docs.ropensci.org/DataPackageR

Preview meta tags from the docs.ropensci.org website.

Linked Hostnames

22

Thumbnail

Search Engine Appearance

Google

https://docs.ropensci.org/DataPackageR

Construct Reproducible Analytic Data Sets as R Packages

A framework to help construct R data packages in a reproducible manner. Potentially time consuming processing of raw data sets into analysis ready data sets is done in a reproducible manner and decoupled from the usual R CMD build process so that data sets can be processed into R objects in the data package and the data package can then be shared, built, and installed by others without the need to repeat computationally costly data processing. The package maintains data provenance by turning the data processing scripts into package vignettes, as well as enforcing documentation and version checking of included data objects. Data packages can be version controlled on GitHub, and used to share data for manuscripts, collaboration and reproducible research.



Bing

Construct Reproducible Analytic Data Sets as R Packages

https://docs.ropensci.org/DataPackageR

A framework to help construct R data packages in a reproducible manner. Potentially time consuming processing of raw data sets into analysis ready data sets is done in a reproducible manner and decoupled from the usual R CMD build process so that data sets can be processed into R objects in the data package and the data package can then be shared, built, and installed by others without the need to repeat computationally costly data processing. The package maintains data provenance by turning the data processing scripts into package vignettes, as well as enforcing documentation and version checking of included data objects. Data packages can be version controlled on GitHub, and used to share data for manuscripts, collaboration and reproducible research.



DuckDuckGo

https://docs.ropensci.org/DataPackageR

Construct Reproducible Analytic Data Sets as R Packages

A framework to help construct R data packages in a reproducible manner. Potentially time consuming processing of raw data sets into analysis ready data sets is done in a reproducible manner and decoupled from the usual R CMD build process so that data sets can be processed into R objects in the data package and the data package can then be shared, built, and installed by others without the need to repeat computationally costly data processing. The package maintains data provenance by turning the data processing scripts into package vignettes, as well as enforcing documentation and version checking of included data objects. Data packages can be version controlled on GitHub, and used to share data for manuscripts, collaboration and reproducible research.

  • General Meta Tags

    7
    • title
      Construct Reproducible Analytic Data Sets as R Packages • DataPackageR
    • Content-Type
      text/html; charset=UTF-8
    • charset
      utf-8
    • X-UA-Compatible
      IE=edge
    • viewport
      width=device-width, initial-scale=1, shrink-to-fit=no
  • Open Graph Meta Tags

    3
    • og:title
      Construct Reproducible Analytic Data Sets as R Packages
    • og:description
      A framework to help construct R data packages in a reproducible manner. Potentially time consuming processing of raw data sets into analysis ready data sets is done in a reproducible manner and decoupled from the usual R CMD build process so that data sets can be processed into R objects in the data package and the data package can then be shared, built, and installed by others without the need to repeat computationally costly data processing. The package maintains data provenance by turning the data processing scripts into package vignettes, as well as enforcing documentation and version checking of included data objects. Data packages can be version controlled on GitHub, and used to share data for manuscripts, collaboration and reproducible research.
    • og:image
      https://docs.ropensci.org/DataPackageR/logo.png
  • Link Tags

    7
    • apple-touch-icon
      /apple-touch-icon.png
    • icon
      /favicon-16x16.png
    • icon
      /favicon-32x32.png
    • stylesheet
      deps/bootstrap-5.3.1/bootstrap.min.css
    • stylesheet
      deps/font-awesome-6.5.2/css/all.min.css

Links

60