一种有效的CUDA gpu嵌套线程级并行的矢量化方法

Shixiong Xu, David Gregg
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引用次数: 0

摘要

嵌套线程级并行(TLP)在实际应用程序中非常普遍。例如,在针对异构加速器的Rodinia基准测试中,75%(19个中的14个)应用程序包含嵌套线程级并行性的内核。在C-to-CUDA编译(本文称为OpenACC)中,将封闭的嵌套并行性有效地映射到GPU线程变得越来越重要。这个映射问题包括两个方面:合适的执行模型和有效的嵌套并行映射策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Vectorization Approach to Nested Thread-level Parallelism for CUDA GPUs
Nested thread-level parallelism (TLP) is pervasive in real applications. For example, 75% (14 out of 19) of the applications in the Rodinia benchmark for heterogeneous accelerators contain kernels with nested thread-level parallelism. Efficiently mapping the enclosed nested parallelism to the GPU threads in the C-to-CUDA compilation (OpenACC in this paper) is becoming more and more important. This mapping problem is two folds: suitable execution models and efficient mapping strategies of the nested parallelism.
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