Task Assignment Algorithms for Heterogeneous Multiprocessors

Gurulingesh Raravi, Vincent Nélis
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引用次数: 7

Abstract

Consider the problem of assigning implicit-deadline sporadic tasks on a heterogeneous multiprocessor platform comprising a constant number (denoted by t) of distinct types of processors—such a platform is referred to as a t-type platform. We present two algorithms, LPGIM and LPGNM, each providing the following guarantee. For a given t-type platform and a task set, if there exists a task assignment such that tasks can be scheduled to meet their deadlines by allowing them to migrate only between processors of the same type (intra-migrative), then: (i) LPGIM succeeds in finding such an assignment where the same restriction on task migration applies (intra-migrative) but given a platform in which only one processor of each type is 1 + α × t-1/t times faster and (ii) LPGNM succeeds in finding a task assignment where tasks are not allowed to migrate between processors (non-migrative) but given a platform in which every processor is 1 + α times faster. The parameter α is a property of the task set; it is the maximum of all the task utilizations that are no greater than one. To the best of our knowledge, for t-type heterogeneous multiprocessors: (i) for the problem of intra-migrative task assignment, no previous algorithm exists with a proven bound and hence our algorithm, LPGIM, is the first of its kind and (ii) for the problem of non-migrative task assignment, our algorithm, LPGNM, has superior performance compared to state-of-the-art.
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异构多处理器的任务分配算法
考虑在一个异构多处理器平台上分配隐式截止日期零星任务的问题,该平台包含一定数量(用t表示)不同类型的处理器——这样的平台称为t型平台。我们提出了两种算法,LPGIM和LPGNM,每个算法都提供了以下保证。对于给定的t型平台和任务集,如果存在任务分配,允许任务仅在相同类型的处理器之间迁移(内部迁移),从而调度任务以满足其截止日期,则:(i) LPGNM成功地找到了这样一个任务分配,其中同样的任务迁移限制适用(内部迁移),但给定一个平台,其中每种类型的处理器只有一个速度快1 + α × t-1/t倍;(ii) LPGNM成功地找到了一个任务分配,其中任务不允许在处理器之间迁移(非迁移),但给定一个平台,其中每个处理器都快1 + α倍。参数α是任务集的一个属性;它是所有不大于1的任务利用率的最大值。据我们所知,对于t型异构多处理器:(i)对于迁移内任务分配问题,没有先前的算法存在已证明的界,因此我们的算法LPGIM是同类中的第一个;(ii)对于非迁移任务分配问题,我们的算法LPGNM与最先进的算法相比具有优越的性能。
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