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Data partitioning-based parallel irregular reductions

机译:基于数据分区的并行不规则归约

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摘要

Different parallelization methods for irregular reductions on shared memory multiprocessors have been proposed in the literature in recent years. We have classified all these methods and analyzed them in terms of a set of properties: data locality, memory overhead, exploited parallelism, and workload balancing. In this paper we propose several techniques to increase the amount of exploited parallelism and to introduce load balancing into an important class of these methods. Regarding parallelism, the proposed solution is based on the partial expansion of the reduction array. Load balancing is discussed in terms of two techniques. The first technique is a generic one, as it deals with any kind of load imbalance present in the problem domain. The second technique handles a special case of load imbalance which occurs whenever a large number of write operations are concentrated on small regions of the reduction arrays. Efficient implementations of the proposed optimizing solutions for a particular method are presented, experimentally tested on static and dynamic kernel codes, and compared with other parallel reduction methods.
机译:近年来在文献中提出了用于不规则减少共享存储器多处理器的不同并行化方法。我们对所有这些方法进行了分类,并根据一组属性对其进行了分析:数据局部性,内存开销,利用的并行性和工作负载平衡。在本文中,我们提出了几种技术来增加被利用的并行性的数量,并将负载平衡引入这些方法的重要一类。关于并行性,提出的解决方案基于约简阵列的部分扩展。根据两种技术讨论了负载平衡。第一种技术是通用技术,因为它可以解决问题域中存在的任何类型的负载不平衡问题。第二种技术处理负载不平衡的特殊情况,这种情况在大量写入操作集中在缩减数组的较小区域时就会发生。提出了针对特定方法的优化解决方案的有效实现,在静态和动态内核代码上进行了实验测试,并与其他并行归约方法进行了比较。

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