hgpu.org » nVidia GeForce GTX 965 M
Jyh-Miin Lin
Tags: Algorithms, CUDA, FFT, Heterogeneous systems, Image processing, Image reconstruction, MRI, nVidia, nVidia GeForce GTX 965 M, OpenCL, Package, Python, Tesla K80
March 31, 2018 by hgpu
Recent source codes
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Most viewed papers (last 30 days)
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