Harnessing Photonics for Machine Intelligence

arXiv:2604.1084166.5h-index: 15
Predicted impact top 2% in OPTICS · last 90 daysOriginality Synthesis-oriented
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It provides a system-level roadmap for the circuits-and-systems community to transition photonic computing from lab prototypes to scalable, automated platforms for machine intelligence.

This review reframes photonic computing for AI acceleration from a circuits-and-systems perspective, proposing a bottleneck-driven taxonomy and emphasizing cross-layer co-design and electronic-photonic design automation to achieve scalable, efficient systems.

The exponential growth of machine-intelligence workloads is colliding with the power, memory, and interconnect limits of the post-Moore era, motivating compute substrates that scale beyond transistor density alone. Integrated photonics is emerging as a candidate for artificial intelligence (AI) acceleration by exploiting optical bandwidth and parallelism to reshape data movement and computation. This review reframes photonic computing from a circuits-and-systems perspective, moving beyond building-block progress toward cross-layer system analysis and full-stack design automation. We synthesize recent advances through a bottleneck-driven taxonomy that delineates the operating regimes and scaling trends where photonics can deliver end-to-end sustained benefits. A central theme is cross-layer co-design and workload-adaptive programmability to sustain high efficiency and versatility across evolving application domains at scale. We further argue that Electronic-Photonic Design Automation (EPDA) will be pivotal, enabling closed-loop co-optimization across simulation, inverse design, system modeling, and physical implementation. By charting a roadmap from laboratory prototypes to scalable, reproducible electronic-photonic ecosystems, this review aims to guide the CAS community toward an automated, system-centric era of photonic machine intelligence.

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