摘要: Optical architectures have been emerging as an energy-efficient and
high-throughput hardware platform to accelerate computationally intensive
general matrix-matrix multiplications (GEMMs) in modern machine learning (ML)
algorithms. However, the inevitable imperfection and non-uniformity in
large-scale optoelectronic devices prevent the scalable deployment of optical
architectures, particularly those with innovative nano-devices. Here, we report
an optical ML hardware to accelerate GEMM operations based on cascaded spatial
light modulators and present a calibration procedure that enables accurate
calculations despite the non-uniformity and imperfection in devices and system.
We further characterize the hardware calculation accuracy under different
configurations of electrical-optical interfaces. Finally, we deploy the
developed optical hardware and calibration procedure to perform a ML task of
predicting the intersubband plasmon frequency in single-wall carbon nanotubes.
The obtained prediction accuracy from the optical hardware agrees well with
that obtained using a general purpose electronic graphic process unit.