DrHB/rna-stanford
Transformer + GAT for RNA chemical reactivity prediction| Stanford Ribonanza
This project helps computational biologists and biochemists predict how an RNA molecule will fold into its complex 3D structure based solely on its genetic sequence. By inputting an RNA sequence, it outputs predictions of its chemical reactivity, which is a key indicator of its folded shape. This tool is designed for researchers studying RNA structure and function.
Use this if you need to accurately predict RNA chemical reactivity from sequence data to understand its 3D folding and biological roles.
Not ideal if you are looking for a tool to design new RNA sequences from scratch or to conduct wet-lab experiments.
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Last pushed
Jan 28, 2026
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