AI-Powered Cloud-Native ERP Enterprise Systems with Information Retrieval Decision Analytics Cybersecurity and Zero-ETL Analytics
DOI:
https://doi.org/10.15680/j6nb8331Keywords:
artificial intelligence, cloud-native enterprise systems, ERP operations, information retrieval, decision analytics, cybersecurity, Zero-ETL analytics, real-time analytics, intelligent automation, digital transformationAbstract
Modern enterprises increasingly rely on intelligent and resilient digital infrastructures to support real-time decision-making across finance, healthcare, manufacturing, and retail domains. Traditional enterprise resource planning (ERP) systems, while central to operational management, often suffer from rigid architectures, delayed analytics, and fragmented data pipelines. This paper proposes an integrated AI-powered cloud-native enterprise framework that enhances ERP operations through advanced information retrieval, decision analytics, cybersecurity, and Zero-ETL real-time analytics.
The framework leverages microservices, container orchestration, and serverless computing to enable scalable and adaptive enterprise platforms. AI-driven modules support predictive analytics, anomaly detection, and reinforcement learning–based decision intelligence for financial risk management, fraud detection, and operational optimization. Information retrieval models using natural language processing and semantic search improve enterprise knowledge discovery and contextual decision support. A Zero-ETL architecture enables direct querying of operational data from cloud warehouses, reducing latency and enabling real-time dashboards.
Cybersecurity is strengthened through zero-trust architecture, AI-based threat detection, and compliance-aware governance mechanisms. The proposed system demonstrates improved responsiveness, scalability, and decision accuracy compared to conventional enterprise platforms. This study contributes a unified enterprise architecture that integrates AI, cloud-native design, and real-time analytics to support secure, intelligent, and resilient enterprise operations.
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