A Computation- and Network-Aware Energy Optimization Model for Virtual Machines Allocation

Reducing energy consumption in cloud data center is a complex task, where both computation and network related effects must be taken into account. While existing solutions aim to reduce energy consumption considering separately computational and communication contributions, limited attention has been devoted to models integrating both parts. We claim that this lack leads to a sub-optimal management in current cloud data centers, that will be even more evident in future architectures characterized by Software-Defined Network approaches. In this paper, we propose a joint computation-plus-communication model for Virtual Machines (VMs) allocation that minimizes energy consumption in a cloud data center. The contribution of the proposed model is threefold. First, we take into account data traffic exchanges between VMs capturing the heterogeneous connections within the data center network. Second, the energy consumption due to VMs migrations is modeled by considering both data transfer and computational overhead. Third, the proposed VMs allocation process does not rely on weight parameters to combine the two (often conflicting) goals of tightly packing VMs to minimize the number of powered-on servers and of avoiding an excessive number of VM migrations. An extensive set of experiments confirms that our proposal, which considers both computation and communication energy contributions even in the migration process, outperforms other approaches for VMs allocation in terms of energy reduction.

[1]  Akshat Verma,et al.  pMapper: Power and Migration Cost Aware Application Placement in Virtualized Systems , 2008, Middleware.

[2]  Michela Meo,et al.  Probabilistic Consolidation of Virtual Machines in Self-Organizing Cloud Data Centers , 2013, IEEE Transactions on Cloud Computing.

[3]  Andrew Warfield,et al.  Live migration of virtual machines , 2005, NSDI.

[4]  Stephen J. Wright,et al.  Power Awareness in Network Design and Routing , 2008, IEEE INFOCOM 2008 - The 27th Conference on Computer Communications.

[5]  Meng Wang,et al.  Consolidating virtual machines with dynamic bandwidth demand in data centers , 2011, 2011 Proceedings IEEE INFOCOM.

[6]  Claudia Canali,et al.  Exploiting Classes of Virtual Machines for Scalable IaaS Cloud Management , 2015, 2015 IEEE Fourth Symposium on Network Cloud Computing and Applications (NCCA).

[7]  Vasileios Pappas,et al.  Improving the Scalability of Data Center Networks with Traffic-aware Virtual Machine Placement , 2010, 2010 Proceedings IEEE INFOCOM.

[8]  Rajkumar Buyya,et al.  Energy-aware resource allocation heuristics for efficient management of data centers for Cloud computing , 2012, Future Gener. Comput. Syst..

[9]  Hongke Zhang,et al.  Energy-aware virtual machine placement in data centers , 2012, 2012 IEEE Global Communications Conference (GLOBECOM).

[10]  Suresh Singh,et al.  Minimizing Energy Consumption of FatTree Data Center Networks , 2014, PERV.

[11]  Fung Po Tso,et al.  Implementing Scalable, Network-Aware Virtual Machine Migration for Cloud Data Centers , 2013, 2013 IEEE Sixth International Conference on Cloud Computing.

[12]  Stefano Avallone,et al.  A Simulated Annealing Based Approach for Power Efficient Virtual Machines Consolidation , 2015, 2015 IEEE 8th International Conference on Cloud Computing.

[13]  T. V. Lakshman,et al.  Optimizing data access latencies in cloud systems by intelligent virtual machine placement , 2013, 2013 Proceedings IEEE INFOCOM.

[14]  Vincenzo Eramo,et al.  Study of Reconfiguration Cost and Energy Aware VNE Policies in Cycle-Stationary Traffic Scenarios , 2016, IEEE Journal on Selected Areas in Communications.

[15]  Claudia Canali,et al.  Automated Clustering of Virtual Machines based on Correlation of Resource Usage , 2012 .

[16]  Jennifer Rexford,et al.  Scalable Network Virtualization in Software-Defined Networks , 2013, IEEE Internet Computing.

[17]  Marco Mellia,et al.  Modeling sleep mode gains in energy-aware networks , 2013, Comput. Networks.

[18]  Ian F. Akyildiz,et al.  Research challenges for traffic engineering in software defined networks , 2016, IEEE Network.

[19]  Li-Chun Wang,et al.  EQVMP: Energy-efficient and QoS-aware virtual machine placement for software defined datacenter networks , 2014, The International Conference on Information Networking 2014 (ICOIN2014).

[20]  Claudia Canali,et al.  Scalable and automatic virtual machines placement based on behavioral similarities , 2017, Computing.

[21]  Rajkumar Buyya,et al.  Optimal online deterministic algorithms and adaptive heuristics for energy and performance efficient dynamic consolidation of virtual machines in Cloud data centers , 2012, Concurr. Comput. Pract. Exp..

[22]  Albert G. Greenberg,et al.  The cost of a cloud: research problems in data center networks , 2008, CCRV.

[23]  Saurabh Kumar,et al.  Energy Efficient Utilization of Resources in Cloud Computing Systems , 2016 .

[24]  Jun Yan,et al.  A Network-aware Virtual Machine Placement and Migration Approach in Cloud Computing , 2010, 2010 Ninth International Conference on Grid and Cloud Computing.