Optical and Electrical Memories for Analog Optical Computing

Key to recent successes in the field of artificial intelligence (AI) has been the ability to train a growing number of parameters which form fixed connectivity matrices between layers of nonlinear nodes. This "deep learning" approach to AI has historically required an exponential growth in...

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Veröffentlicht in:IEEE journal of selected topics in quantum electronics 2023-03, Vol.29 (2: Optical Computing), p.1-12
Hauptverfasser: Kari, Sadra Rahimi, Rios Ocampo, Carlos A., Jiang, Lei, Meng, Jiawei, Peserico, Nicola, Sorger, Volker J., Hu, Juejun, Youngblood, Nathan
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Sprache:eng
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Zusammenfassung:Key to recent successes in the field of artificial intelligence (AI) has been the ability to train a growing number of parameters which form fixed connectivity matrices between layers of nonlinear nodes. This "deep learning" approach to AI has historically required an exponential growth in processing power which far exceeds the growth in computational throughput of digital hardware as well as trends in processing efficiency. New computing paradigms are therefore required to enable efficient processing of information while drastically improving computational throughput. Emerging strategies for analog computing in the photonic domain have the potential to drastically reduce latency but require the ability to modify optical processing elements according to the learned parameters of the neural network. In this point-of-view article, we provide a forward-looking perspective on both optical and electrical memories coupled to integrated photonic hardware in the context of AI. We also show that for programmed memories, the READ energy-latency-product of photonic random-access memory (PRAM) can be orders of magnitude lower compared to electronic SRAMs. Our intent is to outline path for PRAMs to become an integral part of future foundry processes and give these promising devices relevance for emerging AI hardware.
ISSN:1077-260X
1558-4542
DOI:10.1109/JSTQE.2023.3239918