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A novel method of virtual network embedding based on topology convergence-degree
所属机构名称:北京邮电大学
会议名称:Communications Workshops (ICC), 2013 IEEE International Conference on
时间:2013
成果类型:会议
相关项目:基于网络业务特征的用户行为及虚拟映射技术研究
同会议论文项目
基于网络业务特征的用户行为及虚拟映射技术研究
期刊论文 11
会议论文 25
获奖 2
著作 2
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