Score: 0

Fast and scalable retrosynthetic planning with a transformer neural network and speculative beam search

Published: August 2, 2025 | arXiv ID: 2508.01459v1

By: Mikhail Andronov , Natalia Andronova , Michael Wand and more

Potential Business Impact:

Speeds up finding new medicines with computers.

AI-based computer-aided synthesis planning (CASP) systems are in demand as components of AI-driven drug discovery workflows. However, the high latency of such CASP systems limits their utility for high-throughput synthesizability screening in de novo drug design. We propose a method for accelerating multi-step synthesis planning systems that rely on SMILES-to-SMILES transformers as single-step retrosynthesis models. Our approach reduces the latency of SMILES-to-SMILES transformers powering multi-step synthesis planning in AiZynthFinder through speculative beam search combined with a scalable drafting strategy called Medusa. Replacing standard beam search with our approach allows the CASP system to solve 26\% to 86\% more molecules under the same time constraints of several seconds. Our method brings AI-based CASP systems closer to meeting the strict latency requirements of high-throughput synthesizability screening and improving general user experience.

Page Count
11 pages

Category
Computer Science:
Machine Learning (CS)