Application of AI Technology in Program Management

Olatunde Fatai Badmus *

Ottawa University, Kansas, USA.

*Author to whom correspondence should be addressed.


Abstract

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. https://doi.org/10.9734/jerr/2023/v25i8958

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