Constrained Molecular Generation via Sequential Flow Model Fine-Tuning
Sven Gutjahr · Riccardo De Santi · Luca Schaufelberger · Kjell Jorner · Andreas Krause
Abstract
Adapting generative foundation models to optimize rewards of interest (e.g., binding affinity) while satisfying constraints (e.g., molecular synthesizability) is of fundamental importance to render them applicable in real-world discovery campaigns such as molecular design or protein engineering. While recent works have introduced scalable methods for reward-guided fine-tuning of diffusion and flow models, it remains an open problem how to algorithmically trade-off property maximization and constraint satisfaction in a reliable and predictable manner. Towards tackling this challenging problem, we first present a rigorous formulation for constrained generation. Then, we introduce Augmented Lagrangian Flows Fine-tuning (ALF$^2$), an augmented Lagrangian method that renders possible to arbitrarily control the aforementioned trade-off between reward maximization and constraint satisfaction. We provide convergence guarantees for the proposed scheme. Ultimately, we present an experimental evaluation on both synthetic, yet illustrative, settings, and a molecular design task optimizing molecular properties while constraining energy.
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