R is not inherently a multi-threaded application, so in normal circumstances it only uses one processor at a time. 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.
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:QA: How do Revolution R Enterprise and RevoScaleR use multiple CPUs?
Applies To
Revolution AnalyticsNeed more help?
Want more options?
Explore subscription benefits, browse training courses, learn how to secure your device, and more.
Communities help you ask and answer questions, give feedback, and hear from experts with rich knowledge.