Analyst(s): Futurum Research
Publication Date: December 5, 2025
NVIDIA and Synopsys announced an expanded multiyear partnership combining accelerated computing, agentic AI, and digital twins, supported by NVIDIA’s $2 billion investment to advance engineering and design capabilities across industries.
What is Covered in this Article:
- NVIDIA and Synopsys expanded their strategic partnership to accelerate engineering and design.
- NVIDIA invested $2 billion in Synopsys common stock at $414.79 per share.
- The collaboration spans CUDA-accelerated computing, agentic AI, and highly accurate digital twins.
- Synopsys’ applications will be optimized using NVIDIA’s CUDA-X libraries and AI physics capabilities.
- The partnership includes cloud-ready solutions and joint go-to-market initiatives.
The News: NVIDIA and Synopsys announced an expanded multi-year partnership aimed at accelerating engineering and design across industries. The companies will integrate NVIDIA’s AI and accelerated computing stack with Synopsys’ engineering and EDA solutions to help R&D teams design, simulate, and verify products with greater precision, speed, and lower cost. NVIDIA also invested $2 billion in Synopsys common stock at $414.79 per share, reinforcing the depth of the collaboration.
The partnership spans several initiatives, including accelerating Synopsys’ compute-intensive applications using CUDA-X and AI physics, advancing agentic AI workflows by combining Synopsys AgentEngineer with NVIDIA’s NIM microservices and Nemotron models, enabling next-generation digital twins through NVIDIA Omniverse and Cosmos, making GPU-accelerated engineering solutions available via the cloud, and launching joint go-to-market efforts. The agreement is non-exclusive, with Synopsys reiterating its willingness to work with other chipmakers.
NVIDIA Deepens Synopsys Ties to Advance Accelerated Engineering
Analyst Take: NVIDIA’s expanded partnership with Synopsys looks like one of the more meaningful moves in accelerated engineering, pulling together GPU computing, agent-driven AI, and digital twins under a single long-term plan. NVIDIA committing $2 billion gives the effort real weight, backing a push to deal with growing workflow complexity, rising development costs, and tighter time-to-market demands across semiconductor, aerospace, automotive, industrial, and other fields. Both companies stress that GPU acceleration can reach simulation speeds and scale that simply were not possible with CPU setups, and the way Synopsys’ tools are being tied into NVIDIA’s AI stack makes this feel more like a deep structural pairing than a standard vendor relationship. The addition of cloud-ready access and coordinated go-to-market work also hints at a commercial approach that matches the depth of the technical integration. While the partnership is not exclusive, the mix of tool-level integration, shared AI workflows, and a multibillion-dollar equity stake creates a level of mutual reliance that stands out compared to typical industry collaborations.
Acceleration of Synopsys Applications with CUDA
Synopsys plans to speed up its full lineup of compute-heavy applications using NVIDIA’s CUDA-X libraries and AI physics tech. This spans chip design, physical verification, molecular modeling, electromagnetic analysis, and optical simulation – the core pieces of engineering workflows in many industries. Simulations that usually take weeks on CPUs could be knocked down to hours on NVIDIA GPUs, which explains why both companies are putting so much emphasis on acceleration. NVIDIA’s talk of “simulation at unprecedented speed and scale” reflects this shift from CPU-based work to GPU-driven flows. The real impact is in shrinking design cycles and cutting costs for engineering teams dealing with rising complexity.
Advancement of Agentic AI Engineering
The partnership builds on their existing AI work, combining Synopsys’ AgentEngineer with NVIDIA’s agentic AI stack, including NIM microservices, the NeMo Agent Toolkit, and Nemotron models. Both sides frame agentic AI as key to enabling more autonomous design inside EDA, simulation, and analysis environments. This lines up with comments from Synopsys’ CEO about the need for tighter integration of electronics and physics powered by AI and accelerated compute. This setup gives engineering teams a path to automate tougher design tasks and fold AI-guided decisions into day-to-day R&D work.
Expansion of Digital Twin Capabilities Across Industries
The companies also want to extend digital twin tech, using NVIDIA Omniverse, NVIDIA Cosmos, and related tools to connect physical and digital systems. These twins will support virtual design, testing, and validation across chips, robotics, aerospace, automotive, energy, industrial, and healthcare. Notably, the ability to build fully functional digital twins of everything from individual components to entire vehicles lets teams run tests at a level of detail normally tied to physical prototypes. NVIDIA says accelerated computing makes it possible to simulate “from atoms to transistors, from chips to complete systems,” widening what can be modeled virtually. This approach positions digital twins as a major lever for trimming prototype costs and improving system-level verification.
Joint Commercial Alignment and the Non-Exclusive Structure
To help drive adoption, NVIDIA and Synopsys plan to work together on engineering and marketing and tap into Synopsys’ large network of direct sellers and partners. The investment boosts NVIDIA’s pull within the chip-design world, though both companies keep emphasizing that the agreement isn’t exclusive. Synopsys has said it is still open to working with AMD, Intel, and others, and made clear that the deal does not require the company to standardize on NVIDIA GPUs. Each company also remains a customer of the other, adding a practical, two-way dynamic rather than a locked-in relationship. This setup gives both sides room to grow adoption while keeping flexibility across the broader EDA landscape.
What to Watch:
- How engineering teams adopt GPU-accelerated workflows after shifting from CPU-based simulation environments.
- Whether agentic AI automation meaningfully reduces design complexity and time-to-market pressures, as referenced by both companies.
- The impact of next-generation digital twins on validation cycles across semiconductor, automotive, industrial, and aerospace engineering.
- How the non-exclusive structure influences Synopsys’ willingness to collaborate with competitors such as AMD and Intel.
See the complete press release on the expanded partnership between NVIDIA and Synopsys on the NVIDIA website.
Declaration of generative AI and AI-assisted technologies in the writing process: This content has been generated with the support of artificial intelligence technologies. Due to the fast pace of content creation and the continuous evolution of data and information, The Futurum Group and its analysts strive to ensure the accuracy and factual integrity of the information presented. However, the opinions and interpretations expressed in this content reflect those of the individual author/analyst. The Futurum Group makes no guarantees regarding the completeness, accuracy, or reliability of any information contained herein. Readers are encouraged to verify facts independently and consult relevant sources for further clarification.
Disclosure: Futurum is a research and advisory firm that engages or has engaged in research, analysis, and advisory services with many technology companies, including those mentioned in this article. The author does not hold any equity positions with any company mentioned in this article.
Analysis and opinions expressed herein are specific to the analyst individually and data and other information that might have been provided for validation, not those of Futurum as a whole.
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Synopsys Wraps Up Ansys Acquisition, Targeting Integrated Design Solutions
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