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Based in our expanding Engineering Center in Dublin, Ireland, we are recruiting outstanding engineers with a passion for Machine Learning & AI to lead the definition and specification of Xilinx next-generation architectures. PhD/MSc-qualified engineers, with a strong background in architectures for AI/ML, mathematical modelling and digital signal processing (DSP), will be at the forefront of identifying, specifying and developing new architectures for machine learning and how they will impact Xilinx next-generation products.
You will join a team whose architecture and systems activities cover a wide range of disciplines including machine learning for data center (HPC) and embedded computing (e.g., automotive ADAS) applications; emerging memory technologies; on-chip interconnects; specification, modelling and analysis of modern heterogeneous multicore architectures.
Beneficial would be domain background in one or more of the following areas: