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A Model for Enhancing Unstructured Big Data Warehouse Execution Time.

Authors :
Farhan, Marwa Salah
Youssef, Amira
Abdelhamid, Laila
Source :
Big Data & Cognitive Computing; Feb2024, Vol. 8 Issue 2, p17, 26p
Publication Year :
2024

Abstract

Traditional data warehouses (DWs) have played a key role in business intelligence and decision support systems. However, the rapid growth of the data generated by the current applications requires new data warehousing systems. In big data, it is important to adapt the existing warehouse systems to overcome new issues and limitations. The main drawbacks of traditional Extract–Transform–Load (ETL) are that a huge amount of data cannot be processed over ETL and that the execution time is very high when the data are unstructured. This paper focuses on a new model consisting of four layers: Extract–Clean–Load–Transform (ECLT), designed for processing unstructured big data, with specific emphasis on text. The model aims to reduce execution time through experimental procedures. ECLT is applied and tested using Spark, which is a framework employed in Python. Finally, this paper compares the execution time of ECLT with different models by applying two datasets. Experimental results showed that for a data size of 1 TB, the execution time of ECLT is 41.8 s. When the data size increases to 1 million articles, the execution time is 119.6 s. These findings demonstrate that ECLT outperforms ETL, ELT, DELT, ELTL, and ELTA in terms of execution time. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
25042289
Volume :
8
Issue :
2
Database :
Complementary Index
Journal :
Big Data & Cognitive Computing
Publication Type :
Academic Journal
Accession number :
175646914
Full Text :
https://doi.org/10.3390/bdcc8020017