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Provides a comprehensive framework for applying deep generative models and variational inference to single-cell omics data. This skill enables advanced workflows for scRNA-seq, scATAC-seq, and spatial transcriptomics by leveraging PyTorch-based models like scVI and totalVI. It streamlines complex tasks such as dimensionality reduction, batch correction across multiple studies, and multimodal integration, allowing researchers to extract meaningful biological insights from large-scale, high-dimensional datasets while maintaining statistical rigor through probabilistic modeling.