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ConfigsJul 7, 2026·3 min de lecture

MuJoCo — High-Fidelity Physics Simulator for Robotics and RL

A fast and accurate physics engine by Google DeepMind for simulating articulated bodies with contact, used extensively in robotics research and reinforcement learning.

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MuJoCo Overview
Commande d'installation directe
npx -y tokrepo@latest install fe819599-79dd-11f1-9bc6-00163e2b0d79 --target codex

À exécuter après confirmation du plan en dry-run.

Introduction

MuJoCo (Multi-Joint dynamics with Contact) is a general-purpose physics engine designed for research in robotics, biomechanics, and reinforcement learning. Originally developed by Emo Todorov and acquired by Google DeepMind, it was open-sourced in 2022. MuJoCo is known for its speed, accuracy in contact simulation, and its role as the standard benchmark environment for continuous control RL.

What MuJoCo Does

  • Simulates rigid body dynamics with accurate frictional contact using a convex optimization solver
  • Handles complex articulated structures with joints, tendons, and actuators defined in XML
  • Provides native Python bindings with NumPy integration for fast data access
  • Includes an interactive 3D viewer for inspecting simulations and debugging models
  • Supports MuJoCo XLA (MJX) for hardware-accelerated batch simulation on GPU/TPU

Architecture Overview

MuJoCo uses a model-data separation: MjModel holds the static description (geometry, joints, actuators) parsed from MJCF XML, while MjData stores the dynamic state (positions, velocities, forces). The simulation pipeline runs forward dynamics through collision detection, constraint formulation, and a custom convex solver. MJX re-implements the core pipeline in JAX, enabling thousands of parallel simulations on accelerators.

Self-Hosting & Configuration

  • Install via pip install mujoco for the Python package with pre-built binaries
  • Requires Python 3.9+ on Linux, macOS, or Windows
  • Define robot models in MJCF (MuJoCo XML) or import from URDF
  • Tune simulation parameters like timestep, solver iterations, and integrator type in the XML model
  • For GPU-accelerated batch simulation, install MJX via pip install mujoco-mjx with JAX

Key Features

  • Sub-millisecond simulation steps on a single CPU core for real-time performance
  • Smooth, stable contact dynamics using a complementarity-based solver
  • Native support for tendons, muscles, and soft contacts for biomechanical modeling
  • MJX backend for massively parallel simulation on GPU/TPU via JAX
  • First-class integration with Gymnasium, Stable-Baselines3, and other RL frameworks

Comparison with Similar Tools

  • Bullet Physics / PyBullet — easier to get started, but MuJoCo provides more accurate contact physics for research benchmarks
  • Isaac Sim / IsaacLab — NVIDIA's GPU-native simulator with photorealistic rendering; MuJoCo is lighter and faster for pure physics
  • Drake — full robotics toolbox with optimization and control; MuJoCo focuses on fast forward simulation
  • PhysX — game-oriented physics engine; MuJoCo is designed for scientific accuracy in robotics research

FAQ

Q: Is MuJoCo free to use? A: Yes. Since 2022, MuJoCo is fully open source under the Apache 2.0 license with no restrictions.

Q: What is MJX? A: MJX is MuJoCo's JAX backend that compiles the physics pipeline to XLA, enabling thousands of parallel environments on GPU/TPU for large-scale RL training.

Q: Can I import URDF robot models? A: Yes. MuJoCo includes a URDF-to-MJCF converter, and the Python API can load URDF files directly with some limitations on unsupported features.

Q: How do I use MuJoCo with reinforcement learning? A: The Gymnasium library provides MuJoCo-based environments (Ant, Humanoid, HalfCheetah, etc.) that work out of the box with RL libraries like Stable-Baselines3.

Sources

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