2024
DOI: 10.1101/2024.08.10.607459
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Efficient clustering of large molecular libraries

Kenneth López Pérez,
Vicky Jung,
Lexin Chen
et al.

Abstract: The widespread use of Machine Learning (ML) techniques in chemical applications has come with the pressing need to analyze extremely large molecular libraries. In particular, clustering remains one of the most common tools to dissect the chemical space. Unfortunately, most current approaches present unfavorable time and memory scaling, which makes them unsuitable to handle million- and billion-sized sets. Here, we propose to bypass these problems with a time- and memory-efficient clustering algorithm, BitBIRCH… Show more

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