William F. Ogilvie, Pavlos Petoumenos, Z. Wang, Hugh Leather
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引用次数: 8

摘要

构建有效的优化启发式是一项具有挑战性的任务,通常需要开发人员几个月甚至几年才能完成。预测建模最近成为一种很有前途的解决方案,从训练数据中自动构建启发式,然而,每个平台都需要花费数月的时间才能获得这些数据。随着架构变化的步伐加快,这正成为一个越来越关键的问题。的确,如果找不到解决办法,我们将只能使用过时的启发式方法,无法从现代机器中提取最佳性能。在这项工作中,我们提出了一种用于自动启发式构造的低成本预测建模方法,该方法显著降低了这种训练开销。通常,在监督学习中,训练实例是随机选择的,不管它们携带多少有用的信息,但是这浪费了对产生的启发式质量贡献不大的部分空间的努力。另一方面,我们的方法使用主动学习来选择并只关注最有用的训练示例,从而减少了训练开销。我们通过自动创建一个模型来演示这种技术,该模型用于确定在基于代表性Cpu-Gpu的系统的不同问题维度上在哪个设备上执行四个并行程序。我们的方法非常简单而有效,使其成为广泛采用的有力候选。与最先进的技术相比,在高分类精度水平下,平均学习速度提高了3倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Active learning accelerated automatic heuristic construction for parallel program mapping
Building effective optimization heuristics is a challenging task which often takes developers several months if not years to complete. Predictive modelling has recently emerged as a promising solution, automatically constructing heuristics from training data, however, obtaining this data can take months per platform. This is becoming an ever more critical problem as the pace of change in architecture increases. Indeed, if no solution is found we shall be left with out of date heuristics which cannot extract the best performance from modern machines. In this work, we present a low-cost predictive modelling approach for automatic heuristic construction which significantly reduces this training overhead. Typically in supervised learning the training instances are randomly selected to evaluate regardless of how much useful information they carry, but this wastes effort on parts of the space that contribute little to the quality of the produced heuristic. Our approach, on the other hand, uses active learning to select and only focus on the most useful training examples and thus reduces the training overhead. We demonstrate this technique by automatically creating a model to determine on which device to execute four parallel programs at differing problem dimensions for a representative Cpu-Gpu based system. Our methodology is remarkably simple and yet effective, making it a strong candidate for wide adoption. At high levels of classification accuracy the average learning speed-up is 3×, as compared to the state-of-the-art.
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