Xaira-Therapeutics/X-Cell

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Actively maintainedby Xaira-Therapeutics010updated 2 months ago

A diffusion language model for genome-scale perturbation prediction across diverse cellular contexts.

README

license: cc-by-nc-sa-4.0 language: en thumbnail: x-cell-overview.png tags: biology single-cell perturbation-prediction diffusion-model genomics CRISPRi datasets: Xaira-Therapeutics/X-Atlas-Pisces pipeline_tag: other X-Cell A diffusion language model for genome-scale perturbation prediction across diverse cellular contexts. Status: Model weights and inference code coming soon. The Python API, model weights, and tutorials are under active development. Watch the GitHub repository for release…

Source attribution

  • HuggingFaceXaira-Therapeutics/X-Cell

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