Abstract
Liberalization has enhanced the global access to telecommunication
and networking services. This could imply the need for advanced
technologies to handle the growing telecom data demands. The
exponential growth of mobile internet in telecommunication is
adopting the big data platform for the data acquisition, storage and
analysis to provide the value-added services. The main objective of this
research paper is to demonstrate the use of Apache Hadoop ecosystem
in Telecommunication Big data Analytics. Hadoop is an open-source
and well known for distributed large dataset storage and processing
mechanism with core modules HDFS, YARN, Hadoop Common and
MapReduce. The study explores the use cases for Apache Hadoop
ecosystem in the telecommunication sector and demonstrates the
versatility of Hadoop in addressing different aspects of
telecommunication data such as analysis of telecom network traffic
logs, location-based services, call detail records (CDR), telecom user
churn prediction, and anomaly detection. Finally, 77 research papers
which implemented the Apache Hadoop in telecommunication big data
processing efficiently retrieved from IEEE Xplore are reviewed and
analysed. Scoping review and scientometrics analysis methodology
have been used. The results of the study interpret the implications of
Apache Hadoop in telecommunication big data analytics, offering
insights into their use across various decision-making domains to
enhance the potential impact of big data analytics in improving
telecommunication services.
Authors
Arti Sawale, Paramjeet Kaur Walia
University of Delhi, India
Keywords
Telecommunication, Big data, Hadoop, Scientometrics, IEEE