Open Access Open Access  Restricted Access Subscription Access

Achieving an Efficient Approach through using Resource Allocation, Management and Load Balancing for Cloud Data Centers

Md.Mahbub -Or- Rashid, Md. Julkar Nayeen Mahi, Jenia Afrin Jeba, Fatema Tuj Johura

Abstract


Appropriate resource allocation and management in cloud datacenters has become a crucial consideration for the progress of cloud datacenters. Since allocating resources in a planned and convenient way has a prevailing impact in the issue of "Cloud computing" along these lines the cloud server farms must manage the complexities in making sense of and settling the strategies to control, dispense, utilize, work and move the resources in an enormously effective way. Maintaining Quality of Service (QoS) in cloud datacenters may also become tougher if resources (like- CPU, Hard disk, Memory, Networks etc.) are not properly allocated. Therefore, an extraordinarily efficient scheme should be pursued for resource allocation and management in cloud data centers after the analyzing, diagnosing and well-identifying of existing problems. In this research work, a resource allocation scheme is going to be proposed in the form of an algorithm named “Dynamic and Efficient Resource Allocation and Management (DERAM)” algorithm which will mainly take into consideration–managing the CPU, memory, hard disk and Networks as the resources of cloud computing.


Full Text:

PDF

References


Gao, Y., Xue, Y., & Li, J. (2013, July). Utilization-aware allocation for multi-tenant datacenters. In 2013 IEEE 33rd International Conference on Distributed Computing Systems Workshops (pp. 82-87). IEEE.

Ho, Y., Liu, P., & Wu, J. J. (2011, December). Server consolidation algorithms with bounded migration cost and performance guarantees in cloud computing. In 2011 Fourth IEEE International Conference on Utility and Cloud Computing (pp. 154-161). IEEE.

Gu, J., Hu, J., Zhao, T., & Sun, G. (2012). A new resource scheduling strategy based on genetic algorithm in cloud computing environment. Journal of computers, 7(1), 42-52.

Yuan, Y., & Liu, W. C. (2011, October). Efficient resource management for cloud computing. In 2011 International Conference on System science, Engineering design and Manufacturing informatization (Vol. 2, pp. 233-236). IEEE.

Younge, A. J., Von Laszewski, G., Wang, L., Lopez-Alarcon, S., & Carithers, W. (2010, August). Efficient resource management for cloud computing environments. In International conference on green computing (pp. 357-364). IEEE

Gulati, A., Shanmuganathan, G., Holler, A. M., & Ahmad, I. (2011). Cloud Scale Resource Management: Challenges and Techniques. HotCloud, 11, 3-3.

Rajarajeswari, C. S., & Aramudhan, M. (2013, December). Resource provisioning for SLA management. In 2013 International Conference on Advanced Computing and Communication Systems (pp. 1-6). IEEE.

Ngenzi, A., & Nair, S. R. (2015). Dynamic resource management in Cloud datacenters for Server consolidation. arXiv preprint arXiv:1505.00577.

Xia, B., & Tan, Z. (2010). Tighter bounds of the First Fit algorithm for the bin-packing problem. Discrete Applied Mathematics, 158(15), 1668-1675.

Song, Y., Wang, H., Li, Y., Feng, B., & Sun, Y. (2009, May). Multi-tiered on-demand resource scheduling for VM-based data center. In 2009 9th IEEE/ACM International Symposium on Cluster Computing and the Grid (pp. 148-155). IEEE.


Refbacks

  • There are currently no refbacks.