BRAS : Development of Prototype Cloud Model for Failure Recovery Management by Using Backup Resource Allocation Strategy
DOI:
https://doi.org/10.32628/IJSRST229310Keywords:
Cloud computing, BRAS, availability, resource allocation, failure recovery management, backup resourcesAbstract
The main objective of any technology is to give good service, availability and reliability to the end user along with protection and cost feasibility. Cloud computing is one of such technology which can be pay-as-you-go model. Computational resources and backup resources are the one of the issues. When multiple Physical Machines (PM) interacting to cloud to have respective services there may be a chances of failures that spoils the guaranteed services by the providers. In this paper we tried to elaborate these issues by developing a prototype cloud model for failure recovery management with the information of backup resource allocation strategy. We proposed an advanced open stack method based on BRAS. We also conducted a survey on BRAS to give better model. In this paper we focussed more on availability analytical model how its work for BRAS. We also covered some of case studies with yielding results for better understanding of the model. However one of the essential pitfalls in cloud computing is related to optimizing the property being allocated. Because of the distinctiveness of the model, useful resource allocation is achieved with the aim of minimizing the prices associated with it. The specific traumatic conditions of useful resource allocation are meeting customer desires and application requirements.
References
- Takehiro Sato, “Experiment and Availability Analytical Model of Cloud Computing System Based on Backup Resource Sharing and Probabilistic Protection Guarantee”, IEEE Opens Journal of the Communications Society.
- Bharath Kumar Enesheti, Naresh Erukulla, Kotha Mahesh, “Edge Computing to Improve Resource Utilization and Security in the Cloud Computing System”, JOURNAL OF ENGINEERING, COMPUTING & ARCHITECTURE,ISSN NO:1934-7197, Volume 11, Issue 12, DECEMBER - 2021.
- Ying-Si Zhao,"Secure and Efficient Product Information Retrieval in Cloud Computing", 2169-3536 (c) 2018 IEEE,Volume XX, 2017.
- Ravindra Changala, "Data Mining Techniques for Cloud Technology" in International Journal of Advanced Research in Computer and Communication Engineering (IJARCCE),Volume 4, Issue 8, Pages 2319-5940, ISSN: 2278-1021, August 2015.
- V.Vinothina, "A Survey on Resource Allocation Strategies in Cloud Computing" Vol. 3, No.6, 2012.
- Omotunde, Ayokunle. ,"Resource Allocation in Cloud Computing – An Exposé", Volume 5, Issue 9, September 2015 ISSN: 2277 128X, International Journal of Advanced Research in Computer Science and Software Engineering.
- Muhammad Faraz Manzoor, "Resource Allocation Techniques in Cloud Computing: A Review and Future Directions",Elektronika IR Elektrotechnika, ISSN 1392-1215, VOL. 26, NO. 6, 2020.
- Mahesh K, " Load Balancing Issues in Cloud Environment Using Virtual Machines to Handles Future Load Imbalances with Service Level Objects". Journal of Engineering, Computing and Architecture, ISSN NO: 1934-7197.
- Patricia Takako Endo et al. :Resource allocation for distributed cloud :Concept and Research challenges(IEEE,2011),pp.42-46 .
- ShikhareshMajumdar: Resource Management on cloud : Handling uncertainties in Parameters and Policies (CSI communicatons,2011,edn)pp.16-19.
- Mahesh K, "A Survey on Predicting Uncertainty of Cloud Service Provider Towards Data Integrity and Economic" 2019 IJSRST | Volume 6 | Issue 1 | Print ISSN: 2395-6011 | Online ISSN: 2395-602X.
- Jiayin, L., Qiu, M., Niu, J., Chen, Y., & Ming, Z. (2010). Adaptive Resource Allocation for Preemptable Jobs in Cloud Systems. In the Proceedings on the IEEE 10th Conference on Intelligent Systems Design and Applications.
- Costa, R., Brasileiro, F., de Souza Filho, G. L., & Sousa, D. M. (2010). Just in Time Clouds: Enabling HighlyElastic Public Clouds over Low Scale Amortized Resources.Universidade Federal de Campina Grande.
- Abirami, S. P., &Shalini, R. (2012). Linear Scheduling Strategy for Resource Allocation in Cloud Environment. International Journal on Cloud Computing and Architecture, 2(1).
- Huang, K., & Lai, K. (2010). Processor Allocation Policies for Reducing Resource Fragmentation in Multi Cluster Grid and Cloud Environment. IEEE, 971-976.
- Warneke, D., & Kao, O. (2011). Exploiting Dynamic Resource Allocation for Efficient Parallel Data Processing in the Cloud. IEEE Transactions on Parallel and Distributed Systems.
- Lee, G., Tolia, N. R., & Katz, R. H. (2010). Topology Aware Resource Allocation for Data-Intensive Workloads. ACM SIGCOMM Computer Communication Review, 120-124.
- Meera, L., & Mary, L. (2013). Effective Management of Resource Provisioning Cost in Cloud Computing. International Journal of Advanced Research in Computer Science and Software Engineering, 3(3), 75-78.
- Chaisiri, S., Lee, B. S., &Niyato, D. (2012). Optimization of Resource Provisioning Cost in Cloud. IEEE Transactions on Services Computing, 5(2).
- Ts'epoMofolo, &Suchithra, R. (2012). Heuristic Based Resource Allocation Strategies using Virtual Machine Migration. International Refereed Journal of Engineering and Sciences (IRJES), 40-45.
Downloads
Published
Issue
Section
License
Copyright (c) IJSRST

This work is licensed under a Creative Commons Attribution 4.0 International License.