Title of article
MapReduce indexing strategies: Studying scalability and efficiency
Author/Authors
Richard McCreadie، نويسنده , , Craig Macdonald، نويسنده , , Iadh Ounis، نويسنده ,
Issue Information
دوماهنامه با شماره پیاپی سال 2012
Pages
16
From page
873
To page
888
Abstract
In Information Retrieval (IR), the efficient indexing of terabyte-scale and larger corpora is still a difficult problem. MapReduce has been proposed as a framework for distributing data-intensive operations across multiple processing machines. In this work, we provide a detailed analysis of four MapReduce indexing strategies of varying complexity. Moreover, we evaluate these indexing strategies by implementing them in an existing IR framework, and performing experiments using the Hadoop MapReduce implementation, in combination with several large standard TREC test corpora. In particular, we examine the efficiency of the indexing strategies, and for the most efficient strategy, we examine how it scales with respect to corpus size, and processing power. Our results attest to both the importance of minimising data transfer between machines for IO intensive tasks like indexing, and the suitability of the per-posting list MapReduce indexing strategy, in particular for indexing at a terabyte-scale. Hence, we conclude that MapReduce is a suitable framework for the deployment of large-scale indexing.
Keywords
Indexing , efficiency , scalability , mapreduce , Hadoop
Journal title
Information Processing and Management
Serial Year
2012
Journal title
Information Processing and Management
Record number
1229285
Link To Document