Join us at rstudio::conf(2022) to sharpen your R skills. | July 25-28th in D.C.
Learn More
rstudio::conf(2022) | July 25-28th in D.C. 7/25 - 7/28 in D.C.
The premier IDE for R
RStudio anywhere using a web browser
Put Shiny applications online
Shiny, R Markdown, Tidyverse and more
Next level training for you and your team
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 Academy
RStudio Cloud
RStudio Public Package Manager
shinyapps.io
RStudio Team
RStudio Workbench
RStudio Connect
RStudio Package Manager
rstudio::conf 2019 distributed
RStudio Job Launcher Changing where we run R stuff
January 25, 2019
RStudio Job Launcher provides the ability to start processes within batch processing systems and container orchestration platforms. In this talk, we will explore what is possible when you have the ability to launch containerized R sessions including scaling, isolating, and customizing environments. We will review examples of launching ad-hoc jobs as well as dockerized R sessions in Kubernetes using the Job Launcher.
Darby is a QA engineer for multiple teams at RStudio. He has a passion for improving products, creating efficient processes, and helping people. Before joining RStudio he worked primarily in the video game industry.