Hybrid cloud enterprise integration presents a formidable challenge as organizations strive to harmonize legacy systems with modern, cloud-native applications. This article investigates the potential of AI-enhanced orchestration to dynamically manage integration workflows across such heterogeneous environments. By embedding artificial intelligence within orchestration platforms, enterprises can achieve real-time optimization of data flows, resource allocation, and security compliance, transforming static integration approaches into adaptive, self-healing systems. The article focuses on three key dimensions: dynamic resource allocation, real-time data flow management, and enhanced security monitoring. Traditional orchestration frameworks often struggle to react to fluctuating workloads and unpredictable network conditions. In contrast, AI algorithms analyze historical and real-time operational metrics to predict bottlenecks and proactively adjust resources across serverless functions, containerized microservices, and legacy infrastructures. AI-enhanced orchestration also improves fault tolerance by continuously monitoring integration pipelines, detecting anomalies, and initiating automated recovery processes. Various implementation approaches are examined, including augmenting existing platforms, leveraging cloud-native frameworks, and developing custom AI integration layers, along with challenges organizations face in the adoption and potential future directions of this transformative technology.
Keywords: Artificial intelligence orchestration, Cross-enterprise optimization, Dynamic resource allocation, Hybrid cloud integration, self-healing systems