rarfileexe/XPathology-CNN_2.0_advance
https://huggingface.co/rarfileexe/XPathology-CNN_2.0_advance## Model Description This is a lightweight, high-performance image classification model built to diagnose histopathological scans of lung and colon tissues. This model was specifically designed for rapid web deployment without sacrificing clinical accuracy.
Sourced from
- HuggingFace — rarfileexe/XPathology-CNN_2.0_advance
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