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DEVELOPMENT OF MACHINE LEARNING SOLUTIONS THAT OPTIMIZE BUSINESS OPERATIONS AND INCREASE EFFICIENCY THROUGH INTELLIGENT PROCESS AUTOMATION

Authors
  • Daniel Thompson

    Department of Information Systems, University of Toronto, Canada
  • Olivia Zhang

    Department of Information Systems, University of Toronto, Canada
  • Ethan Patel

    Department of Information Systems, University of Toronto, Canada
  • Maya Singh

    Department of Information Systems, University of Toronto, Canada
  • Liam Chen

    Department of Information Systems, University of Toronto, Canada
Keywords:
Machine learning, Process automation, Robotic process automation, Business optimization, Operational efficiency
Abstract

Objective: This research develops machine learning solutions that optimize business operations through intelligent process automation, combining robotic process automation (RPA) with cognitive capabilities. Method: Our framework integrates natural language processing, computer vision, and predictive analytics to automate complex decision-making processes traditionally requiring human intervention. Results: Implementation across five industry sectors demonstrates average cost reductions of 42%, processing time improvements of 65%, and error rate reductions of 89%. The study provides practical guidelines for organizations seeking to implement intelligent automation strategies and quantifies the potential returns on investment. Novelty: Business process automation has emerged as a critical driver of operational efficiency and competitive advantage in modern enterprises.

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Published
2025-12-14
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How to Cite

DEVELOPMENT OF MACHINE LEARNING SOLUTIONS THAT OPTIMIZE BUSINESS OPERATIONS AND INCREASE EFFICIENCY THROUGH INTELLIGENT PROCESS AUTOMATION. (2025). International Journal of Business, Law and Political Science, 2(12), 674-681. https://doi.org/10.61796/ijblps.v2i12.466

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