Application of AI Technology in Program Management

Olatunde Fatai Badmus *

Ottawa University, Kansas, USA.

*Author to whom correspondence should be addressed.


Effective program management is crucial in ensuring the successful execution of complex projects and initiatives in today's continuously changing corporate environment. Using Artificial Intelligence (AI) technology into program management procedures provides a viable path for improving decision-making, resource allocation, risk assessment, and overall project results. This article explores the use of artificial intelligence (AI) technology to program management, outlining its possible advantages, problems, and execution techniques. This study intends to give insights into the transformational effect of AI in improving Program management techniques by evaluating real-world examples and case studies.

Keywords: Artificial Intelligence (AI) technology, complex projects, Natural Language Processing, chatbots

How to Cite

Badmus, O. F. (2023). Application of AI Technology in Program Management. Journal of Engineering Research and Reports, 25(8), 48–55.


Download data is not yet available.


Dash R, Rebman C, Kar UK. Application of Artificial Intelligence in Automation of Supply Chain Management. Journal of Strategic Innovation and Sustainability. 2019;14(3):43–53.

Luckin R, Cukurova M. Designing educational technologies in the age of AI: A learning sciences-driven approach. British Journal of Educational Technology. 2019;50(6):2824–2838.

Gautam A, Chirputkar A, Pathak P. Opportunities and challenges in the application of Artificial Intelligence-based technologies in the healthcare Industry. International Interdisciplinary Humanitarian Conference for Sustainability, IIHC 2022 – Proceedings. 2022;1521–1524.

Hbr PIN. Building the AI-Powered Organization; 2019.

Morovat K. A S Urvey of a Rtificial I Ntelligence in. 2020;45(10073196):109–115.

Sambasivan N, Kapania S, Highfill H, Akrong D, Paritosh P. Data cascades in high stakes AI; 2021. ArXiv.

Cubric M. Drivers, barriers and social considerations for AI adoption in business and management: A tertiary study. Technology in Society. 2020;62.

Johnston SS, Morton JM, Kalsekar I, Ammann EM, Hsiao CW, Reps J. Using Machine Learning Applied to Real-World Healthcare Data for Predictive Analytics: An Applied Example in Bariatric Surgery. Value in Health. 2019;22(5):580–586.

Mökander J, Floridi L. Operationalising AI governance through ethics-based auditing: an industry case study. AI and Ethics. 2023;3(2):451–468.

Akter S, Michael K , Uddin M, Rajib, Mccarthy G, Rahman M. Transforming Business Using Digital Innovations: The Application of AI, Transforming Business Using Digital Innovations: The Application of AI, Blockchain, Cloud and Data Analytics Blockchain, Cloud and Data Analytics. 2020;2020:1–33.

Sarker IH. AI-Based Modeling: Techniques, Applications and Research Issues Towards Automation, Intelligent and Smart Systems. SN Computer Science. 2022;3(2):1–20.


Clarke R. Principles and business processes for responsible AI. Computer Law and Security Review. 2019;35(4):410–422.

Gupta R, Tanwar S, Al-Turjman F, Italiya P, Nauman A, Kim SW. Smart Contract Privacy Protection Using AI in Cyber-Physical Systems: Tools, Techniques and Challenges. IEEE Access. 2020;8:24746–24772.

Venkatesh R, Balasubramanian C, Kaliappan M. Development of Big Data Predictive Analytics Model for Disease Prediction using Machine learning Technique. Journal of Medical Systems. 2019;43(8).

Hagendorff T. The Ethics of AI Ethics: An Evaluation of Guidelines. Minds and Machines. 2020;30(1):99–120.

Shen X, Gao J, Wu W, Lyu K, Li M, Zhuang W, Li X, Rao J. AI-assisted network-slicing based next-generation wireless networks. IEEE Open Journal of Vehicular Technology, 1(November 2019), 45–66.

Abdallah, M., Abu Talib, M., Feroz, S., Nasir, Q., Abdalla, H., & Mahfood, B. (2020). Artificial intelligence applications in solid waste management: A systematic research review. Waste Management. 2020;109:231–246.

Himeur Y, Elnour M, Fadli F, Meskin N, Petri I, Rezgui Y, Bensaali F, Amira A. AI-big data analytics for building automation and management systems: A survey, actual challenges and future perspectives. In Artificial Intelligence Review. Springer Netherlands. 2023;56(6).

Rong G, Mendez A, Bou Assi E, Zhao B, Sawan M. Artificial Intelligence in Healthcare: Review and Prediction Case Studies. Engineering. 2020;6(3):291–301.

Woschank M, Rauch E, Zsifkovits H. A review of further directions for artificial intelligence, machine learning, and deep learning in smart logistics. Sustainability (Switzerland). 2020;12(9).

Defense Innovation Board. AI Principles: Recommendations on the Ethical Use of Artificial Intelligence. 2019;1–74.

Quarteroni S. Natural Language Processing for Industry: ELCA’s experience. Informatik-Spektrum. 2018;41(2):105–112.

Wang D, Weisz JD, Muller M, Ram P, Geyer W, Dugan C, Tausczik Y, Samulowitz H, Gray A. Human-AI collaboration in data science: Exploring data scientists’ perceptions of automated AI. Proceedings of the ACM on Human-Computer Interaction. 2019;3(CSCW).

Grover P, Kar AK, Dwivedi YK. Understanding artificial intelligence adoption in operations management: insights from the review of academic literature and social media discussions. In Annals of Operations Research. Springer US. 2022;308(1–2).