Title :
High Performance and Fault Tolerant Distributed File System for Big Data Storage and Processing Using Hadoop
Author :
Sivaraman, E. ; Manickachezian, R.
Author_Institution :
Res. Dept. of Comput. Sci., NGM Coll., Pollachi, India
Abstract :
Hadoop is a quickly budding ecosystem of components based on Google´s MapReduce algorithm and file system work for implementing MapReduce algorithms in a scalable fashion and distributed on commodity hardware. Hadoop enables users to store and process large volumes of data and analyse it in ways not previously possible with SQL-based approaches or less scalable solutions. Remarkable improvements in conventional compute and storage resources help make Hadoop clusters feasible for most organizations. This paper begins with the discussion of Big Data evolution and the future of Big Data based on Gartner´s Hype Cycle. We have explained how Hadoop Distributed File System (HDFS) works and its architecture with suitable illustration. Hadoop´s MapReduce paradigm for distributing a task across multiple nodes in Hadoop is discussed with sample data sets. The working of MapReduce and HDFS when they are put all together is discussed. Finally the paper ends with a discussion on Big Data Hadoop sample use cases which shows how enterprises can gain a competitive benefit by being early adopters of big data analytics.
Keywords :
Big Data; SQL; data analysis; fault tolerant computing; parallel processing; pattern clustering; software performance evaluation; Gartner´s Hype Cycle; Google MapReduce algorithm; HDFS; Hadoop MapReduce paradigm; Hadoop clusters; Hadoop distributed file system; SQL-based approaches; big data analytics; big data evolution; big data processing; big data storage; high performance fault tolerant distributed file system; storage resources; Big data; Computer architecture; Fault tolerance; Fault tolerant systems; File systems; Mobile communication; Servers; Analytics; Big data; Fault tolerance; Hadoop; Hadoop Distributed File System (HDFS); Hype cycle; MapReduce; Replication; Unstructured data;
Conference_Titel :
Intelligent Computing Applications (ICICA), 2014 International Conference on
Conference_Location :
Coimbatore
DOI :
10.1109/ICICA.2014.16