A survey of large-scale analytical query processing in MapReduce

被引:0
作者
Christos Doulkeridis
Kjetil Nørvåg
机构
[1] University of Piraeus,Department of Digital Systems
[2] Norwegian University of Science and Technology,Department of Computer and Information Science
来源
The VLDB Journal | 2014年 / 23卷
关键词
MapReduce; Survey; Data analysis; Query processing; Large-scale; Big Data;
D O I
暂无
中图分类号
学科分类号
摘要
Enterprises today acquire vast volumes of data from different sources and leverage this information by means of data analysis to support effective decision-making and provide new functionality and services. The key requirement of data analytics is scalability, simply due to the immense volume of data that need to be extracted, processed, and analyzed in a timely fashion. Arguably the most popular framework for contemporary large-scale data analytics is MapReduce, mainly due to its salient features that include scalability, fault-tolerance, ease of programming, and flexibility. However, despite its merits, MapReduce has evident performance limitations in miscellaneous analytical tasks, and this has given rise to a significant body of research that aim at improving its efficiency, while maintaining its desirable properties. This survey aims to review the state of the art in improving the performance of parallel query processing using MapReduce. A set of the most significant weaknesses and limitations of MapReduce is discussed at a high level, along with solving techniques. A taxonomy is presented for categorizing existing research on MapReduce improvements according to the specific problem they target. Based on the proposed taxonomy, a classification of existing research is provided focusing on the optimization objective. Concluding, we outline interesting directions for future parallel data processing systems.
引用
收藏
页码:355 / 380
页数:25
相关论文
共 120 条
[1]  
Abadi DJ(2009)Data management in the cloud: limitations and opportunities IEEE Data Eng. Bull. 32 3-12
[2]  
Afrati FN(2011)Optimizing multiway joins in a Map-Reduce environment IEEE Trans. Knowl. Data Eng. (TKDE) 23 1282-1298
[3]  
Ullman JD(2008)Scheduling shared scans of large data files Proc. VLDB Endow. (PVLDB) 1 958-969
[4]  
Agrawal P.(2012)Storage infrastructure behind Facebook Messages: using HBase at scale IEEE Data Eng. Bull. 35 4-13
[5]  
Kifer D.(2012)The HaLoop approach to large-scale iterative data analysis VLDB J. 21 169-190
[6]  
Olston C.(2011)RanKloud: scalable multimedia data processing in server clusters IEEE Multimed. 18 64-77
[7]  
Aiyer AS(2010)Scalable SQL and NoSQL data stores SIGMOD Rec. 39 12-27
[8]  
Bautin M(2008)Bigtable: a distributed storage system for structured data ACM Trans. Comput. Syst. 26 1-4
[9]  
Chen GJ(2011)Tenzing a SQL implementation on the MapReduce framework Proc. VLDB Endow. (PVLDB) 4 1318-1327
[10]  
Damania P(2008)MapReduce: simplified data processing on large clusters Commun. ACM 51 107-113