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Concurrent computing / Computing / Parallel computing / Graphics hardware / Computer architecture / GPGPU / Video cards / Algorithms / CUDA / Sequential algorithm / Nvidia / Graphics processing unit
Date: 2009-08-27 22:50:17
Concurrent computing
Computing
Parallel computing
Graphics hardware
Computer architecture
GPGPU
Video cards
Algorithms
CUDA
Sequential algorithm
Nvidia
Graphics processing unit

Parallel algorithms for accurate sum and dot product on GPU Tomohiro SUZUKI∗ Interdisciplinary Graduate School of Medical and Engineering, University of Yamanashi Accurate summation and dot product algorithms of float

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