COMPARING PARALLEL OPERATION PERFORMANCE FOR PIXEL PROCESSING IN MOBILE NVIDIA GPU AND INTEL CPU IN WINDOWS 10
Journal Title: Scientific Bulletin, Series: Electronics and Computer Science - Year 2016, Vol 16, Issue 2
Abstract
Parallel processing is necessary in many computer science domains. Graphics cards, even non-professional ones, are designed to perform very fast parallel processing tasks. This paper will provide an overview of recent mobile NVIDIA Graphics Processing Unit architecture, the benefits for using a GPU in parallel programming and will investigate the effect of operation grouping on the parallel processing performance of image pixels. The GPU performance will be compared to that of a multi core CPU designed for use in mobile platforms, in a pixel targeting image-processing algorithm.
Authors and Affiliations
Valeriu Ionescu
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