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This paper introduces an FPGA-enabled framework to accelerate the automated design process for Photonic Integrated Circuit (PIC) devices. PICs are foreseen as a foundation for the next-generation semiconductors. However, the complexity of PIC design presents considerable challenges. Machine Learning (ML) techniques have shown promise in the realm of PIC design. The primary hurdle, however, is the extended training duration, solely constrained by the slow electromagnetic (EM) Finite-Difference Time-Domain (FDTD) solver. We propose a fast framework with a dedicated FPGA FDTD accelerator tailor-designed to speed up the PIC simulation. Benchmarking was carried out against commercial tools, with the single-FPGA accelerator outperforming both a multicore CPU and a GPU cluster. We taped out and evaluated the PIC devices designed through the proposed framework, and the experimental outcomes aligned. This demonstrates the full design circle, showcasing that the proposed framework enabled by FPGA breaks the current bottleneck in this domain.
Xu et al. (Mon,) studied this question.