Sequencing Docker Stacks#
Ready-to-use analysis environments for your sequencing data.
Sequencing Docker Stacks provide pre-configured, reproducible environments for analyzing sequencing data.
Who Should Use This?#
This project is for you if you:
Analyze sequencing data (RNA-seq, single-cell, spatial transcriptomics, multi-omics)
Want a reproducible environment without manually installing dozens of bioinformatics tools
Need to run analysis on different computers (your laptop, HPC cluster, cloud) with the same setup
Collaborate with others and want everyone using the same software versions
Are new to bioinformatics and overwhelmed by software installation and dependency management
What’s Inside? Choose Your Container#
Each container is a complete analysis environment with Jupyter notebooks, Python, R, and specialized bioinformatics tools.
All containers run on both x86_64 (Intel/AMD) and aarch64 (ARM/Apple Silicon) architectures.
Data Science — data-notebook#
Best for: General data science work with Python and R, data visualization, statistical analysis
Key Tools:
Python scientific stack (NumPy, pandas, scikit-learn, matplotlib)
R with tidyverse and essential packages
Common data science libraries for both languages
Jupyter notebook extensions for enhanced productivity
Sequencing Base — sequencing-base-notebook#
Best for: Foundation for bioinformatics workflows, provides common dependencies for sequencing analysis
Key Tools:
All tools from data-notebook
Bioinformatics Python packages (biopython, pybiomart)
R/Bioconductor packages for genomic analysis (DESeq2, fgsea)
Base layer for specialized sequencing notebooks (RNA-seq, single-cell, etc.)
RNA-seq Analysis — rnaseq-notebook#
Best for: Bulk RNA sequencing analysis, differential gene expression, gene set enrichment
Key Tools:
DESeq2 — differential expression analysis
R/Bioconductor ecosystem for statistical analysis
Data visualization tools (ggplot2, heatmaps, volcano plots)
Single-Cell Analysis — singlecell-notebook#
Best for: Single-cell RNA-seq (scRNA-seq), cell type identification, trajectory analysis
Key Tools:
Single-Cell Analysis with Latest R — singlecell-r-notebook#
Best for: R-centric single-cell analysis workflows using the most recent R packages from Bioconductor
Key Differences:
Built directly on
jupyter/datascience-notebookto bypass bioconda’s lag behind BioconductorR packages pinned to r-base>=4.5 for latest R features and package versions
R packages installed directly from Bioconductor rather than bioconda channel
All dependencies from data, sequencing-base, and singlecell notebooks included
Spatial Transcriptomics — spatial-notebook#
Best for: Spatial RNA-seq, tissue architecture, spatial patterns
Key Tools:
Squidpy — Spatial single-cell analysis
SpatialData — Spatial omics data handling
Spatial statistics and neighborhood analysis
Image processing capabilities
Multi-Omics Integration — multiomics-notebook#
Best for: Multi-modal data integration, CITE-seq, ATAC+RNA, multi-assay experiments
Key Tools:
Getting Started#
Try Without Installing — Use Binder#
Want to try it first? You can explore a live notebook environment in your browser without installing anything!
Click the Binder badge at the top of this page or use this link:
This will launch a JupyterLab environment running the singlecell-notebook container on mybinder.org.
You’ll get a temporary workspace to experiment with single-cell analysis tools like Scanpy and Seurat.
Note: Binder sessions are temporary and have limited resources. For real analysis work, follow the installation steps below to run containers on your own computer.
Launch Your First Analysis Environment#
Here’s how to start a Jupyter notebook environment for single-cell analysis:
docker run -it --rm -p 8888:8888 -v "${PWD}":/home/jovyan/work quay.io/huchlab/singlecell-notebook:2026-01-20
What this command does:
docker run— Start a new container-it— Interactive mode (you can stop with Ctrl+C)--rm— Clean up the container when you’re done-p 8888:8888— Access Jupyter athttp://localhost:8888-v "${PWD}":/home/jovyan/work— Mount your current directory (your data will be in theworkfolder)quay.io/huchlab/singlecell-notebook:2026-01-20— The container image to use. Here,2026-01-20is the version of the container. See Choose Specific Versions below for information on selecting specific image versions.
