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Elign: Equivariant Diffusion Model Alignment from Foundational Machine Learning Force Fields

Machine Learning 2026-01-30 v1

Abstract

Generative models for 3D molecular conformations must respect Euclidean symmetries and concentrate probability mass on thermodynamically favorable, mechanically stable structures. However, E(3)-equivariant diffusion models often reproduce biases from semi-empirical training data rather than capturing the equilibrium distribution of a high-fidelity Hamiltonian. While physics-based guidance can correct this, it faces two computational bottlenecks: expensive quantum-chemical evaluations (e.g., DFT) and the need to repeat such queries at every sampling step. We present Elign, a post-training framework that amortizes both costs. First, we replace expensive DFT evaluations with a faster, pretrained foundational machine-learning force field (MLFF) to provide physical signals. Second, we eliminate repeated run-time queries by shifting physical steering to the training phase. To achieve the second amortization, we formulate reverse diffusion as a reinforcement learning problem and introduce Force--Energy Disentangled Group Relative Policy Optimization (FED-GRPO) to fine-tune the denoising policy. FED-GRPO includes a potential-based energy reward and a force-based stability reward, which are optimized and group-normalized independently. Experiments show that Elign generates conformations with lower gold-standard DFT energies and forces, while improving stability. Crucially, inference remains as fast as unguided sampling, since no energy evaluations are required during generation.

Keywords

Cite

@article{arxiv.2601.21985,
  title  = {Elign: Equivariant Diffusion Model Alignment from Foundational Machine Learning Force Fields},
  author = {Yunyang Li and Lin Huang and Luojia Xia and Wenhe Zhang and Mark Gerstein},
  journal= {arXiv preprint arXiv:2601.21985},
  year   = {2026}
}
R2 v1 2026-07-01T09:26:07.926Z