FlowMol3: Flow Matching for 3D De Novo Small-Molecule Generation

Abstract

A generative model capable of sampling realistic molecules with desired properties could accelerate chemical discovery across a wide range of applications. Toward this goal, significant effort has focused on developing models that jointly sample molecular topology and 3D structure. We present FlowMol3, an open-source, multi-modal flow matching model that advances the state of the art for all-atom, small-molecule generation. Its substantial performance gains over previous FlowMol versions are achieved without changes to the graph neural network architecture or the underlying flow matching formulation. Instead, FlowMol3’s improvements arise from three architecture-agnostic techniques that incur negligible computational cost: self-conditioning, fake atoms, and train-time geometry distortion. FlowMol3 achieves nearly 100% molecular validity for drug-like molecules with explicit hydrogens, more accurately reproduces the functional group composition and geometry of its training data, and does so with an order of magnitude fewer learnable parameters than comparable methods. We hypothesize that these techniques mitigate a general pathology affecting transport-based generative models, enabling detection and correction of distribution drift during inference. Our results highlight simple, transferable strategies for improving the stability and quality of diffusion- and flow-based molecular generative models.

Supplementary files

Article information

Article type
Paper
Submitted
15 Aug 2025
Accepted
26 Mar 2026
First published
07 Apr 2026
This article is Open Access
Creative Commons BY license

Digital Discovery, 2025, Accepted Manuscript

FlowMol3: Flow Matching for 3D De Novo Small-Molecule Generation

I. Dunn and D. R. Koes, Digital Discovery, 2025, Accepted Manuscript , DOI: 10.1039/D5DD00363F

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