AI-driven inverse antenna design with real NEC2 + openEMS in the loop. Try the live in-browser playground.
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Updated
Jun 1, 2026 - Python
AI-driven inverse antenna design with real NEC2 + openEMS in the loop. Try the live in-browser playground.
torch-molecule is a deep learning package for molecular discovery, designed with an sklearn-style interface for property prediction, inverse design and representation learning.
gRNAde is a Generative AI framework for inverse design of 3D RNA structure and function
This repository hosts a simple demonstration of a deep learning approach for the inverse design of patch antennas. The goal is to explore energy-efficient designs and to significantly reduce simulation cost compared to conventional methods.
Differentiable wave optics simulation library built on PyTorch
AeroJAX: A differentiable, structure-preserving framework for real-time flow simulation, control, and inverse design. Architected for neural operator integration and latent-space acceleration. Built with JAX.
[NeurIPS 2020] Diversity-Guided Efficient Multi-Objective Optimization With Batch Evaluations
Optimization and inverse design of photonic chips using deep reinforcement learning
A PyTorch Implementation of "Optimization of Molecules via Deep Reinforcement Learning".
Electromagnetics simulation library for moving point charges built on JAX
Efficient GPU-computing simulation for differentiable crystal plasticity finite element method
A Generic Framework for Optical Inverse Design
A collection of inverse design challenges
Silicon Photonics Design Tools.
GPU-accelerated electromagnetic FDTD for large-scale simulations, compact modeling and inverse design / gradient-based optimization of nanophotonic devices with Python.
AI-assisted Photonic Device Inverse Design Framework, MAPS DATE 2025
[ICLR24] CinDM uses compositional generative models to design boundaries and initial states significantly more complex than the ones seen in training for physical simulation
Differentiable Flexible Mechanical Metamaterials
A Fortran-based neural network library for physics-based applications. Alongside standard neural network layer types, it also supports graph-based layers and physics informed neural networks.
PcDGAN: A Continuous Conditional Diverse Generative Adversarial Network For Inverse Design
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