LightGBM training lives in the offline lab; this page registers the resulting booster so PROTEA can score predictions with it. Use Import booster to upload a fresh model.txt + spec.yaml + run.json, or Register by URI when the artefact already lives in MinIO.
LightGBM binary classifiers trained on temporal holdout data (CAFA protocol). A re-ranker uses alignment, taxonomy, and aggregate features to re-score GO predictions with calibrated probabilities, replacing the raw embedding distance ranking.