Dynamic scheduling strategies for shared-memory multiprocessors

B. Hamidzadeh, D. Lilja
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引用次数: 21

Abstract

Efficiently scheduling parallel tasks on to the processors of a shared-memory multiprocessor is critical to achieving high performance. Given perfect information at compile-time, a static scheduling strategy can produce an assignment of tasks to processors that ideally balances the load among the processors while minimizing the run-time scheduling overhead and the average memory referencing delay. Since perfect information is seldom available, however, dynamic scheduling strategies distribute the task assignment function to the processors by having idle processors allocate work to themselves from a shared queue. While this approach can improve the load balancing compared to static scheduling, the time required to access the shared work queue adds directly to the overall execution time. To overlap the time required to dynamically schedule tasks with the execution of the tasks, we examine a class of self-adjusting dynamic scheduling (SADS) algorithms that centralizes the assignment of tasks to processors. These algorithms dedicate a single processor of the multiprocessor to perform a novel on-line branch-and-bound technique that dynamically computes partial schedules based on the loads of the other processors and the memory locality (affinity) of the tasks and the processors. Our simulation results show that this centralized scheduling outperforms self-scheduling algorithms even when using only a small number of processors.
共享内存多处理器的动态调度策略
高效地将并行任务调度到共享内存多处理器的处理器上对于实现高性能至关重要。给定编译时的完美信息,静态调度策略可以为处理器分配任务,理想地平衡处理器之间的负载,同时最小化运行时调度开销和平均内存引用延迟。然而,由于完美的信息很少可用,动态调度策略通过让空闲的处理器从共享队列中将工作分配给自己来将任务分配函数分配给处理器。虽然与静态调度相比,这种方法可以改善负载平衡,但访问共享工作队列所需的时间直接增加了总体执行时间。为了将动态调度任务所需的时间与任务的执行重叠,我们研究了一类自调整动态调度(SADS)算法,它将任务分配集中到处理器上。这些算法将多处理器中的单个处理器用于执行一种新颖的在线分支绑定技术,该技术基于其他处理器的负载以及任务和处理器的内存局部性(亲和性)动态计算部分调度。仿真结果表明,即使只使用少量处理器,这种集中式调度算法也优于自调度算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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