On occasion of the 10,000th R package: The eoda Top 10

R just passed another milestone: 10,000 packages on CRAN. From A3 to zyp, from ABC analysis to zero-inflated models – 10,000 R packages mean great variety and methods for almost every use case. On occasion of this event we collected the top 10 R packages in collaboration with the ones who should know best: our data scientists.

Our Top 10 R packages

  • Hmisc: This was one of the first R packages to be used at eoda on a regular basis. Today we barely use Hmisc anymore but nonetheless it had to be part of our top 10 simply for nostalgic reasons.
  • data.table: R as an in-memory database with data.table? Who said R was slow?
  • TraceR: Excellent profiling package. Will find every bottleneck.
  • dplyR: Not only fast when it comes to evaluation but also easy to master. Intuitive data management with R has a name – dplyR.
  • ggplot2: A guarantee for easily creating descriptive graphics.
  • magrittr: %>%. The pipe operater %>% turns complicated nested function calls into readable chains.
  • shiny: Interactive web application where programming in HTML and JavaScript can be done with little effort.
  • tidyr: Very good functionality for restructuring data. Particularly remarkable: the functions gather and spread for converting data from long to wide format or from wide to long format.
  • caret: This package unifies the data mining algorithms in one interface.
  • rcpp: A package that we don’t use extensively ourselves but is nevertheless indispensable in our top 10 list because it is an important component of many other great R packages.

We are already curious to see which R packages will become indispensable tools in the future and make it to the top 10 list on occasion of the 20,000th R package.

But for now, only that much: Congratulations to the world-wide R community and the R core team.

Published: 28. January 2017

Author

Christian Schreiner

Christian Schreiner is a marketing specialist at eoda GmbH. His responsibilities include data infrastructures and marketing solutions. In his spare time, he is interested in search engine optimization and trends in online communication.

Row edge-slant Shape Decorative svg added to top
Row edge-slant Shape Decorative svg added to bottom

Get started now:
We look forward to engaging with you.







    Scroll to Top