Quantifying the Performance Impact of Memory Latency and Bandwidth for Big Data Workloads

R. Clapp, Martin Dimitrov, Karthik Kumar, Vish Viswanathan, Thomas Willhalm
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引用次数: 30

Abstract

In recent years, DRAM technology improvements have scaled at a much slower pace than processors. While server processor core counts grow from 33% to 50% on a yearly cadence, DDR 3/4 memory channel bandwidth has grown at a slower rate, and memory latency has remained relatively flat for some time. Combined with new computing paradigms such as big data analytics, which involves analyzing massive volumes of data in real time, there is a trend of increasing pressure on the memory subsystem. This makes it important for computer architects to understand the sensitivity of the performance of big data workloads to memory bandwidth and latency, and how these workloads compare to more conventional workloads. To address this, we present straightforward analytic equations to quantify the impact of memory bandwidth and latency on workload performance, leveraging measured data from performance counters on real systems. We demonstrate how the values of the components of these equations can be used to classify different workloads according to their inherent bandwidth requirement and latency sensitivity. Using this performance model, we show the relative sensitivities of big data, high-performance computing, and enterprise workload classes to changes in memory bandwidth and latency.
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量化大数据工作负载下内存延迟和带宽对性能的影响
近年来,DRAM技术的发展速度比处理器慢得多。虽然服务器处理器核心数每年从33%增长到50%,但DDR 3/4内存通道带宽的增长速度较慢,并且内存延迟在一段时间内保持相对平稳。再加上新的计算范式,如大数据分析,需要实时分析大量数据,内存子系统的压力有增加的趋势。这使得计算机架构师了解大数据工作负载的性能对内存带宽和延迟的敏感性以及这些工作负载与更传统的工作负载的比较变得非常重要。为了解决这个问题,我们提供了简单的分析方程来量化内存带宽和延迟对工作负载性能的影响,利用实际系统上性能计数器的测量数据。我们演示了如何使用这些方程的组件的值来根据其固有的带宽需求和延迟灵敏度对不同的工作负载进行分类。使用这个性能模型,我们展示了大数据、高性能计算和企业工作负载类别对内存带宽和延迟变化的相对敏感性。
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