Search Results for author: Katherine T. Fountaine

Found 2 papers, 0 papers with code

DeepAdjoint: An All-in-One Photonic Inverse Design Framework Integrating Data-Driven Machine Learning with Optimization Algorithms

no code implementations28 Sep 2022 Christopher Yeung, Benjamin Pham, Ryan Tsai, Katherine T. Fountaine, Aaswath P. Raman

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.

Hybrid Supervised and Reinforcement Learning for the Design and Optimization of Nanophotonic Structures

no code implementations8 Sep 2022 Christopher Yeung, Benjamin Pham, Zihan Zhang, Katherine T. Fountaine, Aaswath P. Raman

From higher computational efficiency to enabling the discovery of novel and complex structures, deep learning has emerged as a powerful framework for the design and optimization of nanophotonic circuits and components.

Computational Efficiency reinforcement-learning +1

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