BLACK LIVES MATTER
Join us and donate
The premier IDE for R
RStudio anywhere using a web browser
Put Shiny applications online
Shiny, R Markdown, Tidyverse and more
Do, share, teach and learn data science
An easy way to access R packages
Let us host your Shiny applications
A single home for R & Python Data Science Teams
Scale, develop, and collaborate across R & Python
Easily share your insights
Control and distribute packages
RStudio
RStudio Server
Shiny Server
R Packages
RStudio Cloud
RStudio Public Package Manager
shinyapps.io
RStudio Team
RStudio Workbench
RStudio Connect
RStudio Package Manager
rstudio::conf 2018 R Markdown
Beyond R: Using R Markdown with python, sql, bash, and more
February 26, 2018
This talk gives an overview of three major use cases for multilingual RMarkdown: building self-documenting data pipelines, rapidly prototyping data science assets, and building ad hoc reports. Our focus is on why multilingual Rmd is valuable *in addition to* the reasons Rmdis already a valuable format (a good general case for Rmd exists here.) The case for multilingual Rmd focuses on flexibility, collaboration, time-to-value, and indecisiveness (in a good way!). Three examples demonstrate why multi-lingual Rmd should be a part of a data scientist's toolkit.
Aaron’s background is in building business processes and data systems for commodity companies. Most recently he used R to automate finance, risk management, and reporting activities for a coffee trading business.