Provably Good Task Assignment for Two-Type Heterogeneous Multiprocessors Using Cutting Planes

Björn Andersson, Gurulingesh Raravi
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引用次数: 4

Abstract

Consider scheduling of real-time tasks on a multiprocessor where migration is forbidden. Specifically, consider the problem of determining a task-to-processor assignment for a given collection of implicit-deadline sporadic tasks upon a multiprocessor platform in which there are two distinct types of processors. For this problem, we propose a new algorithm, LPC (task assignment based on solving a Linear Program with Cutting planes). The algorithm offers the following guarantee: for a given task set and a platform, if there exists a feasible task-to-processor assignment, then LPC succeeds in finding such a feasible task-to-processor assignment as well but on a platform in which each processor is 1.5 × faster and has three additional processors. For systems with a large number of processors, LPC has a better approximation ratio than state-of-the-art algorithms. To the best of our knowledge, this is the first work that develops a provably good real-time task assignment algorithm using cutting planes.
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采用切割平面的两类异构多处理机可证明的良好任务分配
考虑在禁止迁移的多处理器上调度实时任务。具体来说,考虑在多处理器平台上为给定的隐式截止日期零星任务集合确定任务到处理器分配的问题,其中有两种不同类型的处理器。针对这一问题,我们提出了一种新的算法LPC(基于求解具有切割平面的线性规划的任务分配)。该算法提供了以下保证:对于给定的任务集和平台,如果存在可行的任务-处理器分配,那么LPC也能成功地找到这样一个可行的任务-处理器分配,但是是在每个处理器快1.5倍并且有3个额外处理器的平台上。对于具有大量处理器的系统,LPC比最先进的算法具有更好的近似比。据我们所知,这是第一个使用切割平面开发可证明良好的实时任务分配算法的工作。
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