Open Access Open Access  Restricted Access Subscription Access

Map-Reduce Implementations: Survey and Performance Comparison


Affiliations
1 Department of Computer Application, JSSATE, Noida, India
 

Map Reduce has gained remarkable significance as a prominent parallel data processing tool in the research community, academia and industry with the spurt in volume of data that is to be analyzed. Map Reduce is used in different applications such as data mining, data analytics where massive data analysis is required, but still it is constantly being explored on different parameters such as performance and efficiency. This survey intends to explore large scale data processing using Map Reduce and its various implementations to facilitate the database, researchers and other communities in developing the technical understanding of the Map Reduce framework. In this survey, different Map Reduce implementations are explored and their inherent features are compared on different parameters. It also addresses the open issues and challenges raised on fully functional DBMS/Data Warehouse on Map Reduce. The comparison of various Map Reduce implementations is done with the most popular implementation Hadoop and other similar implementations using other platforms.

Keywords

Map Reduce, Parallel Data Processing tools, Map Reduce Frameworks, Hadoop, DBMS/Data Warehouse.
User
Notifications
Font Size

Abstract Views: 202

PDF Views: 150




  • Map-Reduce Implementations: Survey and Performance Comparison

Abstract Views: 202  |  PDF Views: 150

Authors

Zeba Khanam
Department of Computer Application, JSSATE, Noida, India
Shafali Agarwal
Department of Computer Application, JSSATE, Noida, India

Abstract


Map Reduce has gained remarkable significance as a prominent parallel data processing tool in the research community, academia and industry with the spurt in volume of data that is to be analyzed. Map Reduce is used in different applications such as data mining, data analytics where massive data analysis is required, but still it is constantly being explored on different parameters such as performance and efficiency. This survey intends to explore large scale data processing using Map Reduce and its various implementations to facilitate the database, researchers and other communities in developing the technical understanding of the Map Reduce framework. In this survey, different Map Reduce implementations are explored and their inherent features are compared on different parameters. It also addresses the open issues and challenges raised on fully functional DBMS/Data Warehouse on Map Reduce. The comparison of various Map Reduce implementations is done with the most popular implementation Hadoop and other similar implementations using other platforms.

Keywords


Map Reduce, Parallel Data Processing tools, Map Reduce Frameworks, Hadoop, DBMS/Data Warehouse.