Big Data Analytics: Map Reduce Function
S.Swarnalatha, K.Vidya "Big Data Analytics: Map Reduce Function". International Journal of Computer Trends and Technology (IJCTT) V47(2):91-94, May 2017. ISSN:2231-2803. www.ijcttjournal.org. Published by Seventh Sense Research Group.
Abstract -
Big data often refers simply to the use
of predictive analytics, user behavior analytics, or
certain other advanced data analytics methods that
extract value from data, and seldom to a particular size
of data set. Big data analytics is the process of
examining large and varied data sets i.e., big data -- to
uncover hidden patterns, unknown correlations, market
trends, customer preferences and other useful
information that can help organizations make moreinformed
business decisions. The utilization of Big Data
Analytics after integrating it with digital capabilities to
secure business growth and its visualization to make it
comprehensible to the technically apprenticed business
analyzers. Analyzing big data is a very challenging
problem today, for such applications; the Map Reduce
framework has recently attracted a lot of attention.
Google’s Map Reduce or its open-source equivalent
Hadoop is a powerful tool for building such
applications. In this paper, we explained Map Reduce
function with sample data.
References
[1] R. Taylor. An overview of the Hadoop/MapReduce/HBase
framework and its current applications in bioinformatics BMC
bioinformatics,11(Suppl 12):S1, 2010.
[2] A. Pavlo et al . A comparison of approaches to large-scale data
analysis. In Proceedings of the ACM SIGMOD, pages 165178,
2009.
[3] R. Buyya, C.S. Yeo, S. Venugopal, J. Broberg, I. Brandic, Cloud
computing and emerging IT platforms: vision, hype, and reality
for delivering computing as the 5th utility, Future Generation
Computer Systems 25 (2009) 599616.
[4] Hadoop Distributed File Systemhttp://hadoop.apache.org/hdfs[3]
Borthakur, D. (2007) The Hadoop Distributed File System:
Architecture and
Design.http://hadoop.apache.org/common/docs/r0.18.0/hdfs_desi
gn.p df
[5] W. Jiang et al . A Map-Reduce System with an Alternate API for
Multi-core Environments. In Proceedings of the 10th IEEE/ACM
CCGrid, pages 8493, 2010.
[6] Map-Reduce: Simplied Data Processing on LargeClusters, by
Jerey Dean and SanjayGhemawat; fromGoogle Research.
[7] Arash Baratloo, Mehmet Karaul, Zvi Kedem, and Peter Wyckoff.
Charlotte: Metacomputing on the web. In Proceedings of the 9th
International Conference on Parallel and Distributed Computing
Systems, 1996.
[8] Luiz A. Barroso, Jeffrey Dean, and Urs Holzle. ¨ Web search for a
planet: The Google cluster architecture. IEEE Micro, 23(2):22–
28, April 2003.
Keywords
Map Reduce, Big Data, Data Set.