you plan to write Warp kernels for MJWarp, please use the kernel_analyzer vscode plugin located in contrib/kernel_analyzer. Please see the README there for details on how to install it and use it. The same kernel analyzer will be run on any PR you open, so it's important to fix any issues it reports.

Compatibility

The following features are implemented:

Category Feature
Dynamics Forward, Inverse
Transmission All
Actuator All except PLUGIN
Geom All
Constraint All
Equality All
Integrator All except IMPLICIT
Cone All
Condim All
Solver All except PGS, noslip
Fluid Model All
Tendon Wrap All
Sensors All except PLUGIN
Flex All except flex-flex collisions, selfcollide, mjEQ_FLEXVERT, and mjEQ_FLEXSTRAIN
Mass matrix format Sparse and Dense
Jacobian format DENSE only (row-sparse, no islanding yet)

Differentiability via Warp is not currently available.

Viewing simulations

Explore MuJoCo Warp simulations using an interactive viewer:

mjwarp-viewer benchmarks/humanoid/humanoid.xml

This will open a window on your local machine that uses the MuJoCo native visualizer.

Batch Rendering

MJWarp includes a high-throughput GPU batch renderer designed for simultaneous rendering of cameras across many parallel simulation worlds. The renderer uses ray-tracing to render MuJoCo primitives using Warp's BVH API.

Key capabilities:

  • Mesh rendering
  • Texture support
  • Heightfield rendering
  • Flex deformable rendering
  • Heterogeneous multi-camera support (different resolutions/FOV/intrinsics for each camera)
  • Lighting and shadow support

Benchmarking

Benchmark as follows:

mjwarp-testspeed benchmarks/humanoid/humanoid.xml

To get a full trace of the physics steps (e.g. timings of the subcomponents) run the following:

mjwarp-testspeed benchmarks/humanoid/humanoid.xml --event_trace=True

mjwarp-testspeed has many configuration options, see mjwarp-testspeed --help for details.

Benchmark rendering with:

mjwarp-testspeed benchmarks/primitives.xml --function=render

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