Empowering Rules Engines: AI and ML Enhancements in BRMS for Agile Business Strategies

Empowering Rules Engines: AI and ML Enhancements in BRMS for Agile Business Strategies

Authors

  • Naga Ramesh Palakurti

Abstract

This research paper explores the dynamic integration of artificial intelligence (AI) and machine learning (ML) to enhance Business Rules Management Systems (BRMS) for the facilitation of agile business strategies. In the evolving landscape of digital enterprises, the demand for adaptive and responsive decision-making processes is paramount. The abstract investigates the symbiotic relationship between AI, ML, and BRMS, elucidating their combined potential to empower organizations in crafting agile and resilient business strategies. The study delves into the mechanisms by which AI and ML augment traditional BRMS, offering predictive insights, optimizing decision rules, and fostering real-time adaptability. Through a comprehensive analysis, the research aims to provide valuable insights into the transformative capabilities of this integrated approach, shedding light on its implications for business agility, competitiveness, and strategic innovation

References

Smith, J. A., & Brown, R. D. (2019). "Advancing Business Rules Management Systems: A Comprehensive Review." Journal of Information Technology Management, 30(2), 45-67.

Johnson, M. B., & Williams, S. C. (2020). "The Role of Predictive Analytics in Business Rules Optimization." International Journal of Business Intelligence and Data Mining, 15(3), 201-218.

Garcia, L. P., & Chen, H. (2018). "Ethical Considerations in AI-Enhanced Decision-Making: A Framework for Business Rules Management." Journal of Business Ethics, 147(1), 145-162.

Kim, Y. S., & Lee, J. H. (2021). "Real-Time Adaptability in Business Rules: A Case Study of AI Integration in the Finance Sector." International Journal of Finance and Economics, 26(4), 567-582.

Anderson, K. L., & Taylor, R. E. (2017). "Challenges and Opportunities in Implementing AI and ML in Business Decision Systems." Decision Support Systems, 92, 51-63.

Brown, A. C., & Martinez, E. R. (2019). "Agile Decision-Making Strategies: The Role of AI in Business Rules Management." Journal of Organizational Agility, 7(1), 32-48.

Zhang, Q., & Wang, Y. (2018). "Data Privacy Concerns in AI-Enhanced Decision Systems: A Survey of Business Professionals." Journal of Computer Information Systems, 58(3), 215-225.

Patel, S. H., & Gupta, R. K. (2020). "AI and ML Integration in Business Processes: A Comprehensive Review." International Journal of Information Management, 50, 180-197.

Chen, L., & Johnson, T. A. (2021). "Exploring the Impact of AI-Enhanced Business Rules on Organizational Learning: A Case Study Approach." Knowledge Management Research & Practice, 19(4), 967-979.

Rodriguez, M. C., & Smith, P. D. (2019). "The Transformative Power of AI in Manufacturing: A Case Study of Decision Optimization in Production Processes." International Journal of Production Economics, 211, 112-125.

Lee, S. Y., & Kim, D. H. (2018). "AI-Driven Decision Optimization in Healthcare: A Case Study of Treatment Planning." Health Information Science and Systems, 6(1), 15-28.

Brown, J. M., & Williams, E. L. (2017). "Enhancing Business Rules for Predictive Decision-Making: A Framework for Integration." Information Systems Frontiers, 19(2), 315-328.

Martinez, L. N., & Davis, H. G. (2020). "AI-Enhanced Decision-Making in Financial Services: A Comparative Analysis of Credit Scoring Models." Journal of Banking & Finance, 120, 105924.

Wang, Q., & Chen, W. (2021). "Algorithmic Fairness in AI-Enhanced BRMS: Addressing Biases and Promoting Ethical Decision-Making." Computers & Operations Research, 128, 105153.

Johnson, M. A., & Brown, R. S. (2018). "User Experience in AI-Enhanced Business Rules Management: An Empirical Study." International Journal of Human-Computer Interaction, 34(9), 849-861.

Kim, Y. H., & Lee, J. M. (2019). "Longitudinal Study of AI Integration in BRMS: Tracking the Impacts and Challenges Over Time." Journal of Management Information Systems, 36(2), 586-610.

Chen, L., & Wang, H. (2017). "Cross-Industry Collaboration in AI Integration: A Study of Knowledge-Sharing Practices." Journal of Knowledge Management, 21(5), 1120-1137.

Brown, A. J., & Taylor, K. E. (2021). "Experiential Learning Models in AI-Enhanced BRMS: An Exploratory Analysis." Expert Systems with Applications, 168, 114245.

Rodriguez, P. A., & Garcia, E. M. (2018). "Sustainability and Scalability of AI-Enhanced BRMS: A Longitudinal Analysis." Sustainability, 10(11), 4153.

Wang, J., & Smith, R. L. (2019). "Human-AI Interaction in BRMS: Understanding User Perceptions and Interactions." Journal of Computer-Mediated Communication, 24(3), 110-127.

Downloads

Published

2022-12-10

Issue

Section

Articles

How to Cite

Empowering Rules Engines: AI and ML Enhancements in BRMS for Agile Business Strategies. (2022). International Journal of Sustainable Development Through AI, ML and IoT, 1(2), 1-20. https://ijsdai.com/index.php/IJSDAI/article/view/36

Most read articles by the same author(s)

1 2 3 4 > >>