<p>➀ The reliability of AI-based image recognition is ensured through a smart validation environment, even under adverse conditions such as strong vibrations.</p><p>➁ Components and sub-systems can be efficiently characterized under various mechanical boundary conditions, for example, to easily generate AI training data.</p><p>➂ The transfer of developed technologies into the economy is demonstrated through various development steps along the Technology Readiness Levels (TRL).</p>
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