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Altair and HD Hyundai Heavy Industries Sign MoU to Advance Eco-Friendly Marine Engine Development Technologies with AI and Simulation

Altair and HD Hyundai Heavy Industries Sign MoU to Advance Eco-Friendly Marine Engine Development Technologies with AI and Simulation

Yahoo21-05-2025

Accelerating innovation in eco-friendly marine engine development with AI-powered engineering
TROY, Mich., May 21, 2025 /PRNewswire/ -- Altair, a global leader in computational intelligence, has signed a strategic memorandum of understanding (MoU) with the Engine Research Institute at HD Hyundai Heavy Industries to enhance the performance of eco-friendly marine engines and power AI-driven development initiatives.
"This collaboration goes beyond technology development—it is a strategic partnership to shape the future of marine engine development," said Pietro Cervellera, senior vice president of aerospace and defense, Altair. "By combining Altair's global technological capabilities with HD Hyundai Heavy Industries' expertise in eco-friendly marine engines, we aim to set a new standard for sustainable engine and machinery business."
Altair was recently acquired by Siemens, a global leader in industrial software, to extend its leadership in simulation and industrial artificial intelligence. Altair technology is being integrated with the Siemens Xcelerator portfolio.
Sungchan An, Ph.D., vice president and head of the Engine Research Institute, HD Hyundai Heavy Industries, stated, "HD Hyundai Heavy Industries and Altair have continuously collaborated on the development of simulation technologies for high-quality HiMSEN engine designs. With Altair now part of Siemens, the development of next-generation engine design technologies—such as virtual product development and AI-based engine simulation—is expected to further accelerate."
This partnership comes in response to increasingly stringent environmental regulations in the global shipping industry. As digital transformation and technology advancement become critical in shipbuilding, Altair and HD Hyundai Heavy Industries will work together to strengthen innovation through simulation and AI technologies for eco-friendly marine engine development.
Under the agreement, Altair and HD Hyundai Heavy Industries will collaborate to:
Develop simulation platforms for eco-friendly marine engine design and optimization
Utilize AI-powered technologies for improving engine performance
Conduct predictive maintenance and diagnostics capabilities
Enhance engine safety through AI-based visualization technologies
Altair has proven its technological expertise in simulation-driven design and AI-powered predictive analytics through collaborations with major shipbuilders worldwide. With this collaboration, Altair will actively support HD Hyundai Heavy Industries in advancing eco-friendly marine engines and delivering tangible results in areas such as design efficiency, reduced development cycles, and performance enhancement. Altair is expected to contribute meaningfully to improvements in design efficiency, shorter development cycles, and enhanced performance by leveraging synergies with Siemens' industrial software technologies.
Altair continues to expand the application of its solutions across various industries by combining its AI and simulation expertise with Siemens' industrial software technologies following the acquisition.
To learn more about Altair, visit https://altair.com. To learn more about HD Hyundai Heavy Industries, visit https://english.hhi.co.kr/.
About Altair
Altair is a global leader in computational intelligence that provides software and cloud solutions in simulation, high-performance computing (HPC), data analytics, and AI. Altair is part of Siemens Digital Industries Software. To learn more, please visit www.altair.com or sw.siemens.com.
About HD Hyundai Heavy Industries (HHI)Under its parent company HD Hyundai, HD Hyundai Heavy Industries (HHI) is leading the global shipbuilding and offshore engineering industry, delivering sustainable and efficient products that meet the world-class standards. Owning the world single largest shipyard and world's largest marine engine maker, HHI has built a strong reputation over its 50-year history for delivering world-leading commercial and naval vessels, along with complex EPC projects that require precision and reliability. To learn more, please visit http://english.hhi.co.kr/ or https://www.hd.com/en/main.
Media contactsAltair CorporateBridget Hagan+1.216.769.2658corp-newsroom@altair.comAltair Europe/The Middle East/Africa
Altair Asia-Pacific
Louise Wilce
Man Wang
+44 (0)7392 437 635
86-21-5016635,825
emea-newsroom@altair.com
apac-newsroom@altair.com
View original content:https://www.prnewswire.com/apac/news-releases/altair-and-hd-hyundai-heavy-industries-sign-mou-to-advance-eco-friendly-marine-engine-development-technologies-with-ai-and-simulation-302460776.html
SOURCE Altair

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