DeepAdjoint: An All-in-One Photonic Inverse Design Framework Integrating Data-Driven Machine Learning with Optimization Algorithms
Christopher Yeung, Benjamin Pham, Ryan Tsai, Katherine T. Fountaine,, and Aaswath P. Raman

TL;DR
DeepAdjoint is an integrated, open-source framework that combines machine learning and optimization algorithms to enable efficient, multi-objective inverse design of photonic structures within a user-friendly environment.
Contribution
It introduces a comprehensive platform that unifies ML models with electromagnetic optimization for photonics, addressing dataset limitations and material-geometry optimization in a single tool.
Findings
Enables rapid photonic design with pre-trained models and optimization algorithms.
Supports multi-objective, robust, and fabrication-tolerant photonic structures.
Provides an accessible, unified interface for photonic inverse design.
Abstract
In recent years, hybrid design strategies combining machine learning (ML) with electromagnetic optimization algorithms have emerged as a new paradigm for the inverse design of photonic structures and devices. While a trained, data-driven neural network can rapidly identify solutions near the global optimum with a given dataset's design space, an iterative optimization algorithm can further refine the solution and overcome dataset limitations. Furthermore, such hybrid ML-optimization methodologies can reduce computational costs and expedite the discovery of novel electromagnetic components. However, existing hybrid ML-optimization methods have yet to optimize across both materials and geometries in a single integrated and user-friendly environment. In addition, due to the challenge of acquiring large datasets for ML, as well as the exponential growth of isolated models being trained for…
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Taxonomy
TopicsPhotonic and Optical Devices · Neural Networks and Reservoir Computing · Photonic Crystals and Applications
