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Evolutionary training-free guidance in diffusion model for 3D multi-objective molecular generation

Published: May 16, 2025 | arXiv ID: 2505.11037v2

By: Ruiqing Sun , Dawei Feng , Sen Yang and more

Potential Business Impact:

Designs new molecules with desired traits faster.

Business Areas:
Guides Media and Entertainment

Discovering novel 3D molecular structures that simultaneously satisfy multiple property targets remains a central challenge in materials and drug design. Although recent diffusion-based models can generate 3D conformations, they require expensive retraining for each new property or property-combination and lack flexibility in enforcing structural constraints. We introduce EGD (Evolutionary Guidance in Diffusion), a training-free framework that embeds evolutionary operators directly into the diffusion sampling process. By performing crossover on noise-perturbed samples and then denoising them with a pretrained Unconditional diffusion model, EGD seamlessly blends structural fragments and steers generation toward user-specified objectives without any additional model updates. On both single- and multi-target 3D conditional generation tasks-and on multi-objective optimization of quantum properties EGD outperforms state-of-the-art conditional diffusion methods in accuracy and runs up to five times faster per generation. In the single-objective optimization of protein ligands, EGD enables customized ligand generation. Moreover, EGD can embed arbitrary 3D fragments into the generated molecules while optimizing multiple conflicting properties in one unified process. This combination of efficiency, flexibility, and controllable structure makes EGD a powerful tool for rapid, guided exploration of chemical space.

Country of Origin
🇨🇳 China

Page Count
20 pages

Category
Computer Science:
Neural and Evolutionary Computing