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MiniMol\texttt{MiniMol}MiniMol: A Parameter-Efficient Foundation Model for Molecular Learning

23 April 2024
Kerstin Klaser
Bla.zej Banaszewski
S. Maddrell-Mander
Callum McLean
Luis Muller
Alipanah Parviz
Shenyang Huang
Andrew Fitzgibbon
    AI4CE
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Abstract

In biological tasks, data is rarely plentiful as it is generated from hard-to-gather measurements. Therefore, pre-training foundation models on large quantities of available data and then transfer to low-data downstream tasks is a promising direction. However, how to design effective foundation models for molecular learning remains an open question, with existing approaches typically focusing on models with large parameter capacities. In this work, we propose MiniMol\texttt{MiniMol}MiniMol, a foundational model for molecular learning with 10 million parameters. MiniMol\texttt{MiniMol}MiniMol is pre-trained on a mix of roughly 3300 sparsely defined graph- and node-level tasks of both quantum and biological nature. The pre-training dataset includes approximately 6 million molecules and 500 million labels. To demonstrate the generalizability of MiniMol\texttt{MiniMol}MiniMol across tasks, we evaluate it on downstream tasks from the Therapeutic Data Commons (TDC) ADMET group showing significant improvements over the prior state-of-the-art foundation model across 17 tasks. MiniMol\texttt{MiniMol}MiniMol will be a public and open-sourced model for future research.

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