After running this command:
Look for a URL in the terminal output that looks like:
http://127.0.0.1:8888/lab?token=abc123...
Copy and paste this URL into your web browser
You’ll see JupyterLab with all tools pre-installed!
Your files from the current directory will be available in the
workfolder
Choose a Different Container#
Replace singlecell-notebook with your preferred container:
# For data science work
docker run -it --rm -p 8888:8888 -v "${PWD}":/home/jovyan/work quay.io/huchlab/data-notebook:2026-01-20
# For sequencing analysis base (foundation for bioinformatics)
docker run -it --rm -p 8888:8888 -v "${PWD}":/home/jovyan/work quay.io/huchlab/sequencing-base-notebook:2026-01-20
# For RNA-seq analysis
docker run -it --rm -p 8888:8888 -v "${PWD}":/home/jovyan/work quay.io/huchlab/rnaseq-notebook:2026-01-20
# For single-cell analysis with latest R packages
docker run -it --rm -p 8888:8888 -v "${PWD}":/home/jovyan/work quay.io/huchlab/singlecell-r-notebook:2026-01-20
# For spatial transcriptomics
docker run -it --rm -p 8888:8888 -v "${PWD}":/home/jovyan/work quay.io/huchlab/spatial-notebook:2026-01-20
# For multi-omics integration
docker run -it --rm -p 8888:8888 -v "${PWD}":/home/jovyan/work quay.io/huchlab/multiomics-notebook:2026-01-20
Using Apptainer/Singularity Images#
For HPC environments that use Apptainer (formerly Singularity) instead of Docker, we provide pre-built Apptainer images on quay.io.
These images have the same tools and configurations as the Docker versions, with /opt/conda made writable for all users so you can install additional packages at runtime.
Note: Apptainer/Singularity images are available for x86_64 architecture only.
Example usage:
apptainer run oras://quay.io/huchlab/singlecell-singularity:2026-01-22
or with singularity:
singularity run oras://quay.io/huchlab/singlecell-singularity:2026-01-22
All available images work with Apptainer:
rnaseq-singularitysinglecell-singularitysinglecell-r-singularityspatial-singularitymultiomics-singularitysequencing-base-singularity
Tags are the same as for Docker images.
Choose Specific Versions#
Images are tagged with dates and commit hashes for reproducibility. To view all available tags for a specific image:
Alternatives#
singularity-single-cell: singularity-based container for singlecell analysis.
scanpy: gcfntnu/scanpy image on Docker Hub
scvi-tools from the scverse provides Docker images
Seurat provides Docker images
Next Steps#
Learn More About Jupyter and Docker#
If you’re new to Jupyter or Docker containers, we recommend exploring the jupyter/docker-stacks documentation for detailed explanations of:
How Jupyter servers work
Advanced Docker options (resource limits, environment variables)
Running containers in different environments (cloud, HPC)
Security best practices
See What’s Installed#
Each container comes with dozens of pre-installed tools. For complete lists of installed software and versions, visit the build manifests in our wiki.
Need Help?#
Open an issue on GitHub
Check existing issues for common problems
Provide your Docker version and OS when reporting issues
About This Project#
These containers are built on the jupyter/docker-stacks foundation and incorporates experience from the Singularity Single Cell container.
Development#
GitHub Copilot Integration#
This repository includes GitHub Copilot reference configuration to assist contributors with AI-assisted development. The configuration files are located in .github/copilot/ and provide:
Repository-specific context and guidelines
Technical knowledge about the project structure
Code style and testing preferences
Common development workflows
These files serve as a reference for contributors using GitHub Copilot or other AI assistants. For more information about the Copilot setup, see .github/copilot/README.md.
LICENSE#
This project is licensed under the terms of the Modified BSD License (also known as New or Revised or 3-Clause BSD).
Issue Tracker on GitHub <huchlab/sequencing-docker-stacks#issues>