This study examines the revolutionary capabilities of artificial intelligence (AI) and advanced analytics in Project Portfolio Management (PPM) inside U.S. organizations. Traditional PPM systems are having more and more trouble because projects are getting more complicated, resources are getting tighter, stakeholder expectations are changing, and digital transformation is happening faster. These problems often lead to poor portfolio alignment, making decisions based on what happens, and not using resources as well as they could. The study investigates the application of AI technologies including machine learning, predictive analytics, and natural language processing to mitigate these constraints by facilitating proactive risk forecasting, automated decision support, and real-time portfolio governance. This study assesses the concrete advantages of AI integration through comprehensive case studies of major U.S. corporations, including IBM, Capital One, and General Electric, highlighting benefits such as increased ROI, optimized resource allocation, and alignment with strategic business goals. The study examines significant implementation problems, such as data governance, algorithmic bias, integration with legacy systems, and the changing responsibilities of project managers in AI-enabled contexts, bolstered by contemporary academic research and industry analysis. The results show that AI is not just a tool for making things better; it is also a key part of dynamic, value-driven, and intelligent project portfolio management. The report concludes that firms who adopt AI in PPM will be better able to achieve strategic agility, operational efficiency, and a competitive edge in the digital age.
Hasan et al. (Wed,) studied this question.
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