Applies To
Revolution Analytics

R is not inherently a multi-threaded application, so in normal circumstances it only uses one processor at a time. There are several options for parallel programming that provide value: 1. Revolution R Enterprise will use all available processors for some common math operations, like matrix multiplication. (It is linked with multi-threaded math libraries which improve performance on multi-core Intel processors.) 2. The RevoScaleR package, shipped with Revolution R Enterprise, offers parallel external memory algorithms and a very efficient data file format (.xdf). 3. You can also write explicit parallel code using ParallelR. See CRAN Task View: High-Performance and Parallel Computing with R for a list of options: http://cran.r-project.org/web/views/HighPerformanceComputing.html 4. The RevoScaleR package included with Revolution R Enterprise provides new tools for parallel and distributed computing with R that can scale out.   

Need more help?

Want more options?

Explore subscription benefits, browse training courses, learn how to secure your device, and more.