阶梯需求图自调整线性网络

A. Paramonov, Iosif Salem, Stefan Schmid, V. Aksenov
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引用次数: 1

摘要

自调整网络(san)能够通过动态调整工作负载(或需求)嵌入,即将通信请求映射到网络拓扑来适应通信需求。因此,san可以通过支付调整嵌入的成本来降低频繁通信节点对的路由成本。当需求具有网络能够适应的结构时,这一点尤其有益。需求可以以需求图的形式表示,需求图由网络节点集(顶点)和成对通信请求集(边)定义。因此,可以通过将需求图嵌入到网络拓扑中来解释对需求的适应。当需求图是预先知道的(离线),以及当它逐边显示时(在线),这都是具有挑战性的。难度还取决于我们的目标是构建静态拓扑还是动态(自调整)拓扑,后者可以随着需求图的更多部分被揭示而改善嵌入。然而,人们对这些自我调节的嵌入知之甚少。在本文中,网络拓扑被限制为一条直线,需求图被限制为一个阶梯图,即一个$2^n$的网格,包括阶梯的所有可能子图。我们提出了一个在线自调整网络,它与已知下界渐近匹配,并且在请求成本方面具有$12$竞争性。作为预热结果,我们给出了周期需求图的渐近最优算法。我们还提出了一种基于oracle的算法,用于具有恒定开销的任意需求图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Self-Adjusting Linear Networks with Ladder Demand Graph
Self-adjusting networks (SANs) have the ability to adapt to communication demand by dynamically adjusting the workload (or demand) embedding, i.e., the mapping of communication requests into the network topology. SANs can thus reduce routing costs for frequently communicating node pairs by paying a cost for adjusting the embedding. This is particularly beneficial when the demand has structure, which the network can adapt to. Demand can be represented in the form of a demand graph, which is defined by the set of network nodes (vertices) and the set of pairwise communication requests (edges). Thus, adapting to the demand can be interpreted by embedding the demand graph to the network topology. This can be challenging both when the demand graph is known in advance (offline) and when it revealed edge-by-edge (online). The difficulty also depends on whether we aim at constructing a static topology or a dynamic (self-adjusting) one that improves the embedding as more parts of the demand graph are revealed. Yet very little is known about these self-adjusting embeddings. In this paper, the network topology is restricted to a line and the demand graph to a ladder graph, i.e., a $2^n$ grid, including all possible subgraphs of the ladder. We present an online self-adjusting network that matches the known lower bound asymptotically and is $12$-competitive in terms of request cost. As a warm up result, we present an asymptotically optimal algorithm for the cycle demand graph. We also present an oracle-based algorithm for an arbitrary demand graph that has a constant overhead.
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