iPAWS: Instruction-issue pattern-based adaptive warp scheduling for GPGPUs

Minseok Lee, Gwangsun Kim, John Kim, Woong Seo, Yeon-Gon Cho, Soojung Ryu
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引用次数: 26

Abstract

Thread or warp scheduling in GPGPUs has been shown to have a significant impact on overall performance. Recently proposed warp schedulers have been based on a greedy warp scheduler where some warps are prioritized over other warps. However, a single warp scheduling policy does not necessarily provide good performance across all types of workloads; in particular, we show that greedy warp schedulers are not necessarily optimal for workloads with inter-warp locality while a simple round-robin warp scheduler provides better performance. Thus, we argue that instead of single, static warp scheduling, an adaptive warp scheduler that dynamically changes the warp scheduler based on the workload characteristics should be leveraged. In this work, we propose an instruction-issue pattern-based adaptive warp scheduler (iPAWS) that dynamically adapts between a greedy warp scheduler and a fair, round-robin scheduler. We exploit the observation that workloads that favor a greedy warp scheduler will have an instruction-issue pattern that is biased towards some warps while workloads that favor a fair, round-robin warp scheduler will tend to issue instructions across all of the warps. Our evaluations show that iPAWS is able to adapt to the more optimal warp scheduler dynamically and achieve performance that is within a few percent of the statically determined, more optimal warp scheduler. We also show that iPAWS can be extended to other warp schedulers, including the cache-conscious wavefront scheduling (CCWS) and Memory Aware Scheduling and Cache Access Re-execution (MASCAR) to exploit the benefits of other warp schedulers while still providing adaptivity in warp scheduling.
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基于指令问题模式的gpgpu自适应翘曲调度
gpgpu中的线程或翘曲调度已被证明对整体性能有重大影响。最近提出的经纱调度器是基于贪婪的经纱调度器,其中一些经纱优先于其他经纱。然而,单一的warp调度策略并不一定能在所有类型的工作负载上提供良好的性能;特别地,我们表明贪婪的warp调度器对于具有跨warp locality的工作负载并不一定是最优的,而简单的轮循warp调度器提供了更好的性能。因此,我们认为应该利用一个基于工作负载特征动态改变经纱调度器的自适应经纱调度器,而不是单一的静态经纱调度器。在这项工作中,我们提出了一个基于指令问题模式的自适应经度调度器(iPAWS),它在贪婪的经度调度器和公平的循环调度调度器之间动态适应。我们利用了这样的观察结果,即支持贪婪的warp调度器的工作负载将具有偏向于某些warp的指令发布模式,而支持公平的、轮循的warp调度器的工作负载将倾向于在所有warp上发布指令。我们的评估表明,iPAWS能够动态适应更优的经纱调度器,并实现在静态确定的几个百分点内的性能,更优的经纱调度器。我们还表明,iPAWS可以扩展到其他warp调度器,包括缓存意识波前调度(CCWS)和内存感知调度和缓存访问重新执行(MASCAR),以利用其他warp调度器的优点,同时仍然提供warp调度的自适应性。
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