Methods for Assessing the Effectiveness of IT Project Management in Large Corporate Structures

Authors

DOI:

https://doi.org/10.5281/zenodo.13822709

Keywords:

IT project management, corporate structures, agile methodologies, project success, evaluation framework

Abstract

The research is targeted at the initiation of synthesis of the common framework for the assessment of the effectiveness of IT project management in large corporate environments. It is designing the process where the use of the conventional and the new methods is weaved seamlessly with the help of modern data processing tools. The data was collected through ways such as questionnaires administered to project managers, interviews with project stakeholders, and review of project documents of the organization. Some of the findings are the metrics showing that there is an improvement in the following: this shows the level of satisfaction of the stakeholders which has risen from 45% to 60% while the level of business goal congruence has risen from 50% to 70%. Furthermore, the findings highlighted common activities such as flexibility, communication and leadership that are directly related to the value of projects in Corporate structures. These results rapport that one has to adapt and manage a project well especially under complex circumstances through good leadership. Thus, the work presents a conceptual model that enhances the intermediate IT project performance measures and the successful completion of the IT project in a corporate setting.

References

Drofa, D. (2024). Using Machine Learning to Forecast Resources in Long-Term Business Projects. Horizons of Innovation: Conference on Multidisciplinary Trends in Science 2024. (pp. 395-398). Futurity Research Publishing. https://futurity-publishing.com/wp-content/uploads/2025/03/Drofa-D.-2024.pdf

Drofa, D. (2023). Integrate Bio-Identification to Strengthen Data Protection in Multi-Tenant Cloud Systems. Global Innovations and Collaborative Solutions in Contemporary Science (pp. 444-447). Futurity Research Publishing. https://futurity-publishing.com/wp-content/uploads/2025/03/International_scientific_conference-.pdf#page=444

Gunduz, M., & Almuajebh, M. (2020). Critical success factors for sustainable construction project management. Sustainability, 12(5), 1990. https://doi.org/10.3390/su12051990

International Monetary Fund. (2023). IMF annual report. IMF Policy Paper. Washington, D.C., USA. https://www.imf.org/external/pubs/ft/ar/2023/

Iriarte, C., & Bayona, S. (2020). IT projects success factors: A literature review. International Journal of Information Systems and Project Management, 8(2), 49–78.

Kääriäinen, J., Pussinen, P., Saari, L., Kuusisto, O., Saarela, M., & Hänninen, K. (2020). Applying the positioning phase of the digital transformation model in practice for SMEs: Toward systematic development of digitalization. International Journal of Information Systems and Project Management, 8(4), 24–43. https://doi.org/10.12821/ijispm080402

Koldovskyi, A. (2023). The effect of innovation resource management and bank competition output in Ukraine. Global Scientific and Academic Research Journal of Economics, Business and Management, 2023, 23-30.

Marr, B. (2019). Artificial intelligence in practice: How 50 companies used AI and machine learning to solve problems. Wiley.

Morcov, S., Pintelon, L., & Kusters, R. (2020). Definitions, characteristics and measures of IT project complexity - A systematic literature review. International Journal of Information Systems and Project Management, 8(2), 5–21. https://doi.org/10.12821/ijispm080201

Prokopenko, O., Chechel, A., Koldovskiy, A., & Kldiashvili, M. (2024). Innovative models of green entrepreneurship: Social impact on sustainable development of local economies. Economics Ecology Socium, 8(1), 89-111. https://doi.org/10.61954/2616-7107/2024.8.1-8

Takagi, N., & Varajão, J. (2019). Integration of success management into project management guides and methodologies - Position paper. Procedia Computer Science, 164(2019), 366–372. https://doi.org/10.1016/j.procs.2019.12.195

Teixeira, A., Oliveira, T., & Varajão, J. (2019). Evaluation of business intelligence projects success - A case study. Business Systems Research, 10(1), 1–12. https://doi.org/10.2478/bsrj-2019-0001

Published

2024-09-21

Issue

Section

Computer science, computing and automation