Leveraging AI and ML for Scalable Optimization in Oracle Cloud ERP Implementations

Authors

  • Mukesh Garg MD University Rohtak, Haryana, India
  • Dr. Pooja Sharma IIMT University, Meerut, U.P. India

DOI:

https://doi.org/10.36676/urr.v12.i1.1506

Keywords:

AI, ML, Oracle Cloud ERP, scalable optimization, digital transformation, predictive analytics, automation, enterprise resource planning

Abstract

In today’s rapidly evolving digital landscape, the integration of artificial intelligence (AI) and machine learning (ML) has emerged as a transformative force within enterprise resource planning (ERP) systems. This paper examines the strategic role of AI and ML in enhancing the scalability and optimization of Oracle Cloud ERP implementations. By leveraging advanced algorithms and predictive analytics, organizations can gain valuable insights into their operational data, thereby enabling more informed decision-making and proactive process improvements. The integration of AI and ML facilitates the automation of routine tasks, improves forecasting accuracy, and optimizes resource allocation, all of which contribute to a more agile and responsive ERP environment. Furthermore, these technologies allow for continuous learning from historical performance trends, ensuring that system configurations evolve in line with business needs and market dynamics. The research outlines several case studies where the fusion of AI-driven analytics and ML models has resulted in significant performance enhancements and cost efficiencies. Emphasis is placed on scalable optimization strategies that address both current operational challenges and future growth requirements. As organizations increasingly migrate to cloud-based ERP solutions, the need for robust, intelligent frameworks becomes paramount. This study provides a detailed overview of best practices, potential challenges, and key success factors that drive effective integration, ultimately illustrating how AI and ML can empower Oracle Cloud ERP systems to achieve superior business outcomes while maintaining long-term sustainability.

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Published

2025-04-24
CITATION
DOI: 10.36676/urr.v12.i1.1506
Published: 2025-04-24

How to Cite

Mukesh Garg, & Dr. Pooja Sharma. (2025). Leveraging AI and ML for Scalable Optimization in Oracle Cloud ERP Implementations. Universal Research Reports, 12(1), 465–474. https://doi.org/10.36676/urr.v12.i1.1506

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Section

Original Research Article