CrossLight: A Cross-Layer Optimized Silicon Photonic Neural Network Accelerator (2102.06960v1)
Abstract: Domain-specific neural network accelerators have seen growing interest in recent years due to their improved energy efficiency and inference performance compared to CPUs and GPUs. In this paper, we propose a novel cross-layer optimized neural network accelerator called CrossLight that leverages silicon photonics. CrossLight includes device-level engineering for resilience to process variations and thermal crosstalk, circuit-level tuning enhancements for inference latency reduction, and architecture-level optimization to enable higher resolution, better energy-efficiency, and improved throughput. On average, CrossLight offers 9.5x lower energy-per-bit and 15.9x higher performance-per-watt at 16-bit resolution than state-of-the-art photonic deep learning accelerators.
- Febin Sunny (16 papers)
- Asif Mirza (5 papers)
- Mahdi Nikdast (38 papers)
- Sudeep Pasricha (75 papers)