Transforming Enterprise Platforms through Intelligent Artificial Intelligence SAP Integration and Cyber-Resilient Cloud Architecture

Main Article Content

Mohammed Al Hammadi

Abstract

Enterprise digital transformation has accelerated the convergence of Artificial Intelligence (AI), SAP integration, and cyber-resilient cloud architecture to create intelligent, secure, and adaptive business platforms. Organizations increasingly rely on integrated enterprise systems that support real-time decision-making, automated business processes, scalable computing resources, and comprehensive cybersecurity. Artificial Intelligence enhances enterprise operations through predictive analytics, intelligent automation, anomaly detection, and data-driven decision support, while SAP platforms provide unified management of finance, supply chain, procurement, manufacturing, customer relationships, and human resources. Cloud architecture enables flexible resource allocation, microservices-based application development, containerization, and rapid deployment of enterprise services. Cyber resilience strengthens these platforms by incorporating Zero Trust principles, identity and access management, continuous threat monitoring, automated incident response, encryption, and disaster recovery mechanisms. This study presents a conceptual framework for transforming enterprise platforms through the integration of intelligent AI capabilities, SAP business applications, and cyber-resilient cloud infrastructure. The research explores architectural design principles, interoperability mechanisms, cloud security strategies, and implementation methodologies that enable organizations to improve operational efficiency, business continuity, and regulatory compliance. The proposed methodology demonstrates that combining intelligent automation with secure cloud-native enterprise architecture establishes a sustainable foundation for digital innovation, organizational resilience, and long-term competitiveness in rapidly evolving business environments.

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How to Cite

Transforming Enterprise Platforms through Intelligent Artificial Intelligence SAP Integration and Cyber-Resilient Cloud Architecture. (2024). International Journal of Humanities and Information Technology, 6(04), 196-207. https://doi.org/10.21590/

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