Decluster: a complex network model-based data center network topology

被引:0
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作者
Xu Zhang
Hai Wang
Qingyuan Gong
Xin Wang
机构
[1] Fudan University,School of Computer Science
[2] Xidian University,The State Key Laboratory of Integrated Services Networks
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关键词
Data center network topology; Complex network; Local clustering coefficient;
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摘要
To cope with increasing demands of computation and storage, data centers should follow the pace of the rapid growth of data size. It is necessary for a data center with a scalability property of which each expansion of a data center network is done with a few modifications. Besides the scalability property, we also need a data center to have good performance, such as high throughput. For these purposes, we propose Decluster, a complex network model-based data center network topology. The complex network model of Decluster is derived from a random network. Such a model just satisfies the requirement of scalability. Decluster employs a complex network model to achieve high throughput via reducing the variance of local clustering coefficients. We have carried out extensive simulations to demonstrate that Decluster enjoys good performance while keeping scalability.
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页码:1365 / 1382
页数:17
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