Intelligent AI Driven Enterprise Data Architecture for Secure SAP Cloud Platforms with Hybrid Infrastructure and Digital Innovation
DOI:
https://doi.org/10.15680/jwcmxa19Keywords:
Artificial Intelligence, Enterprise Data Architecture, SAP Cloud Platforms, Hybrid Infrastructure, Digital Innovation, Data Integration, Cloud Security, Data Governance, Intelligent Analytics, Enterprise SystemsAbstract
The rapid growth of digital technologies and data-driven business models has compelled enterprises to redesign their data architectures to support scalability, security, and intelligent analytics. Enterprise systems such as SAP generate large volumes of structured and unstructured data that require efficient processing, integration, and governance. Artificial Intelligence (AI) combined with modern cloud and hybrid infrastructure technologies provides a powerful solution for building intelligent enterprise data architectures. This research explores the development of an AI-driven enterprise data architecture designed to support secure SAP cloud platforms, hybrid infrastructure environments, and digital innovation initiatives. The proposed architecture integrates cloud computing, AI-based analytics, intelligent data integration frameworks, and automated security mechanisms to enhance enterprise data management capabilities. Hybrid infrastructure allows organizations to maintain critical workloads within on-premise environments while leveraging cloud resources for scalability and advanced analytics. AI technologies enable predictive analytics, automated data processing, anomaly detection, and intelligent decision support. The study also examines architectural layers, implementation strategies, and governance frameworks required for secure and scalable enterprise data ecosystems. The findings indicate that AI-driven enterprise data architectures significantly improve data accessibility, operational efficiency, system scalability, and security in SAP cloud environments. This research contributes to the development of modern enterprise architectures capable of supporting digital innovation and sustainable organizational transformation.
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