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Generative Artificial Intelligence for Navigating Synthesizable Chemical Space

SynFormer, a generative framework using transformer architecture and diffusion module, efficiently generates synthesizable molecules and explores chemical space for optimized designs.

Year
2024
Venue
arXiv 2024
Authors
3
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arxiv.org/abs/2410.03494ARXIV-DEFAULT
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Abstract

We introduce SynFormer, a generative modeling framework designed to efficiently explore and navigate synthesizable chemical space. Unlike traditional molecular generation approaches, we generate synthetic pathways for molecules to ensure that designs are synthetically tractable. By incorporating a scalable transformer architecture and a diffusion module for building block selection, SynFormer surpasses existing models in synthesizable molecular design. We demonstrate SynFormer's effectiveness in two key applications: (1) local chemical space exploration, where the model generates synthesizable analogs of a reference molecule, and (2) global chemical space exploration, where the model aims to identify optimal molecules according to a black-box property prediction oracle. Additionally, we demonstrate the scalability of our approach via the improvement in performance as more computational resources become available. With our code and trained models openly available, we hope that SynFormer will find use across applications in drug discovery and materials science.

Authors

3