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Offline library adaptation using automatically generated heuristics

机译:脱机库适应自动生成的启发式

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Automatic tuning has emerged as a solution to provide high-performance libraries for fast changing, increasingly complex computer architectures. We distinguish offline adaptation (e.g., in ATLAS) that is performed during installation without the full problem description from online adaptation (e.g., in FFTW) that is performed at runtime. Offline adaptive libraries are simpler to use, but, unfortunately, writing the adaptation heuristics that power them is a daunting task. The overhead of online adaptive libraries, on the other hand, makes them unsuitable for a number of applications. In this paper, we propose to automatically generate heuristics in the form of decision trees using a statistical classifier, effectively converting an online adaptive library into an offline one. As testbed we use Spiral-generated adaptive transform libraries for current multicores with vector extensions. We show that replacing the online search with generated decision trees maintains a performance competitive with vendor libraries while allowing for a simpler interface and reduced computation overhead.
机译:自动调整已成为一种为提供快速变化,越来越复杂的计算机架构提供高性能库的解决方案。我们区分在安装期间执行的离线适应(例如,在ATLAS中),而在运行时执行的在线适应(例如,在FFTW中)的完整问题描述。离线自适应库更简单使用,但不幸的是,写作权力的适应启发式是令人生畏的任务。另一方面,在线自适应库的开销使它们不适合许多应用程序。在本文中,我们建议使用统计分类器自动以决策树的形式生成启发式,并将在线自适应库有效地将在线自适应库转换为脱机。如测试平台,我们使用螺旋生成的自适应变换库,用于带有矢量扩展的当前多设备。我们显示使用生成的决策树替换在线搜索,维护与供应商库的竞争性能,同时允许更简单的界面和减少的计算开销。

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