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arxiv:2605.26502

PRISM: Position-encoded Regressive Inverse Spectral Model for Multilayer Thin-Film Design

Published on May 26
· Submitted by
Lukas Xue
on May 26
Authors:
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Abstract

PRISM is a decoder-only autoregressive transformer that efficiently solves the inverse problem of multilayer thin-film optical coatings design by jointly predicting material selection and thickness while leveraging spectrum prefix conditioning and cumulative-depth Rotary Position Embeddings.

AI-generated summary

The inverse problem of multilayer thin-film optical coatings design represents a complex combinatorial-continuous optimization challenge. We present PRISM (Position-encoded Regressive Inverse Spectral Model), a unified decoder-only autoregressive transformer that streamlines this process by jointly predicting discrete material selection and continuous thickness regression within a single backbone. PRISM introduces two primary architectural innovations: (1) spectrum prefix conditioning, which utilizes standard prefix tokens for in-context target injection, and (2) cumulative-depth Rotary Position Embeddings, which encode continuous thickness directly into the positional representation to preserve the physical spatial relationships of the stack. Our benchmarks demonstrate that a PRISM-13M model reduces MAE by over 50\% compared to other transformer baselines while utilizing only one-fifth of the parameters. Furthermore, a 44M-parameter variant achieves state-of-the-art performance (MAE = 0.010) on our in-distribution validation benchmark and operates significantly faster than simulated annealing, offering a highly efficient alternative to classical optimization methods.

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Hi! Super excited to share our work.

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