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Partial coherence enhances parallelized photonic computing

Author

Listed:
  • Bowei Dong

    (University of Oxford
    Agency for Science, Technology and Research (A*STAR))

  • Frank Brückerhoff-Plückelmann

    (Heidelberg University)

  • Lennart Meyer

    (Heidelberg University)

  • Jelle Dijkstra

    (Heidelberg University)

  • Ivonne Bente

    (University of Münster)

  • Daniel Wendland

    (University of Münster)

  • Akhil Varri

    (University of Münster)

  • Samarth Aggarwal

    (University of Oxford)

  • Nikolaos Farmakidis

    (University of Oxford)

  • Mengyun Wang

    (University of Oxford)

  • Guoce Yang

    (University of Oxford)

  • June Sang Lee

    (University of Oxford)

  • Yuhan He

    (University of Oxford)

  • Emmanuel Gooskens

    (Ghent University – imec)

  • Dim-Lee Kwong

    (Agency for Science, Technology and Research (A*STAR))

  • Peter Bienstman

    (Ghent University – imec)

  • Wolfram H. P. Pernice

    (Heidelberg University
    University of Münster)

  • Harish Bhaskaran

    (University of Oxford)

Abstract

Advancements in optical coherence control1–5 have unlocked many cutting-edge applications, including long-haul communication, light detection and ranging (LiDAR) and optical coherence tomography6–8. Prevailing wisdom suggests that using more coherent light sources leads to enhanced system performance and device functionalities9–11. Our study introduces a photonic convolutional processing system that takes advantage of partially coherent light to boost computing parallelism without substantially sacrificing accuracy, potentially enabling larger-size photonic tensor cores. The reduction of the degree of coherence optimizes bandwidth use in the photonic convolutional processing system. This breakthrough challenges the traditional belief that coherence is essential or even advantageous in integrated photonic accelerators, thereby enabling the use of light sources with less rigorous feedback control and thermal-management requirements for high-throughput photonic computing. Here we demonstrate such a system in two photonic platforms for computing applications: a photonic tensor core using phase-change-material photonic memories that delivers parallel convolution operations to classify the gaits of ten patients with Parkinson’s disease with 92.2% accuracy (92.7% theoretically) and a silicon photonic tensor core with embedded electro-absorption modulators (EAMs) to facilitate 0.108 tera operations per second (TOPS) convolutional processing for classifying the Modified National Institute of Standards and Technology (MNIST) handwritten digits dataset with 92.4% accuracy (95.0% theoretically).

Suggested Citation

  • Bowei Dong & Frank Brückerhoff-Plückelmann & Lennart Meyer & Jelle Dijkstra & Ivonne Bente & Daniel Wendland & Akhil Varri & Samarth Aggarwal & Nikolaos Farmakidis & Mengyun Wang & Guoce Yang & June S, 2024. "Partial coherence enhances parallelized photonic computing," Nature, Nature, vol. 632(8023), pages 55-62, August.
  • Handle: RePEc:nat:nature:v:632:y:2024:i:8023:d:10.1038_s41586-024-07590-y
    DOI: 10.1038/s41586-024-07590-y
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