minwoosun/uce-100m
https://huggingface.co/minwoosun/uce-100mUniversal Cell Embeddings (UCE) is a foundation model designed for single-cell RNA sequencing data analysis. UCE generates a universal representation of cells that captures the molecular diversity across different cell types, tissues, and species.
Sourced from
- HuggingFace — minwoosun/uce-100m
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