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📄 Abstract
Abstract: Polymers, macromolecules formed from covalently bonded monomers, underpin
countless technologies and are indispensable to modern life. While deep
learning is advancing polymer science, existing methods typically represent the
whole polymer solely through monomer-level descriptors, overlooking the global
structural information inherent in polymer conformations, which ultimately
limits their practical performance. Moreover, this field still lacks a
universal foundation model that can effectively support diverse downstream
tasks, thereby severely constraining progress. To address these challenges, we
introduce PolyConFM, the first polymer foundation model that unifies polymer
modeling and design through conformation-centric generative pretraining.
Recognizing that each polymer conformation can be decomposed into a sequence of
local conformations (i.e., those of its repeating units), we pretrain PolyConFM
under the conditional generation paradigm, reconstructing these local
conformations via masked autoregressive (MAR) modeling and further generating
their orientation transformations to recover the corresponding polymer
conformation. Besides, we construct the first high-quality polymer conformation
dataset via molecular dynamics simulations to mitigate data sparsity, thereby
enabling conformation-centric pretraining. Experiments demonstrate that
PolyConFM consistently outperforms representative task-specific methods on
diverse downstream tasks, equipping polymer science with a universal and
powerful tool.
Authors (7)
Fanmeng Wang
Shan Mei
Wentao Guo
Hongshuai Wang
Qi Ou
Zhifeng Gao
+1 more
Submitted
October 15, 2025
Key Contributions
Introduces PolyConFM, the first conformation-centric generative foundation model for polymers, unifying modeling and design. It addresses the limitation of monomer-level descriptors by incorporating global structural information through local conformation sequences, enabling diverse downstream tasks.
Business Value
Accelerating the discovery and design of new polymers with tailored properties for applications in materials, medicine, and manufacturing, leading to innovation in various industries.