MARTA: Multi-configuration Assembly pRofiler and Toolkit for performance Analysis

Marcos Horro, L. Pouchet, Gabriel Rodríguez, J. Touriño
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引用次数: 1

Abstract

Benchmarking to characterize specific software or hardware features is an error-prone, arduous and repetitive task. Designing a specialized experimental setup frequently requires writing new scripts or ad-hoc programs in order to properly exhibit interesting performance effects, using code changes and hardware events measurements. These artifacts may have limited reusability for subsequent experiments, since they are dependent on specific problems and, in some cases, platforms. To improve productivity and reproducibility of such experiments, which are often investigative in nature, we introduce MARTA: a fully customizable toolkit that aims to increase productivity by generating benchmark templates, compiling them, and profiling the regions of interest (RoI) specified using hardware events, and performing static code analysis. MARTA can also be applied on existing code regions of interest, it only requires to write a simple configuration file. In an orthogonal dimension, the system is able to run various statistical analyses on the measurements collected. MARTA uses data mining and machine learning or AI-based techniques for classification and regression, automatically extracting the features of the experimental setup which have the most impact on performance or whichever other metric of interest, given a large set of experiments and dimensions to consider. These post-processing tasks are valuable for deriving knowledge from experiments and are not included in most profiling tools. We also provide a set of cases of study to illustrate the ability of MARTA to conveniently create a reliable and reproducible setup for high-performance computing experiments, investigating three vastly different performance effects on modern processors.
用于性能分析的多配置汇编分析器和工具包
对特定软件或硬件特性进行基准测试是一项容易出错、艰巨且重复的任务。设计一个专门的实验设置经常需要编写新的脚本或特别的程序,以便使用代码更改和硬件事件测量来适当地展示有趣的性能效果。这些工件对于后续实验的可重用性可能有限,因为它们依赖于特定的问题,在某些情况下,依赖于平台。为了提高此类实验的生产率和再现性(通常是调查性的),我们引入了MARTA:一个完全可定制的工具包,旨在通过生成基准模板、编译它们、分析使用硬件事件指定的感兴趣区域(RoI)以及执行静态代码分析来提高生产率。MARTA也可以应用于现有的感兴趣的代码区域,它只需要编写一个简单的配置文件。在正交维度中,系统能够对收集到的测量数据进行各种统计分析。MARTA使用数据挖掘和机器学习或基于人工智能的技术进行分类和回归,自动提取实验设置的特征,这些特征对性能或任何其他感兴趣的指标影响最大,给定大量的实验和维度需要考虑。这些后处理任务对于从实验中获得知识是有价值的,并且不包括在大多数分析工具中。我们还提供了一组研究案例,以说明MARTA能够方便地为高性能计算实验创建可靠且可重复的设置,并研究现代处理器上三种截然不同的性能影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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