A review on Data Compression Techniques in Cloud Computing
Main Article Content
Abstract
Cloud Computing has become a crucial aspect in today's era of technology in the world and it has grown past all the boundaries. There is a need to connect resources and users without having physical connection. The high demand for data processing and leads to high computational requirement which is usually not available at the user's end. This has encouraged several companies to provide services over the cloud in the form of service, storage, platform etc. But along with its advantages cloud computing has brought with it several challenges like security, storage, scheduling etc. Storage in Cloud computing forms a very important part as the need of virtual space to store our large data has grown over these years. But the speed of uploading and downloading limits the processing time and there is a need to solve this issue of large data handling. This thesis aims at solving this problem using compression technique on multimedia data. A novel Genetic compression technique will be developed and applied on multimedia data and used in cloud computing for managing such large data. The implementation will be done in CloudSim toolkit and the results will be compared against the existing schemes.
Article Details

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.
IJCERT Policy:
The published work presented in this paper is licensed under the Creative Commons Attribution 4.0 International (CC BY 4.0) license. This means that the content of this paper can be shared, copied, and redistributed in any medium or format, as long as the original author is properly attributed. Additionally, any derivative works based on this paper must also be licensed under the same terms. This licensing agreement allows for broad dissemination and use of the work while maintaining the author's rights and recognition.
By submitting this paper to IJCERT, the author(s) agree to these licensing terms and confirm that the work is original and does not infringe on any third-party copyright or intellectual property rights.
References
Srinivas, J., K. Venkata Subba Reddy, and A. MOIZ Qyser. "Cloud Computing Basics." International Journal of Advanced Research in Computer and Communication Engineering, 1 (5) (2012).
Nicolae, Bogdan. "High throughput data-compression for cloud storage." Data Management in Grid and Peer-to-Peer Systems. Springer Berlin Heidelberg, 2010. 1-12.
C. Yang et al., A spatiotemporal compression based approach for efficient big data processing on cloud, J. Comput. System Sci. (2014)