ARY2260/openpom
Replication of the Principal Odor Map paper by Brian K. Lee et al. (2023).
This project helps chemists, perfumers, and food scientists predict the scent of a new molecule. You input a molecular structure (SMILES string), and it outputs a list of predicted odor qualities, like 'floral' or 'minty', along with their likelihoods. This tool is designed for anyone working with molecular compounds who needs to quickly assess their potential smell.
Use this if you need to quickly estimate the odor profile of a chemical compound based on its molecular structure.
Not ideal if you require highly precise, experimentally verified sensory evaluation or a tool that incorporates human panel data for odor perception.
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41
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57
Language
Jupyter Notebook
License
MIT
Category
Last pushed
Oct 17, 2025
Commits (30d)
0
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