SimReady (simulation-ready) is an OpenUSD-based framework that defines the physical properties, semantic labels, material attributes, and 3D asset metadata needed for physical AI simulation workflows.
In physical AI workflows, autonomous systems learn and operate by interacting with simulated environments before they are deployed into the real world. To do that reliably, those simulations need 3D content that carries physics data (like mass properties, collision boundaries, sensor-relevant material attributes, and semantic labels) that tell AI systems what objects are, not just what they look like.
Most 3D pipelines have historically been built for visual appearance rather than physical accuracy, yet physical accuracy is critical for simulations in physical AI. As a result, some teams have built proprietary solutions while other teams are manually reconstructing properties for every asset, every project, and every runtime.
Universal Scene Description (OpenUSD) has emerged as a foundational 3D data format for physical AI. Governed by the Alliance for OpenUSD (AOUSD), this open-source framework helps teams describe, compose, simulate, and collaborate on 3D content. It is well suited for industrial, robotics, and autonomous vehicle use cases because it brings 3D data, simulation assets, and real-world telemetry into a shared, physically accurate view of the world.
SimReady builds on that foundation by defining shared requirements and validation paths for simulation-ready OpenUSD assets. These include physics properties such as mass, friction, inertia tensors, collision, and geometry; semantic labels such as object class, function, and material type; and behavioral metadata such as articulation limits, actuator properties, and state-machine definitions where required by the use case.
The result is simulation-ready content built for Physical AI that can scale across projects, teams, supported tools, pipelines, and runtimes without starting over. SimReady's open, validated specifications give all teams across robotics, autonomous vehicles, and industrial automation a shared foundation to build an asset once and adopt it across workflows without proprietary lock-in.
SimReady is structured around three practical layers: SimReady standards for specifications and validation, developer tooling for conversion and pipeline integration, and pre-validated sample content for hands-on use.
Standards Layer
A standardized specification defines what SimReady means across industrial and robotics industries — the rules for physics, collision geometry, semantic labeling, and material properties that make content work interoperably across simulation tools, pipelines, and runtimes.
Development Layer
A set of tools to convert and validate existing 3D assets into OpenUSD with access to pre-built SimReady-compliant assets, designed to fit into existing pipelines.
Content Layer
A growing library of 1,000+ pre-validated and production-ready assets and samples (such as spanning props, industrial robots, and warehouse environments) ready to run on NVIDIA Isaac Sim 6.0. These assets already meet the SimReady standard and serve as a reference for what SimReady content should look and act like.
Building a physically accurate workflow starts with getting your assets ready, then using the SimReady standard to prepare the physics properties, semantic labels, material attributes, and articulation data each runtime needs to power simulation, AI, and sensors.
Step 1: Convert Your Asset
Most source content — CAD models, photogrammetry scans, and manual 3D models — arrives without the physics properties, semantic labels, and material attributes the SimReady standard requires, making these assets unreliable for physical AI workflows.
NVIDIA provides tooling to automate this conversion:
Step 2: Load Into a SimReady Scene
Once assets meet the SimReady standard, they can be loaded into a runtime like NVIDIA Isaac Sim™ or NVIDIA Omniverse™. The runtime reads the physics properties, semantic labels, material attributes, and articulation data baked into the asset. requiring no manual setup.
Step 3: Run Physical AI Simulation
With the SimReady asset in the OpenUSD scene, physics, AI, and sensor simulation run simultaneously against the same asset definition.
Step 4: Results
Once in the physical AI simulation, the asset shows realistic, deployment-grade behavior: A robotic arm grasping an object, a conveyor system routing packages, or cooling infrastructure operating under thermal load inside an AI factory digital twin — all grounded in the same validated asset data.
SimReady assets include features that enable robust interaction in 3D environments, such as:
SimReady asset creation starts with capturing an object’s geometry, appearance, materials, and real-world physical behaviors, then structuring that representation so simulation tools can read the required physics properties, semantic labels, and material attributes.
Teams typically create SimReady assets in three ways:
Organizations building digital twins face a structural problem: when assets are created in isolation using custom formats, they risk being incompatible across tools, runtimes, and organizations. This can cause a bottleneck of repeated work, slowing down physical AI pipelines. Simulation content needs shared conventions across toolchains, runtime environments, and domain experts so assets can be reused without one-off translation work.
SimReady advances through open specification work and active industry participation. NVIDIA works with partners to validate SimReady requirements against real-world domains, while contributing learnings to AOUSD efforts that strengthen OpenUSD for industrial and physical AI workflows.
That advancement happens in three ways:
SimReady assets provide the physics, material, and semantic properties that AI simulation pipelines require — across industrial automation, robotics, digital twin development, and autonomous vehicles.
Leverage the tools, standards, and resources below to begin using and creating SimReady assets.
Convert & Validate Existing Assets
Leverage Prebuilt Assets
Run SimReady Assets in Physical AI Simulation
See how SimReady profiles, rules, and feature adapters ensure OpenUSD assets are built for physical AI workflows.
Build intelligent factories, warehouses, and industrial facilities for the era of physical AI.
Learn about how robotic simulation enables physical AI-based robots and multi-robotic fleets.