An Autotuning Protocol to Rapidly Build Autotuners

Pub Date : 2019-01-23 DOI:10.1145/3291527
Junhong Liu, Guangming Tan, Yulong Luo, Jiajia Li, Z. Mo, Ninghui Sun
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引用次数: 4

Abstract

Automatic performance tuning (Autotuning) is an increasingly critical tuning technique for the high portable performance of Exascale applications. However, constructing an autotuner from scratch remains a challenge, even for domain experts. In this work, we propose a performance tuning and knowledge management suite (PAK) to help rapidly build autotuners. In order to accommodate existing autotuning techniques, we present an autotuning protocol that is composed of an extractor, producer, optimizer, evaluator, and learner. To achieve modularity and reusability, we also define programming interfaces for each protocol component as the fundamental infrastructure, which provides a customizable mechanism to deploy knowledge mining in the performance database. PAK’s usability is demonstrated by studying two important computational kernels: stencil computation and sparse matrix-vector multiplication (SpMV). Our proposed autotuner based on PAK shows comparable performance and higher productivity than traditional autotuners by writing just a few tens of code using our autotuning protocol.
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快速构建自动调谐器的自动调谐协议
自动性能调优(Autotuning)对于Exascale应用程序的高可移植性能来说是一项日益重要的调优技术。然而,从头开始构建自动调谐器仍然是一个挑战,即使对领域专家来说也是如此。在这项工作中,我们提出了一个性能调优和知识管理套件(PAK)来帮助快速构建自动调优器。为了适应现有的自动调优技术,我们提出了一个由提取器、生产者、优化器、评估器和学习者组成的自动调优协议。为了实现模块化和可重用性,我们还为每个协议组件定义了编程接口作为基础架构,为在性能数据库中部署知识挖掘提供了可定制的机制。通过研究两个重要的计算内核:模板计算和稀疏矩阵向量乘法(SpMV),证明了PAK的可用性。我们提出的基于PAK的自动调谐器通过使用我们的自动调谐协议编写几十个代码,显示出与传统自动调谐器相当的性能和更高的生产力。
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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