Crown scheduling: Energy-efficient resource allocation, mapping and discrete frequency scaling for collections of malleable streaming tasks

C. Kessler, Nicolas Melot, Patrick Eitschberger, J. Keller
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引用次数: 19

Abstract

We investigate the problem of generating energy-optimal code for a collection of streaming tasks that include parallelizable or malleable tasks on a generic many-core processor with dynamic discrete frequency scaling. Streaming task collections differ from classical task sets in that all tasks are running concurrently, so that cores typically run several tasks that are scheduled round-robin at user level in a data driven way. A stream of data flows through the tasks and intermediate results are forwarded to other tasks like in a pipelined task graph. In this paper we present crown scheduling, a novel technique for the combined optimization of resource allocation, mapping and discrete voltage/frequency scaling for malleable streaming task sets in order to optimize energy efficiency given a throughput constraint. We present optimal off-line algorithms for separate and integrated crown scheduling based on integer linear programming (ILP). We also propose extensions for dynamic rescaling to automatically adapt a given crown schedule in situations where not all tasks are data ready. Our energy model considers both static idle power and dynamic power consumption of the processor cores. Our experimental evaluation of the ILP models for a generic manycore architecture shows that at least for small and medium sized task sets even the integrated variant of crown scheduling can be solved to optimality by a state-of-the-art ILP solver within a few seconds.
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冠调度:可延展流任务集合的节能资源分配、映射和离散频率缩放
我们研究了在具有动态离散频率缩放的通用多核处理器上为一组流任务(包括可并行或可延展任务)生成能量最优代码的问题。流任务集合与经典任务集的不同之处在于,所有任务都是并发运行的,因此内核通常会运行几个任务,这些任务以数据驱动的方式在用户级别进行循环调度。数据流流经任务,中间结果被转发到其他任务,就像在流水线任务图中一样。在本文中,我们提出了一种新的王冠调度技术,用于在给定吞吐量约束下优化可延展流任务集的资源分配、映射和离散电压/频率缩放,以优化能源效率。提出了一种基于整数线性规划(ILP)的分离式和集成式皇冠调度的离线优化算法。我们还建议扩展动态重新缩放,以便在并非所有任务都准备好数据的情况下自动适应给定的crown计划。我们的能量模型同时考虑了处理器核心的静态空闲功耗和动态功耗。我们对通用多核架构的ILP模型的实验评估表明,至少对于中小型任务集,即使是crown调度的集成变体,也可以通过最先进的ILP求解器在几秒钟内求解到最优性。
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