Affiliation:
1. Algoritmi Centre, University of Minho, 4800-058 Braga, Portugal
2. IOTECH, 4785-588 Trofa, Portugal
Abstract
Due to the amount of data emerging, it is necessary to use an online analytical processing (OLAP) framework capable of responding to the needs of industries. Processes such as drill-down, roll-up, three-dimensional analysis, and data filtering are fundamental for the perception of information. This article demonstrates the OLAP framework developed as a valuable and effective solution in decision making. To develop an OLAP framework, it was necessary to create the extract, transform and load the (ETL) process, build a data warehouse, and develop the OLAP via cube.js. Finally, it was essential to design a solution that adds more value to the organizations and presents several characteristics to support the entire data analysis process. A backend API (application programming interface) to route the data via MySQL was required, as well as a frontend and a data visualization layer. The OLAP framework was developed for the ioCity project. However, its great advantage is its versatility, which allows any industry to use it in its system. One ETL process, one data warehouse, one OLAP model, six indicators, and one OLAP framework were developed (with one frontend and one API backend). In conclusion, this article demonstrates the importance of a modular, adaptable, and scalable tool in the data analysis process and in supporting decision making.
Funder
NORTE 2020
European Regional Development Fund
Reference26 articles.
1. (2022, June 07). Onesmus Mbaabu. MOLAP vs ROLAP vs HOLAP in Online Analytical Processing (OLAP). Engineering Education (EngEd) Program|Section 2021. Available online: https://www.section.io/engineering-education/molap-vs-rolap-vs-holap/.
2. (2022, June 07). Cube Cube—Headless BI for Building Data Applications. CubeDev 2022. Available online: https://cube.dev/.
3. Portela, F., Fernandes, G., Alves, P., and Ferreira, J.A. (2022). Method to Execute Offline Data Analysis, IOTECHPIS-Innovation on Technology, Lda.. Portugal PT. ID. 116393, IPC: G06F 16/00 (2019.01).
4. Fernandes, G., Portela, F., and Santos, M.F. (2019, January 26–28). Towards the Development of a Data Science Modular Solution. Proceedings of the 2019 7th International Conference on Future Internet of Things and Cloud Workshops (FiCloudW), Istanbul, Turkey.
5. (2022, December 28). ioCity. Available online: https://iocity.research.iotech.pt/.