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x-Folded TM: An efficient topology for interconnection networks

机译:x-Folded TM:互连网络的高效拓扑

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Massively parallel computers (MPCs) are currently being actively studied. Interconnection networks are used for the connection of a significant number of processors in such parallel systems because they are introduced as one of the key elements in parallel processing. Meshes, torus, and hypercubes were initially introduced as simple topologies of interconnection networks. At present, these have been replaced by more complicated topologies that also exhibit high performance. Because the diameter, average distance, and cost of topologies have a marked influence on network performance, this paper presents a novel topology called x-Folded TM, which is a TM topology that is folded according to the x-axis. For an n x n network, the diameter of an x-Folded TM is less than that of a TM and a torus, and the average distance of an x-Folded TM is less than that of a mesh, torus, and TM. Compared with mesh, torus, and TM networks, a Folded TM network presents reductions in the average distance, diameter, and cost, which accounts for its efficient performance. As observed from the presented simulation results, the performance of an x-Folded TM is similar to that of most torus networks and better than that of some torus networks. The results verify the effectiveness of the x-Folded TM network, as determined through its comparison with networks with other topologies. (C) 2016 Elsevier Ltd. All rights reserved.
机译:目前正在积极研究大规模并行计算机(MPC)。互连网络用于这种并行系统中大量处理器的连接,因为它们是并行处理中的关键元素之一。网格,圆环和超立方体最初是作为互连网络的简单拓扑引入的。目前,这些已被也具有高性能的更复杂的拓扑所取代。由于拓扑的直径,平均距离和成本对网络性能有显着影响,因此本文提出了一种新颖的拓扑,称为x-Folded TM,这是一种根据x轴折叠的TM拓扑。对于n x n网络,x折叠TM的直径小于TM和圆环的直径,x折叠TM的平均距离小于网格,圆环和TM的平均距离。与网状,环形和TM网络相比,Folded TM网络减少了平均距离,直径和成本,这是其高效性能的原因。从提供的仿真结果可以看出,x折叠TM的性能与大多数环型网络相似,并且优于某些环型网络。结果通过与其他拓扑的网络进行比较确定了x折叠TM网络的有效性。 (C)2016 Elsevier Ltd.保留所有权利。

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