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Scaling on-chip photonic neural processors using arbitrarily programmable wave propagation

27 February 2024
Tatsuhiro Onodera
Martin M. Stein
Benjamin A. Ash
Mandar M. Sohoni
Melissa Bosch
Ryotatsu Yanagimoto
Marc Jankowski
Timothy P. McKenna
Tianyu Wang
Gennady Shvets
Maxim R Shcherbakov
Logan G. Wright
Peter L. McMahon
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Abstract

On-chip photonic processors for neural networks have potential benefits in both speed and energy efficiency but have not yet reached the scale at which they can outperform electronic processors. The dominant paradigm for designing on-chip photonics is to make networks of relatively bulky discrete components connected by one-dimensional waveguides. A far more compact alternative is to avoid explicitly defining any components and instead sculpt the continuous substrate of the photonic processor to directly perform the computation using waves freely propagating in two dimensions. We propose and demonstrate a device whose refractive index as a function of space, n(x,z)n(x,z)n(x,z), can be rapidly reprogrammed, allowing arbitrary control over the wave propagation in the device. Our device, a 2D-programmable waveguide, combines photoconductive gain with the electro-optic effect to achieve massively parallel modulation of the refractive index of a slab waveguide, with an index modulation depth of 10−310^{-3}10−3 and approximately 10410^4104 programmable degrees of freedom. We used a prototype device with a functional area of 12 mm212\,\text{mm}^212mm2 to perform neural-network inference with up to 49-dimensional input vectors in a single pass, achieving 96% accuracy on vowel classification and 86% accuracy on 7×77 \times 77×7-pixel MNIST handwritten-digit classification. This is a scale beyond that of previous photonic chips relying on discrete components, illustrating the benefit of the continuous-waves paradigm. In principle, with large enough chip area, the reprogrammability of the device's refractive index distribution enables the reconfigurable realization of any passive, linear photonic circuit or device. This promises the development of more compact and versatile photonic systems for a wide range of applications, including optical processing, smart sensing, spectroscopy, and optical communications.

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