Analyzing Service Models in Cloud Computing and Networking through Big Data Lens
Main Article Content
Authors
Abstract
Cloud computing provides small and medium-sized businesses with the assurance of significant data application. The MapReduce programming standard is used for Big Data processing. However, the application of the MapReduce standard generally requires online connected storage space and similar processing capabilities. The computing requirements of MapReduce programming are typically beyond the capabilities of small and medium-sized businesses. In this paper, we briefly discussed cloud computing service models and network infrastructure driven by big data.
Downloads
Download data is not yet available.
Article Details
Section
Articles
References
- Smitha.T, Dr.V.Sundaram, "Comparative Study of Data Mining Algorithms for High Dimensional Data Evaluation"- published in International journal of Advancements in Engineering & Modern Technology (IJAET) ISSN2231-1963 173 in vol 4, issue2, sept 2012 PP 15-20.
- P. Zikopoulos, C. Eaton, D. deRoos, T. Deutsch, and also G. Lapis. IBM Understanding Big Data: Analytics for Venture Course Hadoop as well as Streaming Data. McGraw-Hill Business, Integrated, 2011.
- S. M. Weiss and N. Indurkhya. Anticipating data mining: a functional overview. Morgan Kaufmann Publishers Inc., San Francisco, CA, USA, 1998.
- Peddyreddy. Swathi, “Approaches And Objectives towards Financial Management”, International Journal of Advanced in Management, Technology and Engineering Sciences, Volume IV, Issue I, 2014
- Peddyreddy. Swathi, “An Overview On The Types Of Capitalization”, International Journal of Advanced in Management, Technology and Engineering Sciences, Volume VI, Issue I, 2016
- Peddyreddy. Swathi, “Architecture And Editions of Sql Server”, International Journal of Scientific Research in Computer Science, Engineering and Information Technology, Volume 2, Issue 4, May-June-2017
- Peddyreddy. Swathi, “Scope of Financial Management and Functions of Finance”, International Journal of Advanced in Management, Technology and Engineering Sciences, Volume III, Issue 1, 2013
- Nagaraju Ankathi, Dr. Rajashekar Kummala,“Optimizing Big Data Workflows in Cloud Computing Environments”, “International Journal of Scientific Research in Science, Engineering and Technology”, Volume 3, Issue 3, 2017
- Nagaraju Ankathi, Dr. Rajashekar Kummala, “Deployment Models and Web 2.0 Interfaces for Enhanced Business Solutions”, “International Journal of Scientific Research in Science, Engineering and Technology”, Volume 1, Issue 4, 2015
- Nagaraju Ankathi, Dr. Kameshwar Rao, “Design Cycle and Deployment Considerations towards Efficient Implementation of Big Data Analytics in the Cloud”, “International Journal of Scientific Research in Science and Technology”, January-February-2016 [(2)1: 273-281 ]
- Nagaraju Ankathi,“Optimizing Network Performance via Big Data Utilization”, “International Journal of Advanced Research in Electrical, Electronics and Instrumentation Engineering”, Vol. 8, Issue 4, April 2019
- Nagaraju Ankathi,“Critical Elements of Cloud Computing Infrastructure”, “International Journal of Advanced Research in Arts, Science, Engineering & Management (IJARASEM)”, Volume 1, Issue 2, November 2014
- Nagaraju Ankathi,“The Journey of Cloud Computing Service Models: Evolution and Trends”, “International Journal of Advanced Research in Arts, Science, Engineering & Management (IJARASEM)”, Volume 5, Issue 5, September 2018
- Keerthi Vuppula, Dr. Narsimha Reddy, “Facial emotion detection using machine learning algorithm K-nearest neighbor”, “INTERNATIONAL JOURNAL FOR RESEARCH & DEVELOPMENT IN TECHNOLOGY”, Volume-13, Issue-2(Feb-20)
- Keerthi Vuppula, “Internet of things based Smart Watch for Health Monitoring of Elderly People”, “International Journal on Applications in Information and Communication Engineering”, Volume 5, Issue 1, August 2019 , pp 82 –88
- Keerthi Vuppula, “Design of Internet of things-based human-computer interface system”, “International Journal on Applications in Basic and Applied Sciences”, Volume 1, Issue 5, December 2013, pp 18-23.