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Photonic probabilistic machine learning using quantum vacuum noise

Author

Listed:
  • Seou Choi

    (Massachusetts Institute of Technology)

  • Yannick Salamin

    (Massachusetts Institute of Technology
    Massachusetts Institute of Technology)

  • Charles Roques-Carmes

    (Massachusetts Institute of Technology
    Stanford University)

  • Rumen Dangovski

    (Massachusetts Institute of Technology
    The NSF AI Institute for Artificial Intelligence and Fundamental Interactions)

  • Di Luo

    (The NSF AI Institute for Artificial Intelligence and Fundamental Interactions
    Massachusetts Institute of Technology
    Harvard University)

  • Zhuo Chen

    (Massachusetts Institute of Technology
    The NSF AI Institute for Artificial Intelligence and Fundamental Interactions)

  • Michael Horodynski

    (Massachusetts Institute of Technology)

  • Jamison Sloan

    (Massachusetts Institute of Technology)

  • Shiekh Zia Uddin

    (Massachusetts Institute of Technology
    Massachusetts Institute of Technology)

  • Marin Soljačić

    (Massachusetts Institute of Technology
    Massachusetts Institute of Technology)

Abstract

Probabilistic machine learning utilizes controllable sources of randomness to encode uncertainty and enable statistical modeling. Harnessing the pure randomness of quantum vacuum noise, which stems from fluctuating electromagnetic fields, has shown promise for high speed and energy-efficient stochastic photonic elements. Nevertheless, photonic computing hardware which can control these stochastic elements to program probabilistic machine learning algorithms has been limited. Here, we implement a photonic probabilistic computer consisting of a controllable stochastic photonic element – a photonic probabilistic neuron (PPN). Our PPN is implemented in a bistable optical parametric oscillator (OPO) with vacuum-level injected bias fields. We then program a measurement-and-feedback loop for time-multiplexed PPNs with electronic processors (FPGA or GPU) to solve certain probabilistic machine learning tasks. We showcase probabilistic inference and image generation of MNIST-handwritten digits, which are representative examples of discriminative and generative models. In both implementations, quantum vacuum noise is used as a random seed to encode classification uncertainty or probabilistic generation of samples. In addition, we propose a path towards an all-optical probabilistic computing platform, with an estimated sampling rate of ~1 Gbps and energy consumption of ~5 fJ/MAC. Our work paves the way for scalable, ultrafast, and energy-efficient probabilistic machine learning hardware.

Suggested Citation

  • Seou Choi & Yannick Salamin & Charles Roques-Carmes & Rumen Dangovski & Di Luo & Zhuo Chen & Michael Horodynski & Jamison Sloan & Shiekh Zia Uddin & Marin Soljačić, 2024. "Photonic probabilistic machine learning using quantum vacuum noise," Nature Communications, Nature, vol. 15(1), pages 1-8, December.
  • Handle: RePEc:nat:natcom:v:15:y:2024:i:1:d:10.1038_s41467-024-51509-0
    DOI: 10.1038/s41467-024-51509-0
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    1. Hao Jiang & Daniel Belkin & Sergey E. Savel’ev & Siyan Lin & Zhongrui Wang & Yunning Li & Saumil Joshi & Rivu Midya & Can Li & Mingyi Rao & Mark Barnell & Qing Wu & J. Joshua Yang & Qiangfei Xia, 2017. "A novel true random number generator based on a stochastic diffusive memristor," Nature Communications, Nature, vol. 8(1), pages 1-9, December.
    2. G. Mourgias-Alexandris & M. Moralis-Pegios & A. Tsakyridis & S. Simos & G. Dabos & A. Totovic & N. Passalis & M. Kirtas & T. Rutirawut & F. Y. Gardes & A. Tefas & N. Pleros, 2022. "Noise-resilient and high-speed deep learning with coherent silicon photonics," Nature Communications, Nature, vol. 13(1), pages 1-7, December.
    3. Tianyu Wang & Shi-Yuan Ma & Logan G. Wright & Tatsuhiro Onodera & Brian C. Richard & Peter L. McMahon, 2022. "An optical neural network using less than 1 photon per multiplication," Nature Communications, Nature, vol. 13(1), pages 1-8, December.
    4. Logan G. Wright & Tatsuhiro Onodera & Martin M. Stein & Tianyu Wang & Darren T. Schachter & Zoey Hu & Peter L. McMahon, 2022. "Deep physical neural networks trained with backpropagation," Nature, Nature, vol. 601(7894), pages 549-555, January.
    5. Jonathan G. Richens & Ciarán M. Lee & Saurabh Johri, 2020. "Improving the accuracy of medical diagnosis with causal machine learning," Nature Communications, Nature, vol. 11(1), pages 1-9, December.
    6. Kyung Seok Woo & Jaehyun Kim & Janguk Han & Woohyun Kim & Yoon Ho Jang & Cheol Seong Hwang, 2022. "Probabilistic computing using Cu0.1Te0.9/HfO2/Pt diffusive memristors," Nature Communications, Nature, vol. 13(1), pages 1-8, December.
    7. Charles Roques-Carmes & Yichen Shen & Cristian Zanoci & Mihika Prabhu & Fadi Atieh & Li Jing & Tena Dubček & Chenkai Mao & Miles R. Johnson & Vladimir Čeperić & John D. Joannopoulos & Dirk Englund & M, 2020. "Heuristic recurrent algorithms for photonic Ising machines," Nature Communications, Nature, vol. 11(1), pages 1-8, December.
    8. Jonathan G. Richens & Ciarán M. Lee & Saurabh Johri, 2020. "Publisher Correction: Improving the accuracy of medical diagnosis with causal machine learning," Nature Communications, Nature, vol. 11(1), pages 1-1, December.
    9. Cheng Wang & Mian Zhang & Xi Chen & Maxime Bertrand & Amirhassan Shams-Ansari & Sethumadhavan Chandrasekhar & Peter Winzer & Marko Lončar, 2018. "Integrated lithium niobate electro-optic modulators operating at CMOS-compatible voltages," Nature, Nature, vol. 562(7725), pages 101-104, October.
    10. H. Zhang & M. Gu & X. D. Jiang & J. Thompson & H. Cai & S. Paesani & R. Santagati & A. Laing & Y. Zhang & M. H. Yung & Y. Z. Shi & F. K. Muhammad & G. Q. Lo & X. S. Luo & B. Dong & D. L. Kwong & L. C., 2021. "An optical neural chip for implementing complex-valued neural network," Nature Communications, Nature, vol. 12(1), pages 1-11, December.
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