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A Class of Communication-avoiding Algorithms for Solving General Dense Linear Systems on CPU/GPU Parallel Machines

机译:一类用于避免CPU / GPU并行机上通用密集线性系统的通信避免算法

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We study several solvers for the solution of general linear systems where the main objective is to reduce the communication overhead due to pivoting. We first describe two existing algorithms for the LU factorization on hybrid CPU/GPU architectures. The first one is based on partial pivoting and the second uses a random preconditioning of the original matrix to avoid pivoting. Then we introduce a solver where the panel factorization is performed using a communication-avoiding pivoting heuristic while the update of the trailing submatrix is performed by the GPU. We provide performance comparisons and tests on accuracy for these solvers on current hybrid multicore-GPU parallel machines.
机译:我们研究了通用线性系统解决方案的几种求解器,其主要目的是减少由于枢转而引起的通信开销。我们首先描述两种用于混合CPU / GPU架构上的LU分解的现有算法。第一个基于部分旋转,第二个使用原始矩阵的随机预处理来避免旋转。然后,我们介绍了一种求解器,其中使用避免通信的透视启发式算法执行面板分解,而尾随子矩阵的更新由GPU执行。我们在当前的混合多核GPU并行机上为这些求解器提供性能比较和准确性测试。

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