Instruction Scheduling for the GPU on the GPU

Ghassan Shobaki, Pınar Muyan-Özçelik, Josh Hutton, Bruce Linck, Vladislav Malyshenko, Austin Kerbow, Ronaldo Ramirez-Ortega, Vahl Scott Gordon
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Abstract

In this paper, we show how to use the GPU to parallelize a precise instruction scheduling algorithm that is based on Ant Colony Optimization (ACO). ACO is a nature-inspired intelligent-search technique that has been used to compute precise solutions to NP-hard problems in operations research (OR). Such intelligent-search techniques were not used in the past to solve NP-hard compiler optimization problems, because they require substantially more computation than the heuristic techniques used in production compilers. In this work, we show that parallelizing such a compute-intensive technique on the GPU makes using it in compilation reasonably practical. The register-pressure-aware instruction scheduling problem addressed in this work is a multi-objective optimization problem that is significantly more complex than the problems that were previously solved using parallel ACO on the GPU. We describe a number of techniques that we have developed to efficiently parallelize an ACO algorithm for solving this multi-objective optimization problem on the GPU. The target processor is also a GPU. Our experimental evaluation shows that parallel ACO-based scheduling on the GPU runs up to 27 times faster than sequential ACO-based scheduling on the CPU, and this leads to reducing the total compile time of the rocPRIM benchmarks by 21%. ACO-based scheduling improves the execution-speed of the compiled benchmarks by up to 74% relative to AMD's production scheduler. To the best of our knowledge, our work is the first successful attempt to parallelize a compiler optimization algorithm on the GPU.
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GPU 上的 GPU 指令调度
在本文中,我们展示了如何利用 GPU 并行基于蚁群优化(ACO)的精确指令调度算法。ACO 是一种受自然启发的智能搜索技术,已被用于计算运筹学(OR)中 NP 难问题的精确解。这种智能搜索技术过去未被用于解决 NP 难度的编译器优化问题,因为与生产编译器中使用的启发式技术相比,它们需要的计算量要大得多。在这项工作中,我们展示了在 GPU 上并行化这种计算密集型技术使其在编译中的应用变得合理实用。本研究中涉及的寄存器压力感知指令调度问题是一个多目标优化问题,其复杂程度远远超过之前在 GPU 上使用并行 ACO 解决的问题。我们介绍了我们为在 GPU 上高效并行化解决这一多目标优化问题的 ACO 算法而开发的一系列技术。目标处理器也是 GPU。我们的实验评估表明,GPU 上基于 ACO 的并行调度比 CPU 上基于 ACO 的顺序调度快 27 倍,这使得 rocPRIM 基准的总编译时间缩短了 21%。与 AMD 的生产调度程序相比,基于 ACO 的调度程序将编译基准的执行速度提高了 74%。据我们所知,我们的工作是在 GPU 上并行化编译器优化算法的首次成功尝试。
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