Autopiler: An AI Based Framework for Program Autotuning and Options Recommendation

Kang-Lin Wang, Chi-Bang Kuan, Jiann-Fuh Liaw, Wei-Liang Kuo
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Abstract

Program autotuning has been proved to achieve great performance improvement in many compiler usage scenarios. Many autotuning frameworks have been provided to support fully-customizable configuration representations, a wide variety of representations for domain-specific tuning, and a user friendly interface for interaction between the program and the autotuner. However, tuning programs takes time, no matter it is autotuned or manually tuned. Oftentimes, programmers don’t have the time waiting for autotuners to finish and want to have rather good options to use instantly. This paper introduces Autopiler, a framework for building non-domain-specific program autotuners with machine learning based recommender systems for options prediction. This framework supports not only non-domain-specific tuning techniques, but also learns from previous tuning results and can make adequate good options recommendation before any tuning happens. We will illustrate the architecture of Autopiler and how to leverage recommender system for compiler options recommendation, in such way Autopiler can learn from the programs and becomes an AI boosted smart compiler. The experiment results show that Autopiler can deliver up to 19.46% performance improvement for in-house 4G LTE modem workloads.
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Autopiler:一个基于AI的程序自动调整和选项推荐框架
程序自动调优已被证明可以在许多编译器使用场景中实现巨大的性能改进。已经提供了许多自动调优框架来支持完全可定制的配置表示、用于特定领域调优的各种表示,以及用于程序和自动调优器之间交互的用户友好界面。然而,调优程序需要时间,无论是自动调优还是手动调优。通常情况下,程序员没有时间等待自动调谐器完成,并且希望有相当好的选项可以立即使用。本文介绍了Autopiler,这是一个基于机器学习的推荐系统构建非特定领域程序自动调谐器的框架,用于选项预测。该框架不仅支持非特定于领域的调优技术,而且还可以从以前的调优结果中学习,并可以在进行任何调优之前提供足够好的选项建议。我们将说明Autopiler的架构以及如何利用推荐系统进行编译器选项推荐,这样Autopiler就可以从程序中学习,成为一个人工智能增强的智能编译器。实验结果表明,Autopiler可以为内部4G LTE调制解调器工作负载提供高达19.46%的性能提升。
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