Activity Search in the Big Volumetric Process of the Mining Automata using Parallel and distributed Computation

Authors(2) :-Sravan Kumar Vulchi , Dr. Kalli Srinivasa Nageswara Prasad

Time and technology has its own role model with respect to the innovation. Technology and its model view to made things simpler for the end user; where the client need the pattern of the activity related to its domain. Information of extreme size diversity and complexity – is everywhere. This disruptive phenomenon is destined to help organizations drive innovation by gaining new and faster insight into their customers. Hence, in this paper we try to put the glimpse of the data search mechanism in order to use the stochastic automata to see the graph or in other from which may be relevant to the client. In this aspect we have used the parallel computing the logs which already mined and transaction data in various domains in order to give a statistical data to the end user. It can be used in both the way of prevention is better than care in order to make the things smarter and better way. In this paper we have considered both the automata theory to implement the stochastic automata using parallel computation giving raise the concept of efficiency, robustness and accuracy.

Authors and Affiliations

Sravan Kumar Vulchi
M.Tech. CSE Student, GVVR Institute of Technology, Bhimavaram. Andhra Pradesh, India
Dr. Kalli Srinivasa Nageswara Prasad
Professor, Department of CSE, GVVR Institute of Technology, Bhimavaram. Andhra Pradesh, India

Activity Detection, Temporal Stochastic Automata, Parallel Computation, Distributed Computing, Hadoop, Distributed File System

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Publication Details

Published in : Volume 1 | Issue 1 | July-August 2016
Date of Publication : 2016-06-30
License:  This work is licensed under a Creative Commons Attribution 4.0 International License.
Page(s) : 93-97
Manuscript Number : CSEIT183156
Publisher : Technoscience Academy

ISSN : 2456-3307

Cite This Article :

Sravan Kumar Vulchi , Dr. Kalli Srinivasa Nageswara Prasad, "Activity Search in the Big Volumetric Process of the Mining Automata using Parallel and distributed Computation", International Journal of Scientific Research in Computer Science, Engineering and Information Technology (IJSRCSEIT), ISSN : 2456-3307, Volume 1, Issue 1, pp.93-97, July-August-2016.
Journal URL : http://ijsrcseit.com/CSEIT183156

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