Abstract
We propose an all-photonic architecture to accelerate linear matrix processing by encoding information in the amplitudes of frequency states. Our design is unique in providing a unitary, reversible mode of computation at high speeds.
© 2022 The Author(s)
PDF Article | Presentation VideoMore Like This
Kilian Müller, Julien Launay, Iacopo Poli, Matthew Filipovich, Alessandro Capelli, Daniel Hesslow, Igor Carron, Laurent Daudet, Florent Krzakala, and Sylvain Gigan
jsiii_3_3 European Quantum Electronics Conference (EQEC) 2023
Zixing Gou, Zhe Han, Tongyu Nie, and Huiping Tian
JTu3B.33 CLEO: Applications and Technology (CLEO:A&T) 2022
Aashu Jha, Chaoran Huang, Hsuan-Tung Peng, Weipeng Zhang, Bhavin Shastri, and Paul R. Prucnal
Tu3G.3 Optical Fiber Communication Conference (OFC) 2022