HLR Framework Development for Continuous Integration
DOI:
https://doi.org/10.32628/CSEIT1952338Keywords:
Home Location Register (HLR), Front End(FE), Continuous Integration (CI), Sanity, RegressionAbstract
Home Location Register (HLR) and Home Subscriber Server (HSS) are the master databases which manages Second Generation (2G), Third Generation (3G) and Fourth Generation (4G) networks. The Continuous Integration (CI) process requires engineers to integrate application features into a single repository frequently. In this paper, an automated HLR framework development for testing the 2G, 3G, 4G or LTE and IMS application features is presented. The HLR framework helps to install and configure the HLR test machines. This framework helps to automate the configuration management on the test machines using Jenkins server to run Sanity and Regression. The HLR Framework Development for Continuous Integration is going to reduce the manual efforts by automating the task of Continuous Integration process such as installation, configuration, execution and generation of a report.
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