首页> 外文期刊>Sustainable Computing >Prediction assisted runtime based energy tuning mechanism for HPC applications
【24h】

Prediction assisted runtime based energy tuning mechanism for HPC applications

机译:适用于HPC应用的基于预测的基于运行时的能量调整机制

获取原文
获取原文并翻译 | 示例
           

摘要

Performance tuning has become a crucial step for large-scale HPC applications, including HPC based Cloud applications. A need for an energy-aware autotuning solution has recently widened research thrusts among energy conscious scalable application developers. There exist a few standalone energy reduction approaches such as reducing MPI wait times, diligently selecting CPU frequencies, efficiently mapping workloads to CPUs, and so forth for HPC applications. Implementing energy-aware autotuning mechanisms for HPC applications, however, might require multiple executions if exhaustively tested. This paper proposes a prediction assisted energy tuning mechanism named Random Forest Modeling based Compiler Optimization Switch Selection mechanism (RFM-COSS) for HPC applications. RFM-COSS was implemented using RFM algorithm and its variants, namely RFM-SRC and RFM-Ranger. The training datasets of RFM-COSS were created using DiscretePSO algorithm for a few candidate benchmarks such as hpcc, MPI-Matrix, and Jacobi. The experimental results of the proposed RFM-COSS prediction mechanism achieved 17.7 to 88.39 percentage points of energy efficiencies for HPC applications.
机译:性能调整已成为大规模HPC应用程序(包括基于HPC的云应用程序)的关键步骤。最近,对能量敏感型自动调整解决方案的需求扩大了对能量敏感型可扩展应用程序开发人员的研究重点。对于HPC应用程序,存在一些独立的节能方法,例如减少MPI等待时间,认真选择CPU频率,有效地将工作负载映射到CPU等。但是,如果进行了详尽的测试,则为HPC应用程序实现能量感知型自动调整机制可能需要多次执行。本文针对HPC应用提出了一种基于预测辅助的能量调整机制,称为基于随机森林模型的编译器优化开关选择机制(RFM-COSS)。 RFM-COSS是使用RFM算法及其变体RFM-SRC和RFM-Ranger实现的。 RFM-COSS的训练数据集是使用DiscretePSO算法针对一些候选基准(例如hpcc,MPI-Matrix和Jacobi)创建的。提出的RFM-COSS预测机制的实验结果为HPC应用实现了17.7至88.39个百分点的能源效率。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号