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AI-Enabled End-to-End RF and RFIC Design

Traditionally, chip-scale RF system design has been in the domain of the expert, dominated by thumb rules and trial and error techniques. Designing these ICs, that form the bedrock of the wireless networks, is complex, time-consuming, requires years of expertise, and therefore, can be very expensive. Historically, the process of RF IC design has relied on intuition based approaches with standard templates that are subsequently optimized, time-consuming parameter sweeps, or ad-hoc population-based metaheuristic optimization methods. There is no reason to believe that this approach is optimal in any sense. This talk will discuss how inverse design with AI-based approaches can open a new design space and allow rapid designs on demand. It will discuss deep-learning based modeling and generative AI approaches to automated synthesis of complex RF passives, multi-port elements, antennas, including end-to-end RFIC designs combining reinforcement learning and inverse design: from spec to GDS.