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</html><description>Model Predictive Control Model Predictive Control is an optimization based control method. It offers several benefits, including fast dynamic responses, straightforward handling of input and output constraints and high scalability to multiple-input multiple-output plants. Advanced computing and more powerful hardwares are quickly bridging the gap between academic research and industrial applications in embedded systems. LEARN&hellip; Read more</description><thumbnail_url>https://research.dii.unipd.it/edlab/wp-content/plugins/mesmerize-companion/theme-data/mesmerize/sections/images/apple-1838564.jpg</thumbnail_url></oembed>
