The following information may help to resolve the situation: Requested an impossible situation or if you are using the unstableĭistribution that some required packages have not yet been created I have followed the instructions on your web page. This will allow you to take advantage of the very latest work from the active community. You can also learn how to set up a Shiny server to convert your R code into interactive web pages.įor more information on how to install R packages by leveraging different tools, you can read about how to install directly from GitHub, BitBucket or other locations. With R successfully installed on your server, you may be interested in this guide on installing the RStudio Server to bring an IDE to the server-based deployment you just completed. Unless you want to save the workspace image, you can press n when prompted. To learn more about what’s available, you can find a listing of official packages organized by name via the Available CRAN Packages By Name list. If you are interested to learn more about txtplot, use help(txtplot) from within the R interpreter.Īny precompiled package can be installed from CRAN with install.packages(). Step 1 - Installing Rīecause R is a fast-moving project, the latest stable version isn’t always available from Ubuntu’s repositories, so we’ll start by adding the external repository maintained by CRAN. Once these prerequisites are in place, you’re ready to begin. To learn how to achieve this setup, follow our manual initial server setup guide or run our automated script. To follow along with this tutorial, you will need an Ubuntu 18.04 server with: In this tutorial, we will install R and show how to add packages from the official Comprehensive R Archive Network (CRAN). An increasingly popular and extensible language with an active community, R offers many user-generated packages for specific areas of study, which makes it applicable to many fields. Supported by the R Foundation for Statistical Computing, it is widely used for developing statistical software and performing data analysis. R is an open-source programming language that specializes in statistical computing and graphics. A previous version of this tutorial was written by Melissa Anderson.
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