Data Analytics Adopting K Nearest Neighbor Techniques For Big Data
Journal: International Journal of Emerging Trends & Technology in Computer Science (IJETTCS) (Vol.5, No. 3)Publication Date: 2016-07-11
Authors : Tejashree; Swathi.Y;
Page : 32-35
Keywords : Keywords: KNN: K Nearest Neighbor; HDFS: Hadoop Distributed File System; Map Reduce;
Abstract
Abstract The great deal of interest has risen recently in the field of big data and the analysis has increases and this data is driven from the extensive number of the research challenges related to big and strong bonafide application such as modelling the data, processing the data and distributing large scale of the repository data. Lots of useful data is loss because of improper handle and storage of data. Handling of huge amount of data effectively is difficult tasks. Extracting the useful data, analysis of data, aggregate, and storage of these data in real time is a hurdle for researchers. It need a better management or processing system for that. Here the method used K nearest neighbor techniques for the analysis of the huge volume of data.
Other Latest Articles
- Smart Vehicle Management through IoT
- Enrolment Comparison for students in Bundelkhand University through out the Globe using Web usage mining
- E-Learning as Successful Elements for Higher Learning Institutions in Jammu & Kashmir
- Optimal Release Planning and Software Reliability Modeling for Multi-Release Software
- FDM SORT: An External and Distributed Sorting
Last modified: 2016-07-11 14:26:17