Hybrid photonic integrated circuits for neuromorphic computing [Invited]
The burgeoning of artificial intelligence has brought great convenience to people’s lives as large-scale computational models have emerged. Artificial intelligence-related applications, such as autonomous driving, medical diagnosis, and speech recognition, have experienced remarkable progress in rec...
Main Authors: | , , , , , , , , , , |
---|---|
Format: | Journal article |
Language: | English |
Published: |
Optica Publishing Group
2023
|
_version_ | 1826312530621890560 |
---|---|
author | Xu, R Taheriniya, S Ovvyan, AP Bankwitz, JR McRae, L Jung, E Brückerhoff-Plückelmann, F Bente, I Lenzini, F Bhaskaran, H Pernice, WHP |
author_facet | Xu, R Taheriniya, S Ovvyan, AP Bankwitz, JR McRae, L Jung, E Brückerhoff-Plückelmann, F Bente, I Lenzini, F Bhaskaran, H Pernice, WHP |
author_sort | Xu, R |
collection | OXFORD |
description | The burgeoning of artificial intelligence has brought great convenience to people’s lives as large-scale computational models have emerged. Artificial intelligence-related applications, such as autonomous driving, medical diagnosis, and speech recognition, have experienced remarkable progress in recent years; however, such systems require vast amounts of data for accurate inference and reliable performance, presenting challenges in both speed and power consumption. Neuromorphic computing based on photonic integrated circuits (PICs) is currently a subject of interest to achieve high-speed, energy-efficient, and low-latency data processing to alleviate some of these challenges. Herein, we present an overview of the current photonic platforms available, the materials which have the potential to be integrated with PICs to achieve further performance, and recent progress in hybrid devices for neuromorphic computing. |
first_indexed | 2024-04-09T03:55:51Z |
format | Journal article |
id | oxford-uuid:316e0aee-2cec-40f4-84d7-b45f68b31cc3 |
institution | University of Oxford |
language | English |
last_indexed | 2024-04-09T03:55:51Z |
publishDate | 2023 |
publisher | Optica Publishing Group |
record_format | dspace |
spelling | oxford-uuid:316e0aee-2cec-40f4-84d7-b45f68b31cc32024-03-15T15:25:52ZHybrid photonic integrated circuits for neuromorphic computing [Invited]Journal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:316e0aee-2cec-40f4-84d7-b45f68b31cc3EnglishSymplectic ElementsOptica Publishing Group2023Xu, RTaheriniya, SOvvyan, APBankwitz, JRMcRae, LJung, EBrückerhoff-Plückelmann, FBente, ILenzini, FBhaskaran, HPernice, WHPThe burgeoning of artificial intelligence has brought great convenience to people’s lives as large-scale computational models have emerged. Artificial intelligence-related applications, such as autonomous driving, medical diagnosis, and speech recognition, have experienced remarkable progress in recent years; however, such systems require vast amounts of data for accurate inference and reliable performance, presenting challenges in both speed and power consumption. Neuromorphic computing based on photonic integrated circuits (PICs) is currently a subject of interest to achieve high-speed, energy-efficient, and low-latency data processing to alleviate some of these challenges. Herein, we present an overview of the current photonic platforms available, the materials which have the potential to be integrated with PICs to achieve further performance, and recent progress in hybrid devices for neuromorphic computing. |
spellingShingle | Xu, R Taheriniya, S Ovvyan, AP Bankwitz, JR McRae, L Jung, E Brückerhoff-Plückelmann, F Bente, I Lenzini, F Bhaskaran, H Pernice, WHP Hybrid photonic integrated circuits for neuromorphic computing [Invited] |
title | Hybrid photonic integrated circuits for neuromorphic computing [Invited] |
title_full | Hybrid photonic integrated circuits for neuromorphic computing [Invited] |
title_fullStr | Hybrid photonic integrated circuits for neuromorphic computing [Invited] |
title_full_unstemmed | Hybrid photonic integrated circuits for neuromorphic computing [Invited] |
title_short | Hybrid photonic integrated circuits for neuromorphic computing [Invited] |
title_sort | hybrid photonic integrated circuits for neuromorphic computing invited |
work_keys_str_mv | AT xur hybridphotonicintegratedcircuitsforneuromorphiccomputinginvited AT taheriniyas hybridphotonicintegratedcircuitsforneuromorphiccomputinginvited AT ovvyanap hybridphotonicintegratedcircuitsforneuromorphiccomputinginvited AT bankwitzjr hybridphotonicintegratedcircuitsforneuromorphiccomputinginvited AT mcrael hybridphotonicintegratedcircuitsforneuromorphiccomputinginvited AT junge hybridphotonicintegratedcircuitsforneuromorphiccomputinginvited AT bruckerhoffpluckelmannf hybridphotonicintegratedcircuitsforneuromorphiccomputinginvited AT bentei hybridphotonicintegratedcircuitsforneuromorphiccomputinginvited AT lenzinif hybridphotonicintegratedcircuitsforneuromorphiccomputinginvited AT bhaskaranh hybridphotonicintegratedcircuitsforneuromorphiccomputinginvited AT pernicewhp hybridphotonicintegratedcircuitsforneuromorphiccomputinginvited |