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Poster
in
Workshop: AI for Nucleic Acids (AI4NA)

A Comprehensive Library for RNA Structure-Function Modeling

Luis Wyss · Vincent Mallet · Carlos Oliver · Wissam Karroucha · Karsten Borgwardt


Abstract:

The RNA structure-function relationship has recently garnered significant attention within the deep learning community, promising to grow in importance as nucleotide structure models advance.However, the absence of standardized and accessible benchmarks for deep learning on RNA 3D structures has impeded the development of models for RNA functional characteristics. In this work, we introduce a comprehensive set of benchmarking datasets for RNA structure modeling, designed to address this gap.Our library includes easy data distribution and encoding, splitters and evaluation methods, providing a robust suite for comparing models.Beyond the proposed tasks, our library is modular and thereby can easily be tailored by researchers to their question at hand.

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