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
Let us host your Shiny applications
The premier software bundle for data science teams
RStudio for the Enterprise
Connect data scientists with decision makers
Control and distribute packages
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.