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GitHub - RevolutionAnalytics/checkpoint: Install R packages from snapshots on checkpoint-server
Install R packages from snapshots on checkpoint-server - RevolutionAnalytics/checkpoint
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GitHub - RevolutionAnalytics/checkpoint: Install R packages from snapshots on checkpoint-server

GitHub - RevolutionAnalytics/checkpoint: Install R packages from snapshots on checkpoint-server

checkpoint - Install Packages from Snapshots on the Checkpoint Server for Reproducibility

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Overview

The goal of checkpoint is to solve the problem of package reproducibility in R. Specifically, checkpoint solve the problems that occur when you don’t have the correct versions of R packages. Since packages get updated on CRAN all the time, it can be difficult to recreate an environment where all your packages are consistent with some earlier state.

To solve this, checkpoint allows you to install packages from a specific snapshot date. In other words, checkpoint makes it possible to install package versions from a specific date in the past, as if you had a CRAN time machine.

Version 1.0 of checkpoint is a major refactoring/rewrite, aimed at resolving many long-standing issues. You can provide feedback by opening an issue or by contacting me.

Checkpoint Features

With the checkpoint package, you can easily:

  • Write R scripts or projects using package versions from a specific point in time;
  • Write R scripts that use older versions of packages, or packages that are no longer available on CRAN;
  • Install packages (or package versions) visible only to a specific project, without affecting other R projects or R users on the same system;
  • Manage multiple projects that use different package versions;
  • Share R scripts with others that will automatically install the appropriate package versions;
  • Write and share code R whose results can be reproduced, even if new (and possibly incompatible) package versions are released later.

Using checkpoint

The checkpoint package has 3 main functions.

The create_checkpoint function

  • Creates a checkpoint directory to install packages. This directory is located underneath ~/.checkpoint by default, but you can change its location.
  • Scans your project directory for all packages used. Specifically, it looks in your code for instances of library() and require() calls, as well as the namespacing operators :: and :::.
  • Installs these packages from the MRAN snapshot for a specified date, into your checkpoint directory.

The use_checkpoint function

  • Sets the CRAN mirror for your R session to point to a MRAN snapshot, i.e. modifies options(repos)
  • Sets your library search path to point to the folder created by create_checkpoint, i.e. modifies .libPaths()

This means the remainder of your script will run with the packages from your specified date.

Finally, the checkpoint function serves as a unified interface to create_checkpoint and use_checkpoint. It looks for a pre-existing checkpoint directory, and if not found, creates it with create_checkpoint. It then calls use_checkpoint to put the checkpoint into use.

Sharing your scripts and projects for reproducibility

Sharing a script to be reproducible is as easy as placing the following snippet at the top:

library(checkpoint)
checkpoint("2020-01-01")  # replace with desired date

Then send this script to your collaborators. When they run this script on their machine for the first time, checkpoint will perform the same steps of scanning for package dependencies, creating the checkpoint directory, installing the necessary packages, and setting your session to use the checkpoint. On subsequent runs, checkpoint will find and use the created checkpoint, so the packages don't have to be installed again.

If you have more than one script in your project, you can place the above snippet in every standalone script. Alternatively, you can put it in a script of its own, and run it before running any other script.

Note on projects

The checkpoint package is designed to be used with projects, which are directories that contain the R code and output associated with the tasks you're working on. If you use RStudio, you will probably be aware of the concept, but the same applies for many other programming editors and IDEs including Visual Studio Code, Notepad++ and Sublime Text.

When it is run, create_checkpoint scans all R files inside a given project to determine what packages your code requires. The default project is the current directory ".".

If you do not have an actual project open, this will usually expand to your R user directory (~/<username> on Unix/Linux and MacOS, or C:\Users\<username>\Documents on Windows). For most people, this means that the function will scan through all the projects they have on their machine, which can lead to checkpointing a very large number of packages. Because of this, you should ensure that you are not in your user directory when you run checkpoint. A mitigating factor is that this should happen only once, as long as the checkpoint directory remains intact.

Checkpointing the R version

For an even more stringent form of reproducibility, you can use the following:

library(checkpoint)
checkpoint("2020-01-01", r_version="3.6.2")  # replace with desired date and R version

This requires that anyone running the script must be using the specified version of R. The benefit of this is because changes in R over time can affect reproducibility just like changes in third-party packages, so by restricting the script to only one R version, we remove another possible source of variation. However, R itself is usually very stable, and requiring a specific version can be excessively demanding especially in locked-down IT environments. For this reason, specifying the R version is optional.

Using knitr and rmarkdown with checkpoint

checkpoint will automatically add the rmarkdown package as a dependency if it finds any Rmarkdown-based files (those with extension .Rmd, .Rpres or .Rhtml) in your project. This allows you to continue working with such documents after checkpointing.

Resetting your session

To reset your session to the way it was before checkpointing, call uncheckpoint(). Alternatively, you can simply restart R.

Managing checkpoints

To update an existing checkpoint, for example if you need new packages installed, call create_checkpoint() again. Any existing packages will remain untouched.

The functions delete_checkpoint() and delete_all_checkpoints() allow you to remove checkpoint directories that are no longer required. They check that the checkpoint(s) in question are not actually in use before deleting.

Each time create_checkpoint() is run, it saves a series of json files in the main checkpoint directory. These are outputs from the pkgdepends package, which checkpoint uses to perform the actual package installation, and can help you debug any problems that may occur.

  1. <date>_<time>_refs.json: Packages to be installed into the checkpoint
  2. <date>_<time>_config.json: Configuration parameters for the checkpoint
  3. <date>_<time>_resolution.json: Dependency resolution result
  4. <date>_<time>_solution.json: Solution to package dependencies
  5. <date>_<time>_downloads.json: Download result
  6. <date>_<time>_install_plan.json: Package install plan
  7. <date>_<time>_installs.json: Final installation result

For more information, see the help for pkgdepends::pkg_installation_proposal.

Installation

checkpoint is on CRAN:

install.packages("checkpoint")

The development version of checkpoint is on GitHub:

install.packages("devtools")
devtools::install_github("RevolutionAnalytics/checkpoint")

More information

Project website

https://github.com/RevolutionAnalytics/checkpoint

Issues

Post an issue on the Issue tracker at https://github.com/RevolutionAnalytics/checkpoint/issues

Checkpoint server

https://github.com/RevolutionAnalytics/checkpoint-server

Made by

Microsoft

Code of conduct

This project has adopted the Microsoft Open Source Code of Conduct. For more information see the Code of Conduct FAQ or contact [email protected] with any additional questions or comments.

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