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The Rise of Artificial Intelligence in Enterprise Resource Planning Software: Enhancing Supply Chain Management Efficiency through Predictive Analytics
Abstract
Enterprise Resource Planning platforms have experienced remarkable evolution through artificial intelligence incorporation, fundamentally restructuring supply chain administration and operational effectiveness throughout various commercial sectors. Conventional ERP solutions, despite demonstrating competence in business process uniformity and financial documentation creation, encounter considerable obstacles when addressing intricate supply chain complexities and forecasting demands. The implementation of artificial intelligence innovations, encompassing machine learning frameworks, large data interpretation functions, and sophisticated predictive modeling systems, has transformed passive data storage facilities into active analytical mechanisms featuring independent decision-making and instantaneous enhancement capabilities. The data-driven decisions are more accurate compared to the traditional model. Cloud-based AI incorporation permits organizations to handle massive information collections with substantially improved processing speeds while concurrently decreasing operational expenditures through automated resource allocation and intelligent process optimization. The progression from historical examination to forward-looking intelligence constitutes a fundamental paradigmatic transformation in corporate strategic development, enabling businesses to predict market variations and enhance resource positioning before obstacles influence operational effectiveness. AI-integrated ERP platforms exhibit superior prediction precision versus traditional statistical techniques, allowing companies to accomplish significant expense reductions in stock management, maintenance forecasting, and purchasing operations while enhancing delivery dependability and supply network resilience.
Article information
Journal
Journal of Computer Science and Technology Studies
Volume (Issue)
7 (8)
Pages
1006-1011
Published
Copyright
Open access

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