【24h】

Task Assignment in a Virtualized GPU Enabled Cloud

机译:启用虚拟化GPU中​​的任务分配

获取原文

摘要

Cloud computing vendors are beginning to offer GPU based high performance computing as a service. One approach uses virtual machines (VM), running in a hypervisor like VMware vSphere, equipped with virtual GPUs like Nvidia's vGPU solution. In this approach, multiple VMs running concurrently can share a single GPU. The number of VMs that share the GPU can be configured by the user/system administrator. Further, VMs can be re-assigned to GPUs, if more than one is available, dynamically. This approach allows tasks/jobs that use GPUs to run in individual VMs guaranteeing isolation whilst sharing resources. In a typical cloud environment with multiple servers each with one or more GPUs, finding an efficient, fast solution to the problem of placing VMs (i.e. VM-placement) on GPUs and moving them around as needed is extremely important to achieve high throughput of tasks while maximizing server utilization and minimizing task wait times. In this paper, we present the simulator we built to compare different solutions to the problem of VM-placement together with some early results.
机译:云计算供应商开始提供基于GPU的高性能计算作为服务。一种方法使用虚拟机(VM),在VMware vSphere等虚拟机管理程序中运行,配备了像NVIDIA的VGPU解决方案等虚拟GPU。在此方法中,同时运行的多个VM可以共享单个GPU。共享GPU的VM的数量可以由用户/系统管理员配置。此外,如果多于一个可动态地,可以将VM重新分配给GPU,动态可用。此方法允许任务/作业使用GPU在分享资源的单独VMS保证隔离中运行。在一个典型的云环境中,具有多个服务器,每个服务器都有一个或多个GPU,找到一个有效的,快速解决在GPU上放置VM(即VM-PLAINEMENT)并根据需要移动它们来实现高吞吐量的非常重要的是实现高吞吐量虽然最大化服务器利用率并最小化任务等待时间。在本文中,我们介绍了模拟器,我们建立了与一些早期结果一起比较不同的解决方案,以便与一些早期结果一起进行VM-indement的问题。

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