Abstract
The BigSMILES notation, a concise tool for polymer ensemble representation, is augmented here by introducing an enhanced version called generative BigSMILES. G-BigSMILES is designed for generative workflows, and is complemented by tailored software tools for ease of use. This extension integrates additional data, including reactivity ratios (or connection probabilities among repeat units), molecular weight distributions, and ensemble size. An algorithm, interpretable as a generative graph is devised that utilizes these data, enabling molecule generation from defined polymer ensembles. Consequently, the G-BigSMILES notation allows for efficient specification of complex molecular ensembles via a streamlined line notation, thereby providing a foundational tool for automated polymeric materials design. In addition, the graph interpretation of the G-BigSMILES notation sets the stage for robust machine learning methods capable of encapsulating intricate polymeric ensembles. The combination of G-BigSMILES with advanced machine learning techniques will facilitate straightforward property determination and in-silico polymeric material synthesis automation. This integration has the potential to significantly accelerate materials design processes and advance the field of polymer science.
Supplementary materials
Title
Supporting Information for Generative BigSMILES
Description
Jupyter Notebook, that explains different scenarios of generative BigSMILES and how it is applied to real chemistries.
Actions
Supplementary weblinks
Title
GitHub Generative BigSMILES
Description
Reference implementation of the proposed generative BigSMILES notation.
It is capable of generating ensembles of realistic polymers from a line notation.
Actions
View