SparkIR: a Scalable Distributed Information Retrieval Engine over Spark
Advisor | Elsayed, Tamer |
Author | Al-Rasbi, Sara Yaqoob |
Available date | 2020-02-04T10:31:52Z |
Publication Date | 2020-01 |
Abstract | Search engines have to deal with a huge amount of data (e.g., billions of documents in the case of the Web) and find scalable and efficient ways to produce effective search results. In this thesis, we propose to use Spark framework, an in memory distributed big data processing framework, and leverage its powerful capabilities of handling large amount of data to build an efficient and scalable experimental search engine over textual documents. The proposed system, SparkIR, can serve as a research framework for conducting information retrieval (IR) experiments. SparkIR supports two indexing schemes, document-based partitioning and term-based partitioning, to adopt document-at-a-time (DAAT) and term-at-a-time (TAAT) query evaluation methods. Moreover, it offers static and dynamic pruning to improve the retrieval efficiency. For static pruning, it employs champion list and tiering, while for dynamic pruning, it uses MaxScore top k retrieval. We evaluated the performance of SparkIR using ClueWeb12-B13 collection that contains about 50M English Web pages. Experiments over different subsets of the collection and compared the Elasticsearch baseline show that SparkIR exhibits reasonable efficiency and scalability performance overall for both indexing and retrieval. Implemented as an open-source library over Spark, users of SparkIR can also benefit from other Spark libraries (e.g., MLlib and GraphX), which, therefore, eliminates the need of using |
Language | en |
Subject | information retrieval (IR) Adopt document-at-a-time (DAAT) term-at-a-time (TAAT) |
Type | Master Thesis |
Department | Computing |
Files in this item
This item appears in the following Collection(s)
-
Computing [100 items ]