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OEMs and Tier 1 in the automotive & aerospace industries are currently having to
transition to new type of products and components. Trends such as vehicle
electrification are forcing this transition hence creating a need to drastically
increase the speed and the efficiency of the product design development.




PERFORMANCE EARLY-ON


UNLOCK 2030 TECHNOLOGIES TODAY

The product is optimized very early on, which results on best-in-class
performance and reduced late stage failures. Design engineers are guided to
create products beyond what is normally achievable with conventional design
tools.


SPEED-UP PRODUCT DELIVERY


>90% LEAD-TIME REDUCTION

By having access to physics simulation results in seconds instead of hours or
days, CAD teams can iterate at a significantly faster pace than today. It makes
them operate more efficiently with CAE teams, reducing drastically the iteration
time between the different teams. The project or RFQ is then completed much
faster.


LEVERAGING COMPETENCIES


CAD TEAM OPERATIONAL TWICE FASTER

Design engineers are better guided in their choices by the algorithm and
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substantially the involvement and time from the CAE team. Consequent cost
savings are achieved through the efficient use of resources and competences.

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NEURAL CONCEPT SHAPE (NCS) PROVIDES PHYSICS-RELATED INSIGHTS DIRECTLY FROM THE
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ENHANCING CHECK VALVE DESIGN WITH DANFOSS

We collaborated with Danfoss to integrate NCS into their product design
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approximately 10% improvement in mass flow rate.

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FROM WEEKS TO A DAY: MITSUBISHI CHEMICAL GROUP ACCELERATING MATERIAL
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MCG has fully deployed NCS in their experts' and designers' workflow and is now
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instead of several weeks with their previous traditional process.

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IMPROVING CRASH BOX PERFORMANCE BY 10% WITH DLR

The German Aerospace Center (DLR) partnered with us to enhance the design of
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