
An International Publisher for Academic and Scientific Journals
Author Login
Scholars Journal of Economics, Business and Management | Volume-12 | Issue-05
AI-Driven Self-Healing Automation: A Strategic Framework for Business Efficiency, Cost Optimization, and Compliance Management in Background Screening Systems
Sushil Ranjan Mishra
Published: May 30, 2025 |
47
46
Pages: 120-127
Downloads
Abstract
This paper presents a comprehensive framework for AI-driven self-healing automation within background screening systems. The study explores the application of machine learning techniques to enhance business efficiency, optimize operational costs, and ensure regulatory compliance. Challenges with traditional automation methods—such as high maintenance, limited adaptability, and compliance gaps—are addressed by implementing adaptive AI technologies. Results demonstrate improvements in system resilience, turnaround time, and strategic resource allocation. Moreover, the integration of real-time monitoring, error handling using large language models (LLMs), and compliance-driven policy enforcement offers a holistic solution for modern background screening. This work contributes a scalable, proactive, and legally compliant automation strategy, enhancing both performance and trust in sensitive data environments.