性能嵌入:一种基于相似性的性能优化转移调优方法

Lukas Trümper, Tal Ben-Nun, Philipp Schaad, A. Calotoiu, T. Hoefler
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引用次数: 1

摘要

性能优化是一项越来越具有挑战性但又经常重复的任务。虽然每个平台都有自己的怪癖,但底层代码转换依赖于跨应用程序重复出现的数据移动和计算特征。本文提出通过构造子程序的嵌入空间来利用这些相似性。连续空间分别通过符号代码分析和性能分析捕获循环巢的静态和动态属性。性能嵌入可以在应用程序之间直接传递性能调优的知识,这可以通过自动调优或定制的改进来实现。我们在深度神经网络、密集和稀疏线性代数组成以及数值天气预报模板的案例研究中展示了这种转移调谐方法。传输调优将搜索复杂度降低了多达4个数量级,并且在稀疏密集矩阵乘法方面优于MKL库。结果显示了程序特征和优化之间的明确对应关系,优于先前的专业的最先进的方法,并且超越了它们的能力。
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Performance Embeddings: A Similarity-Based Transfer Tuning Approach to Performance Optimization
Performance optimization is an increasingly challenging but often repetitive task. While each platform has its quirks, the underlying code transformations rely on data movement and computational characteristics that recur across applications. This paper proposes to leverage those similarities by constructing an embedding space for subprograms. The continuous space captures both static and dynamic properties of loop nests via symbolic code analysis and performance profiling, respectively. Performance embeddings enable direct knowledge transfer of performance tuning between applications, which can result from autotuning or tailored improvements. We demonstrate this transfer tuning approach on case studies in deep neural networks, dense and sparse linear algebra compositions, and numerical weather prediction stencils. Transfer tuning reduces the search complexity by up to four orders of magnitude and outperforms the MKL library in sparse-dense matrix multiplication. The results exhibit clear correspondences between program characteristics and optimizations, outperforming prior specialized state-of-the-art approaches and generalizing beyond their capabilities.
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