同构noc上多视频流解码的仿生分布式任务重映射

H. R. Mendis, L. Indrusiak, N. Audsley
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引用次数: 4

摘要

分布式系统的集中管理需要大量的监控流量,以保持对系统全局状态的准确视图。随着网络中处理元素的数量和工作负载的增加,这些系统的通信开销成为瓶颈。最新的分散式资源管理技术通过允许单个或集群节点在运行时做出决策来管理动态工作负载,从而解决了这个问题。本文的主要贡献是使用生物启发的分布式任务重映射技术来管理动态多视频流解码工作负载。我们所提出的技术具有较低的通信开销,并用于减少视频流的累积作业延迟。次要贡献包括对现有的基于集群的资源管理方法的一些改进,以引入任务阻塞和重新定位距离的意识。我们通过模拟几种工作负载模式,比较工作延迟、通信开销和利用率分布的改进,来评估这两种重新映射方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bio-inspired distributed task remapping for multiple video stream decoding on homogeneous NoCs
Centralised management of distributed systems require a significant amount of monitoring traffic to maintain an accurate view of the system global state. The communication overhead of these systems becomes a bottleneck as the number of processing elements in the network and workload increase. State-of-the art in decentralised resource management techniques address this issue by allowing individual or clusters of nodes to make decisions at runtime to manage the dynamic workload. The primary contribution of this paper is using a bio-inspired, distributed, task remapping technique to manage dynamic multiple video stream decoding workloads. Our proposed technique has a low-communication overhead and is used to reduce the cumulative job lateness of the video streams. Secondary contributions include, several improvements to an existing clusterbased resource management approach to introduce awareness of task blocking and relocation distance. We evaluate these two remapping methods by comparing the improvement of job lateness, communication overhead and distribution of utilisation via simulation of several workload patterns.
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