Optical neuromorphic computing via temporal up-sampling and trainable encoding on a telecom device platform
Egor Manuylovich, Dmitrii Stoliarov, David Saad, Sergei K. Turitsyn

TL;DR
This paper introduces a novel optical neuromorphic computing method using telecom devices, leveraging temporal up-sampling and trainable encoding to enhance high-dimensional signal mapping for reservoir computing and ELM models.
Contribution
It presents a new approach combining telecom optical devices with temporal up-sampling and trainable encoding to implement neuromorphic models in high-speed optical data transmission platforms.
Findings
Enhanced separability of output states
Effective high-dimensional mapping demonstrated
Utilization of commercial telecom components
Abstract
Mapping input signals to a high-dimensional space is a critical concept in various neuromorphic computing paradigms, including models such as Reservoir Computing (RC) and Extreme Learning Machines (ELM). We propose using commercially available telecom devices and technologies developed for high-speed optical data transmission to implement these models through nonlinear mapping of optical signals into a high-dimensional space where linear processing can be applied. We manipulate the output feature dimension by applying temporal up-sampling (at the speed of commercially available telecom devices) of input signals and a well-established wave-division-multiplexing (WDM). Our up-sampling approach utilizes a trainable encoding mask, where each input symbol is replaced with a structured sequence of masked symbols, effectively increasing the representational capacity of the feature space. This…
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