Parallel Studio can make many difficult tasks much easier, and have them perform better. Specifically, the Math Kernel Library is used to perform regression testing on data sets using five lines of code. As an alternate, regression testing using OpenMP is shown as an additional way to use Parallel Studio to solve machine learning problems. Rick Leinecker walks you through both in this video.
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