ON-DEMAND WEBINAR
How Deep Data Analytics Accelerates SoC Time-to-Market by 6 Months
What if you can save up to 6 months in your design process?
What if you can save up to 6 months in your design process?
Watch this 40-minute webinar as we describe and quantify the benefits of using deep data analytics to accelerate SoC product development. Rich Wawrzyniak of Semico Research presents a head-to-head comparison of two companies designing a similar multicore SoC on a 5nm technology node.
SoCs have become very complex silicon solutions. They now consist of 100s of millions or billions of gates, 100 or more discrete Semiconductor Intellectual Property (SIP) blocks, megabytes of volatile and non-volatile embedded memory and multiple CPU cores.
This webinar describes and quantifies the benefits of using deep data analytics to accelerate SoC product development. The program also includes a demonstration of proteanTecs' deep data analytics platform. Discover how using deep data analytics:
What you will learn
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