Application-Aware Resource Allocation for SDN-based Cloud Datacenters

In cloud datacenters, since resource requirements change frequently, how to assign and manage resources efficiently while meeting service level agreements (SLAs) of different types of applications is an important research issue. In this paper, we propose an Application-aware Resource Allocation (App-RA) scheme to predict resource requirements and allocate an appropriate number of virtual machines (VMs) for each application in SDN-based cloud datacenters. To the best of our knowledge, the proposed App-RA is the first application-aware resource allocation scheme that adapts to all types of applications. The App-RA can meet SLAs, allocate resources efficiently, and reduce power consumption for each application in cloud datacenters. The proposed App-RA adopts the neural network based predictor to forecast the requirements of resources (CPU, Memory, GPU, Disk I/O and bandwidth) for an application. In the proposed App-RA, we have designed two algorithms which allocate appropriate numbers of virtual machines and use the VM allocation threshold to avoid SLA violations for five different types of applications. In addition, we adopt an SDN-based OpenFlow network with CICQ switches to appropriately schedule packets for different types of application in the network layer. Finally, simulation results show that the power consumption of the proposed App-RA is only 9.21% higher than that of the best case (oracle) and the power consumption of EAACVA, which is a representative resource allocation method for non-graphic applications, is 104.58% worse than that of App-RA. Furthermore, the SLA violation rate of the proposed App-RA is less than 4% for all applications.

[1]  Deng Pan,et al.  OpenFlow-Based Flow-Level Bandwidth Provisioning for CICQ Switches , 2013, IEEE Trans. Computers.

[2]  Nick McKeown,et al.  OpenFlow: enabling innovation in campus networks , 2008, CCRV.

[3]  Dario Pompili,et al.  Energy-Aware Application-Centric VM Allocation for HPC Workloads , 2011, 2011 IEEE International Symposium on Parallel and Distributed Processing Workshops and Phd Forum.

[4]  Valeria Cardellini,et al.  SLA-aware Resource Management for Application Service Providers in the Cloud , 2011, 2011 First International Symposium on Network Cloud Computing and Applications.

[5]  Alexandru Iosup,et al.  Dynamic Resource Provisioning in Massively Multiplayer Online Games , 2011, IEEE Transactions on Parallel and Distributed Systems.

[6]  M. Ashraful Amin,et al.  Neural network and regression based processor load prediction for efficient scaling of Grid and Cloud resources , 2011, 14th International Conference on Computer and Information Technology (ICCIT 2011).

[7]  Albert Y. Zomaya,et al.  A Taxonomy and Survey of Energy-Efficient Data Centers and Cloud Computing Systems , 2010, Adv. Comput..

[8]  Jun Bi,et al.  VCP: A virtualization cloud platform for SDN intra-domain production network , 2012, 2012 20th IEEE International Conference on Network Protocols (ICNP).

[9]  David A. Patterson,et al.  Response-Time Modeling for Resource Allocation and Energy-Informed SLAs , 2007 .

[10]  Kranthimanoj Nagothu,et al.  Prediction of cloud data center networks loads using stochastic and neural models , 2011, 2011 6th International Conference on System of Systems Engineering.