在支持sdn的云数据中心中,通过最小化虚拟机迁移来实现主机-网络联合功率扩展

Tuhin Chakraborty, A. Toosi, C. Kopp, Peter James Stuckey, Julien Mahet
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引用次数: 1

摘要

近年来,业界和学术界都非常关注云数据中心(cdc)的电源管理,因为它们通常非常高的电能消耗。虽然服务器仍然是能耗最高的组件,但网络堆栈也可能消耗数据中心总能耗的10- 20%。动态虚拟机(VM)整合是减少活动服务器数量的一种方法,可以通过虚拟机的实时迁移来实现。但是,数据中心中的迁移操作会带来一些系统和服务级别的开销,包括停机时间、网络上的大象流和潜在的更高故障率。在这项工作中,我们提出了最小化VM迁移数量的算法,以达到云数据中心中优化的主机-网络联合功耗。我们提出了迁移次数、主机-网络联合功耗和所提出算法的计算时间复杂度之间的权衡。使用Mininet和ONOS,一个支持SDN的框架被用来评估提议的算法。实验结果表明,与基线算法相比,我们的算法可以将功耗降低约11%,同时完成18%到25%的VM迁移,这只是最小化迁移而不保证最低功耗。
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Joint Host-Network Power Scaling with Minimizing VM Migration in SDN-enabled Cloud Data Centers
In recent times, both industry and academia have paid significant attention to the power management of cloud data centers (CDCs), due to their typically very high electrical energy consumption. While servers remain the components with the highest power-consumption, network stacks can also consume about 10-20 percent of the total energy usage in a data center. Dynamic Virtual Machine (VM) consolidation is one way to reduce the number of active servers, which can be done by live migration of the VMs. But, migration operations in a data center bring several system and service level overheads that include downtime, elephant flows over the network, and potentially higher failure rates. In this work, we propose algorithms for minimizing the number of VM migrations to attain the optimized joint host-network power consumption in a cloud data center. We present a trade-off between the number of migrations, the joint host-network power consumption, and the computational time complexity of the proposed algorithms. Using Mininet and ONOS, an SDN enabled framework is utilised to evaluate the proposed algorithms. Experimental results show that our algorithms can reduce power consumption by about 11 percent, while completing between 18 to 25 percent more VM migrations compared to the baseline algorithm, which only minimizes migration without guaranteeing lowest power consumption.
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