A framework using measured noise proxies, chance-constrained training, and noise-aware LayerNorm enables Vision Transformers to achieve near-clean accuracy on noisy microring-resonator photonic arrays without in-situ learning or added optical operations.
Experimentally- validated crossbar model for defect-aware training of neural networks.IEEE Transactions on Circuits and Systems II: Express Briefs, 69(5):2468–2472, 2022
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Light-Bound Transformers: Hardware-Anchored Robustness for Silicon-Photonic Computer Vision Systems
A framework using measured noise proxies, chance-constrained training, and noise-aware LayerNorm enables Vision Transformers to achieve near-clean accuracy on noisy microring-resonator photonic arrays without in-situ learning or added optical operations.