Implementation of DHS for Effective Usage of Resources and Providing Security Using ECC in Multi Cloud Environments
-
https://doi.org/10.14419/ijet.v7i4.22.28706 -
ECC, DHS, Multi Cloud -
Abstract
Many of the undertakings and associations are facilitating their information into the cloud, keeping in mind the end goal to diminish the IT support cost and improve the information unwavering quality. Be that as it may, confronting the focused cloud merchants and additionally their heterogeneous evaluating strategies, clients might be astounded with which cloud(s) are appropriate for putting away their information and what facilitating technique is less expensive. The general the norm is that clients normally put their information into a solitary cloud (which is liable to the merchant secure hazard) and after that essentially trust to good fortune. In light of the exhaustive examination of cloud sellers, this paper includes novel information facilitating plan (named CHARM) which incorporates two key capacities wanted. The first is choosing a few reasonable mists and a suitable repetition technique to store information with limited fiscal cost and ensured accessibility. The second is setting off a progress procedure to re-appropriate information as indicated by the varieties of information get to example and evaluating of mists. We additionally propose the execution of ECC (Elliptic Curve Cryptography) for keep up security in Multi Cloud Environment. We assess the execution of CHARM utilizing both follow driven recreations and model trials. The outcomes demonstrate that correlation with the major existing plan, CHARM spares around 20% of financial cost as well as displays sound versatility to information and value changes.Â
Â
Â
-
References
[1] J. Park, D. Lee, B. Kim, J. Huh, and S. Maeng, “Locality-aware dynamic VM reconfiguration on MapReduce clouds,†inProc. 21st Int. Symp. High-Perform. Parallel Distrib. Comput., Jun. 2012, pp. 27–36.
[2] B. Palanisamy, A. Singh, L. Liu, and B. Jain, “Purlieus: Localityaware resource allocation for MapReduce in a cloud,†inProc. Int.Conf. High Perform. Comput., Netw., Storage Anal., Nov. 2011, pp. 58.
[3] J. Jin, J. Luo, A. Song, F. Dong, and R. Xiong, “BAR: An efficient data locality driven task scheduling algorithm for cloud computing,†inProc. 11th IEEE/ACM Int. Symp. Cluster, Cloud Grid Comput., May 2011, pp. 295–304.
[4] C. He, Y. Lu, and D. Swanson, “Matchmaking: A new mapreduce scheduling technique,†inProc. IEEE 3rd Int. Conf. Cloud Comput. Technol. Sci., Nov. 2011, pp. 40–47.
[5] Z. Guo, G. Fox, and M. Zhou, “Investigation of data locality in mapreduce,†inProc. 12th IEEE/ACM Int. Symp. Cluster, Cloud Grid Comput., May 2012, pp. 419–426.
[6] K. Wiley, A. Connolly, J. Gardner, S. Krughoff, M. Balazinska, B. Howe, Y. Kwon, and Y. Bu, “Astronomy in the cloud: using mapreduce for image co-addition,†Astronomy, vol. 123, no. 901, pp. 366–380, 2011.
[7] Matsunaga, M. Tsugawa, and J. Fortes, “Cloudblast: Combining mapreduce and virtualization on distributed resources for bioinformatics applications,†inProc. IEEE 4th Int. Conf. eScience, Dec. 2008, pp. 222–229.
[8] S. Chen and S. Schlosser, “Map-Reduce meets wider varieties of applications,†Intel Res., Santa Clara, CA, USA, Tech. Rep. IRPTR-08-05, 2008.
[9] J. Dean and S. Ghemawat, “MapReduce: Simplified data processing on large clusters,†Commun. ACM, vol. 51, no. 1, pp. 107–113, 2008.
[10] Jiaqi Tan, Soila Kavulya, Rajeev Gandhi, Priya Narasimhan, “Visual, Log-based Causal Tracing for Performance Debugging of MapReduce Systems,†in Proc. 30th Int. Conf. Distributed Comput. Syst., 2010, pp. 795-806
[11] D. Carrera, M. Steinder, I. Whalley, J. Torres, and E. Ayguade, “Enabling ´ resource sharing between transactional and batch workloads using dynamic application placement,†in Middleware ’08: Proceedings of the 9th ACM/IFIP/USENIX International Conference on Middleware, 2008, pp. 203–222
[12] Bikash Sharma, Timothy Wood, Chita R. Das, “HybridMR: A Hierarchical MapReduce Scheduler for Hybrid Data Centers,†in Proc. 33rd Int. Conf. Distributed Comput. Syst., 2013, pp. 102-111.
[13] Engin Arslan, Mrigank Shekhar, Tevfik Kosar, “Locality and Network-Aware Reduce Task Scheduling for Data-Intensive Applications,†in Proc. Int. Workshop on Data-Intens. Comput. in the Clouds, 2014, pp.17-24.
[14] CHARM: A Cost-efficient Multi-cloud Data Hosting Scheme with High Availability Quanlu Zhang_, Shenglong Li_, Zhenhua Liy, Yuanjian Xingz, Zhi Yang_, and Yafei Daipeking University yTsinghua University zNanjing Research Institute of Electronics Technology, China
[15] Fzql, lishenglong, xyj, yangzhi, dyfg@net.pku.edu.cn, lizhenhua1983@tsinghua.edu.cn
[16] N Sandeep Chaitanya “Implementation of Security & Bandwidth Reduction in Multi Cloud Environment †in IEEE Digital Explore IEEE ISBN: 978-1-5090-5256-1/16/$31.00_c 2016 page no 758-763
[17] N Sandeep Chaitanya “Integrity Verification on Clustered Data using PDP in Cloud Environments†in IRED Journal and the same is presented in Sixth International Conference On Advances in Computing, Electronics and Electrical Technology - CEET 2016. DOI: 10.15224/978-1-63248-109-2-24 Page(s): 145 - 149
[18] N Sandeep Chaitanya “CBP Based Bandwidth Reduction in Secured Clouds†in International Journal of Applied Engineering Research, page no:203-208, ISSN 0973-4562 Vol. 10 No.81 (2015) © Research India Publications; http://www.ripublication.com /ijaer.htm
[19] N Sandeep Chaitanya “Raid Technology for Secured Grid Computing Environments†in IEEE NCC 2012 at IIT Karagpur Print ISBN: 978-1-4673-0815-1 INSPEC Accession Number: 12654144 Digital Object Identifier : 10.1109/NCC.2012.6176738 IEEE Catalog Number: CFP1242J-ART,
[20] N Sandeep Chaitanya “Springer†Ist International Conference on Advances in Computing & Communications(ACC-11) with title “Data Privacy for Grid Systems†A. Abraham et al. (Eds.): ACC 2011, Part IV, CCIS 193, pp. 70–78, 2011. © Springer-Verlag Berlin Heidelberg 2011
-
Downloads
-
How to Cite
Sandeep Chaitanya, N., & Ramachandram, S. (2018). Implementation of DHS for Effective Usage of Resources and Providing Security Using ECC in Multi Cloud Environments. International Journal of Engineering & Technology, 7(4.22), 246-249. https://doi.org/10.14419/ijet.v7i4.22.28706Received date: 2019-03-31
Accepted date: 2019-03-31