Difference between revisions of "Performance & Benchmark"

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Revision as of 18:11, 26 June 2018

If one thing CUVI gives you, it's performance boost over competitive libraries and solutions. Using GPGPU as the underlying hardware, Imaging and Vision modules get maximum benefit due to their inherent parallel algorithms. In addition to cost cutting on CPU-based clusters, CUVI gives up to 15x speedup over Intel IPP.

Applications using CUVI are generally ten times faster than their CPU counterpart. CUVI framework also gives the ease to scale the application on more than one GPU making it as fast as you want.

1080p 4k
demosaicDFPD 1707.94 fps 389.68fps
demosaicDFPD 1707.94 fps 389.68fps
demosaicDFPD 1707.94 fps 389.68fps
demosaicDFPD 1707.94 fps 389.68fps
demosaicDFPD 1707.94 fps 389.68fps