Single-cell analysis in Python. Scales to >100M cells.
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Updated
Nov 12, 2025 - Python
Single-cell analysis in Python. Scales to >100M cells.
The COnstraint-Based Reconstruction and Analysis Toolbox. Documentation:
pySCENIC is a lightning-fast python implementation of the SCENIC pipeline (Single-Cell rEgulatory Network Inference and Clustering) which enables biologists to infer transcription factors, gene regulatory networks and cell types from single-cell RNA-seq data.
Annotated data.
An interactive explorer for single-cell transcriptomics data
Fusing Histology and Genomics via Deep Learning - IEEE TMI
Foundation Models for Genomics & Transcriptomics
A Python implementation of the DESeq2 pipeline for bulk RNA-seq DEA.
🧬 gget enables efficient querying of genomic reference databases
starfish: unified pipelines for image-based transcriptomics
Single cell perturbation prediction
R package for analyzing single-cell RNA-seq data
An ontology of cell types
R package for analyzing and interactively exploring large-scale single-cell RNA-seq datasets
R/shiny interface for interactive visualization of data in SummarizedExperiment objects
Cellxgene Gateway allows you to use the Cellxgene Server provided by the Chan Zuckerberg Institute (https://github.com/chanzuckerberg/cellxgene) with multiple datasets.
Automatic Annotation on Cell Types of Clusters from Single-Cell RNA Sequencing Data
Python package to perform enrichment analysis from omics data.
Statistical package for metaome denovo assembly results.
Hierarchical, iterative clustering for analysis of transcriptomics data in R
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