Artificial Intelligence Optimizes Engineering
At Altair Future.Industry 2025, attendees got a glimpse of an AI-powered future for engineering workflows.

Image courtesy of Altair.
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March 21, 2025
Artificial intelligence (AI) is being integrated into engineering workflows, and Altair was among the first software vendors to announce AI-based functionality in its software products. At the company’s virtual conference, Future.Industry 2025, AI was also a key focus of many of the presentations.
“We are working to integrate AI across our portfolio for our customers to be more efficient,” said Altair COO Stephanie Buckner. “Altair has always looked at simulation as more than just virtual validation. It’s not just about predicting performance, but optimizing it. We are one of the earliest to invest in AI technology. AI agents and automation are about creating efficiency and ROI. We have customers running tens of thousands of agents today to automate their business.”
Altair offers a number of AI-enabled modules and products, including PhysicsAI, RapidMiner, romAI, DesignAI, shapeAI, HyperWorks Design Explorer, and HyperStudy.
Charles Wildig, vice president of vehicle engineering at Lucid Motors, explained how the EV manufacturer is using some of these products, along with traditional Altair engineering tools, to optimize vehicle design.
For example, the company has leveraged Altair PhysicsAI in some workflows, like modeling pedestrian protection impact. “It’s not a replacement for domain expertise on complex problems,” he emphasized. “The human in the loop is still vital.”
Lucid Motors uses AI-enabled tools from Altair. Image courtesy of Altair.
The company also uses Altair RapidMiner – a data analytics and machine learning tool – to help streamline some workflows. “We material test thousands of joint [material] coupons in house,” Wildig said. “Each time we have a variation in a design, we use RapidMiner to tell us whether a new test is required. We also build our own AI tools on the Altair platform. We’ve written a connection tool that assesses which spot welds or screws are most effective across load cases. We can confidently and accurately eliminate unnecessary connector points.”
Image courtesy of Altair.
Himanshu Iyer, Marketing & Strategy Lead for the Manufacturing industry at NVIDIA, participated in a panel discussion titled “From Idea to Impact: Leveraging AI Tools and Technologies for Engineering Success,” moderated by the BBC’s Samantha Simmonds. Other panelists included Dr. Yazan Qarout, MIET, senior research engineer, The Manufacturing Technology Centre; Newcastle University Prof. Paul Watson, FREng FBCS director at the National Innovation Centre for Data; and Dr. Natasha Mashanovich, director of data science at Altair.
“AI can be a challenge for engineers because it requires a deep understanding of business needs and technical capabilities,” Iyer said. “You should align AI solutions with priorities or opportunities that can drive significant value.”
Iyer outline a few key steps for preparing to integrate AI into engineering workflows:
- Define clear objectives. Articulate the problem you are trying to solve, and define key performance indicators.
- Determine what type of data you need. Data is key for AI-driven workflows, make sure you have high-quality,relevant data.
- Evaluate Technical Feasibility: Consider the technical requirements and the current infrastructure. (right hardware, right software, support from colleagues/team members/management)
- Leverage industry best practices. Look at use cases and best practices from industry leaders like Altair and NVIDIA.
Altair’s Mashanovich recommended starting small. “Start with something less complex, identify the use case and prove the business value,” she said. Mashanovich and Qarout both noted that early use cases showing real value included predictive maintenance, root cause analysis, inspection, object detection, and quality management.
But AI has a high ceiling in engineering. “Developers at engineering software companies are already working on the next-generation of AI-powered engineering simulation or CAE tools by combining simulation with immersive virtual environments,” Iyer said. “What this enables is real-time digital twins, where design changes are taking place and being almost instantly updated with simulation results. Previously you had to wait a long time to run simulations on design changes, but with the integration of AI tools, this can happen almost in real time.”
NVIDIA made a number of announcements around these capabilities at CES 2025, specific to its Omniverse platform.
“This can help with reduced order modeling or surrogate models,” Iyer continued. “Developers can train surrogate models from scratch, or use existing models. Once the training is done, the simulation can run a thousand times or more faster than traditional simulation. You can innovate and explore more options. One example of this is the NVIDIA Real Time Physics-based Digital Twin AI blueprint that enables ISVs like Altair to incorporate AI technology such as Surrogate models in their applications.”
The panel also emphasized the importance of data quality and preparation for AI projects. “The very foundation of AI is the data your company has,” Iyer said. “What is the quality of that data? Start there by assessing data quality and quantity, refine that data, and that will lead to better results with AI.”
To learn more about Altair products and GPU acceleration, see our earlier coverage of this Altair EDEM case study.
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