Optics‐Enabled Highly Scalable Inverter for Multi‐Valued Logic

Author:

Kaushal Saket1ORCID,Aadhi A.1,Roberge Anthony2,Morandotti Roberto1,Kashyap Raman2,Azaña José1

Affiliation:

1. Énergie, Matériaux et Télécommunications Institut National de la Recherche Scientifique Montréal H5A 1K6 Canada

2. Fabulas Laboratory Department of Engineering Physics and Department of Electrical Engineering Polytechnique Montréal Montréal H3T 1J4 Canada

Abstract

AbstractThe rapid advancements in machine learning have exacerbated the interconnect bottleneck inherent in binary logic‐based computing architectures. An interesting approach to tackle this problem involves increasing the information density per interconnect, i.e., by switching from a two‐valued to a multi‐valued logic (MVL) architecture. However, current MVL implementations offer limited overall performance and face challenges in scaling to process data signals with radix (number of logic levels) even just above 3. In this work, a novel concept is introduced for implementation of a highly scalable and fully passive inverter based on the frequency‐domain phase‐only linear manipulation of the input MVL data signal, which is encoded in the amplitude variations of an electromagnetic wave along the time axis. As a key advantage, this solution is entirely independent of the input radix. The proposed design is implemented using an optical fibre Bragg grating device. Inversion of quaternary signals is experimentally demonstrated, as well as binary and ternary signals, at a remarkable operation speed of 32 GBaud, with an estimated energy consumption of 24 fJ/bit. The proposed method is universal and can be applied to any system that supports transmission and detection of coherent waves, such as microwave, plasmonic, mechanical, or quantum.

Funder

Fonds de recherche du Québec – Nature et technologies

Natural Sciences and Engineering Research Council of Canada

Publisher

Wiley

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