分布式计算中的可伸缩协同调度策略

V. Toporkov, D. Yemelyanov, A. Toporkova, A. Tselishchev
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引用次数: 5

摘要

在本文中,我们提出了一种分布式计算中可扩展的协同调度方法,用于复杂的相互关联的任务(作业)集。可伸缩性意味着可以为具有不同任务粒度级别的作业模型、数据复制策略和处理器资源和内存进行升级的调度。以所需的服务质量保证作业执行的必要性需要考虑分布式环境的动态,即需要服务的作业数量的变化、计算量、处理器节点可能出现的故障等。因此,在一般情况下,需要调度的一组版本或策略,而不是单个版本。提出了一种基于多准则策略的可伸缩调度模型。具体调度的选择取决于资源动态的负载水平,并形成资源查询,发送到本地批处理作业管理系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scalable co-scheduling strategies in distributed computing
In this paper, we present an approach to scalable co-scheduling in distributed computing for complex sets of interrelated tasks (jobs). The scalability means that schedules are formed for job models with various levels of task granularity, data replication policies, and the processor resource and memory can be upgraded. The necessity of guaranteed job execution at the required quality of service causes taking into account the distributed environment dynamics, namely, changes in the number of jobs for servicing, volumes of computations, possible failures of processor nodes, etc. As a consequence, in the general case, a set of versions of scheduling, or a strategy, is required instead of a single version. We propose a scalable model of scheduling based on multicriteria strategies. The choice of the specific schedule depends on the load level of the resource dynamics and is formed as a resource query which is sent to a local batch-job management system.
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