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Heterogeneous Computing for Data Stream Mining

机译:数据流挖掘的异构计算

摘要

Graphical Processing Units are de-facto standard for acceleration of data parallel tasks in high performance computing. They are widely used to accelerate batch machine learning algorithms. High-end discrete GPUs are characterized by a very high number of cores (thousands), high bandwidth memory optimized for the stream access and high power requirements. Integrated GPUs are characterized by a medium number of cores (hundreds), medium bandwidth memory shared with CPU optimized for the random access and low power requirements. Data stream processing applications are often required to provide response within the limited time frame, operate on data in relatively small increments and have strict power requirements if deployed on the embedded devices. This work evaluates performance of integrated and discrete GPUs belonging to the same chip family on several variants of k-nearest neighbours algorithm over sliding window and stochastic gradient descent using OpenCL and novel Heterogeneous System Architecture platforms. We conclude that integrated GPUs provide a niche solution catering for to small work sizes that offers better power efficiency and simplicity of deployment.
机译:图形处理单元是事实上的标准,用于在高性能计算中加速数据并行任务。它们被广泛用于加速批处理机器学习算法。高端分立GPU的特点是具有大量内核(数千个),针对流访问和高功率需求进行了优化的高带宽内存。集成GPU的特点是具有中等数量的内核(数百个),与CPU共享的中等带宽的内存,这些内存针对随机访问和低功耗要求进行了优化。数据流处理应用程序通常需要在有限的时间范围内提供响应,以相对较小的增量对数据进行操作,并且如果部署在嵌入式设备上,则具有严格的电源要求。这项工作使用OpenCL和新颖的异构系统架构平台,在滑动窗口和随机梯度下降的情况下,评估了k近邻算法的多个变体上属于同一芯片系列的集成和离散GPU的性能。我们得出的结论是,集成GPU提供了一种适合小规模工作的小众解决方案,可提供更好的电源效率和简化的部署。

著录项

  • 作者

    Petko Vladimir;

  • 作者单位
  • 年度 2016
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
  • 中图分类

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