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Digital Transformation in Electronics System Design

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Electronics System Design

Digital Transformation is not only an increasing trend. It is the requirement for being sustainably successful in a global marketplace.

Digital Transformation is one of the very few strategies allowing for improvement of all three business vectors: cost, efficiency, and innovation.

In order to be successful with digital transformation, companies require tools and methodologies allowing automated collaboration and digitalization between domains and across the entire lifecycle. In addition, companies require robust data management, digital twin strategies for early modeling and verification as well as technology allowing remote collaboration without data duplication.

Excellent Design tools are essential and you need a partner that has the expertise and portfolio to enable digital transformation beyond one domain. Siemens EDA offers the industry’s most innovative PCB design flow, providing integration from system design definition to manufacturing execution. Its unique technologies can reduce design cycles by 50 percent or more while significantly improving overall quality and resource efficiency.

Poznaj naszych ekspertów

Siemens EDA

DurgaPrasad Nerella

Sr. Application Engineer

Siemens EDA

Varadharajan N

Sr. Application Engineer

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