新兴大数据工作负载的代理基准

Reena Panda, L. John
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引用次数: 22

摘要

计算机系统的早期设计空间评估通常使用性能模型进行,如详细模拟器、基于rtl的模型等。不幸的是,在详细的性能模型上运行许多新兴应用程序是非常具有挑战性的(通常是不可能的),因为它们的应用程序软件堆栈非常复杂,运行时间非常长,系统依赖关系以及早期性能模型的速度/潜力有限。为了克服对复杂、长时间运行的数据库应用程序进行基准测试的挑战,我们提出了一种快速高效的代理生成方法,PerfProx,它可以生成微型代理基准,代表真实数据库应用程序的性能,并且可以快速收敛到结果,不需要任何复杂的软件堆栈支持。过去对代理生成的研究使用了详细的微架构独立度量,这些度量来源于详细的功能模拟器,通常难以为许多新兴应用生成。PerfProx使用主要来自硬件性能计数器的性能指标来实现快速高效的代理生成。我们在三个现代的、真实的SQL和NoSQL数据库(Cassandra、MongoDB和MySQL)上评估了拟议的代理生成方法,这些数据库在不同的硬件平台和缓存/TLB配置上运行数据服务和数据分析类应用程序。代理基准测试模拟原始数据库应用程序的性能(IPC),准确率为94.2%(平均)。我们进一步证明代理在其他几个关键指标上模拟了原始应用程序的性能,同时显著减少了指令计数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Proxy Benchmarks for Emerging Big-Data Workloads
Early design-space evaluation of computer-systems is usually performed using performance models such as detailed simulators, RTL-based models etc. Unfortunately, it is very challenging (often impossible) to run many emerging applications on detailed performance models owing to their complex application software-stacks, significantly long run times, system dependencies and the limited speed/potential of early performance models. To overcome these challenges in benchmarking complex, long-running database applications, we propose a fast and efficient proxy generation methodology, PerfProx that can generate miniature proxy benchmarks, which are representative of the performance of real-world database applications and yet, converge to results quickly and do not need any complex software-stack support. Past research on proxy generation utilizes detailed micro-architecture independent metrics derived from detailed functional simulators, which are often difficult to generate for many emerging applications. PerfProx enables fast and efficient proxy generation using performance metrics derived primarily from hardware performance counters. We evaluate the proposed proxy generation approach on three modern, real-world SQL and NoSQL databases, Cassandra, MongoDB and MySQL running both the data-serving and data-analytics class of applications on different hardware platforms and cache/TLB configurations. The proxy benchmarks mimic the performance (IPC) of the original database applications with ∼94.2% (avg) accuracy. We further demonstrate that the proxies mimic original application performance across several other key metrics, while significantly reducing the instruction counts.
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