hgpu.org » nVidia GeForce GTX 295
Yongchao Liu, Douglas Maskell, Bertil Schmidt
Tags: Bioinformatics, Biology, Computational biology, CUDA, nVidia, nVidia GeForce GTX 280, nVidia GeForce GTX 295, Package, Smith-Waterman algorithm
November 4, 2010 by hgpu
Recent source codes
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