首页> 外文会议>IEEE High Performance Extreme Computing Conference >LLMapReduce: Multi-level map-reduce for high performance data analysis
【24h】

LLMapReduce: Multi-level map-reduce for high performance data analysis

机译:LLMapReduce:用于高性能数据分析的多级map-reduce

获取原文

摘要

The map-reduce parallel programming model has become extremely popular in the big data community. Many big data workloads can benefit from the enhanced performance offered by supercomputers. LLMapReduce provides the familiar map-reduce parallel programming model to big data users running on a supercomputer. LLMapReduce dramatically simplifies map-reduce programming by providing simple parallel programming capability in one line of code. LLMapReduce supports all programming languages and many schedulers. LLMapReduce can work with any application without the need to modify the application. Furthermore, LLMapReduce can overcome scaling limits in the map-reduce parallel programming model via options that allow the user to switch to the more efficient single-program-multiple-data (SPMD) parallel programming model. These features allow users to reduce the computational overhead by more than 10x compared to standard map-reduce for certain applications. LLMapReduce is widely used by hundreds of users at MIT. Currently LLMapReduce works with several schedulers such as SLURM, Grid Engine and LSF.
机译:映射减少并行编程模型已在大数据社区中变得非常流行。超级计算机提供的增强性能可以使许多大数据工作负载受益。 LLMapReduce为在超级计算机上运行的大数据用户提供了熟悉的map-reduce并行编程模型。 LLMapReduce通过在一行代码中提供简单的并行编程功能,极大地简化了map-reduce编程。 LLMapReduce支持所有编程语言和许多调度程序。 LLMapReduce可以与任何应用程序一起使用,而无需修改应用程序。此外,LLMapReduce通过允许用户切换到更有效的单程序多数据(SPMD)并行编程模型的选项,可以克服map-reduce并行编程模型中的缩放限制。与某些应用程序的标准map-reduce相比,这些功能使用户可以将计算开销减少10倍以上。 LLMapReduce已被MIT的数百个用户广泛使用。当前,LLMapReduce可与多个调度程序一起使用,例如SLURM,Grid Engine和LSF。

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