Published May 31, 2025 | Version v1

AI-powered self-healing enterprise applications: A new era of autonomous systems

Authors/Creators

  • 1. State University of New York at Binghamton, USA.

Description

This article introduces AI-powered self-healing enterprise applications as a transformative approach to maintaining system reliability and operational integrity. Traditional reactive maintenance strategies are increasingly inadequate in fast-paced digital environments where service interruptions directly impact business outcomes and customer loyalty. Self-healing systems represent a paradigm shift by leveraging artificial intelligence to detect issues proactively, diagnose root causes autonomously, and implement corrective measures without human intervention. The architecture of these systems encompasses monitoring layers, analysis engines, decision frameworks, execution modules, and knowledge repositories working in concert to maintain system health. Various integration patterns, including sidecar deployments, service meshes, orchestration frameworks, and embedded approaches, offer distinct advantages for different environments. Machine learning models and algorithmic techniques like time series analysis, clustering, natural language processing, classification, and causal inference enable sophisticated detection and remediation capabilities. Despite implementation challenges related to data quality, model drift, false positives, and organizational alignment, best practices have emerged to guide successful adoption. This article provides a comprehensive overview of self-healing technologies and implementation strategies to help organizations achieve enhanced reliability in mission-critical enterprise applications. 

Files

WJARR-2025-1682.pdf

Files (375.6 kB)

Name Size Download all
md5:bf644dc517001a2249ecf461346abbe3
375.6 kB Preview Download

Additional details