Automated Data Quality Control System in Health and Demographic Surveillance System
Journal: Science, Engineering and Technology (Vol.4, No. 2)Publication Date: 2024-10-31
Authors : Joseph Tlouyamma; Sello Mokwena;
Page : 82-91
Keywords : ;
Abstract
The automated data quality management system serves as a comprehensive solution developed to enhance the precision, dependability, and uniformity of data within data-driven organizations. Such systems play an important role in eliminating the shortcomings associated with manual data quality management, which is prevalent in health and demographic surveillance systems (HDSS). The ongoing difficulty of ensuring data quality through manual processing hinders the HDSS's capacity to optimize data quality effectively. To address this challenge, our study adopted design science methodologies to provide guidelines for the design and implementation of the automated data quality control system. The open source technologies (Pentaho data integration, R Studio, SQL, Windows task scheduler) were used to facilitate the automation and validation of the incoming and database resident data. The quality of data has vastly improved since the implementation of the proposed system. The findings suggest that the automated data quality control system exhibited superior performance compared to the manual methods, thereby minimizing errors and time-wasting efforts.
Other Latest Articles
- Utilizing Support Vector Machines to Detect Hate Speech on Social Media
- A Review of Fatigue Failure and Life Estimation Models: From Classical Methods to Innovative Approaches
- Boundary Layer Modelling of Flow Acceleration and Energy Transfer Effects in Smart Pavement Design
- An Ultra High Frequency Radio Frequency Identification Compatible Circular Polarized Microstrip Antenna Array
- AI-Driven IoT Healthcare System for Real-Time ECG Analysis and Comprehensive Patient Monitoring
Last modified: 2024-11-10 20:48:14