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Implement closed-loop quality management with Smart Manufacturing solutions

Estimated Watching Time: 3 minutes

Automotive manufacturers and suppliers must become more agile and resilient to accelerate innovation while maintaining product and production quality excellence. But with increasing product personalization and supply chain complexities, how will businesses boost innovation cycles, meet sustainability and regulatory targets, and minimize the risk of rework, warranty, and recalls? Watch the video to learn more.

Meet escalating challenges in automotive development with quality management

Industry leaders consider a digital transformation essential to meet escalating challenges while maintaining high-quality standards and driving excellence across the value chain. Siemens Smart Manufacturing solutions for the automotive industry apply quality processes for compliance, design, planning, execution, and continuous improvement to the digital twin of product and production.

Use quality management solutions to optimize standardization and decrease cost

Siemens Smart Manufacturing solutions provide a modern user experience, enriching quality functions across all phases for improved transparency and flexibility. It connects quality, engineering, and manufacturing processes in a closed loop to facilitate knowledge sharing, optimize standardization, and decrease costs.

Watch the video to learn how Siemens Smart Manufacturing solutions can transform your automotive business to achieve best-in-class quality from launch through production.

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