Synopsys Introduces Digital Twin Racetrack with NVIDIA Omniverse for STEM Racing
Synopsys Introduces Digital Twin Racetrack with NVIDIA Omniverse for STEM Racing
Synopsis
- Synopsys launches a digital twin racetrack with Ansys Discovery and NVIDIA Omniverse at the Aramco STEM Racing World Finals.
- Students gain hands-on access to CFD simulations and digital twins of racecars and racetracks.
- Simplified and advanced versions will be available during the 2025–2026 season for global STEM Racing teams.
- Initiative provides over 400,000 students in 65 countries with free access to professional simulation tools.
- Program strengthens STEM pathways by introducing CAD, CAE, and simulation in K-12 education.
6 mins read
Synopsys, Inc. unveiled a digital twin racetrack experience powered by Ansys Discovery and NVIDIA Omniverse at the Aramco STEM Racing World Finals in Singapore. As the exclusive global CFD simulation partner for STEM Racing (formerly F1 in Schools), They provides more than 400,000 students across 65 countries complimentary access to advanced simulation software, educational resources, and technical support.
The new system connects Discovery with a digital twin of the racetrack and Omniverse libraries, allowing student teams to design miniature F1 cars, test aerodynamics with CFD methods, and visualize airflow in real time. A simplified demo enables younger students to adjust basic parameters, such as spoiler designs, to explore how changes affect performance.
For the 2025–2026 STEM Racing season, demo days will allow teams to upload custom car models into Discovery and Omniverse for CFD analysis, giving predictive insights into real-world performance. Andrew Denford, founder and chairman of STEM Racing, said that their’ simulation tools are transforming how student teams approach learning, enabling them to experiment with aerodynamics, drag, and iterative design in an immersive environment that enhances both classroom knowledge and racetrack results.
Tim Costa, NVIDIA’s GM for industrial and computational engineering, noted that physics-accurate digital twins in motorsport represent cutting-edge innovation, giving students the ability to optimize designs purely through simulation. This collaboration introduces practical engineering skills that mirror the tools used in professional F1 environments.
Research shows that 82% of STEM professionals developed interest before high school. By embedding CAD, CAE, and simulation into K-12 programs, Synopsys and NVIDIA are ensuring students acquire advanced technical skills that seamlessly transition into higher education and professional careers.
Antonio Varas, chief strategy officer at Synopsys, emphasized that hands-on STEM experiences foster creativity, teamwork, and real-world problem solving. He added that the initiative highlights Synopsys’ commitment to nurturing future talent by building student confidence and passion for complex engineering fields.
This announcement follows a licensing agreement where they will embed, sell, and support Omniverse libraries within its simulation and analysis solutions.
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About Synopsys
Synopsys, Inc. is a global leader in engineering and design solutions, spanning silicon to systems. The company provides industry-leading software for semiconductor design, verification, IP integration, simulation, and advanced analysis, helping customers accelerate innovation in AI, digital twin, and next-generation computing. Its solutions power chip design, electronic systems, and secure software development across industries including automotive, aerospace, healthcare, and consumer electronics. Synopsys partners with enterprises, research institutions, and governments worldwide to maximize R&D productivity and deliver sustainable innovation. Headquartered in Sunnyvale, California, Synopsys operates globally with a strong commitment to advancing STEM education and future engineering talent.
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