首页> 外文会议>IEEE/ACM international symposium on cluster, cloud and grid computing >An Evaluation of Unified Memory Technology on NVIDIA GPUs
【24h】

An Evaluation of Unified Memory Technology on NVIDIA GPUs

机译:对NVIDIA GPU的统一内存技术评估

获取原文

摘要

Unified Memory is an emerging technology which is supported by CUDA 6.X. Before CUDA 6.X, the existing CUDA programming model relies on programmers to explicitly manage data between CPU and GPU and hence increases programming complexity. CUDA 6.X provides a new technology which is called as Unified Memory to provide a new programming model that defines CPU and GPU memory space as a single coherent memory (imaging as a same common address space). The system manages data access between CPU and GPU without explicit memory copy functions. This paper is to evaluate the Unified Memory technology through different applications on different GPUs to show the users how to use the Unified Memory technology of CUDA 6.X efficiently. The applications include Diffusion3D Benchmark, Parboil Benchmark Suite, and Matrix Multiplication from the CUDA SDK Samples. We changed those applications to corresponding Unified Memory versions and compare those with the original ones. We selected the NVIDIA Keller K40 and the Jetson TK1, which can represent the latest GPUs with Keller architecture and the first mobile platform of NVIDIA series with Keller GPU. This paper shows that Unified Memory versions cause 10% performance loss on average. Furthermore, we used the NVIDIA Visual Profiler to dig the reason of the performance loss by the Unified Memory technology.
机译:统一的内存是CUDA 6.x支持的新兴技术。在CUDA 6.x之前,现有的CUDA编程模型依赖于程序员在CPU和GPU之间显式管理数据,因此提高了编程复杂性。 CUDA 6.x提供了一种新技术,称为统一内存,以提供一个新的编程模型,将CPU和GPU存储空间定义为单个相干内存(成像作为相同的公共地址空间)。系统管理CPU和GPU之间的数据访问,而无需显式内存复制功能。本文是通过不同GPU上的不同应用来评估统一的内存技术,以显示用户如何使用CUDA 6.x的统一内存技术。应用包括扩散3D基准,帕培勒基准套件和来自CUDA SDK样本的矩阵乘法。我们将这些应用程序更改为相应的统一内存版本,并将那些与原始的统一内存版本进行比较。我们选择了NVIDIA Keller K40和Jetson TK1,它可以代表与Keller架构的最新GPU和NVIDIA系列的第一平台与Keller GPU。本文显示统一内存版本平均造成10%的性能损失。此外,我们使用NVIDIA视觉分析器来挖掘统一内存技术的性能损失的原因。

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