sacdallago/biotrainer
Biological prediction models made simple.
This tool helps biologists and biochemists develop and apply machine learning models to analyze protein sequences. You provide protein sequence data and it outputs predictions for various protein properties like where a protein lives in a cell or its secondary structure. It is designed for researchers who need to build or use predictive models for protein function or structure.
Available on PyPI.
Use this if you are a researcher in biology or biochemistry who needs to train or use machine learning models for protein analysis, especially for tasks like classifying protein sequences or residues.
Not ideal if you need a general-purpose machine learning framework for tasks outside of protein sequence analysis, or if you prefer a graphical user interface over configuration files.
Stars
49
Forks
11
Language
Python
License
AFL-3.0
Category
Last pushed
Jan 13, 2026
Commits (30d)
0
Dependencies
25
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