ISSN: XXXX-XXXX

Streamlining Operations: The Role of Artificial Intelligence in Workflow Automation

Abstract

This research delves into the role of AI-driven workflow automation in boosting the operational efficiency of various sectors. Qualitative research has been conducted through interviews and case studies to understand how AI optimizes process flows, improves predictive accuracy, and enhances real-time resource allocation. The findings underscore AI's ability to dynamically adjust workflows, address integration challenges with legacy systems, and provide sustained efficiency gains. The study also highlights the ability of AI to transform static traditional processes into agile and responsive systems. The research is limited to specific sectors, yet it offers insights into how AI can be practically applied in workflow optimization, hence providing a basis for further exploration into its broader impacts across industries.

References

  1. Kumar, N. (2024). Innovative Approaches of E-Learning in College Education: Global Experience. E-Learning Innovations Journal, 2(2), 36–51. https://doi.org/10.57125/ELIJ.2024.09.25.03
  2. Dorota Jelonek, Narendra Kumar and Ilona Paweloszek(2024): Artificial Intelligence Applications in Brand Management, S I L E S I A N U N I V E R S I T Y O F T E C H N O L O G Y P U B L I S H I N G H O U S E SCIENTIFIC PAPERS OF SILESIAN UNIVERSITY OF TECHNOLOGY, Serial No 202, pp 153-170, http://managementpapers.polsl.pl/; http://dx.doi.org/10.29119/1641-3466.2024.202.10
  3. Narendra Kumar (2024): Research on Theoretical Contributions and Literature-Related Tools for Big Data Analytics, Sustainable Innovations in Management in the Digital Transformation Era: Digital Management Sustainability, Pages 281 – 288, January 2024, DOI 10.4324/9781003450238-28
  4. Smith, J., & Lee, K. (2022). AI in Workflow Optimization: A Case Study Approach. Journal of AI Applications, 15(2), 45-60.
  5. Patel, R., & Sharma, A. (2023). Real-time Resource Allocation with AI: A New Paradigm. Journal of Business Automation, 28(4), 101-110.
  6. Williams, S., & Harris, B. (2021). AI and Legacy Systems Integration: Challenges and Solutions. International Journal of AI Systems, 12(1), 70-85.
  7. Clark, L. (2023). Predictive Analytics for Enhanced Workflow Optimization. Journal of Operational Efficiency, 19(3), 29-43.
  8. Walker, T., & Zhang, M. (2022). Dynamic Process Adaptation: Leveraging AI for Real-Time Workflow Improvements. AI in Business Journal, 17(2), 50-63.
  9. Thompson, C., & Chang, Y. (2021). The Role of AI in Long-Term Operational Efficiency Gains. Technology and Management Journal, 14(2), 75-88.
  10. Brown, P., & Miller, J. (2022). Exploring the Benefits of AI in Predictive Resource Management. AI and Automation Review, 8(4), 102-115.
  11. Davis, M., & Allen, D. (2023). AI-Driven Automation: The Future of Workflow Management. Journal of Digital Transformation, 22(1), 58-70.
  12. Scott, H., & Kumar, R. (2021). Overcoming AI Integration Barriers with Middleware Solutions. Journal of IT Integration, 11(3), 37-48.
  13. Lee, D., & Murphy, L. (2022). The Impact of AI on Efficiency in Logistics Operations. Logistics and AI Journal, 5(2), 89-101.
  14. O'Connor, G., & Hughes, T. (2023). AI and Predictive Maintenance for Workflow Optimization. Journal of Industrial AI, 13(4), 120-132.
  15. Anderson, M., & Brown, K. (2023). AI's Impact on Resource Allocation in Healthcare. Healthcare Innovation Journal, 10(4), 74-88.
  16. Gonzalez, F., & Reynolds, J. (2022). The Future of AI in Dynamic Workflow Environments. Journal of Applied AI, 18(2), 90-104.
Download PDF

How to Cite

Dalia Mohamed Younis, (2025-01-07 18:07:34.737). Streamlining Operations: The Role of Artificial Intelligence in Workflow Automation. Abhi International Journal of Artificial Intelligence Applications in Management, Volume lBpPJ5OrRh2dLgwHVb1c, Issue 1.