Scalable Free-Space Optical Neural Networks
ORAL
Abstract
The transformative impact of deep neural networks (DNNs) in many fields has motivated the development of hardware accelerators to improve speed and power consumption. We present a novel photonic approach based on homodyne detection where inputs and weights are encoded optically and can be reprogrammed and trained on the fly. This architecture is naturally adapted to free-space optics where both fully-connected and convolutional networks can be implemented and scaled to millions of neurons. By utilizing passive optical fan-out and performing arithmetic coherently with optical interference, this scheme circumvents fundamental limits of irreversible electronic processing. We study the effect of detector shot noise on neural-network accuracy to establish a “standard quantum limit” for this system. This bound, which can be as low as 50 zJ/FLOP, suggests performance below the Landauer (thermodynamic) limit is theoretically possible with photonics.
*L.B.: PGS D from NSERC. R.H.: ORISE IC Postdoctoral Fellowship at MIT (U.S. DOE / ODNI). D.E.: U.S. ARO through the ISN at MIT (no. W911NF-18-2-0048).
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Presenters
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Liane Bernstein
- Massachusetts Institute of Technology