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首页> 外文期刊>IEEE Transactions on Computers >Hotness- and Lifetime-Aware Data Placement and Migration for High-Performance Deep Learning on Heterogeneous Memory Systems
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Hotness- and Lifetime-Aware Data Placement and Migration for High-Performance Deep Learning on Heterogeneous Memory Systems

机译:异构内存系统高性能深度学习的热敏和寿命感知数据放置和迁移

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Heterogeneous memory systems that comprise memory nodes with disparate architectural characteristics (e.g., DRAM and high-bandwidth memory (HBM)) have surfaced as a promising solution in a variety of computing domains ranging from embedded to high-performance computing. Since deep learning (DL) is one of the most widely-used workloads in various computing domains, it is crucial to explore efficient memory management techniques for DL applications that execute on heterogeneous memory systems. Despite extensive prior works on system software and architectural support for efficient DL, it still remains unexplored to investigate heterogeneity-aware memory management techniques for high-performance DL on heterogeneous memory systems. To bridge this gap, we analyze the characteristics of representative DL workloads on a real heterogeneous memory system. Guided by the characterization results, we propose HALO, hotness- and lifetime-aware data placement and migration for high-performance DL on heterogeneous memory systems. Through quantitative evaluation, we demonstrate the effectiveness of HALO in that it significantly outperforms various memory management policies (e.g., 28.2 percent higher performance than the HBM-Preferred policy) supported by the underlying system software and hardware, achieves the performance comparable to the ideal case with infinite HBM, incurs small performance overheads, and delivers high performance across a wide range of application working-set sizes.
机译:包括具有不同架构特征的存储器节点的异构存储器系统(例如,DRAM和高带宽存储器(HBM))已经浮出为从嵌入到高性能计算的各种计算域中的有希望的解决方案。由于深度学习(DL)是各种计算领域中最广泛使用的工作负载之一,因此探索在异构内存系统上执行的DL应用的有效内存管理技术至关重要。尽管对系统软件和架构支持进行了广泛的有效,但仍然仍然未探讨异构内存系统上的高性能DL的异质性感知内存管理技术。为了弥合这种差距,我们分析了真正的异构内存系统上代表性DL工作负载的特征。以特征结果为指导,我们提出了在异构内存系统上的高性能DL的光环,热情和寿命感知的数据放置和迁移。通过定量评估,我们展示了光环的有效性,因为它显着优于底层系统软件和硬件支持的各种内存管理策略(例如,比HBM优先策略的比例高出28.2%),实现了与理想情况相当的性能相当具有无限HBM,引发小型性能开销,并在各种应用程序工作集尺寸方面提供高性能。

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