TRIDENT (2025)
github.com/mahmoodlab/tridentToolkit for large-scale whole-slide image processing supporting 22+ patch encoders (UNI, CONCH, Virchow, H-Optimus-0, etc.), slide encoders (TITAN, GigaPath, PRISM, CHIEF, Madeleine, Feather), tissue segmentation, and multi-GPU inference with end-to-end pipeline and smart resume for standardized deployment of computational pathology foundation models (Mahmood Lab, Harvard Medical School, 553+ stars)
Sourced from
- Awesome AI for Science — github.com/mahmoodlab/trident
- GitHub — github.com/mahmoodlab/trident
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