--- title: "Docker/Singularity Containers" author: "

Authors: `r auths <- eval(parse(text = gsub('person','c',read.dcf('../DESCRIPTION', fields = 'Authors@R'))));paste(auths[names(auths)=='given'],auths[names(auths)=='family'], collapse = ', ')`

" date: "

Vignette updated: `r format( Sys.Date(), '%b-%d-%Y')`

" output: BiocStyle::html_document: vignette: > %\VignetteIndexEntry{docker} %\usepackage[utf8]{inputenc} %\VignetteEngine{knitr::rmarkdown} --- ```{r setup, include=FALSE} #### Package name #### pkg <- read.dcf("../DESCRIPTION", fields = "Package")[1] library(pkg, character.only = TRUE) ## Docker containers must be lowercase pkg <- tolower(pkg) #### Username of DockerHub account #### docker_user <- "neurogenomicslab" ``` # DockerHub `r pkg` is now available via [DockerHub](https://hub.docker.com/repository/docker/`r docker_user`/`r pkg`) as a containerised environment with Rstudio and all necessary dependencies pre-installed. ## Installation ## Method 1: via Docker First, [install Docker](https://docs.docker.com/get-docker/) if you have not already. Create an image of the [Docker](https://www.docker.com/) container in command line: ``` docker pull `r docker_user`/`r pkg` ``` Once the image has been created, you can launch it with: ``` docker run \ -d \ -e ROOT=true \ -e PASSWORD="" \ -v ~/Desktop:/Desktop \ -v /Volumes:/Volumes \ -p 8787:8787 \ `r docker_user`/`r pkg` ``` ### NOTES * Make sure to replace `` above with whatever you want your password to be. * Change the paths supplied to the `-v` flags for your particular use case. * The `-d` ensures the container will run in "detached" mode, which means it will persist even after you've closed your command line session. * The username will be *"rstudio"* by default. * Optionally, you can also install the [Docker Desktop](https://www.docker.com/products/docker-desktop) to easily manage your containers. ## Method 2: via Singularity If you are using a system that does not allow Docker (as is the case for many institutional computing clusters), you can instead [install Docker images via Singularity](https://sylabs.io/guides/2.6/user-guide/singularity_and_docker.html). ``` singularity pull docker://`r docker_user`/`r pkg` ``` ## Usage Finally, launch the containerised Rstudio by entering the following URL in any web browser: *http://localhost:8787/* Login using the credentials set during the Installation steps. # Session Info
```{r Session Info} utils::sessionInfo() ```