使用自组织计算节点开启雾计算

Vasileios Karagiannis, Stefan Schulte, J. Leitao, Nuno M. Preguiça
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引用次数: 16

摘要

雾计算的出现导致了分层组织的多层雾计算模型的设计。这些模型通常指示所有参与计算节点的层次结构。但是,通过添加不遵守分层方法的自定义连接来组织计算节点,可能会由于网络属性(即节点之间的延迟或带宽)而提高性能。因此,在本文中,我们提出了一种替代分层方法的方法,即自组织计算节点。这些节点将自己组织成一个平面模型,该模型利用网络的属性来提供改进的性能。评估结果表明,该方法通过使用优化的消息传递代替直接消息传递,降低了带宽利用率(约30%)。此外,我们表明,遵循平面模型,可以设计容错机制,这在现有的分层模型中大多被忽视。
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Enabling Fog Computing using Self-Organizing Compute Nodes
The emergence of fog computing has led to the design of multi-layer fog computing models which are organized hierarchically. These models commonly dictate the hierarchical structure to all the participating compute nodes. However, organizing the compute nodes by adding customized connections that do not abide by the hierarchical approach, may result in improved performance due to the network’s properties i.e., latency or bandwidth between the nodes. For this reason, in this paper we propose an alternative to the hierarchical approach, which is the self-organizing compute nodes. These nodes organize themselves into a flat model which leverages on the network’s properties to provide improved performance. The results of the evaluation show that this approach reduces bandwidth utilization (~30%) by using optimized messaging instead of direct messaging. Furthermore, we show that following a flat model, enables the design of mechanisms for fault tolerance which has been mostly neglected in existing hierarchical models.
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