The hardware and bandwidth for this mirror is donated by METANET, the Webhosting and Full Service-Cloud Provider.
If you wish to report a bug, or if you are interested in having us mirror your free-software or open-source project, please feel free to contact us at mirror[@]metanet.ch.

git2rdata git2rdata logo

CRAN status Project Status: Active – The project has reached a stable, usable state and is being actively developed. lifecycle ROpenSci review Licence minimal R version DOI codecov GitHub forks GitHub stars GitHub code size in bytes GitHub repo size

Please visit the git2rdata website at https://ropensci.github.io/git2rdata/. The vignette code on the website link to a rendered version of the vignette. Functions have a link to their help file.

Rationale

The git2rdata package is an R package for writing and reading dataframes as plain text files. A metadata file stores important information.

  1. Storing metadata allows to maintain the classes of variables. By default, git2rdata optimizes the data for file storage. The optimization is most effective on data containing factors. The optimization makes the data less human readable. The user can turn this off when they prefer a human readable format over smaller files. Details on the implementation are available in vignette("plain_text", package = "git2rdata").
  2. Storing metadata also allows smaller row based diffs between two consecutive commits. This is a useful feature when storing data as plain text files under version control. Details on this part of the implementation are available in vignette("version_control", package = "git2rdata"). Although we envisioned git2rdata with a git workflow in mind, you can use it in combination with other version control systems like subversion or mercurial.
  3. git2rdata is a useful tool in a reproducible and traceable workflow. vignette("workflow", package = "git2rdata") gives a toy example.
  4. vignette("efficiency", package = "git2rdata") provides some insight into the efficiency of file storage, git repository size and speed for writing and reading.

Why Use Git2rdata?

Talk About git2rdata at

useR!2019 in Toulouse, France

Installation

Install from CRAN

install.packages("git2rdata")

Install the development version from GitHub

# installation requires the "remotes" package
# install.package("remotes")

# install with vignettes (recommended)
remotes::install_github(
  "ropensci/git2rdata", 
  build = TRUE, 
  dependencies = TRUE, 
  build_opts = c("--no-resave-data", "--no-manual")
)
# install without vignettes
remotes::install_github("ropensci/git2rdata"))

Usage in Brief

The user stores dataframes with write_vc() and retrieves them with read_vc(). Both functions share the arguments root and file. root refers to a base location where to store the dataframe. It can either point to a local directory or a local git repository. file is the file name to use and can include a path relative to root. Make sure the relative path stays within root.

# using a local directory
library(git2rdata)
root <- "~/myproject" 
write_vc(my_data, file = "rel_path/filename", root = root)
read_vc(file = "rel_path/filename", root = root)
root <- git2r::repository("~/my_git_repo") # git repository

More details on store dataframes as plain text files in vignette("plain_text", package = "git2rdata").

# using a git repository
library(git2rdata)
repo <- repository("~/my_git_repo")
pull(repo)
write_vc(my_data, file = "rel_path/filename", root = repo, stage = TRUE)
commit(repo, "My message")
push(repo)
read_vc(file = "rel_path/filename", root = repo)

Please read vignette("version_control", package = "git2rdata") for more details on using git2rdata in combination with version control.

What Data Sizes Can Git2rdata Handle?

The recommendation for git repositories is to use files smaller than 100 MiB, a repository size less than 1 GiB and less than 25k files. The individual file size is the limiting factor. Storing the airbag dataset (DAAG::nassCDS) with write_vc() requires on average 68 (optimized) or 97 (verbose) byte per record. The file reaches the 100 MiB limit for this data after about 1.5 million (optimized) or 1 million (verbose) observations.

Storing a 90% random subset of the airbag dataset requires 370 kiB (optimized) or 400 kiB (verbose) storage in the git history. Updating the dataset with other 90% random subsets requires on average 60 kiB (optimized) to 100 kiB (verbose) per commit. The git history reaches the limit of 1 GiB after 17k (optimized) to 10k (verbose) commits.

Your mileage might vary.

Citation

Please use the output of citation("git2rdata")

Folder Structure

git2rdata
├── .github 
├─┬ inst
│ └── efficiency
├── man 
├── man-roxygen 
├── pkgdown
├── R
├─┬ tests
│ └── testthat
└── vignettes

Contributions

git2rdata welcomes contributions. Please read our Contributing guidelines first. The git2rdata project has a Contributor Code of Conduct. By contributing to this project, you agree to abide by its terms.

rOpenSci footer

These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.