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arxiv 2303.12910 v1 pith:OKOF3GBU submitted 2023-03-22 cs.LG cs.ARcs.ET

Cross-Layer Design for AI Acceleration with Non-Coherent Optical Computing

classification cs.LG cs.ARcs.ET
keywords computingopticalnon-coherentplatformsaccelerationadaptapplicationscross-layer
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Emerging AI applications such as ChatGPT, graph convolutional networks, and other deep neural networks require massive computational resources for training and inference. Contemporary computing platforms such as CPUs, GPUs, and TPUs are struggling to keep up with the demands of these AI applications. Non-coherent optical computing represents a promising approach for light-speed acceleration of AI workloads. In this paper, we show how cross-layer design can overcome challenges in non-coherent optical computing platforms. We describe approaches for optical device engineering, tuning circuit enhancements, and architectural innovations to adapt optical computing to a variety of AI workloads. We also discuss techniques for hardware/software co-design that can intelligently map and adapt AI software to improve its performance on non-coherent optical computing platforms.

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