AI and DevOps Driven Cloud Enterprise Networks for Digital Banking Healthcare and Government Platforms
DOI:
https://doi.org/10.15680/8xa23n71Keywords:
Artificial Intelligence (AI), DevOps, Cloud Computing, Digital Banking, Healthcare Information Systems, Government Enterprise Platforms, Continuous Integration and Continuous Deployment (CI/CD), Infrastructure as Code (IaC), Machine Learning Operations (MLOps), Cloud-Native Architecture, Microservices Architecture, Cybersecurity, Data Governance, Automation Frameworks, Digital TransformationAbstract
Artificial Intelligence (AI) and DevOps-driven cloud enterprise networks are reshaping digital ecosystems across banking, healthcare, and government sectors. The convergence of AI-powered analytics, cloud-native architectures, and DevOps automation enables organizations to build scalable, secure, and resilient digital platforms capable of handling complex transactional workloads and regulatory requirements. Major cloud providers such as Amazon Web Services, Microsoft Azure, and Google Cloud offer AI-integrated DevOps tools that streamline continuous integration, continuous deployment (CI/CD), infrastructure as code (IaC), and intelligent monitoring.
In digital banking, AI enhances fraud detection, credit risk assessment, and personalized financial services. In healthcare, it automates claims processing, patient data analytics, and regulatory compliance. Government platforms leverage AI and DevOps to deliver citizen-centric services, digital identity systems, and transparent governance models.
However, adoption introduces challenges related to cybersecurity, regulatory compliance, ethical AI, and operational complexity. This research explores architectural frameworks, implementation methodologies, governance models, and performance evaluation metrics for AI- and DevOps-driven cloud enterprise networks. It provides a structured approach to understanding technological integration, operational benefits, potential risks, and strategic pathways for sustainable digital transformation.
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