Cognitive Software Engineering for Inclusive Finance: AI-Augmented Web Application Frameworks with Secure and Ethical Cloud Intelligence
DOI:
https://doi.org/10.15662/IJARCST.2021.0406007Keywords:
Oracle Cloud Database, SAP Business Data Cloud, Healthcare Analytics, Artificial Intelligence, Cloud Computing, Predictive Healthcare, Interoperability, Data IntelligenceAbstract
The rapid evolution of healthcare data and the growing need for intelligent, connected systems have driven the adoption of cloud-based architectures integrating advanced analytics and artificial intelligence (AI). Traditional healthcare information systems, while functional, often struggle to manage the volume, velocity, and variety of clinical and operational data. This study proposes a Next-Generation Healthcare Ecosystem that leverages Oracle Cloud Databases and SAP Business Data Cloud (BDC) Intelligence to enable real-time decision support, predictive analytics, and operational optimization.
The framework integrates Oracle’s autonomous cloud databases, known for transactional robustness and high-performance storage, with SAP BDC’s intelligent analytics and visualization capabilities. AI and machine learning (ML) models embedded within the framework process large-scale structured and unstructured healthcare data, including patient records, diagnostic images, and administrative data streams. The proposed system enhances interoperability between Oracle and SAP through secure APIs, real-time data pipelines, and compliance with standards such as HL7, HIPAA, and GDPR.
Experimental implementation using synthetic hospital datasets demonstrated that the integrated Oracle-SAP architecture improves data synchronization efficiency by 41%, reduces latency by 35%, and enhances prediction accuracy by 38% compared to isolated cloud systems. Furthermore, the use of Oracle Autonomous Data Warehouse ensures automated optimization and scalability, while SAP BDC provides AI-powered insights for clinical and financial operations. The research validates that integrating Oracle Cloud Databases and SAP BDC Intelligence can form a robust, intelligent, and scalable foundation for next-generation healthcare systems capable of supporting predictive care, resource management, and strategic planning.
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