Photonic synaptic system for MAC operations by interconnected vertical cavity surface emitting lasers

Robertson, Joshua and Alanis, Juan Arturo and Hejda, Matĕj and Hurtado, Antonio (2022) Photonic synaptic system for MAC operations by interconnected vertical cavity surface emitting lasers. Optical Materials Express, 12 (4). pp. 1417-1426. ISSN 2159-3930 (https://doi.org/10.1364/OME.450923)

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Abstract

We report experimentally on high-speed, tuneable photonic synaptic architectures realized with Vertical Cavity Surface Emitting Lasers (VCSELs) connected in series and in parallel configurations. These are able to perform the controlled weighting of fast (150 ps long) and low energy (μW peak power) optical pulses (or spikes), and permit high-speed (0.5 GHz) dynamic weight tunability, for the implementation of important spike processing functionalities. These include, for the in-series VCSEL synaptic architecture, the performance of accumulative weighting and, due to amplification, the compensation of losses in sequential neural network layers. Additionally, for the in-parallel VCSEL synaptic architecture, we show the system's ability to perform key multiply and accumulate operations using fast, low-power optical spiking signals as inputs. Moreover, this work uses off-the-shelf VCSELs operating at key telecom wavelengths (1300 and 1550 nm) thus making our technique fully compatible with optical telecommunication networks and data centre technologies. These results therefore highlight the suitability of our approach for hardware-friendly, low power, high-speed and fast tuning VCSEL-based photonic synaptic architectures with excellent scalability prospects for use in future neuromorphic photonic computing systems.