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Nanoprinted high-neuron-density optical linear perceptrons performing near-infrared inference on a CMOS chip

Elena Goi, Xi Chen, Qiming Zhang, Benjamin P. Cumming, Steffen Schoenhardt, Haitao Luan, Miṅ Gu

2021Light Science & Applications156 citationsDOIOpen Access PDF

Abstract

Abstract Optical machine learning has emerged as an important research area that, by leveraging the advantages inherent to optical signals, such as parallelism and high speed, paves the way for a future where optical hardware can process data at the speed of light. In this work, we present such optical devices for data processing in the form of single-layer nanoscale holographic perceptrons trained to perform optical inference tasks. We experimentally show the functionality of these passive optical devices in the example of decryptors trained to perform optical inference of single or whole classes of keys through symmetric and asymmetric decryption. The decryptors, designed for operation in the near-infrared region, are nanoprinted on complementary metal-oxide–semiconductor chips by galvo-dithered two-photon nanolithography with axial nanostepping of 10 nm 1 , 2 , achieving a neuron density of >500 million neurons per square centimetre. This power-efficient commixture of machine learning and on-chip integration may have a transformative impact on optical decryption 3 , sensing 4 , medical diagnostics 5 and computing 6 , 7 .

Topics & Concepts

Computer scienceCMOSPerceptronChipOptical computingElectronic engineeringOpticsOptoelectronicsMaterials scienceArtificial intelligenceArtificial neural networkPhysicsTelecommunicationsEngineeringNeural Networks and Reservoir ComputingAdvanced Memory and Neural ComputingPhotonic and Optical Devices
Nanoprinted high-neuron-density optical linear perceptrons performing near-infrared inference on a CMOS chip | Litcius