Skip to main navigation menu Skip to main content Skip to site footer

Electrotechnical and Computer Engineering

Vol. 40 No. 07 (2025): Proceedings of the Faculty of Technical Sciences

ANALYTICS PLATFORM FOR THE SUPPORT OF DATA-DRIVEN APPROACH OF SOFTWARE DEVELOPMENT

  • Тамара Лазаревић
DOI:
https://doi.org/10.24867/31BE22Lazarevic
Submitted
July 9, 2025
Published
2026-01-02

Abstract

This paper presents the implementation, integration with an example application within the Software as a Service (SaaS) model, and the evaluation of an analytical platform for supporting data-driven software development. The platform aims to boost the chances of successful product launch and enhance companies' competitive advantage in the market. It is modular, with specific tools provided for implementing the stated modules. The platform’s input consists of data derived from user interactions with the application, while the output is a set of dashboards that enable informed decision-making about the further development of the application. The evaluation results confirmed that the solution meets the requirements for real-world use.

References

  1. [1] C. Soo, T. Devinney, D. Midgley, и A. Deering, „Knowledge Management: Philosophy, Processes, and Pitfalls“, Calif. Manage. Rev., том 44, изд. 4, стр. 129–150, Јули 2002, doi: 10.2307/41166146.
  2. [2] C.-T. Su, Y.-H. Chen, и D. Y. Sha, „Linking innovative product development with customer knowledge: a data-mining approach“, Technovation, том 26, изд. 7, стр. 784–795, Јули 2006, doi: 10.1016/j.technovation.2005.05.005.
  3. [3] L. Bstieler и остали, „Emerging Research Themes in Innovation and New Product Development: Insights from the 2017 PDMA‐UNH Doctoral Consortium“, J. Prod. Innov. Manag., том 35, изд. 3, стр. 300–307, Мај 2018, doi: 10.1111/jpim.12447.
  4. [4] Y. Zhan, K. H. Tan, и B. Huo, „Bridging customer knowledge to innovative product development: a data mining approach“, Int. J. Prod. Res., том 57, изд. 20, стр. 6335–6350, Окт. 2019, doi: 10.1080/00207543.2019.1566662.
  5. [5] M. Cantamessa, F. Montagna, S. Altavilla, и A. Casagrande-Seretti, „Data-driven design: the new challenges of digitalization on product design and development“, Des. Sci., том 6, стр. e27, 2020, doi: 10.1017/dsj.2020.25.
  6. [6] M. Armbrust, A. Ghodsi, R. Xin, и M. Zaharia, „Lakehouse: A New Generation of Open Platforms that Unify Data Warehousing and Advanced Analytics“, 2021.
  7. [7] SYDLE, „Data-Driven: What It Is and Why It’s Important“, Blog SYDLE. Приступљено: 19. Септембар 2024. [На Интернету]. Available at: https://www.sydle.com/blog/data-driven-what-it-isand-why-it-s-important 606c8a4e4b136c41e0e2c334
  8. [8] „What Is Online Transactional Processing (OLTP)? | IBM“. Приступљено: 19. Септембар 2024. [На Интернету]. Available at: https://www.ibm.com/topics/oltp
  9. [9] „ETLs, ELTs, and Reverse ETLs“. Приступљено: 19. Септембар 2024. [На Интернету]. Available at: https://www.metabase.com/learn/grow-your-dataskills/analytics/etl-landscape
  10. [10] „Incremental models in-depth | dbt Developer Hub“. Приступљено: 19. Септембар 2024. [На Интернету]. Available at: https://docs.getdbt.com/bestpractices/materializations/4-incremental-models
  11. [11] „Airbyte | Open-Source Data Movement for LLMs | AI Platform“. Приступљено: 25. Септембар 2024. [На Интернету]. Available at: https://airbyte.com/
  12. [12] „Jitsu“. Приступљено: 25. Септембар 2024. [На Интернету]. Available at: https://jitsu.com/
  13. [13] ClickHouse, „Fast Open-Source OLAP DBMS“, ClickHouse. Приступљено: 13. Септембар 2024. [На Интернету]. Available at: https://clickhouse.com
  14. [14] „dbt Labs Builds Momentum as the Industry Standard for Data Transformation“, dbt Labs. Приступљено: 15. Септембар 2024. [На Интернету]. Available at: https://www.getdbt.com/blog/dbt-labs-buildsmomentum-as-the-industry standard-for-datatransformation
  15. [15] „Home“, Apache Airflow. Приступљено: 25. Септембар 2024. [На Интернету]. Available at: https://airflow.apache.org/
  16. [16] „Metabase | Business Intelligence, Dashboards, and Data Visualization“. Приступљено: 25. Септембар 2024. [На Интернету]. Available at: https://www.metabase.com
  17. [17] „Apache JMeter - Apache JMeterTM“. Приступљено: 17. Септембар 2024. [На Интернету]. Available at: https://jmeter.apache.org/