“银杏:用于高性能计算的现代线性算子代数框架”的再现计算结果报告

C. Balos
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引用次数: 0

摘要

Anzt等人的文章“Ginkgo:用于高性能计算的现代线性算子代数框架”提供了一个现代的、以线性算子为中心的、用于稀疏线性代数的c++库。本文的实验结果表明,Ginkgo是一个灵活且用户友好的框架,能够在最先进的GPU架构上实现高性能。在本报告中,安装了银杏库并复制了实验结果的一个子集。具体来说,我们重新做了Ginkgo Krylov线性解算器在NVIDIA A100和AMD MI100 gpu上实现的内存带宽的实验,并将结果与已发表的文章进行了比较。在完成比较后,发表的结果被认为是可重复的。
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Reproduced Computational Results Report for “Ginkgo: A Modern Linear Operator Algebra Framework for High Performance Computing”
The article titled “Ginkgo: A Modern Linear Operator Algebra Framework for High Performance Computing” by Anzt et al. presents a modern, linear operator centric, C++ library for sparse linear algebra. Experimental results in the article demonstrate that Ginkgo is a flexible and user-friendly framework capable of achieving high-performance on state-of-the-art GPU architectures. In this report, the Ginkgo library is installed and a subset of the experimental results are reproduced. Specifically, the experiment that shows the achieved memory bandwidth of the Ginkgo Krylov linear solvers on NVIDIA A100 and AMD MI100 GPUs is redone and the results are compared to what presented in the published article. Upon completion of the comparison, the published results are deemed reproducible.
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