Photonics for artificial intelligence and neuromorphic computing
- URL: http://arxiv.org/abs/2011.00111v2
- Date: Thu, 12 Nov 2020 21:06:32 GMT
- Title: Photonics for artificial intelligence and neuromorphic computing
- Authors: Bhavin J. Shastri, Alexander N. Tait, Thomas Ferreira de Lima, Wolfram
H. P. Pernice, Harish Bhaskaran, C. David Wright, Paul R. Prucnal
- Abstract summary: Photonic integrated circuits have enabled ultrafast artificial neural networks.
Photonic neuromorphic systems offer sub-nanosecond latencies.
These systems could address the growing demand for machine learning and artificial intelligence.
- Score: 52.77024349608834
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Research in photonic computing has flourished due to the proliferation of
optoelectronic components on photonic integration platforms. Photonic
integrated circuits have enabled ultrafast artificial neural networks,
providing a framework for a new class of information processing machines.
Algorithms running on such hardware have the potential to address the growing
demand for machine learning and artificial intelligence, in areas such as
medical diagnosis, telecommunications, and high-performance and scientific
computing. In parallel, the development of neuromorphic electronics has
highlighted challenges in that domain, in particular, related to processor
latency. Neuromorphic photonics offers sub-nanosecond latencies, providing a
complementary opportunity to extend the domain of artificial intelligence.
Here, we review recent advances in integrated photonic neuromorphic systems,
discuss current and future challenges, and outline the advances in science and
technology needed to meet those challenges.
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