Luisa Crawford
Jun 16, 2025 11:35
NVIDIA launches early developer previews of Isaac Sim and Isaac Lab, enhancing AI robotics simulation and learning capabilities. Available on GitHub, these tools offer advanced features for AI-driven robot development.
NVIDIA has announced the release of early developer previews for its Isaac Sim and Isaac Lab frameworks, designed to advance the development and testing of AI-driven robotics. These tools, now accessible on GitHub, aim to provide developers with cutting-edge capabilities in robotics simulation and learning environments, according to NVIDIA.
Key Features of Isaac Sim 5.0
Isaac Sim 5.0 is built on NVIDIA Omniverse, offering an advanced platform for simulating AI-powered robots. Among its notable updates, the framework now includes:
- Open Source Extensions: Developers can access and contribute to Isaac Sim-specific extensions via a new public GitHub repository, enhancing community involvement.
- Advanced Synthetic Data-Generation: New extensions facilitate the creation of diverse training data, including occupancy maps and robot states, crucial for AI model development.
- New Robot Models: Enhanced import tools and a new robot schema help streamline simulation setups to better reflect real-world dynamics.
- Improved Sensor Simulation: The introduction of a new OmniSensor USD schema and a depth sensor model allow for more realistic sensor simulations.
- ROS 2 and ZMQ Bridge: Full support for ROS 2 Jazzy Jalisco and a new ZeroMQ bridge improve interoperability with external systems.
Enhancements in Isaac Lab 2.2
Isaac Lab 2.2 focuses on training and evaluating robot learning policies. The latest updates include:
- GR00T N1 Benchmarking: This feature allows comprehensive evaluation of NVIDIA Isaac GR00T N models using predefined tasks.
- Enhanced Motion Generation: New synthetic motion generation capabilities aid in refining robot manipulation training data.
- Omniverse Fabric Integration: Faster load times and efficient execution of simulations are achieved through integration with Omniverse Fabric.
- Tensorized Suction Cup Gripper: This addition enables dynamic gripping simulations, essential for reinforcement learning applications.
Developers interested in exploring these frameworks can access the early versions of Isaac Sim 5.0 and Isaac Lab 2.2 on GitHub. These tools promise to significantly enhance the capabilities of AI-driven robotics by providing robust simulation and learning environments.
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