Sub-quadratic scalable approximate linear converter using multi-plane light conversion with low-entropy mode mixers
Yoshitaka Taguchi

TL;DR
This paper introduces a scalable optical matrix converter using multi-plane light conversion with low-entropy mode mixers, reducing phase shifters needed for matrix multiplication in optical computing.
Contribution
It proposes a novel approximate realization method that lowers system complexity and size while maintaining accuracy, and compares encoding schemes for general matrices.
Findings
Achieves sub-quadratic scaling of phase shifters with error bounds.
Low-entropy mixers preserve accuracy with fewer components.
Block-encoding outperforms SVD in iterative configurations.
Abstract
Optical computing is emerging as a promising platform for energy-efficient, high-throughput hardware in deep learning. A key challenge lies in the realization of optical matrix-vector multiplication, which often requires phase shifters for exact synthesis of matrices, limiting scalability. In this study, we propose an approximate matrix realization method using multi-plane light conversion (MPLC) that reduces both the system size and the number of phase shifters while maintaining acceptable error bounds. This approach uses low-entropy mode mixers, allowing more compact implementations compared to conventional mixers. We introduce Shannon matrix entropy as a measure of mode coupling strength in mixers and demonstrate that low-entropy mixers can preserve computational accuracy while reducing the requirements for the mixers. The approximation quality is evaluated…
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Taxonomy
TopicsPhotonic and Optical Devices · Semiconductor Lasers and Optical Devices · Optical Coherence Tomography Applications
