Title :
Dynamic Data Partitioning and Virtual Machine Mapping: Efficient Data Intensive Computation
Author :
Slagter, Kenn ; Ching-Hsien Hsu ; Yeh-Ching Chung
Author_Institution :
Dept. of Comput. Sci., Nat. Tsing Hua Univ., Hsinchu, Taiwan
Abstract :
Big data refers to data that is so large that it exceeds the processing capabilities of traditional systems. Big data can be awkward to work and the storage, processing and analysis of big data can be problematic. MapReduce is a recent programming model that can handle big data. MapReduce achieves this by distributing the storage and processing of data amongst a large number of computers (nodes). However, this means the time required to process a MapReduce job is dependent on whichever node is last to complete a task. This problem is exacerbated by heterogeneous environments. In this paper we propose a method to improve MapReduce execution in heterogeneous environments. This is done by dynamically partitioning data during the Map phase and by using virtual machine mapping in the Reduce phase in order to maximize resource utilization.
Keywords :
Big Data; storage management; virtual machines; MapReduce; big data; data intensive computation; data storage; dynamic data partitioning; programming model; resource utilization; virtual machine mapping; Cloud computing; Data handling; Data storage systems; Graphics processing units; Information management; Partitioning algorithms; Virtual machining; BigData; Cloud Computing; Hadoop; Heterogeneous environment; MapReduce; Parallel Computing; Virtual Machine;
Conference_Titel :
Cloud Computing Technology and Science (CloudCom), 2013 IEEE 5th International Conference on
Conference_Location :
Bristol
DOI :
10.1109/CloudCom.2013.134