Abstract

Abstract The integration of artificial intelligence (AI) systems in the daily life greatly increases the amount of data generated and processed. In addition to the large computational power required, the hardware needs to be compact and energy efficient. One promising approach to fulfill those requirements is phase-change material based photonic neuromorphic computing that enables in-memory computation and a high degree of parallelization. In the following, we present an optimized layout of a photonic tensor core (PTC) which is designed to perform real valued matrix vector multiplications and operates at telecommunication wavelengths. We deploy the well-studied phase-change material Ge2Sb2Te5 (GST) as an optical attenuator to perform single positive valued multiplications. In order to generalize the multiplication to arbitrary real factors, we develop a novel symmetric multiplication unit which directly includes a reference-computation branch. The variable GST attenuator enables a modulation depth of 5 dB over a wavelength range of 100 nm with a wavelength dependency below 0.8 dB. The passive photonic circuit itself ensures equal coupling to the main-computation and reference-computation branch over the complete wavelength range. For the first time, we integrate wavelength multiplexers (MUX) together with a photonic crossbar array on-chip, paving the way towards fully integrated systems. The MUX are crucial for the PTC since they enable multiple computational channels in a single photonic crossbar array. We minimize the crosstalk between the channels by designing Bragg scattering based MUX. By cascading, we achieve an extinction ratio larger than 61 dB while the insertion loss is below 1 dB.

Highlights

  • The Internet of Things (IoT) is one of the most seminal emerging technologies of this century

  • The integration of artificial intelligence (AI) systems in the daily life greatly increases the amount of data generated and processed

  • We present an optimized layout of a photonic tensor core (PTC) which is designed to perform real valued matrix vector multiplications and operates at telecommunication wavelengths

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Summary

Introduction

The Internet of Things (IoT) is one of the most seminal emerging technologies of this century. By switching to the optical domain, the available bandwidth increases to several THz while energy efficient in-memory computing is possible with nonvolatile phase-change materials [6]. Those materials can be rapidly switched between states with differ in their optical properties and no energy is required to hold a particular phase state, making them an ideal building block for photonic neuromorphic integrated circuits [7]. Instead of using a second unit for reference computation, as in previous works [5], we here perform both calculations in the same computation unit In this way, the photonic circuit is symmetric which reduces the wavelength dependency and the impact of fabrication imperfections. We design MUXs consisting out of several add–drop filters and fabricate the complete PTC

Photonic parallelization of matrix vector multiplication
Low-loss add–drop filter
Broadband real valued in-memory multiplication
Integrated photonic tensor core
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