BojarLab/glycowork
Package for processing and analyzing glycans and their role in biology.
This tool helps glycobiologists and biochemists analyze complex glycan structures and their biological roles. It takes various glycan sequence notations as input and provides insights into their motifs, disease associations, species relevance, and protein-binding specificities. Researchers studying carbohydrates in health and disease can use this to streamline their data analysis.
Used by 1 other package. Available on PyPI.
Use this if you need to process, analyze, visualize, or predict properties of glycan sequences and their interactions, especially if you work with diverse glycan representations or require machine learning for glycan research.
Not ideal if your research does not involve glycans or if you are looking for a general-purpose bioinformatics tool not specialized in carbohydrate analysis.
Stars
86
Forks
17
Language
Jupyter Notebook
License
MIT
Category
Last pushed
Mar 13, 2026
Commits (30d)
0
Dependencies
15
Reverse dependents
1
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